Sample records for yields model projections

  1. Yield model development project implementation plan

    NASA Technical Reports Server (NTRS)

    Ambroziak, R. A.

    1982-01-01

    Tasks remaining to be completed are summarized for the following major project elements: (1) evaluation of crop yield models; (2) crop yield model research and development; (3) data acquisition processing, and storage; (4) related yield research: defining spectral and/or remote sensing data requirements; developing input for driving and testing crop growth/yield models; real time testing of wheat plant process models) and (5) project management and support.

  2. Projecting crop yield in northern high latitude area.

    PubMed

    Matsumura, Kanichiro

    2014-01-01

    Changing climatic conditions on seasonal and longer time scales influence agricultural production. Improvement of soil and fertilizer is a strong factor in agricultural production, but agricultural production is influenced by climate conditions even in highly developed countries. It is valuable if fewer predictors make it possible to conduct future projections. Monthly temperature and precipitation, wintertime 500hPa geopotential height, and the previous year's yield are used as predictors to forecast spring wheat yield in advance. Canadian small agricultural divisions (SAD) are used for analysis. Each SAD is composed of a collection of Canadian Agricultural Regions (CAR) of similar weather and growing conditions. Spring wheat yields in each CAR are forecast from the following variables: (a) the previous year's yield, (b) earlier stages of the growing season's climate conditions and, (c) the previous year's wintertime northern hemisphere 500hPa geopotential height field. Arctic outflow events in the Okanagan Valley in Canada are associated with episodes of extremely low temperatures during wintertime. Principal component analysis (PCA) is applied for wintertime northern hemisphere 500hPa geopotential height anomalies. The spatial PCA mode1 is defined as Arctic Oscillation and it influences prevailing westerlies. The prevailing westerlies meanders and influences climatic conditions. The spatial similarity between wintertime top 5 Arctic outflow event year's composites of 500hPa geopotential height anomalies and mode 3's spatial pattern is found. Mode 3's spatial pattern looks like the Pacific/North American (PNA) pattern which describes the variation of atmospheric circulation pattern over the Pacific Ocean and North America. Climate conditions from April to June, May to July, mode 3's time coefficients, and previous year's yield are used for forecasting spring wheat yield in each SAD. Cross-validation procedure which generates eight sets of models for the eight

  3. Sensitivity of TRIM projections to management, harvest, yield, and stocking adjustment assumptions.

    Treesearch

    Susan J. Alexander

    1991-01-01

    The Timber Resource Inventory Model (TRIM) was used to make several projections of forest industry timber supply for the Douglas-fir region. The sensitivity of these projections to assumptions about management and yields is discussed. A base run is compared to runs in which yields were altered, stocking adjustment was eliminated, harvest assumptions were changed, and...

  4. The uncertainty of crop yield projections is reduced by improved temperature response functions.

    PubMed

    Wang, Enli; Martre, Pierre; Zhao, Zhigan; Ewert, Frank; Maiorano, Andrea; Rötter, Reimund P; Kimball, Bruce A; Ottman, Michael J; Wall, Gerard W; White, Jeffrey W; Reynolds, Matthew P; Alderman, Phillip D; Aggarwal, Pramod K; Anothai, Jakarat; Basso, Bruno; Biernath, Christian; Cammarano, Davide; Challinor, Andrew J; De Sanctis, Giacomo; Doltra, Jordi; Fereres, Elias; Garcia-Vila, Margarita; Gayler, Sebastian; Hoogenboom, Gerrit; Hunt, Leslie A; Izaurralde, Roberto C; Jabloun, Mohamed; Jones, Curtis D; Kersebaum, Kurt C; Koehler, Ann-Kristin; Liu, Leilei; Müller, Christoph; Naresh Kumar, Soora; Nendel, Claas; O'Leary, Garry; Olesen, Jørgen E; Palosuo, Taru; Priesack, Eckart; Eyshi Rezaei, Ehsan; Ripoche, Dominique; Ruane, Alex C; Semenov, Mikhail A; Shcherbak, Iurii; Stöckle, Claudio; Stratonovitch, Pierre; Streck, Thilo; Supit, Iwan; Tao, Fulu; Thorburn, Peter; Waha, Katharina; Wallach, Daniel; Wang, Zhimin; Wolf, Joost; Zhu, Yan; Asseng, Senthold

    2017-07-17

    Increasing the accuracy of crop productivity estimates is a key element in planning adaptation strategies to ensure global food security under climate change. Process-based crop models are effective means to project climate impact on crop yield, but have large uncertainty in yield simulations. Here, we show that variations in the mathematical functions currently used to simulate temperature responses of physiological processes in 29 wheat models account for >50% of uncertainty in simulated grain yields for mean growing season temperatures from 14 °C to 33 °C. We derived a set of new temperature response functions that when substituted in four wheat models reduced the error in grain yield simulations across seven global sites with different temperature regimes by 19% to 50% (42% average). We anticipate the improved temperature responses to be a key step to improve modelling of crops under rising temperature and climate change, leading to higher skill of crop yield projections.

  5. The Uncertainty of Crop Yield Projections Is Reduced by Improved Temperature Response Functions

    NASA Technical Reports Server (NTRS)

    Wang, Enli; Martre, Pierre; Zhao, Zhigan; Ewert, Frank; Maiorano, Andrea; Rotter, Reimund P.; Kimball, Bruce A.; Ottman, Michael J.; White, Jeffrey W.; Reynolds, Matthew P.; hide

    2017-01-01

    Increasing the accuracy of crop productivity estimates is a key element in planning adaptation strategies to ensure global food security under climate change. Process-based crop models are effective means to project climate impact on crop yield, but have large uncertainty in yield simulations. Here, we show that variations in the mathematical functions currently used to simulate temperature responses of physiological processes in 29 wheat models account for is greater than 50% of uncertainty in simulated grain yields for mean growing season temperatures from 14 C to 33 C. We derived a set of new temperature response functions that when substituted in four wheat models reduced the error in grain yield simulations across seven global sites with different temperature regimes by 19% to 50% (42% average). We anticipate the improved temperature responses to be a key step to improve modelling of crops under rising temperature and climate change, leading to higher skill of crop yield projections.

  6. Second Generation Crop Yield Models Review

    NASA Technical Reports Server (NTRS)

    Hodges, T. (Principal Investigator)

    1982-01-01

    Second generation yield models, including crop growth simulation models and plant process models, may be suitable for large area crop yield forecasting in the yield model development project. Subjective and objective criteria for model selection are defined and models which might be selected are reviewed. Models may be selected to provide submodels as input to other models; for further development and testing; or for immediate testing as forecasting tools. A plant process model may range in complexity from several dozen submodels simulating (1) energy, carbohydrates, and minerals; (2) change in biomass of various organs; and (3) initiation and development of plant organs, to a few submodels simulating key physiological processes. The most complex models cannot be used directly in large area forecasting but may provide submodels which can be simplified for inclusion into simpler plant process models. Both published and unpublished models which may be used for development or testing are reviewed. Several other models, currently under development, may become available at a later date.

  7. Impacts of climate change on peanut yield in China simulated by CMIP5 multi-model ensemble projections

    NASA Astrophysics Data System (ADS)

    Xu, Hanqing; Tian, Zhan; Zhong, Honglin; Fan, Dongli; Shi, Runhe; Niu, Yilong; He, Xiaogang; Chen, Maosi

    2017-09-01

    Peanut is one of the major edible vegetable oil crops in China, whose growth and yield are very sensitive to climate change. In addition, agriculture climate resources are expected to be redistributed under climate change, which will further influence the growth, development, cropping patterns, distribution and production of peanut. In this study, we used the DSSAT-Peanut model to examine the climate change impacts on peanut production, oil industry and oil food security in China. This model is first calibrated using site observations including 31 years' (1981-2011) climate, soil and agronomy data. This calibrated model is then employed to simulate the future peanut yield based on 20 climate scenarios from 5 Global Circulation Models (GCMs) developed by the InterSectoral Impact Model Intercomparison Project (ISIMIP) driven by 4 Representative Concentration Pathways (RCPs). Results indicate that the irrigated peanut yield will decrease 2.6% under the RCP 2.6 scenario, 9.9% under the RCP 4.5 scenario and 29% under the RCP 8.5 scenario, respectively. Similarly, the rain-fed peanut yield will also decrease, with a 2.5% reduction under the RCP 2.6 scenario, 11.5% reduction under the RCP 4.5 scenario and 30% reduction under the RCP 8.5 scenario, respectively.

  8. Forest Growth and Yield Models Viewed From a Different Perspective

    Treesearch

    Jeffery C. Goelz

    2002-01-01

    Typically, when different forms of growth and yield models are considered, they are grouped into convenient discrete classes. As a heuristic device, I chose to use a contrasting perspective, that all growth and yield models are diameter distribution models that merely differ in regard to which diameter distribution is employed and how the distribution is projected to...

  9. Climate Change Impact Uncertainties for Maize in Panama: Farm Information, Climate Projections, and Yield Sensitivities

    NASA Technical Reports Server (NTRS)

    Ruane, Alex C.; Cecil, L. Dewayne; Horton, Radley M.; Gordon, Roman; McCollum, Raymond (Brown, Douglas); Brown, Douglas; Killough, Brian; Goldberg, Richard; Greeley, Adam P.; Rosenzweig, Cynthia

    2011-01-01

    We present results from a pilot project to characterize and bound multi-disciplinary uncertainties around the assessment of maize (Zea mays) production impacts using the CERES-Maize crop model in a climate-sensitive region with a variety of farming systems (Panama). Segunda coa (autumn) maize yield in Panama currently suffers occasionally from high water stress at the end of the growing season, however under future climate conditions warmer temperatures accelerate crop maturation and elevated CO (sub 2) concentrations improve water retention. This combination reduces end-of-season water stresses and eventually leads to small mean yield gains according to median projections, although accelerated maturation reduces yields in seasons with low water stresses. Calibrations of cultivar traits, soil profile, and fertilizer amounts are most important for representing baseline yields, however sensitivity to all management factors is reduced in an assessment of future yield changes (most dramatically for fertilizers), suggesting that yield changes may be more generalizable than absolute yields. Uncertainty around General Circulation Model (GCM)s' projected changes in rainfall gain in importance throughout the century, with yield changes strongly correlated with growing season rainfall totals. Climate changes are expected to be obscured by the large inter-annual variations in Panamanian climate that will continue to be the dominant influence on seasonal maize yield into the coming decades. The relatively high (A2) and low (B1) emissions scenarios show little difference in their impact on future maize yields until the end of the century. Uncertainties related to the sensitivity of CERES-Maize to carbon dioxide concentrations have a substantial influence on projected changes, and remain a significant obstacle to climate change impacts assessment. Finally, an investigation into the potential of simple statistical yield emulators based upon key climate variables characterizes the

  10. Statistical emulators of maize, rice, soybean and wheat yields from global gridded crop models

    DOE PAGES

    Blanc, Élodie

    2017-01-26

    This study provides statistical emulators of crop yields based on global gridded crop model simulations from the Inter-Sectoral Impact Model Intercomparison Project Fast Track project. The ensemble of simulations is used to build a panel of annual crop yields from five crop models and corresponding monthly summer weather variables for over a century at the grid cell level globally. This dataset is then used to estimate, for each crop and gridded crop model, the statistical relationship between yields, temperature, precipitation and carbon dioxide. This study considers a new functional form to better capture the non-linear response of yields to weather,more » especially for extreme temperature and precipitation events, and now accounts for the effect of soil type. In- and out-of-sample validations show that the statistical emulators are able to replicate spatial patterns of yields crop levels and changes overtime projected by crop models reasonably well, although the accuracy of the emulators varies by model and by region. This study therefore provides a reliable and accessible alternative to global gridded crop yield models. By emulating crop yields for several models using parsimonious equations, the tools provide a computationally efficient method to account for uncertainty in climate change impact assessments.« less

  11. Statistical emulators of maize, rice, soybean and wheat yields from global gridded crop models

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Blanc, Élodie

    This study provides statistical emulators of crop yields based on global gridded crop model simulations from the Inter-Sectoral Impact Model Intercomparison Project Fast Track project. The ensemble of simulations is used to build a panel of annual crop yields from five crop models and corresponding monthly summer weather variables for over a century at the grid cell level globally. This dataset is then used to estimate, for each crop and gridded crop model, the statistical relationship between yields, temperature, precipitation and carbon dioxide. This study considers a new functional form to better capture the non-linear response of yields to weather,more » especially for extreme temperature and precipitation events, and now accounts for the effect of soil type. In- and out-of-sample validations show that the statistical emulators are able to replicate spatial patterns of yields crop levels and changes overtime projected by crop models reasonably well, although the accuracy of the emulators varies by model and by region. This study therefore provides a reliable and accessible alternative to global gridded crop yield models. By emulating crop yields for several models using parsimonious equations, the tools provide a computationally efficient method to account for uncertainty in climate change impact assessments.« less

  12. Using a dynamic vegetation model for future projections of crop yields: application to Belgium in the framework of the VOTES and MASC projects

    NASA Astrophysics Data System (ADS)

    Jacquemin, Ingrid; Henrot, Alexandra-Jane; Fontaine, Corentin M.; Dendoncker, Nicolas; Beckers, Veronique; Debusscher, Bos; Tychon, Bernard; Hambuckers, Alain; François, Louis

    2016-04-01

    Dynamic vegetation models (DVM) were initially designed to describe the dynamics of natural ecosystems as a function of climate and soil, to study the role of the vegetation in the carbon cycle. These models are now directly coupled with climate models in order to evaluate feedbacks between vegetation and climate. But DVM characteristics allow numerous other applications, leading to amelioration of some of their modules (e.g., evaluating sensitivity of the hydrological module to land surface changes) and developments (e.g., coupling with other models like agent-based models), to be used in ecosystem management and land use planning studies. It is in this dynamic context about DVMs that we have adapted the CARAIB (CARbon Assimilation In the Biosphere) model. One of the main improvements is the implementation of a crop module, allowing the assessment of climate change impacts on crop yields. We try to validate this module at different scales: - from the plot level, with the use of eddy-covariance data from agricultural sites in the FLUXNET network, such as Lonzée (Belgium) or other Western European sites (Grignon, Dijkgraaf,…), - to the country level, for which we compare the crop yield calculated by CARAIB to the crop yield statistics for Belgium and for different agricultural regions of the country. Another challenge for the CARAIB DVM was to deal with the landscape dynamics, which is not directly possible due to the lack of consideration of anthropogenic factors in the system. In the framework of the VOTES and the MASC projects, CARAIB is coupled with an agent-based model (ABM), representing the societal component of the system. This coupled module allows the use of climate and socio-economic scenarios, particularly interesting for studies which aim at ensuring a sustainable approach. This module has particularly been exploited in the VOTES project, where the objective was to provide a social, biophysical and economic assessment of the ecosystem services in

  13. Impacts of Future Climate Change on California Perennial Crop Yields: Model Projections with Climate and Crop Uncertainties

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Lobell, D; Field, C; Cahill, K

    2006-01-10

    Most research on the agricultural impacts of climate change has focused on the major annual crops, yet perennial cropping systems are less adaptable and thus potentially more susceptible to damage. Improved assessments of yield responses to future climate are needed to prioritize adaptation strategies in the many regions where perennial crops are economically and culturally important. These impact assessments, in turn, must rely on climate and crop models that contain often poorly defined uncertainties. We evaluated the impact of climate change on six major perennial crops in California: wine grapes, almonds, table grapes, oranges, walnuts, and avocados. Outputs from multiplemore » climate models were used to evaluate climate uncertainty, while multiple statistical crop models, derived by resampling historical databases, were used to address crop response uncertainties. We find that, despite these uncertainties, climate change in California is very likely to put downward pressure on yields of almonds, walnuts, avocados, and table grapes by 2050. Without CO{sub 2} fertilization or adaptation measures, projected losses range from 0 to >40% depending on the crop and the trajectory of climate change. Climate change uncertainty generally had a larger impact on projections than crop model uncertainty, although the latter was substantial for several crops. Opportunities for expansion into cooler regions are identified, but this adaptation would require substantial investments and may be limited by non-climatic constraints. Given the long time scales for growth and production of orchards and vineyards ({approx}30 years), climate change should be an important factor in selecting perennial varieties and deciding whether and where perennials should be planted.« less

  14. AgRISTARS: Yield model development/soil moisture. Interface control document

    NASA Technical Reports Server (NTRS)

    1980-01-01

    The interactions and support functions required between the crop Yield Model Development (YMD) Project and Soil Moisture (SM) Project are defined. The requirements for YMD support of SM and vice-versa are outlined. Specific tasks in support of these interfaces are defined for development of support functions.

  15. Statistical modelling of grapevine yield in the Port Wine region under present and future climate conditions

    NASA Astrophysics Data System (ADS)

    Santos, João A.; Malheiro, Aureliano C.; Karremann, Melanie K.; Pinto, Joaquim G.

    2011-03-01

    The impact of projected climate change on wine production was analysed for the Demarcated Region of Douro, Portugal. A statistical grapevine yield model (GYM) was developed using climate parameters as predictors. Statistically significant correlations were identified between annual yield and monthly mean temperatures and monthly precipitation totals during the growing cycle. These atmospheric factors control grapevine yield in the region, with the GYM explaining 50.4% of the total variance in the yield time series in recent decades. Anomalously high March rainfall (during budburst, shoot and inflorescence development) favours yield, as well as anomalously high temperatures and low precipitation amounts in May and June (May: flowering and June: berry development). The GYM was applied to a regional climate model output, which was shown to realistically reproduce the GYM predictors. Finally, using ensemble simulations under the A1B emission scenario, projections for GYM-derived yield in the Douro Region, and for the whole of the twenty-first century, were analysed. A slight upward trend in yield is projected to occur until about 2050, followed by a steep and continuous increase until the end of the twenty-first century, when yield is projected to be about 800 kg/ha above current values. While this estimate is based on meteorological parameters alone, changes due to elevated CO2 may further enhance this effect. In spite of the associated uncertainties, it can be stated that projected climate change may significantly benefit wine yield in the Douro Valley.

  16. Using statistical model to simulate the impact of climate change on maize yield with climate and crop uncertainties

    NASA Astrophysics Data System (ADS)

    Zhang, Yi; Zhao, Yanxia; Wang, Chunyi; Chen, Sining

    2017-11-01

    Assessment of the impact of climate change on crop productions with considering uncertainties is essential for properly identifying and decision-making agricultural practices that are sustainable. In this study, we employed 24 climate projections consisting of the combinations of eight GCMs and three emission scenarios representing the climate projections uncertainty, and two crop statistical models with 100 sets of parameters in each model representing parameter uncertainty within the crop models. The goal of this study was to evaluate the impact of climate change on maize ( Zea mays L.) yield at three locations (Benxi, Changling, and Hailun) across Northeast China (NEC) in periods 2010-2039 and 2040-2069, taking 1976-2005 as the baseline period. The multi-models ensembles method is an effective way to deal with the uncertainties. The results of ensemble simulations showed that maize yield reductions were less than 5 % in both future periods relative to the baseline. To further understand the contributions of individual sources of uncertainty, such as climate projections and crop model parameters, in ensemble yield simulations, variance decomposition was performed. The results indicated that the uncertainty from climate projections was much larger than that contributed by crop model parameters. Increased ensemble yield variance revealed the increasing uncertainty in the yield simulation in the future periods.

  17. Projections of long-term changes in solar radiation based on CMIP5 climate models and their influence on energy yields of photovoltaic systems

    NASA Astrophysics Data System (ADS)

    Wild, Martin; Folini, Doris; Henschel, Florian; Müller, Björn

    2015-04-01

    Traditionally, for the planning and assessment of solar energy systems, the amount of solar radiation (sunlight) incident on the Earth's surface is assumed to be constant over the years. However, with changing climate and air pollution levels, solar resources may no longer be stable over time and undergo substantial decadal changes. Observational records covering the past decades confirm long-term changes in this quantity. Here we examine, how the latest generation of climate models used for the 5th IPCC report projects potential changes in surface solar radiation over the coming decades, and how this may affect, in combination with the expected greenhouse warming, solar power output from photovoltaic (PV) systems. For this purpose, projections up to the mid 21th century from 39 state of the art climate models from the Coupled Model Intercomparison Project Phase 5 (CMIP5) are analysed globally and for selected key regions with major solar power production capacity. The large model ensemble allows to assess the degree of consistency of their projections. Models are largely consistent in the sign of the projected changes in solar radiation under cloud-free conditions as well as in surface temperatures over most of the globe, while still reasonably consistent over a considerable part of the globe in the sign of changes in cloudiness and associated changes in solar radiation. A first order estimate of the impact of solar radiation and temperature changes on energy yields of PV systems under the RPC8.5 scenario indicates statistically significant decreases in PV outputs in large parts of the world, but notable exceptions with positive trends in parts of Europe and the South-East of China. Projected changes between 2006 and 2049 under the RCP8.5 scenario overall are on the order of 1 % per decade for horizontal planes, but may be larger for tilted or tracked planes as well as on shorter (decadal) timescales. Related References: Wild, M., Folini, D., Henschel, F., and M

  18. Yield Model Development (YMD) implementation plan for fiscal years 1981 and 1982

    NASA Technical Reports Server (NTRS)

    Ambroziak, R. A. (Principal Investigator)

    1981-01-01

    A plan is described for supporting USDA crop production forecasting and estimation by (1) testing, evaluating, and selecting crop yield models for application testing; (2) identifying areas of feasible research for improvement of models; and (3) conducting research to modify existing models and to develop new crop yield assessment methods. Tasks to be performed for each of these efforts are described as well as for project management and support. The responsibilities of USDA, USDC, USDI, and NASA are delineated as well as problem areas to be addressed.

  19. Agricultural model intercomparison and improvement project: Overview of model intercomparisons

    USDA-ARS?s Scientific Manuscript database

    Improvement of crop simulation models to better estimate growth and yield is one of the objectives of the Agricultural Model Intercomparison and Improvement Project (AgMIP). The overall goal of AgMIP is to provide an assessment of crop model through rigorous intercomparisons and evaluate future clim...

  20. Supporting Crop Loss Insurance Policy of Indonesia through Rice Yield Modelling and Forecasting

    NASA Astrophysics Data System (ADS)

    van Verseveld, Willem; Weerts, Albrecht; Trambauer, Patricia; de Vries, Sander; Conijn, Sjaak; van Valkengoed, Eric; Hoekman, Dirk; Grondard, Nicolas; Hengsdijk, Huib; Schrevel, Aart; Vlasbloem, Pieter; Klauser, Dominik

    2017-04-01

    The Government of Indonesia has decided on a crop insurance policy to assist Indonesia's farmers and to boost food security. To support the Indonesian government, the G4INDO project (www.g4indo.org) is developing/constructing an integrated platform implemented in the Delft-FEWS forecasting system (Werner et al., 2013). The integrated platform brings together remote sensed data (both visible and radar) and hydrologic, crop and reservoir modelling and forecasting to improve the modelling and forecasting of rice yield. The hydrological model (wflow_sbm), crop model (wflow_lintul) and reservoir models (RTC-Tools) are coupled on time stepping basis in the OpenStreams framework (see https://github.com/openstreams/wflow) and deployed in the integrated platform to support seasonal forecasting of water availability and crop yield. First we will show the general idea about the G4INDO project, the integrated platform (including Sentinel 1 & 2 data) followed by first (reforecast) results of the coupled models for predicting water availability and crop yield in the Brantas catchment in Java, Indonesia. Werner, M., Schellekens, J., Gijsbers, P., Van Dijk, M., Van den Akker, O. and Heynert K, 2013. The Delft-FEWS flow forecasting system, Environmental Modelling & Software; 40:65-77. DOI: 10.1016/j.envsoft.2012.07.010.

  1. Yield estimation of corn based on multitemporal LANDSAT-TM data as input for an agrometeorological model

    NASA Astrophysics Data System (ADS)

    Bach, Heike

    1998-07-01

    In order to test remote sensing data with advanced yield formation models for accuracy and timeliness of yield estimation of corn, a project was conducted for the State Ministry for Rural Environment, Food, and Forestry of Baden-Württemberg (Germany). This project was carried out during the course of the `Special Yield Estimation', a regular procedure conducted for the European Union, to more accurately estimate agricultural yield. The methodology employed uses field-based plant parameter estimation from atmospherically corrected multitemporal/multispectral LANDSAT-TM data. An agrometeorological plant-production-model is used for yield prediction. Based solely on four LANDSAT-derived estimates (between May and August) and daily meteorological data, the grain yield of corn fields was determined for 1995. The modelled yields were compared with results gathered independently within the Special Yield Estimation for 23 test fields in the upper Rhine valley. The agreement between LANDSAT-based estimates (six weeks before harvest) and Special Yield Estimation (at harvest) shows a relative error of 2.3%. The comparison of the results for single fields shows that six weeks before harvest, the grain yield of corn was estimated with a mean relative accuracy of 13% using satellite information. The presented methodology can be transferred to other crops and geographical regions. For future applications hyperspectral sensors show great potential to further enhance the results for yield prediction with remote sensing.

  2. SPATS: a model for projecting softwood timber inventories in the Southern United States.

    Treesearch

    David J. Brooks

    1987-01-01

    The yield-table projection method for modeling the development of regional timber inventories is outlined, and its application to softwood timber types in the Southern United States is described. Problems of simulating forest management practices and natural succession are discussed. A computer model that projects softwood timber inventories using yield-table...

  3. Modelling crop yield in Iberia under drought conditions

    NASA Astrophysics Data System (ADS)

    Ribeiro, Andreia; Páscoa, Patrícia; Russo, Ana; Gouveia, Célia

    2017-04-01

    The improved assessment of the cereal yield and crop loss under drought conditions are essential to meet the increasing economy demands. The growing frequency and severity of the extreme drought conditions in the Iberian Peninsula (IP) has been likely responsible for negative impacts on agriculture, namely on crop yield losses. Therefore, a continuous monitoring of vegetation activity and a reliable estimation of drought impacts is crucial to contribute for the agricultural drought management and development of suitable information tools. This works aims to assess the influence of drought conditions in agricultural yields over the IP, considering cereal yields from mainly rainfed agriculture for the provinces with higher productivity. The main target is to develop a strategy to model drought risk on agriculture for wheat yield at a province level. In order to achieve this goal a combined assessment was made using a drought indicator (Standardized Precipitation Evapotranspiration Index, SPEI) to evaluate drought conditions together with a widely used vegetation index (Normalized Difference Vegetation Index, NDVI) to monitor vegetation activity. A correlation analysis between detrended wheat yield and SPEI was performed in order to assess the vegetation response to each time scale of drought occurrence and also identify the moment of the vegetative cycle when the crop yields are more vulnerable to drought conditions. The time scales and months of SPEI, together with the months of NDVI, better related with wheat yield were chosen to perform a multivariate regression analysis to simulate crop yield. Model results are satisfactory and highlighted the usefulness of such analysis in the framework of developing a drought risk model for crop yields. In terms of an operational point of view, the results aim to contribute to an improved understanding of crop yield management under dry conditions, particularly adding substantial information on the advantages of combining

  4. Modelling and Forecasting of Rice Yield in support of Crop Insurance

    NASA Astrophysics Data System (ADS)

    Weerts, A.; van Verseveld, W.; Trambauer, P.; de Vries, S.; Conijn, S.; van Valkengoed, E.; Hoekman, D.; Hengsdijk, H.; Schrevel, A.

    2016-12-01

    The Government of Indonesia has embarked on a policy to bring crop insurance to all of Indonesia's farmers. To support the Indonesian government, the G4INDO project (www.g4indo.org) is developing/constructing an integrated platform for judging and handling insurance claims. The platform consists of bringing together remote sensed data (both visible and radar) and hydrologic and crop modelling and forecasting to improve predictions in one forecasting platform (i.e. Delft-FEWS, Werner et al., 2013). The hydrological model and crop model (LINTUL) are coupled on time stepping basis in the OpenStreams framework (see https://github.com/openstreams/wflow) and deployed in a Delft-FEWS forecasting platform to support seasonal forecasting of water availability and crop yield. First we will show the general idea about the project, the integrated platform (including Sentinel 1 & 2 data) followed by first (reforecast) results of the coupled models for predicting water availability and crop yield in the Brantas catchment in Java, Indonesia. Werner, M., Schellekens, J., Gijsbers, P., Van Dijk, M., Van den Akker, O. and Heynert K, 2013. The Delft-FEWS flow forecasting system, Environmental Modelling & Software; 40:65-77. DOI: 10.1016/j.envsoft.2012.07.010 .

  5. Argentina soybean yield model

    NASA Technical Reports Server (NTRS)

    Callis, S. L.; Sakamoto, C.

    1984-01-01

    A model based on multiple regression was developed to estimate soybean yields for the country of Argentina. A meteorological data set was obtained for the country by averaging data for stations within the soybean growing area. Predictor variables for the model were derived from monthly total precipitation and monthly average temperature. A trend variable was included for the years 1969 to 1978 since an increasing trend in yields due to technology was observed between these years.

  6. Argentina wheat yield model

    NASA Technical Reports Server (NTRS)

    Callis, S. L.; Sakamoto, C.

    1984-01-01

    Five models based on multiple regression were developed to estimate wheat yields for the five wheat growing provinces of Argentina. Meteorological data sets were obtained for each province by averaging data for stations within each province. Predictor variables for the models were derived from monthly total precipitation, average monthly mean temperature, and average monthly maximum temperature. Buenos Aires was the only province for which a trend variable was included because of increasing trend in yield due to technology from 1950 to 1963.

  7. Argentina corn yield model

    NASA Technical Reports Server (NTRS)

    Callis, S. L.; Sakamoto, C.

    1984-01-01

    A model based on multiple regression was developed to estimate corn yields for the country of Argentina. A meteorological data set was obtained for the country by averaging data for stations within the corn-growing area. Predictor variables for the model were derived from monthly total precipitation, average monthly mean temperature, and average monthly maximum temperature. A trend variable was included for the years 1965 to 1980 since an increasing trend in yields due to technology was observed between these years.

  8. Sorghum production under future climate in the Southwestern USA: model projections of yield, greenhouse gas emissions and soil C fluxes

    NASA Astrophysics Data System (ADS)

    Duval, B.; Ghimire, R.; Hartman, M. D.; Marsalis, M.

    2016-12-01

    Large tracts of semi-arid land in the Southwestern USA are relatively less important for food production than the US Corn Belt, and represent a promising area for expansion of biofuel/bioproduct crops. However, high temperatures, low available water and high solar radiation in the SW represent a challenge to suitable feedstock development, and future climate change scenarios predict that portions of the SW will experience increased temperature and temporal shifts in precipitation distribution. Sorghum (Sorghum bicolor) is a valuable forage crop with promise as a biofuel feedstock, given its high biomass under semi-arid conditions, relatively lower N fertilizer requirements compared to corn, and salinity tolerance. To evaluate the environmental impact of expanded sorghum cultivation under future climate in the SW USA, we used the DayCent model in concert with a suite of downscaled future weather projections to predict biogeochemical consequences (greenhouse gas flux and impacts on soil carbon) of sorghum cultivation in New Mexico. The model showed good correspondence with yield data from field trials including both dryland and irrigated sorghum (measured vs. modeled; r2 = 0.75). Simulation experiments tested the effect of dryland production versus irrigation, low N versus high N inputs and delayed fertilizer application. Nitrogen application timing and irrigation impacted yield and N2O emissions less than N rate and climate. Across N and irrigation treatments, future climate simulations resulted in 6% increased yield and 20% lower N2O emissions compared to current climate. Soil C pools declined under future climate. The greatest declines in soil C were from low N input sorghum simulations, regardless of irrigation (>20% declines in SOM in both cases), and requires further evaluation to determine if changing future climate is driving these declines, or if they are a function of prolonged sorghum-fallow rotations in the model. The relatively small gain in yield for

  9. Modeling survival, yield, volume partitioning and their response to thinning for longleaf pine plantations

    Treesearch

    Carlos A. Gonzalez-Benecke; Salvador A. Gezan; Daniel J. Leduc; Timothy A. Martin; Wendell P. Cropper Jr; Lisa J Samuelson

    2012-01-01

    Longleaf pine (Pinus palustris Mill.) is an important tree species of the southeast U.S. Currently there is no comprehensive stand-level growth and yield model for the species. The model system described here estimates site index (SI) if dominant height (Hdom) and stand age are known (inversely, the model can project H

  10. Brazil soybean yield covariance model

    NASA Technical Reports Server (NTRS)

    Callis, S. L.; Sakamoto, C.

    1984-01-01

    A model based on multiple regression was developed to estimate soybean yields for the seven soybean-growing states of Brazil. The meteorological data of these seven states were pooled and the years 1975 to 1980 were used to model since there was no technological trend in the yields during these years. Predictor variables were derived from monthly total precipitation and monthly average temperature.

  11. The Timber Resource Inventory Model (TRIM): a projection model for timber supply and policy analysis.

    Treesearch

    P.L. Tedder; R.N. La Mont; J.C. Kincaid

    1987-01-01

    TRIM (Timber Resource Inventory Model) is a yield table projection system developed for timber supply projections and policy analysis. TRIM simulates timber growth, inventories, management and area changes, and removals over the projection period. Programs in the TRIM system, card-by-card descriptions of required inputs, table formats, and sample results are presented...

  12. Monash Chemical Yields Project (Monχey) Element production in low- and intermediate-mass stars

    NASA Astrophysics Data System (ADS)

    Doherty, Carolyn; Lattanzio, John; Angelou, George; Campbell, Simon W.; Church, Ross; Constantino, Thomas; Cristallo, Sergio; Gil-Pons, Pilar; Karakas, Amanda; Lugaro, Maria; Stancliffe, Richard

    The Monχey project will provide a large and homogeneous set of stellar yields for the low- and intermediate- mass stars and has applications particularly to galactic chemical evolution modelling. We describe our detailed grid of stellar evolutionary models and corresponding nucleosynthetic yields for stars of initial mass 0.8 M⊙ up to the limit for core collapse supernova (CC-SN) ~ 10 M⊙. Our study covers a broad range of metallicities, ranging from the first, primordial stars (Z = 0) to those of super-solar metallicity (Z = 0.04). The models are evolved from the zero-age main-sequence until the end of the asymptotic giant branch (AGB) and the nucleosynthesis calculations include all elements from H to Bi. A major innovation of our work is the first complete grid of heavy element nucleosynthetic predictions for primordial AGB stars as well as the inclusion of extra-mixing processes (in this case thermohaline) during the red giant branch. We provide a broad overview of our results with implications for galactic chemical evolution as well as highlight interesting results such as heavy element production in dredge-out events of super-AGB stars. We briefly introduce our forthcoming web-based database which provides the evolutionary tracks, structural properties, internal/surface nucleosynthetic compositions and stellar yields. Our web interface includes user- driven plotting capabilities with output available in a range of formats. Our nucleosynthetic results will be available for further use in post processing calculations for dust production yields.

  13. Brazil wheat yield covariance model

    NASA Technical Reports Server (NTRS)

    Callis, S. L.; Sakamoto, C.

    1984-01-01

    A model based on multiple regression was developed to estimate wheat yields for the wheat growing states of Rio Grande do Sul, Parana, and Santa Catarina in Brazil. The meteorological data of these three states were pooled and the years 1972 to 1979 were used to develop the model since there was no technological trend in the yields during these years. Predictor variables were derived from monthly total precipitation, average monthly mean temperature, and average monthly maximum temperature.

  14. Uncertainties in Predicting Rice Yield by Current Crop Models Under a Wide Range of Climatic Conditions

    NASA Technical Reports Server (NTRS)

    Li, Tao; Hasegawa, Toshihiro; Yin, Xinyou; Zhu, Yan; Boote, Kenneth; Adam, Myriam; Bregaglio, Simone; Buis, Samuel; Confalonieri, Roberto; Fumoto, Tamon; hide

    2014-01-01

    Predicting rice (Oryza sativa) productivity under future climates is important for global food security. Ecophysiological crop models in combination with climate model outputs are commonly used in yield prediction, but uncertainties associated with crop models remain largely unquantified. We evaluated 13 rice models against multi-year experimental yield data at four sites with diverse climatic conditions in Asia and examined whether different modeling approaches on major physiological processes attribute to the uncertainties of prediction to field measured yields and to the uncertainties of sensitivity to changes in temperature and CO2 concentration [CO2]. We also examined whether a use of an ensemble of crop models can reduce the uncertainties. Individual models did not consistently reproduce both experimental and regional yields well, and uncertainty was larger at the warmest and coolest sites. The variation in yield projections was larger among crop models than variation resulting from 16 global climate model-based scenarios. However, the mean of predictions of all crop models reproduced experimental data, with an uncertainty of less than 10 percent of measured yields. Using an ensemble of eight models calibrated only for phenology or five models calibrated in detail resulted in the uncertainty equivalent to that of the measured yield in well-controlled agronomic field experiments. Sensitivity analysis indicates the necessity to improve the accuracy in predicting both biomass and harvest index in response to increasing [CO2] and temperature.

  15. Predicting future US water yield and ecosystem productivity by linking an ecohydrological model to WRF dynamically downscaled climate projections

    NASA Astrophysics Data System (ADS)

    Sun, S.; Sun, G.; Cohen, E.; McNulty, S. G.; Caldwell, P.; Duan, K.; Zhang, Y.

    2015-12-01

    Quantifying the potential impacts of climate change on water yield and ecosystem productivity (i.e., carbon balances) is essential to developing sound watershed restoration plans, and climate change adaptation and mitigation strategies. This study links an ecohydrological model (Water Supply and Stress Index, WaSSI) with WRF (Weather Research and Forecasting Model) dynamically downscaled climate projections of the HadCM3 model under the IPCC SRES A2 emission scenario. We evaluated the future (2031-2060) changes in evapotranspiration (ET), water yield (Q) and gross primary productivity (GPP) from the baseline period of 1979-2007 across the 82 773 watersheds (12 digit Hydrologic Unit Code level) in the conterminous US (CONUS), and evaluated the future annual and monthly changes of hydrology and ecosystem productivity for the 18 Water Resource Regions (WRRs) or 2-digit HUCs. Across the CONUS, the future multi-year means show increases in annual precipitation (P) of 45 mm yr-1 (6 %), 1.8 °C increase in temperature (T), 37 mm yr-1 (7 %) increase in ET, 9 mm yr-1 (3 %) increase in Q, and 106 g C m-2 yr-1 (9 %) increase in GPP. Response to climate change was highly variable across the 82, 773 watersheds, but in general, the majority would see consistent increases in all variables evaluated. Over half of the 82 773 watersheds, mostly found in the northeast and the southern part of the southwest would have an increase in annual Q (>100 mm yr-1 or 20 %). This study provides an integrated method and example for comprehensive assessment of the potential impacts of climate change on watershed water balances and ecosystem productivity at high spatial and temporal resolutions. Results will be useful for policy-makers and land managers in formulating appropriate watershed-specific strategies for sustaining water and carbon sources in the face of climate change.

  16. Crop status evaluations and yield predictions

    NASA Technical Reports Server (NTRS)

    Haun, J. R.

    1976-01-01

    One phase of the large area crop inventory project is presented. Wheat yield models based on the input of environmental variables potentially obtainable through the use of space remote sensing were developed and demonstrated. By the use of a unique method for visually qualifying daily plant development and subsequent multifactor computer analyses, it was possible to develop practical models for predicting crop development and yield. Development of wheat yield prediction models was based on the discovery that morphological changes in plants are detected and quantified on a daily basis, and that this change during a portion of the season was proportional to yield.

  17. A Novel Modelling Approach for Predicting Forest Growth and Yield under Climate Change.

    PubMed

    Ashraf, M Irfan; Meng, Fan-Rui; Bourque, Charles P-A; MacLean, David A

    2015-01-01

    Global climate is changing due to increasing anthropogenic emissions of greenhouse gases. Forest managers need growth and yield models that can be used to predict future forest dynamics during the transition period of present-day forests under a changing climatic regime. In this study, we developed a forest growth and yield model that can be used to predict individual-tree growth under current and projected future climatic conditions. The model was constructed by integrating historical tree growth records with predictions from an ecological process-based model using neural networks. The new model predicts basal area (BA) and volume growth for individual trees in pure or mixed species forests. For model development, tree-growth data under current climatic conditions were obtained using over 3000 permanent sample plots from the Province of Nova Scotia, Canada. Data to reflect tree growth under a changing climatic regime were projected with JABOWA-3 (an ecological process-based model). Model validation with designated data produced model efficiencies of 0.82 and 0.89 in predicting individual-tree BA and volume growth. Model efficiency is a relative index of model performance, where 1 indicates an ideal fit, while values lower than zero means the predictions are no better than the average of the observations. Overall mean prediction error (BIAS) of basal area and volume growth predictions was nominal (i.e., for BA: -0.0177 cm(2) 5-year(-1) and volume: 0.0008 m(3) 5-year(-1)). Model variability described by root mean squared error (RMSE) in basal area prediction was 40.53 cm(2) 5-year(-1) and 0.0393 m(3) 5-year(-1) in volume prediction. The new modelling approach has potential to reduce uncertainties in growth and yield predictions under different climate change scenarios. This novel approach provides an avenue for forest managers to generate required information for the management of forests in transitional periods of climate change. Artificial intelligence technology

  18. A Novel Modelling Approach for Predicting Forest Growth and Yield under Climate Change

    PubMed Central

    Ashraf, M. Irfan; Meng, Fan-Rui; Bourque, Charles P.-A.; MacLean, David A.

    2015-01-01

    Global climate is changing due to increasing anthropogenic emissions of greenhouse gases. Forest managers need growth and yield models that can be used to predict future forest dynamics during the transition period of present-day forests under a changing climatic regime. In this study, we developed a forest growth and yield model that can be used to predict individual-tree growth under current and projected future climatic conditions. The model was constructed by integrating historical tree growth records with predictions from an ecological process-based model using neural networks. The new model predicts basal area (BA) and volume growth for individual trees in pure or mixed species forests. For model development, tree-growth data under current climatic conditions were obtained using over 3000 permanent sample plots from the Province of Nova Scotia, Canada. Data to reflect tree growth under a changing climatic regime were projected with JABOWA-3 (an ecological process-based model). Model validation with designated data produced model efficiencies of 0.82 and 0.89 in predicting individual-tree BA and volume growth. Model efficiency is a relative index of model performance, where 1 indicates an ideal fit, while values lower than zero means the predictions are no better than the average of the observations. Overall mean prediction error (BIAS) of basal area and volume growth predictions was nominal (i.e., for BA: -0.0177 cm2 5-year-1 and volume: 0.0008 m3 5-year-1). Model variability described by root mean squared error (RMSE) in basal area prediction was 40.53 cm2 5-year-1 and 0.0393 m3 5-year-1 in volume prediction. The new modelling approach has potential to reduce uncertainties in growth and yield predictions under different climate change scenarios. This novel approach provides an avenue for forest managers to generate required information for the management of forests in transitional periods of climate change. Artificial intelligence technology has substantial

  19. Yield estimation of sugarcane based on agrometeorological-spectral models

    NASA Technical Reports Server (NTRS)

    Rudorff, Bernardo Friedrich Theodor; Batista, Getulio Teixeira

    1990-01-01

    This work has the objective to assess the performance of a yield estimation model for sugarcane (Succharum officinarum). The model uses orbital gathered spectral data along with yield estimated from an agrometeorological model. The test site includes the sugarcane plantations of the Barra Grande Plant located in Lencois Paulista municipality in Sao Paulo State. Production data of four crop years were analyzed. Yield data observed in the first crop year (1983/84) were regressed against spectral and agrometeorological data of that same year. This provided the model to predict the yield for the following crop year i.e., 1984/85. The model to predict the yield of subsequent years (up to 1987/88) were developed similarly, incorporating all previous years data. The yield estimations obtained from these models explained 69, 54, and 50 percent of the yield variation in the 1984/85, 1985/86, and 1986/87 crop years, respectively. The accuracy of yield estimations based on spectral data only (vegetation index model) and on agrometeorological data only (agrometeorological model) were also investigated.

  20. Evaluation of trends in wheat yield models

    NASA Technical Reports Server (NTRS)

    Ferguson, M. C.

    1982-01-01

    Trend terms in models for wheat yield in the U.S. Great Plains for the years 1932 to 1976 are evaluated. The subset of meteorological variables yielding the largest adjusted R(2) is selected using the method of leaps and bounds. Latent root regression is used to eliminate multicollinearities, and generalized ridge regression is used to introduce bias to provide stability in the data matrix. The regression model used provides for two trends in each of two models: a dependent model in which the trend line is piece-wise continuous, and an independent model in which the trend line is discontinuous at the year of the slope change. It was found that the trend lines best describing the wheat yields consisted of combinations of increasing, decreasing, and constant trend: four combinations for the dependent model and seven for the independent model.

  1. Food security in the 21st century: Global yield projections and agricultural expansion

    NASA Astrophysics Data System (ADS)

    Davis, K. F.; Rulli, M.; D'Odorico, P.

    2013-12-01

    Global demands on agricultural lands are ever increasing as a result of population growth, changes in diet and increasing biofuel use. By mid-century, the demands for food and fiber are expected to roughly double with the population reaching 9.5 billion. However, earth's finite resource base places a ceiling on the amount of agricultural production that is possible. Several strategies have been widely discussed to meet these rapid increases and to extend the ceiling yet higher, including reducing waste, modifying diets, improving yield and productivity and expanding agriculture and aquaculture. One of the most promising of these is closing the yield gap of currently under-performing agricultural land that has the potential to be much more productive. With high inputs (e.g. irrigation, fertilizers), this strategy has real potential to increase food security, particularly in the developing world where population is expected to sharply increase and where a high potential for yield gap closure exists. Thus it is important to consider whether improvements in global yield can adequately meet global dietary demand during the 21st century. Constructing yield projections to the end of the century, we examine whether global crop production for 154 countries and 16 major food crops under selected agricultural and dietary scenarios can keep pace with estimates of population growth to 2100. By calculating the global production of calories, we are then able to examine how many people can be supported under future scenarios and how closing yield gaps can increase this potential. Our findings agree with previous studies that closing the yield gap alone cannot provide sufficient production by mid-century and that a heavy global dependence on trade will persist throughout the century. Using high-resolution global land suitability maps under a suite of climate models, we find that scenarios incorporating a combination of yield gap closure and agricultural expansion provide the most

  2. LACIE: Wheat yield models for the USSR

    NASA Technical Reports Server (NTRS)

    Sakamoto, C. M.; Leduc, S. K.

    1977-01-01

    A quantitative model determining the relationship between weather conditions and wheat yield in the U.S.S.R. was studied to provide early reliable forecasts on the size of the U.S.S.R. wheat harvest. Separate models are developed for spring wheat and for winter. Differences in yield potential and responses to stress conditions and cultural improvements necessitate models for each class.

  3. Efficient SRAM yield optimization with mixture surrogate modeling

    NASA Astrophysics Data System (ADS)

    Zhongjian, Jiang; Zuochang, Ye; Yan, Wang

    2016-12-01

    Largely repeated cells such as SRAM cells usually require extremely low failure-rate to ensure a moderate chi yield. Though fast Monte Carlo methods such as importance sampling and its variants can be used for yield estimation, they are still very expensive if one needs to perform optimization based on such estimations. Typically the process of yield calculation requires a lot of SPICE simulation. The circuit SPICE simulation analysis accounted for the largest proportion of time in the process yield calculation. In the paper, a new method is proposed to address this issue. The key idea is to establish an efficient mixture surrogate model. The surrogate model is based on the design variables and process variables. This model construction method is based on the SPICE simulation to get a certain amount of sample points, these points are trained for mixture surrogate model by the lasso algorithm. Experimental results show that the proposed model is able to calculate accurate yield successfully and it brings significant speed ups to the calculation of failure rate. Based on the model, we made a further accelerated algorithm to further enhance the speed of the yield calculation. It is suitable for high-dimensional process variables and multi-performance applications.

  4. A Remote Sensing-Derived Corn Yield Assessment Model

    NASA Astrophysics Data System (ADS)

    Shrestha, Ranjay Man

    be further associated with the actual yield. Utilizing satellite remote sensing products, such as daily NDVI derived from Moderate Resolution Imaging Spectroradiometer (MODIS) at 250 m pixel size, the crop yield estimation can be performed at a very fine spatial resolution. Therefore, this study examined the potential of these daily NDVI products within agricultural studies and crop yield assessments. In this study, a regression-based approach was proposed to estimate the annual corn yield through changes in MODIS daily NDVI time series. The relationship between daily NDVI and corn yield was well defined and established, and as changes in corn phenology and yield were directly reflected by the changes in NDVI within the growing season, these two entities were combined to develop a relational model. The model was trained using 15 years (2000-2014) of historical NDVI and county-level corn yield data for four major corn producing states: Kansas, Nebraska, Iowa, and Indiana, representing four climatic regions as South, West North Central, East North Central, and Central, respectively, within the U.S. Corn Belt area. The model's goodness of fit was well defined with a high coefficient of determination (R2>0.81). Similarly, using 2015 yield data for validation, 92% of average accuracy signified the performance of the model in estimating corn yield at county level. Besides providing the county-level corn yield estimations, the derived model was also accurate enough to estimate the yield at finer spatial resolution (field level). The model's assessment accuracy was evaluated using the randomly selected field level corn yield within the study area for 2014, 2015, and 2016. A total of over 120 plot level corn yield were used for validation, and the overall average accuracy was 87%, which statistically justified the model's capability to estimate plot-level corn yield. Additionally, the proposed model was applied to the impact estimation by examining the changes in corn yield

  5. Predicting paddlefish roe yields using an extension of the Beverton–Holt equilibrium yield-per-recruit model

    USGS Publications Warehouse

    Colvin, M.E.; Bettoli, Phillip William; Scholten, G.D.

    2013-01-01

    Equilibrium yield models predict the total biomass removed from an exploited stock; however, traditional yield models must be modified to simulate roe yields because a linear relationship between age (or length) and mature ovary weight does not typically exist. We extended the traditional Beverton-Holt equilibrium yield model to predict roe yields of Paddlefish Polyodon spathula in Kentucky Lake, Tennessee-Kentucky, as a function of varying conditional fishing mortality rates (10-70%), conditional natural mortality rates (cm; 9% and 18%), and four minimum size limits ranging from 864 to 1,016mm eye-to-fork length. These results were then compared to a biomass-based yield assessment. Analysis of roe yields indicated the potential for growth overfishing at lower exploitation rates and smaller minimum length limits than were suggested by the biomass-based assessment. Patterns of biomass and roe yields in relation to exploitation rates were similar regardless of the simulated value of cm, thus indicating that the results were insensitive to changes in cm. Our results also suggested that higher minimum length limits would increase roe yield and reduce the potential for growth overfishing and recruitment overfishing at the simulated cm values. Biomass-based equilibrium yield assessments are commonly used to assess the effects of harvest on other caviar-based fisheries; however, our analysis demonstrates that such assessments likely underestimate the probability and severity of growth overfishing when roe is targeted. Therefore, equilibrium roe yield-per-recruit models should also be considered to guide the management process for caviar-producing fish species.

  6. Process gg{yields}h{sub 0}{yields}{gamma}{gamma} in the Lee-Wick standard model

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Krauss, F.; Underwood, T. E. J.; Zwicky, R.

    2008-01-01

    The process gg{yields}h{sub 0}{yields}{gamma}{gamma} is studied in the Lee-Wick extension of the standard model (LWSM) proposed by Grinstein, O'Connell, and Wise. In this model, negative norm partners for each SM field are introduced with the aim to cancel quadratic divergences in the Higgs mass. All sectors of the model relevant to gg{yields}h{sub 0}{yields}{gamma}{gamma} are diagonalized and results are commented on from the perspective of both the Lee-Wick and higher-derivative formalisms. Deviations from the SM rate for gg{yields}h{sub 0} are found to be of the order of 15%-5% for Lee-Wick masses in the range 500-1000 GeV. Effects on the rate formore » h{sub 0}{yields}{gamma}{gamma} are smaller, of the order of 5%-1% for Lee-Wick masses in the same range. These comparatively small changes may well provide a means of distinguishing the LWSM from other models such as universal extra dimensions where same-spin partners to standard model fields also appear. Corrections to determinations of Cabibbo-Kobayashi-Maskawa (CKM) elements |V{sub t(b,s,d)}| are also considered and are shown to be positive, allowing the possibility of measuring a CKM element larger than unity, a characteristic signature of the ghostlike nature of the Lee-Wick fields.« less

  7. Modelling climate change impacts on viticultural yield, phenology and stress conditions in Europe.

    PubMed

    Fraga, Helder; García de Cortázar Atauri, Iñaki; Malheiro, Aureliano C; Santos, João A

    2016-11-01

    Viticulture is a key socio-economic sector in Europe. Owing to the strong sensitivity of grapevines to atmospheric factors, climate change may represent an important challenge for this sector. This study analyses viticultural suitability, yield, phenology, and water and nitrogen stress indices in Europe, for present climates (1980-2005) and future (2041-2070) climate change scenarios (RCP4.5 and 8.5). The STICS crop model is coupled with climate, soil and terrain databases, also taking into account CO 2 physiological effects, and simulations are validated against observational data sets. A clear agreement between simulated and observed phenology, leaf area index, yield and water and nitrogen stress indices, including the spatial differences throughout Europe, is shown. The projected changes highlight an extension of the climatic suitability for grapevines up to 55°N, which may represent the emergence of new winemaking regions. Despite strong regional heterogeneity, mean phenological timings (budburst, flowering, veraison and harvest) are projected to undergo significant advancements (e.g. budburst/harvest can be >1 month earlier), with implications also in the corresponding phenophase intervals. Enhanced dryness throughout Europe is also projected, with severe water stress over several regions in southern regions (e.g. southern Iberia and Italy), locally reducing yield and leaf area. Increased atmospheric CO 2 partially offsets dryness effects, promoting yield and leaf area index increases in central/northern Europe. Future biomass changes may lead to modifications in nitrogen demands, with higher stress in northern/central Europe and weaker stress in southern Europe. These findings are critical decision support systems for stakeholders from the European winemaking sector. © 2016 John Wiley & Sons Ltd.

  8. Estimation efficiency of usage satellite derived and modelled biophysical products for yield forecasting

    NASA Astrophysics Data System (ADS)

    Kolotii, Andrii; Kussul, Nataliia; Skakun, Sergii; Shelestov, Andrii; Ostapenko, Vadim; Oliinyk, Tamara

    2015-04-01

    Efficient and timely crop monitoring and yield forecasting are important tasks for ensuring of stability and sustainable economic development [1]. As winter crops pay prominent role in agriculture of Ukraine - the main focus of this study is concentrated on winter wheat. In our previous research [2, 3] it was shown that usage of biophysical parameters of crops such as FAPAR (derived from Geoland-2 portal as for SPOT Vegetation data) is far more efficient for crop yield forecasting to NDVI derived from MODIS data - for available data. In our current work efficiency of usage such biophysical parameters as LAI, FAPAR, FCOVER (derived from SPOT Vegetation and PROBA-V data at resolution of 1 km and simulated within WOFOST model) and NDVI product (derived from MODIS) for winter wheat monitoring and yield forecasting is estimated. As the part of crop monitoring workflow (vegetation anomaly detection, vegetation indexes and products analysis) and yield forecasting SPIRITS tool developed by JRC is used. Statistics extraction is done for landcover maps created in SRI within FP-7 SIGMA project. Efficiency of usage satellite based and modelled with WOFOST model biophysical products is estimated. [1] N. Kussul, S. Skakun, A. Shelestov, O. Kussul, "Sensor Web approach to Flood Monitoring and Risk Assessment", in: IGARSS 2013, 21-26 July 2013, Melbourne, Australia, pp. 815-818. [2] F. Kogan, N. Kussul, T. Adamenko, S. Skakun, O. Kravchenko, O. Kryvobok, A. Shelestov, A. Kolotii, O. Kussul, and A. Lavrenyuk, "Winter wheat yield forecasting in Ukraine based on Earth observation, meteorological data and biophysical models," International Journal of Applied Earth Observation and Geoinformation, vol. 23, pp. 192-203, 2013. [3] Kussul O., Kussul N., Skakun S., Kravchenko O., Shelestov A., Kolotii A, "Assessment of relative efficiency of using MODIS data to winter wheat yield forecasting in Ukraine", in: IGARSS 2013, 21-26 July 2013, Melbourne, Australia, pp. 3235 - 3238.

  9. Yield modeling of acoustic charge transport transversal filters

    NASA Technical Reports Server (NTRS)

    Kenney, J. S.; May, G. S.; Hunt, W. D.

    1995-01-01

    This paper presents a yield model for acoustic charge transport transversal filters. This model differs from previous IC yield models in that it does not assume that individual failures of the nondestructive sensing taps necessarily cause a device failure. A redundancy in the number of taps included in the design is explained. Poisson statistics are used to describe the tap failures, weighted over a uniform defect density distribution. A representative design example is presented. The minimum number of taps needed to realize the filter is calculated, and tap weights for various numbers of redundant taps are calculated. The critical area for device failure is calculated for each level of redundancy. Yield is predicted for a range of defect densities and redundancies. To verify the model, a Monte Carlo simulation is performed on an equivalent circuit model of the device. The results of the yield model are then compared to the Monte Carlo simulation. Better than 95% agreement was obtained for the Poisson model with redundant taps ranging from 30% to 150% over the minimum.

  10. Cacao Intensification in Sulawesi: A Green Prosperity Model Project

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Moriarty, K.; Elchinger, M.; Hill, G.

    2014-09-01

    NREL conducted eight model projects for Millennium Challenge Corporation's (MCC) Compact with Indonesia. Green Prosperity, the largest project of the Compact, seeks to address critical constraints to economic growth while supporting the Government of Indonesia's commitment to a more sustainable, less carbon-intensive future. This study evaluates techniques to improve cacao farming in Sulawesi Indonesia with an emphasis on Farmer Field Schools and Cocoa Development Centers to educate farmers and for train the trainer programs. The study estimates the economic viability of cacao farming if smallholder implement techniques to increase yield as well as social and environmental impacts of the project.

  11. The Agricultural Model Intercomparison and Improvement Project (AgMIP): Protocols and Pilot Studies

    NASA Technical Reports Server (NTRS)

    Rosenzweig, C.; Jones, J. W.; Hatfield, J. L.; Ruane, A. C.; Boote, K. J.; Thorburn, P.; Antle, J. M.; Nelson, G. C.; Porter, C.; Janssen, S.; hide

    2012-01-01

    The Agricultural Model Intercomparison and Improvement Project (AgMIP) is a major international effort linking the climate, crop, and economic modeling communities with cutting-edge information technology to produce improved crop and economic models and the next generation of climate impact projections for the agricultural sector. The goals of AgMIP are to improve substantially the characterization of world food security due to climate change and to enhance adaptation capacity in both developing and developed countries. Analyses of the agricultural impacts of climate variability and change require a transdisciplinary effort to consistently link state-of-the-art climate scenarios to crop and economic models. Crop model outputs are aggregated as inputs to regional and global economic models to determine regional vulnerabilities, changes in comparative advantage, price effects, and potential adaptation strategies in the agricultural sector. Climate, Crop Modeling, Economics, and Information Technology Team Protocols are presented to guide coordinated climate, crop modeling, economics, and information technology research activities around the world, along with AgMIP Cross-Cutting Themes that address uncertainty, aggregation and scaling, and the development of Representative Agricultural Pathways (RAPs) to enable testing of climate change adaptations in the context of other regional and global trends. The organization of research activities by geographic region and specific crops is described, along with project milestones. Pilot results demonstrate AgMIP's role in assessing climate impacts with explicit representation of uncertainties in climate scenarios and simulations using crop and economic models. An intercomparison of wheat model simulations near Obregón, Mexico reveals inter-model differences in yield sensitivity to [CO2] with model uncertainty holding approximately steady as concentrations rise, while uncertainty related to choice of crop model increases with

  12. Comparison of statistical models for analyzing wheat yield time series.

    PubMed

    Michel, Lucie; Makowski, David

    2013-01-01

    The world's population is predicted to exceed nine billion by 2050 and there is increasing concern about the capability of agriculture to feed such a large population. Foresight studies on food security are frequently based on crop yield trends estimated from yield time series provided by national and regional statistical agencies. Various types of statistical models have been proposed for the analysis of yield time series, but the predictive performances of these models have not yet been evaluated in detail. In this study, we present eight statistical models for analyzing yield time series and compare their ability to predict wheat yield at the national and regional scales, using data provided by the Food and Agriculture Organization of the United Nations and by the French Ministry of Agriculture. The Holt-Winters and dynamic linear models performed equally well, giving the most accurate predictions of wheat yield. However, dynamic linear models have two advantages over Holt-Winters models: they can be used to reconstruct past yield trends retrospectively and to analyze uncertainty. The results obtained with dynamic linear models indicated a stagnation of wheat yields in many countries, but the estimated rate of increase of wheat yield remained above 0.06 t ha⁻¹ year⁻¹ in several countries in Europe, Asia, Africa and America, and the estimated values were highly uncertain for several major wheat producing countries. The rate of yield increase differed considerably between French regions, suggesting that efforts to identify the main causes of yield stagnation should focus on a subnational scale.

  13. Comparison of Statistical Models for Analyzing Wheat Yield Time Series

    PubMed Central

    Michel, Lucie; Makowski, David

    2013-01-01

    The world's population is predicted to exceed nine billion by 2050 and there is increasing concern about the capability of agriculture to feed such a large population. Foresight studies on food security are frequently based on crop yield trends estimated from yield time series provided by national and regional statistical agencies. Various types of statistical models have been proposed for the analysis of yield time series, but the predictive performances of these models have not yet been evaluated in detail. In this study, we present eight statistical models for analyzing yield time series and compare their ability to predict wheat yield at the national and regional scales, using data provided by the Food and Agriculture Organization of the United Nations and by the French Ministry of Agriculture. The Holt-Winters and dynamic linear models performed equally well, giving the most accurate predictions of wheat yield. However, dynamic linear models have two advantages over Holt-Winters models: they can be used to reconstruct past yield trends retrospectively and to analyze uncertainty. The results obtained with dynamic linear models indicated a stagnation of wheat yields in many countries, but the estimated rate of increase of wheat yield remained above 0.06 t ha−1 year−1 in several countries in Europe, Asia, Africa and America, and the estimated values were highly uncertain for several major wheat producing countries. The rate of yield increase differed considerably between French regions, suggesting that efforts to identify the main causes of yield stagnation should focus on a subnational scale. PMID:24205280

  14. Approximating uncertainty of annual runoff and reservoir yield using stochastic replicates of global climate model data

    NASA Astrophysics Data System (ADS)

    Peel, M. C.; Srikanthan, R.; McMahon, T. A.; Karoly, D. J.

    2015-04-01

    Two key sources of uncertainty in projections of future runoff for climate change impact assessments are uncertainty between global climate models (GCMs) and within a GCM. Within-GCM uncertainty is the variability in GCM output that occurs when running a scenario multiple times but each run has slightly different, but equally plausible, initial conditions. The limited number of runs available for each GCM and scenario combination within the Coupled Model Intercomparison Project phase 3 (CMIP3) and phase 5 (CMIP5) data sets, limits the assessment of within-GCM uncertainty. In this second of two companion papers, the primary aim is to present a proof-of-concept approximation of within-GCM uncertainty for monthly precipitation and temperature projections and to assess the impact of within-GCM uncertainty on modelled runoff for climate change impact assessments. A secondary aim is to assess the impact of between-GCM uncertainty on modelled runoff. Here we approximate within-GCM uncertainty by developing non-stationary stochastic replicates of GCM monthly precipitation and temperature data. These replicates are input to an off-line hydrologic model to assess the impact of within-GCM uncertainty on projected annual runoff and reservoir yield. We adopt stochastic replicates of available GCM runs to approximate within-GCM uncertainty because large ensembles, hundreds of runs, for a given GCM and scenario are unavailable, other than the Climateprediction.net data set for the Hadley Centre GCM. To date within-GCM uncertainty has received little attention in the hydrologic climate change impact literature and this analysis provides an approximation of the uncertainty in projected runoff, and reservoir yield, due to within- and between-GCM uncertainty of precipitation and temperature projections. In the companion paper, McMahon et al. (2015) sought to reduce between-GCM uncertainty by removing poorly performing GCMs, resulting in a selection of five better performing GCMs from

  15. Algorithm for evaluating the effectiveness of a high-rise development project based on current yield

    NASA Astrophysics Data System (ADS)

    Soboleva, Elena

    2018-03-01

    The article is aimed at the issues of operational evaluation of development project efficiency in high-rise construction under the current economic conditions in Russia. The author touches the following issues: problems of implementing development projects, the influence of the operational evaluation quality of high-rise construction projects on general efficiency, assessing the influence of the project's external environment on the effectiveness of project activities under crisis conditions and the quality of project management. The article proposes the algorithm and the methodological approach to the quality management of the developer project efficiency based on operational evaluation of the current yield efficiency. The methodology for calculating the current efficiency of a development project for high-rise construction has been updated.

  16. Contribution of crop model structure, parameters and climate projections to uncertainty in climate change impact assessments.

    PubMed

    Tao, Fulu; Rötter, Reimund P; Palosuo, Taru; Gregorio Hernández Díaz-Ambrona, Carlos; Mínguez, M Inés; Semenov, Mikhail A; Kersebaum, Kurt Christian; Nendel, Claas; Specka, Xenia; Hoffmann, Holger; Ewert, Frank; Dambreville, Anaelle; Martre, Pierre; Rodríguez, Lucía; Ruiz-Ramos, Margarita; Gaiser, Thomas; Höhn, Jukka G; Salo, Tapio; Ferrise, Roberto; Bindi, Marco; Cammarano, Davide; Schulman, Alan H

    2018-03-01

    Climate change impact assessments are plagued with uncertainties from many sources, such as climate projections or the inadequacies in structure and parameters of the impact model. Previous studies tried to account for the uncertainty from one or two of these. Here, we developed a triple-ensemble probabilistic assessment using seven crop models, multiple sets of model parameters and eight contrasting climate projections together to comprehensively account for uncertainties from these three important sources. We demonstrated the approach in assessing climate change impact on barley growth and yield at Jokioinen, Finland in the Boreal climatic zone and Lleida, Spain in the Mediterranean climatic zone, for the 2050s. We further quantified and compared the contribution of crop model structure, crop model parameters and climate projections to the total variance of ensemble output using Analysis of Variance (ANOVA). Based on the triple-ensemble probabilistic assessment, the median of simulated yield change was -4% and +16%, and the probability of decreasing yield was 63% and 31% in the 2050s, at Jokioinen and Lleida, respectively, relative to 1981-2010. The contribution of crop model structure to the total variance of ensemble output was larger than that from downscaled climate projections and model parameters. The relative contribution of crop model parameters and downscaled climate projections to the total variance of ensemble output varied greatly among the seven crop models and between the two sites. The contribution of downscaled climate projections was on average larger than that of crop model parameters. This information on the uncertainty from different sources can be quite useful for model users to decide where to put the most effort when preparing or choosing models or parameters for impact analyses. We concluded that the triple-ensemble probabilistic approach that accounts for the uncertainties from multiple important sources provide more comprehensive

  17. A Growth and Yield Model for Thinned Stands of Yellow-Poplar

    Treesearch

    Bruce R. Knoebel; Harold E. Burkhart; Donald E. Beck

    1986-01-01

    Simultaneous growth and yield equations were developed for predicting basal area growth and cubic-foot volume growth and yield in thinned stands of yellow-poplar. A joint loss function involving both volume and basal area was used to estimate the coefficients in the system of equations. The estimates obtained were analytically compatible, invariant for projection...

  18. Uncertainty in Simulating Wheat Yields Under Climate Change

    NASA Technical Reports Server (NTRS)

    Asseng, S.; Ewert, F.; Rosenzweig, Cynthia; Jones, J. W.; Hatfield, J. W.; Ruane, A. C.; Boote, K. J.; Thornburn, P. J.; Rotter, R. P.; Cammarano, D.; hide

    2013-01-01

    Projections of climate change impacts on crop yields are inherently uncertain1. Uncertainty is often quantified when projecting future greenhouse gas emissions and their influence on climate2. However, multi-model uncertainty analysis of crop responses to climate change is rare because systematic and objective comparisons among process-based crop simulation models1,3 are difficult4. Here we present the largest standardized model intercomparison for climate change impacts so far. We found that individual crop models are able to simulate measured wheat grain yields accurately under a range of environments, particularly if the input information is sufficient. However, simulated climate change impacts vary across models owing to differences in model structures and parameter values. A greater proportion of the uncertainty in climate change impact projections was due to variations among crop models than to variations among downscaled general circulation models. Uncertainties in simulated impacts increased with CO2 concentrations and associated warming. These impact uncertainties can be reduced by improving temperature and CO2 relationships in models and better quantified through use of multi-model ensembles. Less uncertainty in describing how climate change may affect agricultural productivity will aid adaptation strategy development and policymaking.

  19. Uncertainty in simulating wheat yields under climate change

    NASA Astrophysics Data System (ADS)

    Asseng, S.; Ewert, F.; Rosenzweig, C.; Jones, J. W.; Hatfield, J. L.; Ruane, A. C.; Boote, K. J.; Thorburn, P. J.; Rötter, R. P.; Cammarano, D.; Brisson, N.; Basso, B.; Martre, P.; Aggarwal, P. K.; Angulo, C.; Bertuzzi, P.; Biernath, C.; Challinor, A. J.; Doltra, J.; Gayler, S.; Goldberg, R.; Grant, R.; Heng, L.; Hooker, J.; Hunt, L. A.; Ingwersen, J.; Izaurralde, R. C.; Kersebaum, K. C.; Müller, C.; Naresh Kumar, S.; Nendel, C.; O'Leary, G.; Olesen, J. E.; Osborne, T. M.; Palosuo, T.; Priesack, E.; Ripoche, D.; Semenov, M. A.; Shcherbak, I.; Steduto, P.; Stöckle, C.; Stratonovitch, P.; Streck, T.; Supit, I.; Tao, F.; Travasso, M.; Waha, K.; Wallach, D.; White, J. W.; Williams, J. R.; Wolf, J.

    2013-09-01

    Projections of climate change impacts on crop yields are inherently uncertain. Uncertainty is often quantified when projecting future greenhouse gas emissions and their influence on climate. However, multi-model uncertainty analysis of crop responses to climate change is rare because systematic and objective comparisons among process-based crop simulation models are difficult. Here we present the largest standardized model intercomparison for climate change impacts so far. We found that individual crop models are able to simulate measured wheat grain yields accurately under a range of environments, particularly if the input information is sufficient. However, simulated climate change impacts vary across models owing to differences in model structures and parameter values. A greater proportion of the uncertainty in climate change impact projections was due to variations among crop models than to variations among downscaled general circulation models. Uncertainties in simulated impacts increased with CO2 concentrations and associated warming. These impact uncertainties can be reduced by improving temperature and CO2 relationships in models and better quantified through use of multi-model ensembles. Less uncertainty in describing how climate change may affect agricultural productivity will aid adaptation strategy development andpolicymaking.

  20. Recent changes in county-level corn yield variability in the United States from observations and crop models

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Leng, Guoyong

    The United States is responsible for 35% and 60% of global corn supply and exports. Enhanced supply stability through a reduction in the year-to-year variability of US corn yield would greatly benefit global food security. Important in this regard is to understand how corn yield variability has evolved geographically in the history and how it relates to climatic and non-climatic factors. Results showed that year-to-year variation of US corn yield has decreased significantly during 1980-2010, mainly in Midwest Corn Belt, Nebraska and western arid regions. Despite the country-scale decreasing variability, corn yield variability exhibited an increasing trend in South Dakota,more » Texas and Southeast growing regions, indicating the importance of considering spatial scales in estimating yield variability. The observed pattern is partly reproduced by process-based crop models, simulating larger areas experiencing increasing variability and underestimating the magnitude of decreasing variability. And 3 out of 11 models even produced a differing sign of change from observations. Hence, statistical model which produces closer agreement with observations is used to explore the contribution of climatic and non-climatic factors to the changes in yield variability. It is found that climate variability dominate the change trends of corn yield variability in the Midwest Corn Belt, while the ability of climate variability in controlling yield variability is low in southeastern and western arid regions. Irrigation has largely reduced the corn yield variability in regions (e.g. Nebraska) where separate estimates of irrigated and rain-fed corn yield exist, demonstrating the importance of non-climatic factors in governing the changes in corn yield variability. The results highlight the distinct spatial patterns of corn yield variability change as well as its influencing factors at the county scale. I also caution the use of process-based crop models, which have substantially

  1. WEPP model implementation project with the USDA-Natural Resources Conservation Service

    USDA-ARS?s Scientific Manuscript database

    The Water Erosion Prediction Project (WEPP) is a physical process-based soil erosion model that can be used to estimate runoff, soil loss, and sediment yield from hillslope profiles, fields, and small watersheds. Initially developed from 1985-1995, WEPP has been applied and validated across a wide r...

  2. Assessments of Future Maize Yield Potential Changes in the Korean Peninsula Using Multiple Crop Models

    NASA Astrophysics Data System (ADS)

    Kim, S. H.; Lim, C. H.; Kim, J.; Lee, W. K.; Kafatos, M.

    2016-12-01

    The Korean Peninsula has unique agricultural environment due to the differences of political and socio-economical system between Republic of Korea (SK, hereafter) and Democratic Peoples' Republic of Korea (NK, hereafter). NK has been suffering lack of food supplies caused by natural disasters, land degradation and political failure. The neighboring developed country SK has better agricultural system but very low food self-sufficiency rate. Maize is an important crop in both countries since it is staple food for NK and SK is No. 2 maize importing country in the world after Japan. Therefore, evaluating maize yield potential (Yp) in the two distinct regions is essential to assess food security under climate change and variability. In this study, we utilized multiple process-based crop models, having ability of regional scale assessment, to evaluate maize Yp and assess the model uncertainties -EPIC, GEPIC, DSSAT, and APSIM model that has capability of regional scale expansion (apsimRegions). First we evaluated each crop model for 3 years from 2012 to 2014 using reanalysis data (RDAPS; Regional Data Assimilation and Prediction System produced by Korea Meteorological Agency) and observed yield data. Each model performances were compared over the different regions in the Korean Peninsula having different local climate characteristics. To quantify of the major influence of at each climate variables, we also conducted sensitivity test using 20 years of climatology in historical period from 1981 to 2000. Lastly, the multi-crop model ensemble analysis was performed for future period from 2031 to 2050. The required weather variables projected for mid-century were employed from COordinated Regional climate Downscaling EXperiment (CORDEX) East Asia. The high-resolution climate data were obtained from multiple regional climate models (RCM) driven by multiple climate scenarios projected from multiple global climate models (GCMs) in conjunction with multiple greenhouse gas

  3. Predicting future US water yield and ecosystem productivity by linking an ecohydrological model to WRF dynamically downscaled climate projections

    Treesearch

    S. Sun; Ge Sun; Erika Cohen Mack; Steve McNulty; Peter Caldwell; K. Duan; Y. Zhang

    2015-01-01

    Quantifying the potential impacts of climate change on water yield and ecosystem productivity (i.e., carbon balances) is essential to developing sound watershed restoration plans, and climate change adaptation and mitigation strategies. This study links an ecohydrological model (Water Supply and Stress Index, WaSSI) with WRF (Weather Research and Forecasting Model)...

  4. Modeling water yield response to forest cover changes in northern Minnesota

    Treesearch

    S.C. Bernath; E.S. Verry; K.N. Brooks; P.F. Ffolliott

    1982-01-01

    A water yield model (TIMWAT) has been developed to predict changes in water yield following changes in forest cover in northern Minnesota. Two versions of the model exist; one predicts changes in water yield as a function of gross precipitation and time after clearcutting. The second version predicts changes in water yield due to changes in above-ground biomass...

  5. Increasing influence of heat stress on French maize yields from the 1960s to the 2030s

    PubMed Central

    Hawkins, Ed; Fricker, Thomas E; Challinor, Andrew J; Ferro, Christopher A T; Kit Ho, Chun; Osborne, Tom M

    2013-01-01

    Improved crop yield forecasts could enable more effective adaptation to climate variability and change. Here, we explore how to combine historical observations of crop yields and weather with climate model simulations to produce crop yield projections for decision relevant timescales. Firstly, the effects on historical crop yields of improved technology, precipitation and daily maximum temperatures are modelled empirically, accounting for a nonlinear technology trend and interactions between temperature and precipitation, and applied specifically for a case study of maize in France. The relative importance of precipitation variability for maize yields in France has decreased significantly since the 1960s, likely due to increased irrigation. In addition, heat stress is found to be as important for yield as precipitation since around 2000. A significant reduction in maize yield is found for each day with a maximum temperature above 32 °C, in broad agreement with previous estimates. The recent increase in such hot days has likely contributed to the observed yield stagnation. Furthermore, a general method for producing near-term crop yield projections, based on climate model simulations, is developed and utilized. We use projections of future daily maximum temperatures to assess the likely change in yields due to variations in climate. Importantly, we calibrate the climate model projections using observed data to ensure both reliable temperature mean and daily variability characteristics, and demonstrate that these methods work using retrospective predictions. We conclude that, to offset the projected increased daily maximum temperatures over France, improved technology will need to increase base level yields by 12% to be confident about maintaining current levels of yield for the period 2016–2035; the current rate of yield technology increase is not sufficient to meet this target. PMID:23504849

  6. Twisted sigma-model solitons on the quantum projective line

    NASA Astrophysics Data System (ADS)

    Landi, Giovanni

    2018-04-01

    On the configuration space of projections in a noncommutative algebra, and for an automorphism of the algebra, we use a twisted Hochschild cocycle for an action functional and a twisted cyclic cocycle for a topological term. The latter is Hochschild-cohomologous to the former and positivity in twisted Hochschild cohomology results into a lower bound for the action functional. While the equations for the critical points are rather involved, the use of the positivity and the bound by the topological term lead to self-duality equations (thus yielding twisted noncommutative sigma-model solitons, or instantons). We present explicit nontrivial solutions on the quantum projective line.

  7. Satellite-based assessment of grassland yields

    NASA Astrophysics Data System (ADS)

    Grant, K.; Siegmund, R.; Wagner, M.; Hartmann, S.

    2015-04-01

    Cutting date and frequency are important parameters determining grassland yields in addition to the effects of weather, soil conditions, plant composition and fertilisation. Because accurate and area-wide data of grassland yields are currently not available, cutting frequency can be used to estimate yields. In this project, a method to detect cutting dates via surface changes in radar images is developed. The combination of this method with a grassland yield model will result in more reliable and regional-wide numbers of grassland yields. For the test-phase of the monitoring project, a study area situated southeast of Munich, Germany, was chosen due to its high density of managed grassland. For determining grassland cutting robust amplitude change detection techniques are used evaluating radar amplitude or backscatter statistics before and after the cutting event. CosmoSkyMed and Sentinel-1A data were analysed. All detected cuts were verified according to in-situ measurements recorded in a GIS database. Although the SAR systems had various acquisition geometries, the amount of detected grassland cut was quite similar. Of 154 tested grassland plots, covering in total 436 ha, 116 and 111 cuts were detected using CosmoSkyMed and Sentinel-1A radar data, respectively. Further improvement of radar data processes as well as additional analyses with higher sample number and wider land surface coverage will follow for optimisation of the method and for validation and generalisation of the results of this feasibility study. The automation of this method will than allow for an area-wide and cost efficient cutting date detection service improving grassland yield models.

  8. Linking climate projections to performance: A yield-based decision scaling assessment of a large urban water resources system

    NASA Astrophysics Data System (ADS)

    Turner, Sean W. D.; Marlow, David; Ekström, Marie; Rhodes, Bruce G.; Kularathna, Udaya; Jeffrey, Paul J.

    2014-04-01

    Despite a decade of research into climate change impacts on water resources, the scientific community has delivered relatively few practical methodological developments for integrating uncertainty into water resources system design. This paper presents an application of the "decision scaling" methodology for assessing climate change impacts on water resources system performance and asks how such an approach might inform planning decisions. The decision scaling method reverses the conventional ethos of climate impact assessment by first establishing the climate conditions that would compel planners to intervene. Climate model projections are introduced at the end of the process to characterize climate risk in such a way that avoids the process of propagating those projections through hydrological models. Here we simulated 1000 multisite synthetic monthly streamflow traces in a model of the Melbourne bulk supply system to test the sensitivity of system performance to variations in streamflow statistics. An empirical relation was derived to convert decision-critical flow statistics to climatic units, against which 138 alternative climate projections were plotted and compared. We defined the decision threshold in terms of a system yield metric constrained by multiple performance criteria. Our approach allows for fast and simple incorporation of demand forecast uncertainty and demonstrates the reach of the decision scaling method through successful execution in a large and complex water resources system. Scope for wider application in urban water resources planning is discussed.

  9. Local yield stress statistics in model amorphous solids

    NASA Astrophysics Data System (ADS)

    Barbot, Armand; Lerbinger, Matthias; Hernandez-Garcia, Anier; García-García, Reinaldo; Falk, Michael L.; Vandembroucq, Damien; Patinet, Sylvain

    2018-03-01

    We develop and extend a method presented by Patinet, Vandembroucq, and Falk [Phys. Rev. Lett. 117, 045501 (2016), 10.1103/PhysRevLett.117.045501] to compute the local yield stresses at the atomic scale in model two-dimensional Lennard-Jones glasses produced via differing quench protocols. This technique allows us to sample the plastic rearrangements in a nonperturbative manner for different loading directions on a well-controlled length scale. Plastic activity upon shearing correlates strongly with the locations of low yield stresses in the quenched states. This correlation is higher in more structurally relaxed systems. The distribution of local yield stresses is also shown to strongly depend on the quench protocol: the more relaxed the glass, the higher the local plastic thresholds. Analysis of the magnitude of local plastic relaxations reveals that stress drops follow exponential distributions, justifying the hypothesis of an average characteristic amplitude often conjectured in mesoscopic or continuum models. The amplitude of the local plastic rearrangements increases on average with the yield stress, regardless of the system preparation. The local yield stress varies with the shear orientation tested and strongly correlates with the plastic rearrangement locations when the system is sheared correspondingly. It is thus argued that plastic rearrangements are the consequence of shear transformation zones encoded in the glass structure that possess weak slip planes along different orientations. Finally, we justify the length scale employed in this work and extract the yield threshold statistics as a function of the size of the probing zones. This method makes it possible to derive physically grounded models of plasticity for amorphous materials by directly revealing the relevant details of the shear transformation zones that mediate this process.

  10. Response of loblolly pine to complete woody and herbaceous control: projected yields and economic outcomes - the COMProject

    Treesearch

    James H. Miller; R.L. Busby; B.R. Zutter; S.M. Zedaker; M.B. Edwards; R.A. Newbold

    1995-01-01

    Abstract.Age-8 and -9 data from the 13 study plantations of the Competition Omission Monitoring Project (COMP) were used to project yields and derive economic outcomes for loblolly pine (Pinus taeda L.). COMP treatments were chop-burn, complete woody plant control, complete herbaceous plant control for 4 years, and complete woody...

  11. Changes in crop yields and their variability at different levels of global warming

    NASA Astrophysics Data System (ADS)

    Ostberg, Sebastian; Schewe, Jacob; Childers, Katelin; Frieler, Katja

    2018-05-01

    An assessment of climate change impacts at different levels of global warming is crucial to inform the policy discussion about mitigation targets, as well as for the economic evaluation of climate change impacts. Integrated assessment models often use global mean temperature change (ΔGMT) as a sole measure of climate change and, therefore, need to describe impacts as a function of ΔGMT. There is already a well-established framework for the scalability of regional temperature and precipitation changes with ΔGMT. It is less clear to what extent more complex biological or physiological impacts such as crop yield changes can also be described in terms of ΔGMT, even though such impacts may often be more directly relevant for human livelihoods than changes in the physical climate. Here we show that crop yield projections can indeed be described in terms of ΔGMT to a large extent, allowing for a fast estimation of crop yield changes for emissions scenarios not originally covered by climate and crop model projections. We use an ensemble of global gridded crop model simulations for the four major staple crops to show that the scenario dependence is a minor component of the overall variance of projected yield changes at different levels of ΔGMT. In contrast, the variance is dominated by the spread across crop models. Varying CO2 concentrations are shown to explain only a minor component of crop yield variability at different levels of global warming. In addition, we find that the variability in crop yields is expected to increase with increasing warming in many world regions. We provide, for each crop model, geographical patterns of mean yield changes that allow for a simplified description of yield changes under arbitrary pathways of global mean temperature and CO2 changes, without the need for additional climate and crop model simulations.

  12. Application of wheat yield model to United States and India. [Great Plains

    NASA Technical Reports Server (NTRS)

    Feyerherm, A. M. (Principal Investigator)

    1977-01-01

    The author has identified the following significant results. The wheat yield model was applied to the major wheat-growing areas of the US and India. In the US Great Plains, estimates from the winter and spring wheat models agreed closely with USDA-SRS values in years with the lowest yields, but underestimated in years with the highest yields. Application to the Eastern Plains and Northwest indicated the importance of cultural factors, as well as meteorological ones in the model. It also demonstrated that the model could be used, in conjunction with USDA-SRRS estimates, to estimate yield losses due to factors not included in the model, particularly diseases and freezes. A fixed crop calendar for India was built from a limited amount of available plot data from that country. Application of the yield model gave measurable evidence that yield variation from state to state was due to different mixes of levels of meteorological and cultural factors.

  13. Modeling the effects of ozone on soybean growth and yield.

    PubMed

    Kobayashi, K; Miller, J E; Flagler, R B; Heck, W W

    1990-01-01

    A simple mechanistic model was developed based on an existing growth model in order to address the mechanisms of the effects of ozone on growth and yield of soybean [Glycine max. (L.) Merr. 'Davis'] and interacting effects of other environmental stresses. The model simulates daily growth of soybean plants using environmental data including shortwave radiation, temperature, precipitation, irrigation and ozone concentration. Leaf growth, dry matter accumulation, water budget, nitrogen input and seed growth linked to senescence and abscission of leaves are described in the model. The effects of ozone are modeled as reduced photosynthate production and accelerated senescence. The model was applied to the open-top chamber experiments in which soybean plants were exposed to ozone under two levels of soil moisture regimes. After calibrating the model to the growth data and seed yield, goodness-of-fit of the model was tested. The model fitted well for top dry weight in the vegetative growth phase and also at maturity. The effect of ozone on seen yield was also described satisfactorily by the model. The simulation showed apparent interaction between the effect of ozone and soil moisture stress on the seed yield. The model revealed that further work is needed concerning the effect of ozone on the senescence process and the consequences of alteration of canopy microclimate by the open-top chambers.

  14. SCS-CN based time-distributed sediment yield model

    NASA Astrophysics Data System (ADS)

    Tyagi, J. V.; Mishra, S. K.; Singh, Ranvir; Singh, V. P.

    2008-05-01

    SummaryA sediment yield model is developed to estimate the temporal rates of sediment yield from rainfall events on natural watersheds. The model utilizes the SCS-CN based infiltration model for computation of rainfall-excess rate, and the SCS-CN-inspired proportionality concept for computation of sediment-excess. For computation of sedimentographs, the sediment-excess is routed to the watershed outlet using a single linear reservoir technique. Analytical development of the model shows the ratio of the potential maximum erosion (A) to the potential maximum retention (S) of the SCS-CN method is constant for a watershed. The model is calibrated and validated on a number of events using the data of seven watersheds from India and the USA. Representative values of the A/S ratio computed for the watersheds from calibration are used for the validation of the model. The encouraging results of the proposed simple four parameter model exhibit its potential in field application.

  15. Manpower Projection Model Project, Ventura County.

    ERIC Educational Resources Information Center

    Van Zant, John L.; Lawson, William H.

    The final report on Phase 1 of the Manpower Projection Model (MPM) Project provides a guide for implementation of the model system by area Vocational Education Practitioners within any Standard Metropolitan Statistical Area (SMSA). A cooperative effort between Ventura County Superintendent of Schools Office and the Community College District, the…

  16. Fission yield calculation using toy model based on Monte Carlo simulation

    NASA Astrophysics Data System (ADS)

    Jubaidah, Kurniadi, Rizal

    2015-09-01

    Toy model is a new approximation in predicting fission yield distribution. Toy model assumes nucleus as an elastic toy consist of marbles. The number of marbles represents the number of nucleons, A. This toy nucleus is able to imitate the real nucleus properties. In this research, the toy nucleons are only influenced by central force. A heavy toy nucleus induced by a toy nucleon will be split into two fragments. These two fission fragments are called fission yield. In this research, energy entanglement is neglected. Fission process in toy model is illustrated by two Gaussian curves intersecting each other. There are five Gaussian parameters used in this research. They are scission point of the two curves (Rc), mean of left curve (μL) and mean of right curve (μR), deviation of left curve (σL) and deviation of right curve (σR). The fission yields distribution is analyses based on Monte Carlo simulation. The result shows that variation in σ or µ can significanly move the average frequency of asymmetry fission yields. This also varies the range of fission yields distribution probability. In addition, variation in iteration coefficient only change the frequency of fission yields. Monte Carlo simulation for fission yield calculation using toy model successfully indicates the same tendency with experiment results, where average of light fission yield is in the range of 90yield is in about 135

  17. Changes in yields and their variability at different levels of global warming

    NASA Astrophysics Data System (ADS)

    Childers, Katelin

    2015-04-01

    An assessment of climate change impacts at different levels of global warming is crucial to inform the political discussion about mitigation targets as well as for the inclusion of climate change impacts in Integrated Assessment Models (IAMs) that generally only provide global mean temperature change as an indicator of climate change. While there is a well-established framework for the scalability of regional temperature and precipitation changes with global mean temperature change we provide an assessment of the extent to which impacts such as crop yield changes can also be described in terms of global mean temperature changes without accounting for the specific underlying emissions scenario. Based on multi-crop-model simulations of the four major cereal crops (maize, rice, soy, and wheat) on a 0.5 x 0.5 degree global grid generated within ISI-MIP, we show the average spatial patterns of projected crop yield changes at one half degree warming steps. We find that emissions scenario dependence is a minor component of the overall variance of projected yield changes at different levels of global warming. Furthermore, scenario dependence can be reduced by accounting for the direct effects of CO2 fertilization in each global climate model (GCM)/impact model combination through an inclusion of the global atmospheric CO2 concentration as a second predictor. The choice of GCM output used to force the crop model simulations accounts for a slightly larger portion of the total yield variance, but the greatest contributor to variance in both global and regional crop yields and at all levels of warming, is the inter-crop-model spread. The unique multi impact model ensemble available with ISI-MIP data also indicates that the overall variability of crop yields is projected to increase in conjunction with increasing global mean temperature. This result is consistent throughout the ensemble of impact models and across many world regions. Such a hike in yield volatility could have

  18. Projected land use changes impacts on water yields in the karst mountain areas of China

    NASA Astrophysics Data System (ADS)

    Lang, Yanqing; Song, Wei; Deng, Xiangzheng

    2018-04-01

    Human-induced land use changes over short time scales have significant impacts on water yield, especially in China because of the rapid social economic development. As the biggest developing country of the world, China's economy is expected to continuously grow with a high speed in the next few decades. Therefore, what kind of land use changes will occur in the future in China? How these changes will influence the water yields? To address this issue, we assessed the water yields in the karst mountain area of China during the periods of 1990-2010 and 2010-2030 by coupling an Integrated Valuation of Ecosystem Services and Tradeoffs (InVEST) model and a Conversion of Land Use and its Effects (CLUE) model. Three different land use scenarios i.e. natural growth, economic development, and ecological protection, were developed in 2030 using the CLUE model. It was concluded that, given land use changes between 1990 and 2010, total water yields in the karst mountain area are characterized by a trend towards fluctuating reduction. However, total water yields of 2030 in the economic development scenario revealed an increase of 1.25% compared to the actual water yields in 2010. The economy development in karst mountain areas of China in the future has a slight positive influence on water yields.

  19. Relationships between surface solar radiation and wheat yield in Spain

    NASA Astrophysics Data System (ADS)

    Hernandez-Barrera, Sara; Rodriguez-Puebla, Concepción

    2017-04-01

    Here we examine the role of solar radiation to describe wheat-yield variability in Spain. We used Partial Least Square regression to capture the modes of surface solar radiation that drive wheat-yield variability. We will show that surface solar radiation introduces the effects of teleconnection patterns on wheat yield and also it is associated with drought and diurnal temperature range. We highlight the importance of surface solar radiation to obtain models for wheat-yield projections because it could reduce uncertainty with respect to the projections based on temperatures and precipitation variables. In addition, the significance of the model based on surface solar radiation is greater than the previous one based on drought and diurnal temperature range (Hernandez-Barrera et al., 2016). According to our results, the increase of solar radiation over Spain for 21st century could force a wheat-yield decrease (Hernandez-Barrera et al., 2017). Hernandez-Barrera S., Rodríguez-Puebla C. and Challinor A.J. 2016 Effects of diurnal temperature range and drought on wheat yield in Spain. Theoretical and Applied Climatology. DOI: 10.1007/s00704-016-1779-9 Hernandez-Barrera S., Rodríguez-Puebla C. 2017 Wheat yield in Spain and associated solar radiation patterns. International Journal of Climatology. DOI: 10.1002/joc.4975

  20. Response of wheat yield in Spain to large-scale patterns

    NASA Astrophysics Data System (ADS)

    Hernandez-Barrera, Sara; Rodriguez-Puebla, Concepcion

    2016-04-01

    Crops are vulnerable to extreme climate conditions as drought, heat stress and frost risk. In previous study we have quantified the influence of these climate conditions for winter wheat in Spain (Hernandez-Barrera et al. 2015). The climate extremes respond to large-scale atmospheric and oceanic patterns. Therefore, a question emerges in our investigation: How large-scale patterns affect wheat yield? Obtaining and understanding these relationships require different approaches. In this study, we first obtained the leading mode of observed wheat yield variability to characterize the common variability over different provinces in Spain. Then, the wheat variability is related to different modes of mean sea level pressure, jet stream and sea surface temperature by using Partial Least-Squares, which captures the relevant climate drivers accounting for variations in wheat yield from sowing to harvesting. We used the ERA-Interim reanalysis data and the Extended Reconstructed Sea Surface Temperature (SST) (ERSST v3b). The derived model provides insight about the teleconnections between wheat yield and atmospheric and oceanic circulations, which is considered to project the wheat yield trend under global warming using outputs of twelve climate models corresponding to the Coupled Models Intercomparison Project phase 5 (CMIP5). Hernandez-Barrera S., C. Rodríguez-Puebla and A.J. Challinor. Effects of diurnal temperature range and drought on wheat yield in Spain. Theoretical and Applied Climatology (submitted)

  1. High-resolution, regional-scale crop yield simulations for the Southwestern United States

    NASA Astrophysics Data System (ADS)

    Stack, D. H.; Kafatos, M.; Medvigy, D.; El-Askary, H. M.; Hatzopoulos, N.; Kim, J.; Kim, S.; Prasad, A. K.; Tremback, C.; Walko, R. L.; Asrar, G. R.

    2012-12-01

    Over the past few decades, there have been many process-based crop models developed with the goal of better understanding the impacts of climate, soils, and management decisions on crop yields. These models simulate the growth and development of crops in response to environmental drivers. Traditionally, process-based crop models have been run at the individual farm level for yield optimization and management scenario testing. Few previous studies have used these models over broader geographic regions, largely due to the lack of gridded high-resolution meteorological and soil datasets required as inputs for these data intensive process-based models. In particular, assessment of regional-scale yield variability due to climate change requires high-resolution, regional-scale, climate projections, and such projections have been unavailable until recently. The goal of this study was to create a framework for extending the Agricultural Production Systems sIMulator (APSIM) crop model for use at regional scales and analyze spatial and temporal yield changes in the Southwestern United States (CA, AZ, and NV). Using the scripting language Python, an automated pipeline was developed to link Regional Climate Model (RCM) output with the APSIM crop model, thus creating a one-way nested modeling framework. This framework was used to combine climate, soil, land use, and agricultural management datasets in order to better understand the relationship between climate variability and crop yield at the regional-scale. Three different RCMs were used to drive APSIM: OLAM, RAMS, and WRF. Preliminary results suggest that, depending on the model inputs, there is some variability between simulated RCM driven maize yields and historical yields obtained from the United States Department of Agriculture (USDA). Furthermore, these simulations showed strong non-linear correlations between yield and meteorological drivers, with critical threshold values for some of the inputs (e.g. minimum and

  2. The CSAICLAWPS project: a multi-scalar, multi-data source approach to providing climate services for both modelling of climate change impacts on crop yields and development of community-level adaptive capacity for sustainable food security

    NASA Astrophysics Data System (ADS)

    Forsythe, N. D.; Fowler, H. J.

    2017-12-01

    The "Climate-smart agriculture implementation through community-focused pursuit of land and water productivity in South Asia" (CSAICLAWPS) project is a research initiative funded by the (UK) Royal Society through its Challenge Grants programme which is part of the broader UK Global Challenges Research Fund (GCRF). CSAICLAWPS has three objectives: a) development of "added-value" - bias assessed, statistically down-scaled - climate projections for selected case study sites across South Asia; b) investigation of crop failure modes under both present (observed) and future (projected) conditions; and c) facilitation of developing local adaptive capacity and resilience through stakeholder engagement. At AGU we will be presenting both next steps and progress to date toward these three objectives: [A] We have carried out bias assessments of a substantial multi-model RCM ensemble (MME) from the CORDEX South Asia (CORDEXdomain for case studies in three countries - Pakistan, India and Sri Lanka - and (stochastically) produced synthetic time-series for these sites from local observations using a Python-based implementation of the principles underlying the Climate Research Unit Weather Generator (CRU-WG) in order to enable probabilistic simulation of current crop yields. [B] We have characterised present response of local crop yields to climate variability in key case study sites using AquaCrop simulations parameterised based on input (agronomic practices, soil conditions, etc) from smallholder farmers. [C] We have implemented community-based hydro-climatological monitoring in several case study "revenue villages" (panchayats) in the Nainital District of Uttarakhand. The purpose of this is not only to increase availability of meteorological data, but also has the aspiration of, over time, leading to enhanced quantitative awareness of present climate variability and potential future conditions (as projected by RCMs). Next steps in our work will include: 1) future crop yield

  3. Fission yield calculation using toy model based on Monte Carlo simulation

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Jubaidah, E-mail: jubaidah@student.itb.ac.id; Physics Department, Faculty of Mathematics and Natural Science – State University of Medan. Jl. Willem Iskandar Pasar V Medan Estate – North Sumatera, Indonesia 20221; Kurniadi, Rizal, E-mail: rijalk@fi.itb.ac.id

    2015-09-30

    Toy model is a new approximation in predicting fission yield distribution. Toy model assumes nucleus as an elastic toy consist of marbles. The number of marbles represents the number of nucleons, A. This toy nucleus is able to imitate the real nucleus properties. In this research, the toy nucleons are only influenced by central force. A heavy toy nucleus induced by a toy nucleon will be split into two fragments. These two fission fragments are called fission yield. In this research, energy entanglement is neglected. Fission process in toy model is illustrated by two Gaussian curves intersecting each other. Theremore » are five Gaussian parameters used in this research. They are scission point of the two curves (R{sub c}), mean of left curve (μ{sub L}) and mean of right curve (μ{sub R}), deviation of left curve (σ{sub L}) and deviation of right curve (σ{sub R}). The fission yields distribution is analyses based on Monte Carlo simulation. The result shows that variation in σ or µ can significanly move the average frequency of asymmetry fission yields. This also varies the range of fission yields distribution probability. In addition, variation in iteration coefficient only change the frequency of fission yields. Monte Carlo simulation for fission yield calculation using toy model successfully indicates the same tendency with experiment results, where average of light fission yield is in the range of 90« less

  4. Multivariate Statistical Models for Predicting Sediment Yields from Southern California Watersheds

    USGS Publications Warehouse

    Gartner, Joseph E.; Cannon, Susan H.; Helsel, Dennis R.; Bandurraga, Mark

    2009-01-01

    Debris-retention basins in Southern California are frequently used to protect communities and infrastructure from the hazards of flooding and debris flow. Empirical models that predict sediment yields are used to determine the size of the basins. Such models have been developed using analyses of records of the amount of material removed from debris retention basins, associated rainfall amounts, measures of watershed characteristics, and wildfire extent and history. In this study we used multiple linear regression methods to develop two updated empirical models to predict sediment yields for watersheds located in Southern California. The models are based on both new and existing measures of volume of sediment removed from debris retention basins, measures of watershed morphology, and characterization of burn severity distributions for watersheds located in Ventura, Los Angeles, and San Bernardino Counties. The first model presented reflects conditions in watersheds located throughout the Transverse Ranges of Southern California and is based on volumes of sediment measured following single storm events with known rainfall conditions. The second model presented is specific to conditions in Ventura County watersheds and was developed using volumes of sediment measured following multiple storm events. To relate sediment volumes to triggering storm rainfall, a rainfall threshold was developed to identify storms likely to have caused sediment deposition. A measured volume of sediment deposited by numerous storms was parsed among the threshold-exceeding storms based on relative storm rainfall totals. The predictive strength of the two models developed here, and of previously-published models, was evaluated using a test dataset consisting of 65 volumes of sediment yields measured in Southern California. The evaluation indicated that the model developed using information from single storm events in the Transverse Ranges best predicted sediment yields for watersheds in San

  5. Monash Chemical Yields Project (Monχey) - Element production in low- and intermediate-mass stars of metallicities Z = 0 to 0.04

    NASA Astrophysics Data System (ADS)

    Doherty, Carolyn Louise; Lattanzio, John; Angelou, George; Wattana Campbell, Simon; Church, Ross; Constantino, Thomas; Cristallo, Sergio; Gil-Pons, Pilar; Karakas, Amanda; Lugaro, Maria; Stancliffe, Richard James

    2015-08-01

    The Monχey project provides a large and homogeneous set of stellar yields for the low- and intermediate- mass stars and has applications particularly to galactic chemical evolution modelling.We present a detailed grid of stellar evolutionary models and corresponding nucleosynthetic yields for stars of initial mass 0.8 M⊙ up to the limit for core collapse supernova ≈ 10 M⊙. Our study covers a broad range of metallicities, ranging from the first, primordial stars (Z=0) to those of super-solar metallicity (Z=0.04). The models are evolved from the zero-age main-sequence until the end of the asymptotic giant branch (AGB) and the nucleosynthesis calculations include all elements from H to Bi.A major innovation of our work is the first complete grid of heavy element nucleosynthetic predictions for primordial AGB stars as well as the inclusion of extra-mixing processes (in this case thermohaline) during the red giant branch. We provide a broad overview of our results with implications for galactic chemical evolution as well as highlight interesting results such as heavy element production in dredge-out events of super-AGB stars.We briefly introduce our easy to use web-based database which provides the evolutionary tracks, structural properties, internal/surface nucleosynthetic compositions and stellar yields. Our web interface includes user- driven plotting capabilities with output available in a range of formats. Our nucleosynthetic results are available for further use in post processing calculations for dust production yields.

  6. Projecting water yield and ecosystem productivity across the United States by linking an ecohydrological model to WRF dynamically downscaled climate data

    Treesearch

    Shanlei Sun; Ge Sun; Erika Cohen Mack; Steve McNulty; Peter V. Caldwell; Kai Duan; Yang Zhang

    2016-01-01

    Quantifying the potential impacts of climatechange on water yield and ecosystem productivity is essential to developing sound watershed restoration plans, andecosystem adaptation and mitigation strategies. This study links an ecohydrological model (Water Supply and StressIndex, WaSSI) with WRF (Weather Research and Forecasting Model) using dynamically downscaled...

  7. Statistical Analysis of Large Simulated Yield Datasets for Studying Climate Effects

    NASA Technical Reports Server (NTRS)

    Makowski, David; Asseng, Senthold; Ewert, Frank; Bassu, Simona; Durand, Jean-Louis; Martre, Pierre; Adam, Myriam; Aggarwal, Pramod K.; Angulo, Carlos; Baron, Chritian; hide

    2015-01-01

    Many studies have been carried out during the last decade to study the effect of climate change on crop yields and other key crop characteristics. In these studies, one or several crop models were used to simulate crop growth and development for different climate scenarios that correspond to different projections of atmospheric CO2 concentration, temperature, and rainfall changes (Semenov et al., 1996; Tubiello and Ewert, 2002; White et al., 2011). The Agricultural Model Intercomparison and Improvement Project (AgMIP; Rosenzweig et al., 2013) builds on these studies with the goal of using an ensemble of multiple crop models in order to assess effects of climate change scenarios for several crops in contrasting environments. These studies generate large datasets, including thousands of simulated crop yield data. They include series of yield values obtained by combining several crop models with different climate scenarios that are defined by several climatic variables (temperature, CO2, rainfall, etc.). Such datasets potentially provide useful information on the possible effects of different climate change scenarios on crop yields. However, it is sometimes difficult to analyze these datasets and to summarize them in a useful way due to their structural complexity; simulated yield data can differ among contrasting climate scenarios, sites, and crop models. Another issue is that it is not straightforward to extrapolate the results obtained for the scenarios to alternative climate change scenarios not initially included in the simulation protocols. Additional dynamic crop model simulations for new climate change scenarios are an option but this approach is costly, especially when a large number of crop models are used to generate the simulated data, as in AgMIP. Statistical models have been used to analyze responses of measured yield data to climate variables in past studies (Lobell et al., 2011), but the use of a statistical model to analyze yields simulated by complex

  8. Economic impacts of climate change on agriculture: a comparison of process-based and statistical yield models

    NASA Astrophysics Data System (ADS)

    Moore, Frances C.; Baldos, Uris Lantz C.; Hertel, Thomas

    2017-06-01

    A large number of studies have been published examining the implications of climate change for agricultural productivity that, broadly speaking, can be divided into process-based modeling and statistical approaches. Despite a general perception that results from these methods differ substantially, there have been few direct comparisons. Here we use a data-base of yield impact studies compiled for the IPCC Fifth Assessment Report (Porter et al 2014) to systematically compare results from process-based and empirical studies. Controlling for differences in representation of CO2 fertilization between the two methods, we find little evidence for differences in the yield response to warming. The magnitude of CO2 fertilization is instead a much larger source of uncertainty. Based on this set of impact results, we find a very limited potential for on-farm adaptation to reduce yield impacts. We use the Global Trade Analysis Project (GTAP) global economic model to estimate welfare consequences of yield changes and find negligible welfare changes for warming of 1 °C-2 °C if CO2 fertilization is included and large negative effects on welfare without CO2. Uncertainty bounds on welfare changes are highly asymmetric, showing substantial probability of large declines in welfare for warming of 2 °C-3 °C even including the CO2 fertilization effect.

  9. Predicting watershed post-fire sediment yield with the InVEST sediment retention model: Accuracy and uncertainties

    USGS Publications Warehouse

    Sankey, Joel B.; McVay, Jason C.; Kreitler, Jason R.; Hawbaker, Todd J.; Vaillant, Nicole; Lowe, Scott

    2015-01-01

    Increased sedimentation following wildland fire can negatively impact water supply and water quality. Understanding how changing fire frequency, extent, and location will affect watersheds and the ecosystem services they supply to communities is of great societal importance in the western USA and throughout the world. In this work we assess the utility of the InVEST (Integrated Valuation of Ecosystem Services and Tradeoffs) Sediment Retention Model to accurately characterize erosion and sedimentation of burned watersheds. InVEST was developed by the Natural Capital Project at Stanford University (Tallis et al., 2014) and is a suite of GIS-based implementations of common process models, engineered for high-end computing to allow the faster simulation of larger landscapes and incorporation into decision-making. The InVEST Sediment Retention Model is based on common soil erosion models (e.g., USLE – Universal Soil Loss Equation) and determines which areas of the landscape contribute the greatest sediment loads to a hydrological network and conversely evaluate the ecosystem service of sediment retention on a watershed basis. In this study, we evaluate the accuracy and uncertainties for InVEST predictions of increased sedimentation after fire, using measured postfire sediment yields available for many watersheds throughout the western USA from an existing, published large database. We show that the model can be parameterized in a relatively simple fashion to predict post-fire sediment yield with accuracy. Our ultimate goal is to use the model to accurately predict variability in post-fire sediment yield at a watershed scale as a function of future wildfire conditions.

  10. Carbon-Temperature-Water Change Analysis for Peanut Production Under Climate Change: A Prototype for the AgMIP Coordinated Climate-Crop Modeling Project (C3MP)

    NASA Technical Reports Server (NTRS)

    Ruane, Alex C.; McDermid, Sonali; Rosenzweig, Cynthia; Baigorria, Guillermo A.; Jones, James W.; Romero, Consuelo C.; Cecil, L. DeWayne

    2014-01-01

    Climate change is projected to push the limits of cropping systems and has the potential to disrupt the agricultural sector from local to global scales. This article introduces the Coordinated Climate-Crop Modeling Project (C3MP), an initiative of the Agricultural Model Intercomparison and Improvement Project (AgMIP) to engage a global network of crop modelers to explore the impacts of climate change via an investigation of crop responses to changes in carbon dioxide concentration ([CO2]), temperature, and water. As a demonstration of the C3MP protocols and enabled analyses, we apply the Decision Support System for Agrotechnology Transfer (DSSAT) CROPGRO-Peanut crop model for Henry County, Alabama, to evaluate responses to the range of plausible [CO2], temperature changes, and precipitation changes projected by climate models out to the end of the 21st century. These sensitivity tests are used to derive crop model emulators that estimate changes in mean yield and the coefficient of variation for seasonal yields across a broad range of climate conditions, reproducing mean yields from sensitivity test simulations with deviations of ca. 2% for rain-fed conditions. We apply these statistical emulators to investigate how peanuts respond to projections from various global climate models, time periods, and emissions scenarios, finding a robust projection of modest (<10%) median yield losses in the middle of the 21st century accelerating to more severe (>20%) losses and larger uncertainty at the end of the century under the more severe representative concentration pathway (RCP8.5). This projection is not substantially altered by the selection of the AgMERRA global gridded climate dataset rather than the local historical observations, differences between the Third and Fifth Coupled Model Intercomparison Project (CMIP3 and CMIP5), or the use of the delta method of climate impacts analysis rather than the C3MP impacts response surface and emulator approach.

  11. Statistics-based model for prediction of chemical biosynthesis yield from Saccharomyces cerevisiae

    PubMed Central

    2011-01-01

    Background The robustness of Saccharomyces cerevisiae in facilitating industrial-scale production of ethanol extends its utilization as a platform to synthesize other metabolites. Metabolic engineering strategies, typically via pathway overexpression and deletion, continue to play a key role for optimizing the conversion efficiency of substrates into the desired products. However, chemical production titer or yield remains difficult to predict based on reaction stoichiometry and mass balance. We sampled a large space of data of chemical production from S. cerevisiae, and developed a statistics-based model to calculate production yield using input variables that represent the number of enzymatic steps in the key biosynthetic pathway of interest, metabolic modifications, cultivation modes, nutrition and oxygen availability. Results Based on the production data of about 40 chemicals produced from S. cerevisiae, metabolic engineering methods, nutrient supplementation, and fermentation conditions described therein, we generated mathematical models with numerical and categorical variables to predict production yield. Statistically, the models showed that: 1. Chemical production from central metabolic precursors decreased exponentially with increasing number of enzymatic steps for biosynthesis (>30% loss of yield per enzymatic step, P-value = 0); 2. Categorical variables of gene overexpression and knockout improved product yield by 2~4 folds (P-value < 0.1); 3. Addition of notable amount of intermediate precursors or nutrients improved product yield by over five folds (P-value < 0.05); 4. Performing the cultivation in a well-controlled bioreactor enhanced the yield of product by three folds (P-value < 0.05); 5. Contribution of oxygen to product yield was not statistically significant. Yield calculations for various chemicals using the linear model were in fairly good agreement with the experimental values. The model generally underestimated the ethanol production as

  12. Ranking the Potential Yield of Salinity and Selenium from Subbasins in the Lower Gunnison River Basin Using Seasonal, Multi-parameter Regression Models

    NASA Astrophysics Data System (ADS)

    Linard, J.; Leib, K.; Colorado Water Science Center

    2010-12-01

    Elevated levels of salinity and dissolved selenium can detrimentally effect the quality of water where anthropogenic and natural uses are concerned. In areas, such as the lower Gunnison Basin of western Colorado, salinity and selenium are such a concern that control projects are implemented to limit their mobilization. To prioritize the locations in which control projects are implemented, multi-parameter regression models were developed to identify subbasins in the lower Gunnison River Basin that were most likely to have elevated salinity and dissolved selenium levels. The drainage area is about 5,900 mi2 and is underlain by Cretaceous marine shale, which is the most common source of salinity and dissolved selenium. To characterize the complex hydrologic and chemical processes governing constituent mobilization, geospatial variables representing 70 different environmental characteristics were correlated to mean seasonal (irrigation and nonirrigation seasons) salinity and selenium yields estimated at 154 sampling sites. The variables generally represented characteristics of the physical basin, precipitation, soil, geology, land use, and irrigation water delivery systems. Irrigation and nonirrigation seasons were selected due to documented effects of irrigation on constituent mobilization. Following a stepwise approach, combinations of the geospatial variables were used to develop four multi-parameter regression models. These models predicted salinity and selenium yield, within a 95 percent confidence range, at individual points in the Lower Gunnison Basin for irrigation and non-irrigation seasons. The corresponding subbasins were ranked according to their potential to yield salinity and selenium and rankings were used to prioritize areas that would most benefit from control projects.

  13. Assessment of climate change impact on yield of major crops in the Banas River Basin, India.

    PubMed

    Dubey, Swatantra Kumar; Sharma, Devesh

    2018-09-01

    Crop growth models like AquaCrop are useful in understanding the impact of climate change on crop production considering the various projections from global circulation models and regional climate models. The present study aims to assess the climate change impact on yield of major crops in the Banas River Basin i.e., wheat, barley and maize. Banas basin is part of the semi-arid region of Rajasthan state in India. AquaCrop model is used to calculate the yield of all the three crops for a historical period of 30years (1981-2010) and then compared with observed yield data. Root Mean Square Error (RMSE) values are calculated to assess the model accuracy in prediction of yield. Further, the calibrated model is used to predict the possible impacts of climate change and CO 2 concentration on crop yield using CORDEX-SA climate projections of three driving climate models (CNRM-CM5, CCSM4 and MPI-ESM-LR) for two different scenarios (RCP4.5 and RCP8.5) for the future period 2021-2050. RMSE values of simulated yield with respect to observed yield of wheat, barley and maize are 11.99, 16.15 and 19.13, respectively. It is predicted that crop yield of all three crops will increase under the climate change conditions for future period (2021-2050). Copyright © 2018 Elsevier B.V. All rights reserved.

  14. Integrated model for predicting rice yield with climate change

    NASA Astrophysics Data System (ADS)

    Park, Jin-Ki; Das, Amrita; Park, Jong-Hwa

    2018-04-01

    Rice is the chief agricultural product and one of the primary food source. For this reason, it is of pivotal importance for worldwide economy and development. Therefore, in a decision-support-system both for the farmers and in the planning and management of the country's economy, forecasting yield is vital. However, crop yield, which is a dependent of the soil-bio-atmospheric system, is difficult to represent in statistical language. This paper describes a novel approach for predicting rice yield using artificial neural network, spatial interpolation, remote sensing and GIS methods. Herein, the variation in the yield is attributed to climatic parameters and crop health, and the normalized difference vegetation index from MODIS is used as an indicator of plant health and growth. Due importance was given to scaling up the input parameters using spatial interpolation and GIS and minimising the sources of error in every step of the modelling. The low percentage error (2.91) and high correlation (0.76) signifies the robust performance of the proposed model. This simple but effective approach is then used to estimate the influence of climate change on South Korean rice production. As proposed in the RCP8.5 scenario, an upswing in temperature may increase the rice yield throughout South Korea.

  15. Development of LACIE CCEA-1 weather/wheat yield models. [regression analysis

    NASA Technical Reports Server (NTRS)

    Strommen, N. D.; Sakamoto, C. M.; Leduc, S. K.; Umberger, D. E. (Principal Investigator)

    1979-01-01

    The advantages and disadvantages of the casual (phenological, dynamic, physiological), statistical regression, and analog approaches to modeling for grain yield are examined. Given LACIE's primary goal of estimating wheat production for the large areas of eight major wheat-growing regions, the statistical regression approach of correlating historical yield and climate data offered the Center for Climatic and Environmental Assessment the greatest potential return within the constraints of time and data sources. The basic equation for the first generation wheat-yield model is given. Topics discussed include truncation, trend variable, selection of weather variables, episodic events, strata selection, operational data flow, weighting, and model results.

  16. Spatial variability of climate change impacts on yield of rice and wheat in the Indian Ganga Basin.

    PubMed

    Mishra, Ashok; Singh, R; Raghuwanshi, N S; Chatterjee, C; Froebrich, Jochen

    2013-12-01

    Indian Ganga Basin (IGB), one of the most densely populated areas in the world, is facing a significant threat to food grain production, besides increased yield gap between actual and potential production, due to climate change. We have analyzed the spatial variability of climate change impacts on rice and wheat yields at three different locations representing the upper, middle and lower IGB. The DSSAT model is used to simulate the effects of climate variability and climate change on rice and wheat yields by analyzing: (i) spatial crop yield response to current climate, and (ii) impact of a changing climate as projected by two regional climate models, REMO and HadRM3, based on SRES A1B emission scenarios for the period 2011-2040. Results for current climate demonstrate a significant gap between actual and potential yield for upper, middle and lower IGB stations. The analysis based on RCM projections shows that during 2011-2040, the largest reduction in rice and wheat yields will occur in the upper IGB (reduction of potential rice and wheat yield respectively by 43.2% and 20.9% by REMO, and 24.8% and 17.2% by HadRM3). In the lower IGB, however, contrasting results are obtained, with HadRM3 based projections showing an increase in the potential rice and wheat yields, whereas, REMO based projections show decreased potential yields. We discuss the influence of agro-climatic factors; variation in temperature, length of maturity period and leaf area index which are responsible for modeled spatial variability in crop yield response within the IGB. Copyright © 2013 Elsevier B.V. All rights reserved.

  17. Negative impacts of climate change on cereal yields: statistical evidence from France

    NASA Astrophysics Data System (ADS)

    Gammans, Matthew; Mérel, Pierre; Ortiz-Bobea, Ariel

    2017-05-01

    In several world regions, climate change is predicted to negatively affect crop productivity. The recent statistical yield literature emphasizes the importance of flexibly accounting for the distribution of growing-season temperature to better represent the effects of warming on crop yields. We estimate a flexible statistical yield model using a long panel from France to investigate the impacts of temperature and precipitation changes on wheat and barley yields. Winter varieties appear sensitive to extreme cold after planting. All yields respond negatively to an increase in spring-summer temperatures and are a decreasing function of precipitation about historical precipitation levels. Crop yields are predicted to be negatively affected by climate change under a wide range of climate models and emissions scenarios. Under warming scenario RCP8.5 and holding growing areas and technology constant, our model ensemble predicts a 21.0% decline in winter wheat yield, a 17.3% decline in winter barley yield, and a 33.6% decline in spring barley yield by the end of the century. Uncertainty from climate projections dominates uncertainty from the statistical model. Finally, our model predicts that continuing technology trends would counterbalance most of the effects of climate change.

  18. Climate Projections from the NARCliM Project: Bayesian Model Averaging of Maximum Temperature Projections

    NASA Astrophysics Data System (ADS)

    Olson, R.; Evans, J. P.; Fan, Y.

    2015-12-01

    NARCliM (NSW/ACT Regional Climate Modelling Project) is a regional climate project for Australia and the surrounding region. It dynamically downscales 4 General Circulation Models (GCMs) using three Regional Climate Models (RCMs) to provide climate projections for the CORDEX-AustralAsia region at 50 km resolution, and for south-east Australia at 10 km resolution. The project differs from previous work in the level of sophistication of model selection. Specifically, the selection process for GCMs included (i) conducting literature review to evaluate model performance, (ii) analysing model independence, and (iii) selecting models that span future temperature and precipitation change space. RCMs for downscaling the GCMs were chosen based on their performance for several precipitation events over South-East Australia, and on model independence.Bayesian Model Averaging (BMA) provides a statistically consistent framework for weighing the models based on their likelihood given the available observations. These weights are used to provide probability distribution functions (pdfs) for model projections. We develop a BMA framework for constructing probabilistic climate projections for spatially-averaged variables from the NARCliM project. The first step in the procedure is smoothing model output in order to exclude the influence of internal climate variability. Our statistical model for model-observations residuals is a homoskedastic iid process. Comparing RCMs with Australian Water Availability Project (AWAP) observations is used to determine model weights through Monte Carlo integration. Posterior pdfs of statistical parameters of model-data residuals are obtained using Markov Chain Monte Carlo. The uncertainty in the properties of the model-data residuals is fully accounted for when constructing the projections. We present the preliminary results of the BMA analysis for yearly maximum temperature for New South Wales state planning regions for the period 2060-2079.

  19. Potential impacts of agricultural drought on crop yield variability under a changing climate in Texas

    NASA Astrophysics Data System (ADS)

    Lee, K.; Leng, G.; Huang, M.; Sheffield, J.; Zhao, G.; Gao, H.

    2017-12-01

    Texas has the largest farm area in the U.S, and its revenue from crop production ranks third overall. With the changing climate, hydrological extremes such as droughts are becoming more frequent and intensified, causing significant yield reduction in rainfed agricultural systems. The objective of this study is to investigate the potential impacts of agricultural drought on crop yields (corn, sorghum, and wheat) under a changing climate in Texas. The Variable Infiltration Capacity (VIC) model, which is calibrated and validated over 10 major Texas river basins during the historical period, is employed in this study.The model is forced by a set of statistically downscaled climate projections from Coupled Model Intercomparison Project Phase 5 (CMIP5) model ensembles at a spatial resolution of 1/8°. The CMIP5 projections contain four Representative Concentration Pathways (RCP) that represent different greenhouse gas concentration (4.5 and 8.5 w/m2 are selected in this study). To carry out the analysis, VIC simulations from 1950 to 2099 are first analyzed to investigate how the frequency and severity of agricultural droughts will be altered in Texas (under a changing climate). Second, future crop yields are projected using a statistical crop model. Third, the effects of agricultural drought on crop yields are quantitatively analyzed. The results are expected to contribute to future water resources planning, with a goal of mitigating the negative impacts of future droughts on agricultural production in Texas.

  20. Developing a stochastic traffic volume prediction model for public-private partnership projects

    NASA Astrophysics Data System (ADS)

    Phong, Nguyen Thanh; Likhitruangsilp, Veerasak; Onishi, Masamitsu

    2017-11-01

    Transportation projects require an enormous amount of capital investment resulting from their tremendous size, complexity, and risk. Due to the limitation of public finances, the private sector is invited to participate in transportation project development. The private sector can entirely or partially invest in transportation projects in the form of Public-Private Partnership (PPP) scheme, which has been an attractive option for several developing countries, including Vietnam. There are many factors affecting the success of PPP projects. The accurate prediction of traffic volume is considered one of the key success factors of PPP transportation projects. However, only few research works investigated how to predict traffic volume over a long period of time. Moreover, conventional traffic volume forecasting methods are usually based on deterministic models which predict a single value of traffic volume but do not consider risk and uncertainty. This knowledge gap makes it difficult for concessionaires to estimate PPP transportation project revenues accurately. The objective of this paper is to develop a probabilistic traffic volume prediction model. First, traffic volumes were estimated following the Geometric Brownian Motion (GBM) process. Monte Carlo technique is then applied to simulate different scenarios. The results show that this stochastic approach can systematically analyze variations in the traffic volume and yield more reliable estimates for PPP projects.

  1. A meteorologically-driven yield reduction model for spring and winter wheat

    NASA Technical Reports Server (NTRS)

    Ravet, F. W.; Cremins, W. J.; Taylor, T. W.; Ashburn, P.; Smika, D.; Aaronson, A. (Principal Investigator)

    1983-01-01

    A yield reduction model for spring and winter wheat was developed for large-area crop condition assessment. Reductions are expressed in percentage from a base yield and are calculated on a daily basis. The algorithm contains two integral components: a two-layer soil water budget model and a crop calendar routine. Yield reductions associated with hot, dry winds (Sukhovey) and soil moisture stress are determined. Input variables include evapotranspiration, maximum temperature and precipitation; subsequently crop-stage, available water holding percentage and stress duration are evaluated. No specific base yield is required and may be selected by the user; however, it may be generally characterized as the maximum likely to be produced commercially at a location.

  2. Top ten models constrained by b {yields} s{gamma}

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Hewett, J.L.

    1994-12-01

    The radiative decay b {yields} s{gamma} is examined in the Standard Model and in nine classes of models which contain physics beyond the Standard Model. The constraints which may be placed on these models from the recent results of the CLEO Collaboration on both inclusive and exclusive radiative B decays is summarized. Reasonable bounds are found for the parameters in some cases.

  3. Modeling runoff and sediment yield from a terraced watershed using WEPP

    Treesearch

    Mary Carla McCullough; Dean E. Eisenhauer; Michael G. Dosskey

    2008-01-01

    The watershed version of WEPP (Water Erosion Prediction Project) was used to estimate 50-year runoff and sediment yields for a 291 ha watershed in eastern Nebraska that is 90% terraced and which has no historical gage data. The watershed has a complex matrix of elements, including terraced and non-terraced subwatersheds, multiple combinations of soils and land...

  4. A spectral-spatial-dynamic hierarchical Bayesian (SSD-HB) model for estimating soybean yield

    NASA Astrophysics Data System (ADS)

    Kazama, Yoriko; Kujirai, Toshihiro

    2014-10-01

    A method called a "spectral-spatial-dynamic hierarchical-Bayesian (SSD-HB) model," which can deal with many parameters (such as spectral and weather information all together) by reducing the occurrence of multicollinearity, is proposed. Experiments conducted on soybean yields in Brazil fields with a RapidEye satellite image indicate that the proposed SSD-HB model can predict soybean yield with a higher degree of accuracy than other estimation methods commonly used in remote-sensing applications. In the case of the SSD-HB model, the mean absolute error between estimated yield of the target area and actual yield is 0.28 t/ha, compared to 0.34 t/ha when conventional PLS regression was applied, showing the potential effectiveness of the proposed model.

  5. Simulation of crop yield variability by improved root-soil-interaction modelling

    NASA Astrophysics Data System (ADS)

    Duan, X.; Gayler, S.; Priesack, E.

    2009-04-01

    Understanding the processes and factors that govern the within-field variability in crop yield has attached great importance due to applications in precision agriculture. Crop response to environment at field scale is a complex dynamic process involving the interactions of soil characteristics, weather conditions and crop management. The numerous static factors combined with temporal variations make it very difficult to identify and manage the variability pattern. Therefore, crop simulation models are considered to be useful tools in analyzing separately the effects of change in soil or weather conditions on the spatial variability, in order to identify the cause of yield variability and to quantify the spatial and temporal variation. However, tests showed that usual crop models such as CERES-Wheat and CERES-Maize were not able to quantify the observed within-field yield variability, while their performance on crop growth simulation under more homogeneous and mainly non-limiting conditions was sufficent to simulate average yields at the field-scale. On a study site in South Germany, within-field variability in crop growth has been documented since years. After detailed analysis and classification of the soil patterns, two site specific factors, the plant-available-water and the O2 deficiency, were considered as the main causes of the crop growth variability in this field. Based on our measurement of root distribution in the soil profile, we hypothesize that in our case the insufficiency of the applied crop models to simulate the yield variability can be due to the oversimplification of the involved root models which fail to be sensitive to different soil conditions. In this study, the root growth model described by Jones et al. (1991) was adapted by using data of root distributions in the field and linking the adapted root model to the CERES crop model. The ability of the new root model to increase the sensitivity of the CERES crop models to different enviromental

  6. Modelling Bambara Groundnut Yield in Southern Africa: Towards a Climate-Resilient Future

    NASA Technical Reports Server (NTRS)

    Karunaratne, A. S.; Walker, S.; Ruane, A. C.

    2015-01-01

    Current agriculture depends on a few major species grown as monocultures that are supported by global research underpinning current productivity. However, many hundreds of alternative crops have the potential to meet real world challenges by sustaining humanity, diversifying agricultural systems for food and nutritional security, and especially responding to climate change through their resilience to certain climate conditions. Bambara groundnut (Vigna subterranea (L.) Verdc.), an underutilised African legume, is an exemplar crop for climate resilience. Predicted yield performances of Bambara groundnut by AquaCrop (a crop-water productivity model) were evaluated for baseline (1980-2009) and mid-century climates (2040-2069) under 20 downscaled Global Climate Models (CMIP5-RCP8.5), as well as for climate sensitivities (AgMIPC3MP) across 3 locations in Southern Africa (Botswana, South Africa, Namibia). Different land - races of Bambara groundnut originating from various semi-arid African locations showed diverse yield performances with diverse sensitivities to climate. S19 originating from hot-dry conditions in Namibia has greater future yield potential compared to the Swaziland landrace Uniswa Red-UN across study sites. South Africa has the lowest yield under the current climate, indicating positive future yield trends. Namibia reported the highest baseline yield at optimum current temperatures, indicating less yield potential in future climates. Bambara groundnut shows positive yield potential at temperatures of up to 31degC, with further warming pushing yields down. Thus, many regions in Southern Africa can utilize Bambara groundnut successfully in the coming decades. This modelling exercise supports decisions on genotypic suitability for present and future climates at specific locations.

  7. Evaluating the utility of dynamical downscaling in agricultural impacts projections

    PubMed Central

    Glotter, Michael; Elliott, Joshua; McInerney, David; Best, Neil; Foster, Ian; Moyer, Elisabeth J.

    2014-01-01

    Interest in estimating the potential socioeconomic costs of climate change has led to the increasing use of dynamical downscaling—nested modeling in which regional climate models (RCMs) are driven with general circulation model (GCM) output—to produce fine-spatial-scale climate projections for impacts assessments. We evaluate here whether this computationally intensive approach significantly alters projections of agricultural yield, one of the greatest concerns under climate change. Our results suggest that it does not. We simulate US maize yields under current and future CO2 concentrations with the widely used Decision Support System for Agrotechnology Transfer crop model, driven by a variety of climate inputs including two GCMs, each in turn downscaled by two RCMs. We find that no climate model output can reproduce yields driven by observed climate unless a bias correction is first applied. Once a bias correction is applied, GCM- and RCM-driven US maize yields are essentially indistinguishable in all scenarios (<10% discrepancy, equivalent to error from observations). Although RCMs correct some GCM biases related to fine-scale geographic features, errors in yield are dominated by broad-scale (100s of kilometers) GCM systematic errors that RCMs cannot compensate for. These results support previous suggestions that the benefits for impacts assessments of dynamically downscaling raw GCM output may not be sufficient to justify its computational demands. Progress on fidelity of yield projections may benefit more from continuing efforts to understand and minimize systematic error in underlying climate projections. PMID:24872455

  8. Similar Estimates of Temperature Impacts on Global Wheat Yield by Three Independent Methods

    NASA Technical Reports Server (NTRS)

    Liu, Bing; Asseng, Senthold; Muller, Christoph; Ewart, Frank; Elliott, Joshua; Lobell, David B.; Martre, Pierre; Ruane, Alex C.; Wallach, Daniel; Jones, James W.; hide

    2016-01-01

    The potential impact of global temperature change on global crop yield has recently been assessed with different methods. Here we show that grid-based and point-based simulations and statistical regressions (from historic records), without deliberate adaptation or CO2 fertilization effects, produce similar estimates of temperature impact on wheat yields at global and national scales. With a 1 C global temperature increase, global wheat yield is projected to decline between 4.1% and 6.4%. Projected relative temperature impacts from different methods were similar for major wheat-producing countries China, India, USA and France, but less so for Russia. Point-based and grid-based simulations, and to some extent the statistical regressions, were consistent in projecting that warmer regions are likely to suffer more yield loss with increasing temperature than cooler regions. By forming a multi-method ensemble, it was possible to quantify 'method uncertainty' in addition to model uncertainty. This significantly improves confidence in estimates of climate impacts on global food security.

  9. Similar estimates of temperature impacts on global wheat yield by three independent methods

    NASA Astrophysics Data System (ADS)

    Liu, Bing; Asseng, Senthold; Müller, Christoph; Ewert, Frank; Elliott, Joshua; Lobell, David B.; Martre, Pierre; Ruane, Alex C.; Wallach, Daniel; Jones, James W.; Rosenzweig, Cynthia; Aggarwal, Pramod K.; Alderman, Phillip D.; Anothai, Jakarat; Basso, Bruno; Biernath, Christian; Cammarano, Davide; Challinor, Andy; Deryng, Delphine; Sanctis, Giacomo De; Doltra, Jordi; Fereres, Elias; Folberth, Christian; Garcia-Vila, Margarita; Gayler, Sebastian; Hoogenboom, Gerrit; Hunt, Leslie A.; Izaurralde, Roberto C.; Jabloun, Mohamed; Jones, Curtis D.; Kersebaum, Kurt C.; Kimball, Bruce A.; Koehler, Ann-Kristin; Kumar, Soora Naresh; Nendel, Claas; O'Leary, Garry J.; Olesen, Jørgen E.; Ottman, Michael J.; Palosuo, Taru; Prasad, P. V. Vara; Priesack, Eckart; Pugh, Thomas A. M.; Reynolds, Matthew; Rezaei, Ehsan E.; Rötter, Reimund P.; Schmid, Erwin; Semenov, Mikhail A.; Shcherbak, Iurii; Stehfest, Elke; Stöckle, Claudio O.; Stratonovitch, Pierre; Streck, Thilo; Supit, Iwan; Tao, Fulu; Thorburn, Peter; Waha, Katharina; Wall, Gerard W.; Wang, Enli; White, Jeffrey W.; Wolf, Joost; Zhao, Zhigan; Zhu, Yan

    2016-12-01

    The potential impact of global temperature change on global crop yield has recently been assessed with different methods. Here we show that grid-based and point-based simulations and statistical regressions (from historic records), without deliberate adaptation or CO2 fertilization effects, produce similar estimates of temperature impact on wheat yields at global and national scales. With a 1 °C global temperature increase, global wheat yield is projected to decline between 4.1% and 6.4%. Projected relative temperature impacts from different methods were similar for major wheat-producing countries China, India, USA and France, but less so for Russia. Point-based and grid-based simulations, and to some extent the statistical regressions, were consistent in projecting that warmer regions are likely to suffer more yield loss with increasing temperature than cooler regions. By forming a multi-method ensemble, it was possible to quantify `method uncertainty’ in addition to model uncertainty. This significantly improves confidence in estimates of climate impacts on global food security.

  10. Evaluation of the CEAS model for barley yields in North Dakota and Minnesota

    NASA Technical Reports Server (NTRS)

    Barnett, T. L. (Principal Investigator)

    1981-01-01

    The CEAS yield model is based upon multiple regression analysis at the CRD and state levels. For the historical time series, yield is regressed on a set of variables derived from monthly mean temperature and monthly precipitation. Technological trend is represented by piecewise linear and/or quadriatic functions of year. Indicators of yield reliability obtained from a ten-year bootstrap test (1970-79) demonstrated that biases are small and performance as indicated by the root mean square errors are acceptable for intended application, however, model response for individual years particularly unusual years, is not very reliable and shows some large errors. The model is objective, adequate, timely, simple and not costly. It considers scientific knowledge on a broad scale but not in detail, and does not provide a good current measure of modeled yield reliability.

  11. OAKSIM: An individual-tree growth and yield simulator for managed, even-aged, upland oak stands

    Treesearch

    Donald E. Hilt; Donald E. Hilt

    1985-01-01

    OAKSIM is an individual-tree growth and yield simulator for managed, even-aged, upland oak stands. Growth and yield projections for various thinning alternatives can be made with OAKSIM for a period of up to 50 years. Simulator components include an individual-tree diameter growth model, a mortality model, height prediction equations, bark ratio equations, a taper-...

  12. Model-assisted forest yield estimation with light detection and ranging

    Treesearch

    Jacob L. Strunk; Stephen E. Reutebuch; Hans-Erik Andersen; Peter J. Gould; Robert J. McGaughey

    2012-01-01

    Previous studies have demonstrated that light detection and ranging (LiDAR)-derived variables can be used to model forest yield variables, such as biomass, volume, and number of stems. However, the next step is underrepresented in the literature: estimation of forest yield with appropriate confidence intervals. It is of great importance that the procedures required for...

  13. Spatial and Temporal Uncertainty of Crop Yield Aggregations

    NASA Technical Reports Server (NTRS)

    Porwollik, Vera; Mueller, Christoph; Elliott, Joshua; Chryssanthacopoulos, James; Iizumi, Toshichika; Ray, Deepak K.; Ruane, Alex C.; Arneth, Almut; Balkovic, Juraj; Ciais, Philippe; hide

    2016-01-01

    The aggregation of simulated gridded crop yields to national or regional scale requires information on temporal and spatial patterns of crop-specific harvested areas. This analysis estimates the uncertainty of simulated gridded yield time series related to the aggregation with four different harvested area data sets. We compare aggregated yield time series from the Global Gridded Crop Model Inter-comparison project for four crop types from 14 models at global, national, and regional scale to determine aggregation-driven differences in mean yields and temporal patterns as measures of uncertainty. The quantity and spatial patterns of harvested areas differ for individual crops among the four datasets applied for the aggregation. Also simulated spatial yield patterns differ among the 14 models. These differences in harvested areas and simulated yield patterns lead to differences in aggregated productivity estimates, both in mean yield and in the temporal dynamics. Among the four investigated crops, wheat yield (17% relative difference) is most affected by the uncertainty introduced by the aggregation at the global scale. The correlation of temporal patterns of global aggregated yield time series can be as low as for soybean (r = 0.28).For the majority of countries, mean relative differences of nationally aggregated yields account for10% or less. The spatial and temporal difference can be substantial higher for individual countries. Of the top-10 crop producers, aggregated national multi-annual mean relative difference of yields can be up to 67% (maize, South Africa), 43% (wheat, Pakistan), 51% (rice, Japan), and 427% (soybean, Bolivia).Correlations of differently aggregated yield time series can be as low as r = 0.56 (maize, India), r = 0.05*Corresponding (wheat, Russia), r = 0.13 (rice, Vietnam), and r = -0.01 (soybean, Uruguay). The aggregation to sub-national scale in comparison to country scale shows that spatial uncertainties can cancel out in countries with

  14. Modeling global yield growth of major crops under multiple socioeconomic pathways

    NASA Astrophysics Data System (ADS)

    Iizumi, T.; Kim, W.; Zhihong, S.; Nishimori, M.

    2016-12-01

    Global gridded crop models (GGCMs) are a key tool in deriving global food security scenarios under climate change. However, it is difficult for GGCMs to reproduce the reported yield growth patterns—rapid growth, yield stagnation and yield collapse. Here, we propose a set of parameterizations for GGCMs to capture the contributions to yield from technological improvements at the national and multi-decadal scales. These include country annual per capita gross domestic product (GDP)-based parameterizations for the nitrogen application rate and crop tolerance to stresses associated with high temperature, low temperature, water deficit and water excess. Using a GGCM combined with the parameterizations, we present global 140-year (1961-2100) yield growth simulations for maize, soybean, rice and wheat under multiple shared socioeconomic pathways (SSPs) and no climate change. The model reproduces the major characteristics of reported global and country yield growth patterns over the 1961-2013 period. Under the most rapid developmental pathway SSP5, the simulated global yields for 2091-2100, relative to 2001-2010, are the highest (1.21-1.82 times as high, with variations across the crops), followed by SSP1 (1.14-1.56 times as high), SSP2 (1.12-1.49 times as high), SSP4 (1.08-1.38 times as high) and SSP3 (1.08-1.36 times as high). Future country yield growth varies substantially by income level as well as by crop and by SSP. These yield pathways offer a new baseline for addressing the interdisciplinary questions related to global agricultural development, food security and climate change.

  15. Statistical modeling of SRAM yield performance and circuit variability

    NASA Astrophysics Data System (ADS)

    Cheng, Qi; Chen, Yijian

    2015-03-01

    In this paper, we develop statistical models to investigate SRAM yield performance and circuit variability in the presence of self-aligned multiple patterning (SAMP) process. It is assumed that SRAM fins are fabricated by a positivetone (spacer is line) self-aligned sextuple patterning (SASP) process which accommodates two types of spacers, while gates are fabricated by a more pitch-relaxed self-aligned quadruple patterning (SAQP) process which only allows one type of spacer. A number of possible inverter and SRAM structures are identified and the related circuit multi-modality is studied using the developed failure-probability and yield models. It is shown that SRAM circuit yield is significantly impacted by the multi-modality of fins' spatial variations in a SRAM cell. The sensitivity of 6-transistor SRAM read/write failure probability to SASP process variations is calculated and the specific circuit type with the highest probability to fail in the reading/writing operation is identified. Our study suggests that the 6-transistor SRAM configuration may not be scalable to 7-nm half pitch and more robust SRAM circuit design needs to be researched.

  16. Universality and depinning models for plastic yield in amorphous materials

    NASA Astrophysics Data System (ADS)

    Budrikis, Zoe; Fernandez Castellano, David; Sandfeld, Stefan; Zaiser, Michael; Zapperi, Stefano

    Plastic yield in amorphous materials occurs as a result of complex collective dynamics of local reorganizations, which gives rise to rich phenomena such as strain localization, intermittent dynamics and power-law distributed avalanches. While such systems have received considerable attention, both theoretical and experimental, controversy remains over the nature of the yielding transition. We present a new fully-tensorial coarsegrained model in 2D and 3D, and demonstrate that the exponents describing avalanche distributions are universal under a variety of loading conditions, system dimensionality and size, and boundary conditions. Our results show that while depinning-type models in general are apt to describe the system, mean field depinning models are not.

  17. The Inter-Sectoral Impact Model Intercomparison Project (ISI–MIP): Project framework

    PubMed Central

    Warszawski, Lila; Frieler, Katja; Huber, Veronika; Piontek, Franziska; Serdeczny, Olivia; Schewe, Jacob

    2014-01-01

    The Inter-Sectoral Impact Model Intercomparison Project offers a framework to compare climate impact projections in different sectors and at different scales. Consistent climate and socio-economic input data provide the basis for a cross-sectoral integration of impact projections. The project is designed to enable quantitative synthesis of climate change impacts at different levels of global warming. This report briefly outlines the objectives and framework of the first, fast-tracked phase of Inter-Sectoral Impact Model Intercomparison Project, based on global impact models, and provides an overview of the participating models, input data, and scenario set-up. PMID:24344316

  18. Tradeoffs between Maize Silage Yield and Nitrate Leaching in a Mediterranean Nitrate-Vulnerable Zone under Current and Projected Climate Scenarios

    PubMed Central

    Basso, Bruno; Giola, Pietro; Dumont, Benjamin; Migliorati, Massimiliano De Antoni; Cammarano, Davide; Pruneddu, Giovanni; Giunta, Francesco

    2016-01-01

    Future climatic changes may have profound impacts on cropping systems and affect the agronomic and environmental sustainability of current N management practices. The objectives of this work were to i) evaluate the ability of the SALUS crop model to reproduce experimental crop yield and soil nitrate dynamics results under different N fertilizer treatments in a farmer’s field, ii) use the SALUS model to estimate the impacts of different N fertilizer treatments on NO3- leaching under future climate scenarios generated by twenty nine different global circulation models, and iii) identify the management system that best minimizes NO3- leaching and maximizes yield under projected future climate conditions. A field experiment (maize-triticale rotation) was conducted in a nitrate vulnerable zone on the west coast of Sardinia, Italy to evaluate N management strategies that include urea fertilization (NMIN), conventional fertilization with dairy slurry and urea (CONV), and no fertilization (N0). An ensemble of 29 global circulation models (GCM) was used to simulate different climate scenarios for two Representative Circulation Pathways (RCP6.0 and RCP8.5) and evaluate potential nitrate leaching and biomass production in this region over the next 50 years. Data collected from two growing seasons showed that the SALUS model adequately simulated both nitrate leaching and crop yield, with a relative error that ranged between 0.4% and 13%. Nitrate losses under RCP8.5 were lower than under RCP6.0 only for NMIN. Accordingly, levels of plant N uptake, N use efficiency and biomass production were higher under RCP8.5 than RCP6.0. Simulations under both RCP scenarios indicated that the NMIN treatment demonstrated both the highest biomass production and NO3- losses. The newly proposed best management practice (BMP), developed from crop N uptake data, was identified as the optimal N fertilizer management practice since it minimized NO3- leaching and maximized biomass production over

  19. Supporting Current Energy Conversion Projects through Numerical Modeling

    NASA Astrophysics Data System (ADS)

    James, S. C.; Roberts, J.

    2016-02-01

    The primary goals of current energy conversion (CEC) technology being developed today are to optimize energy output and minimize environmental impact. CEC turbines generate energy from tidal and current systems and create wakes that interact with turbines located downstream of a device. The placement of devices can greatly influence power generation and structural reliability. CECs can also alter the environment surrounding the turbines, such as flow regimes, sediment dynamics, and water quality. These alterations pose potential stressors to numerous environmental receptors. Software is needed to investigate specific CEC sites to simulate power generation and hydrodynamic responses of a flow through a CEC turbine array so that these potential impacts can be evaluated. Moreover, this software can be used to optimize array layouts that yield the least changes to the environmental (i.e., hydrodynamics, sediment dynamics, and water quality). Through model calibration exercises, simulated wake profiles and turbulence intensities compare favorably to the experimental data and demonstrate the utility and accuracy of a fast-running tool for future siting and analysis of CEC arrays in complex domains. The Delft3D modeling tool facilitates siting of CEC projects through optimization of array layouts and evaluation of potential environmental effect all while provide a common "language" for academics, industry, and regulators to be able to discuss the implications of marine renewable energy projects. Given the enormity of any full-scale marine renewable energy project, it necessarily falls to modeling to evaluate how array operations must be addressed in an environmental impact statement in a way that engenders confidence in the assessment of the CEC array to minimize environmental effects.

  20. Projected Climate Impacts to South African Maize and Wheat Production in 2055: A Comparison of Empirical and Mechanistic Modeling Approaches

    NASA Technical Reports Server (NTRS)

    Estes, Lyndon D.; Beukes, Hein; Bradley, Bethany A.; Debats, Stephanie R.; Oppenheimer, Michael; Ruane, Alex C.; Schulze, Roland; Tadross, Mark

    2013-01-01

    Crop model-specific biases are a key uncertainty affecting our understanding of climate change impacts to agriculture. There is increasing research focus on intermodel variation, but comparisons between mechanistic (MMs) and empirical models (EMs) are rare despite both being used widely in this field. We combined MMs and EMs to project future (2055) changes in the potential distribution (suitability) and productivity of maize and spring wheat in South Africa under 18 downscaled climate scenarios (9 models run under 2 emissions scenarios). EMs projected larger yield losses or smaller gains than MMs. The EMs' median-projected maize and wheat yield changes were 3.6% and 6.2%, respectively, compared to 6.5% and 15.2% for the MM. The EM projected a 10% reduction in the potential maize growing area, where the MM projected a 9% gain. Both models showed increases in the potential spring wheat production region (EM = 48%, MM = 20%), but these results were more equivocal because both models (particularly the EM) substantially overestimated the extent of current suitability. The substantial water-use efficiency gains simulated by the MMs under elevated CO2 accounted for much of the EMMM difference, but EMs may have more accurately represented crop temperature sensitivities. Our results align with earlier studies showing that EMs may show larger climate change losses than MMs. Crop forecasting efforts should expand to include EMMM comparisons to provide a fuller picture of crop-climate response uncertainties.

  1. Evaluation of weather-based rice yield models in India.

    PubMed

    Sudharsan, D; Adinarayana, J; Reddy, D Raji; Sreenivas, G; Ninomiya, S; Hirafuji, M; Kiura, T; Tanaka, K; Desai, U B; Merchant, S N

    2013-01-01

    The objective of this study was to compare two different rice simulation models--standalone (Decision Support System for Agrotechnology Transfer [DSSAT]) and web based (SImulation Model for RIce-Weather relations [SIMRIW])--with agrometeorological data and agronomic parameters for estimation of rice crop production in southern semi-arid tropics of India. Studies were carried out on the BPT5204 rice variety to evaluate two crop simulation models. Long-term experiments were conducted in a research farm of Acharya N G Ranga Agricultural University (ANGRAU), Hyderabad, India. Initially, the results were obtained using 4 years (1994-1997) of data with weather parameters from a local weather station to evaluate DSSAT simulated results with observed values. Linear regression models used for the purpose showed a close relationship between DSSAT and observed yield. Subsequently, yield comparisons were also carried out with SIMRIW and DSSAT, and validated with actual observed values. Realizing the correlation coefficient values of SIMRIW simulation values in acceptable limits, further rice experiments in monsoon (Kharif) and post-monsoon (Rabi) agricultural seasons (2009, 2010 and 2011) were carried out with a location-specific distributed sensor network system. These proximal systems help to simulate dry weight, leaf area index and potential yield by the Java based SIMRIW on a daily/weekly/monthly/seasonal basis. These dynamic parameters are useful to the farming community for necessary decision making in a ubiquitous manner. However, SIMRIW requires fine tuning for better results/decision making.

  2. Integrated remote sensing imagery and two-dimensional hydraulic modeling approach for impact evaluation of flood on crop yields

    NASA Astrophysics Data System (ADS)

    Chen, Huili; Liang, Zhongyao; Liu, Yong; Liang, Qiuhua; Xie, Shuguang

    2017-10-01

    The projected frequent occurrences of extreme flood events will cause significant losses to crops and will threaten food security. To reduce the potential risk and provide support for agricultural flood management, prevention, and mitigation, it is important to account for flood damage to crop production and to understand the relationship between flood characteristics and crop losses. A quantitative and effective evaluation tool is therefore essential to explore what and how flood characteristics will affect the associated crop loss, based on accurately understanding the spatiotemporal dynamics of flood evolution and crop growth. Current evaluation methods are generally integrally or qualitatively based on statistic data or ex-post survey with less diagnosis into the process and dynamics of historical flood events. Therefore, a quantitative and spatial evaluation framework is presented in this study that integrates remote sensing imagery and hydraulic model simulation to facilitate the identification of historical flood characteristics that influence crop losses. Remote sensing imagery can capture the spatial variation of crop yields and yield losses from floods on a grid scale over large areas; however, it is incapable of providing spatial information regarding flood progress. Two-dimensional hydraulic model can simulate the dynamics of surface runoff and accomplish spatial and temporal quantification of flood characteristics on a grid scale over watersheds, i.e., flow velocity and flood duration. The methodological framework developed herein includes the following: (a) Vegetation indices for the critical period of crop growth from mid-high temporal and spatial remote sensing imagery in association with agricultural statistics data were used to develop empirical models to monitor the crop yield and evaluate yield losses from flood; (b) The two-dimensional hydraulic model coupled with the SCS-CN hydrologic model was employed to simulate the flood evolution process

  3. Robust features of future climate change impacts on sorghum yields in West Africa

    NASA Astrophysics Data System (ADS)

    Sultan, B.; Guan, K.; Kouressy, M.; Biasutti, M.; Piani, C.; Hammer, G. L.; McLean, G.; Lobell, D. B.

    2014-10-01

    West Africa is highly vulnerable to climate hazards and better quantification and understanding of the impact of climate change on crop yields are urgently needed. Here we provide an assessment of near-term climate change impacts on sorghum yields in West Africa and account for uncertainties both in future climate scenarios and in crop models. Towards this goal, we use simulations of nine bias-corrected CMIP5 climate models and two crop models (SARRA-H and APSIM) to evaluate the robustness of projected crop yield impacts in this area. In broad agreement with the full CMIP5 ensemble, our subset of bias-corrected climate models projects a mean warming of +2.8 °C in the decades of 2031-2060 compared to a baseline of 1961-1990 and a robust change in rainfall in West Africa with less rain in the Western part of the Sahel (Senegal, South-West Mali) and more rain in Central Sahel (Burkina Faso, South-West Niger). Projected rainfall deficits are concentrated in early monsoon season in the Western part of the Sahel while positive rainfall changes are found in late monsoon season all over the Sahel, suggesting a shift in the seasonality of the monsoon. In response to such climate change, but without accounting for direct crop responses to CO2, mean crop yield decreases by about 16-20% and year-to-year variability increases in the Western part of the Sahel, while the eastern domain sees much milder impacts. Such differences in climate and impacts projections between the Western and Eastern parts of the Sahel are highly consistent across the climate and crop models used in this study. We investigate the robustness of impacts for different choices of cultivars, nutrient treatments, and crop responses to CO2. Adverse impacts on mean yield and yield variability are lowest for modern cultivars, as their short and nearly fixed growth cycle appears to be more resilient to the seasonality shift of the monsoon, thus suggesting shorter season varieties could be considered a potential

  4. Climate risks on potato yield in Europe

    NASA Astrophysics Data System (ADS)

    Sun, Xun; Lall, Upmanu

    2016-04-01

    The yield of potatoes is affected by water and temperature during the growing season. We study the impact of a suite of climate variables on potato yield at country level. More than ten climate variables related to the growth of potato are considered, including the seasonal rainfall and temperature, but also extreme conditions at different averaging periods from daily to monthly. A Bayesian hierarchical model is developed to jointly consider the risk of heat stress, cold stress, wet and drought. Future climate risks are investigated through the projection of future climate data. This study contributes to assess the risks of present and future climate risks on potatoes yield, especially the risks of extreme events, which could be used to guide better sourcing strategy and ensure food security in the future.

  5. A Scaling Model for the Anthropocene Climate Variability with Projections to 2100

    NASA Astrophysics Data System (ADS)

    Hébert, Raphael; Lovejoy, Shaun

    2017-04-01

    The determination of the climate sensitivity to radiative forcing is a fundamental climate science problem with important policy implications. We use a scaling model, with a limited set of parameters, which can directly calculate the forced globally-average surface air temperature response to anthropogenic and natural forcings. At timescales larger than an inner scale τ, which we determine as the ocean-atmosphere coupling scale at around 2 years, the global system responds, approximately, linearly, so that the variability may be decomposed into additive forced and internal components. The Ruelle response theory extends the classical linear response theory for small perturbations to systems far from equilibrium. Our model thus relates radiative forcings to a forced temperature response by convolution with a suitable Green's function, or climate response function. Motivated by scaling symmetries which allow for long range dependence, we assume a general scaling form, a scaling climate response function (SCRF) which is able to produce a wide range of responses: a power-law truncated at τ. This allows us to analytically calculate the climate sensitivity at different time scales, yielding a one-to-one relation from the transient climate response to the equilibrium climate sensitivity which are estimated, respectively, as 1.6+0.3-0.2K and 2.4+1.3-0.6K at the 90 % confidence level. The model parameters are estimated within a Bayesian framework, with a fractional Gaussian noise error model as the internal variability, from forcing series, instrumental surface temperature datasets and CMIP5 GCMs Representative Concentration Pathways (RCP) scenario runs. This observation based model is robust and projections for the coming century are made following the RCP scenario 2.6, 4.5 and 8.5, yielding in the year 2100, respectively : 1.5 +0.3)_{-0.2K, 2.3 ± 0.4 K and 4.0 ± 0.6 K at the 90 % confidence level. For comparison, the associated projections from a CMIP5 multi-model

  6. Calibration-induced uncertainty of the EPIC model to estimate climate change impact on global maize yield

    NASA Astrophysics Data System (ADS)

    Xiong, Wei; Skalský, Rastislav; Porter, Cheryl H.; Balkovič, Juraj; Jones, James W.; Yang, Di

    2016-09-01

    Understanding the interactions between agricultural production and climate is necessary for sound decision-making in climate policy. Gridded and high-resolution crop simulation has emerged as a useful tool for building this understanding. Large uncertainty exists in this utilization, obstructing its capacity as a tool to devise adaptation strategies. Increasing focus has been given to sources of uncertainties for climate scenarios, input-data, and model, but uncertainties due to model parameter or calibration are still unknown. Here, we use publicly available geographical data sets as input to the Environmental Policy Integrated Climate model (EPIC) for simulating global-gridded maize yield. Impacts of climate change are assessed up to the year 2099 under a climate scenario generated by HadEM2-ES under RCP 8.5. We apply five strategies by shifting one specific parameter in each simulation to calibrate the model and understand the effects of calibration. Regionalizing crop phenology or harvest index appears effective to calibrate the model for the globe, but using various values of phenology generates pronounced difference in estimated climate impact. However, projected impacts of climate change on global maize production are consistently negative regardless of the parameter being adjusted. Different values of model parameter result in a modest uncertainty at global level, with difference of the global yield change less than 30% by the 2080s. The uncertainty subjects to decrease if applying model calibration or input data quality control. Calibration has a larger effect at local scales, implying the possible types and locations for adaptation.

  7. Primary and Secondary Yield Losses Caused by Pests and Diseases: Assessment and Modeling in Coffee

    PubMed Central

    Gary, Christian; Tixier, Philippe; Lechevallier, Esther

    2017-01-01

    The assessment of crop yield losses is needed for the improvement of production systems that contribute to the incomes of rural families and food security worldwide. However, efforts to quantify yield losses and identify their causes are still limited, especially for perennial crops. Our objectives were to quantify primary yield losses (incurred in the current year of production) and secondary yield losses (resulting from negative impacts of the previous year) of coffee due to pests and diseases, and to identify the most important predictors of coffee yields and yield losses. We established an experimental coffee parcel with full-sun exposure that consisted of six treatments, which were defined as different sequences of pesticide applications. The trial lasted three years (2013–2015) and yield components, dead productive branches, and foliar pests and diseases were assessed as predictors of yield. First, we calculated yield losses by comparing actual yields of specific treatments with the estimated attainable yield obtained in plots which always had chemical protection. Second, we used structural equation modeling to identify the most important predictors. Results showed that pests and diseases led to high primary yield losses (26%) and even higher secondary yield losses (38%). We identified the fruiting nodes and the dead productive branches as the most important and useful predictors of yields and yield losses. These predictors could be added in existing mechanistic models of coffee, or can be used to develop new linear mixed models to estimate yield losses. Estimated yield losses can then be related to production factors to identify corrective actions that farmers can implement to reduce losses. The experimental and modeling approaches of this study could also be applied in other perennial crops to assess yield losses. PMID:28046054

  8. Primary and Secondary Yield Losses Caused by Pests and Diseases: Assessment and Modeling in Coffee.

    PubMed

    Cerda, Rolando; Avelino, Jacques; Gary, Christian; Tixier, Philippe; Lechevallier, Esther; Allinne, Clémentine

    2017-01-01

    The assessment of crop yield losses is needed for the improvement of production systems that contribute to the incomes of rural families and food security worldwide. However, efforts to quantify yield losses and identify their causes are still limited, especially for perennial crops. Our objectives were to quantify primary yield losses (incurred in the current year of production) and secondary yield losses (resulting from negative impacts of the previous year) of coffee due to pests and diseases, and to identify the most important predictors of coffee yields and yield losses. We established an experimental coffee parcel with full-sun exposure that consisted of six treatments, which were defined as different sequences of pesticide applications. The trial lasted three years (2013-2015) and yield components, dead productive branches, and foliar pests and diseases were assessed as predictors of yield. First, we calculated yield losses by comparing actual yields of specific treatments with the estimated attainable yield obtained in plots which always had chemical protection. Second, we used structural equation modeling to identify the most important predictors. Results showed that pests and diseases led to high primary yield losses (26%) and even higher secondary yield losses (38%). We identified the fruiting nodes and the dead productive branches as the most important and useful predictors of yields and yield losses. These predictors could be added in existing mechanistic models of coffee, or can be used to develop new linear mixed models to estimate yield losses. Estimated yield losses can then be related to production factors to identify corrective actions that farmers can implement to reduce losses. The experimental and modeling approaches of this study could also be applied in other perennial crops to assess yield losses.

  9. Projected changes in crop yield mean and variability over West Africa in a world 1.5 K warmer than the pre-industrial era

    NASA Astrophysics Data System (ADS)

    Parkes, Ben; Defrance, Dimitri; Sultan, Benjamin; Ciais, Philippe; Wang, Xuhui

    2018-02-01

    The ability of a region to feed itself in the upcoming decades is an important issue. The West African population is expected to increase significantly in the next 30 years. The responses of crops to short-term climate change is critical to the population and the decision makers tasked with food security. This leads to three questions: how will crop yields change in the near future? What influence will climate change have on crop failures? Which adaptation methods should be employed to ameliorate undesirable changes? An ensemble of near-term climate projections are used to simulate maize, millet and sorghum in West Africa in the recent historic period (1986-2005) and a near-term future when global temperatures are 1.5 K above pre-industrial levels to assess the change in yield, yield variability and crop failure rate. Four crop models were used to simulate maize, millet and sorghum in West Africa in the historic and future climates. Across the majority of West Africa the maize, millet and sorghum yields are shown to fall. In the regions where yields increase, the variability also increases. This increase in variability increases the likelihood of crop failures, which are defined as yield negative anomalies beyond 1 standard deviation during the historic period. The increasing variability increases the frequency of crop failures across West Africa. The return time of crop failures falls from 8.8, 9.7 and 10.1 years to 5.2, 6.3 and 5.8 years for maize, millet and sorghum respectively. The adoption of heat-resistant cultivars and the use of captured rainwater have been investigated using one crop model as an idealized sensitivity test. The generalized doption of a cultivar resistant to high-temperature stress during flowering is shown to be more beneficial than using rainwater harvesting.

  10. Inflow, Outflow, Yields, and Stellar Population Mixing in Chemical Evolution Models

    NASA Astrophysics Data System (ADS)

    Andrews, Brett H.; Weinberg, David H.; Schönrich, Ralph; Johnson, Jennifer A.

    2017-02-01

    Chemical evolution models are powerful tools for interpreting stellar abundance surveys and understanding galaxy evolution. However, their predictions depend heavily on the treatment of inflow, outflow, star formation efficiency (SFE), the stellar initial mass function, the SN Ia delay time distribution, stellar yields, and stellar population mixing. Using flexCE, a flexible one-zone chemical evolution code, we investigate the effects of and trade-offs between parameters. Two critical parameters are SFE and the outflow mass-loading parameter, which shift the knee in [O/Fe]-[Fe/H] and the equilibrium abundances that the simulations asymptotically approach, respectively. One-zone models with simple star formation histories follow narrow tracks in [O/Fe]-[Fe/H] unlike the observed bimodality (separate high-α and low-α sequences) in this plane. A mix of one-zone models with inflow timescale and outflow mass-loading parameter variations, motivated by the inside-out galaxy formation scenario with radial mixing, reproduces the two sequences better than a one-zone model with two infall epochs. We present [X/Fe]-[Fe/H] tracks for 20 elements assuming three different supernova yield models and find some significant discrepancies with solar neighborhood observations, especially for elements with strongly metallicity-dependent yields. We apply principal component abundance analysis to the simulations and existing data to reveal the main correlations among abundances and quantify their contributions to variation in abundance space. For the stellar population mixing scenario, the abundances of α-elements and elements with metallicity-dependent yields dominate the first and second principal components, respectively, and collectively explain 99% of the variance in the model. flexCE is a python package available at https://github.com/bretthandrews/flexCE.

  11. Parsing multiple processes of high temperature impacts on corn/soybean yield using a newly developed CLM-APSIM modeling framework

    NASA Astrophysics Data System (ADS)

    Peng, B.; Guan, K.; Chen, M.

    2016-12-01

    Future agricultural production faces a grand challenge of higher temperature under climate change. There are multiple physiological or metabolic processes of how high temperature affects crop yield. Specifically, we consider the following major processes: (1) direct temperature effects on photosynthesis and respiration; (2) speed-up growth rate and the shortening of growing season; (3) heat stress during reproductive stage (flowering and grain-filling); (4) high-temperature induced increase of atmospheric water demands. In this work, we use a newly developed modeling framework (CLM-APSIM) to simulate the corn and soybean growth and explicitly parse the above four processes. By combining the strength of CLM in modeling surface biophysical (e.g., hydrology and energy balance) and biogeochemical (e.g., photosynthesis and carbon-nitrogen interactions), as well as that of APSIM in modeling crop phenology and reproductive stress, the newly developed CLM-APSIM modeling framework enables us to diagnose the impacts of high temperature stress through different processes at various crop phenology stages. Ground measurements from the advanced SoyFACE facility at University of Illinois is used here to calibrate, validate, and improve the CLM-APSIM modeling framework at the site level. We finally use the CLM-APSIM modeling framework to project crop yield for the whole US Corn Belt under different climate scenarios.

  12. World energy projection system: Model documentation

    NASA Astrophysics Data System (ADS)

    1992-06-01

    The World Energy Project System (WEPS) is an accounting framework that incorporates projects from independently documented models and assumptions about the future energy intensity of economic activity (ratios of total energy consumption divided by gross domestic product) and about the rate of incremental energy requirements met by hydropower, geothermal, coal, and natural gas to produce projections of world energy consumption published annually by the Energy Information Administration (EIA) in the International Energy Outlook (IEO). Two independently documented models presented in Figure 1, the Oil Market Simulation (OMS) model and the World Integrated Nuclear Evaluation System (WINES), provide projections of oil and nuclear power consumption published in the IEO. Output from a third independently documented model, and the International Coal Trade Model (ICTM), is not published in the IEO but is used in WEPS as a supply check on projections of world coal consumption produced by WEPS and published in the IEO. A WEPS model of natural gas production documented in this report provides the same type of implicit supply check on the WEPS projections of world natural gas consumption published in the IEO. Two additional models are included in Figure 1, the OPEC Capacity model and the Non-OPEC Oil Production model. These WEPS models provide inputs to the OMS model and are documented in this report.

  13. Development of a CSP plant energy yield calculation tool applying predictive models to analyze plant performance sensitivities

    NASA Astrophysics Data System (ADS)

    Haack, Lukas; Peniche, Ricardo; Sommer, Lutz; Kather, Alfons

    2017-06-01

    At early project stages, the main CSP plant design parameters such as turbine capacity, solar field size, and thermal storage capacity are varied during the techno-economic optimization to determine most suitable plant configurations. In general, a typical meteorological year with at least hourly time resolution is used to analyze each plant configuration. Different software tools are available to simulate the annual energy yield. Software tools offering a thermodynamic modeling approach of the power block and the CSP thermal cycle, such as EBSILONProfessional®, allow a flexible definition of plant topologies. In EBSILON, the thermodynamic equilibrium for each time step is calculated iteratively (quasi steady state), which requires approximately 45 minutes to process one year with hourly time resolution. For better presentation of gradients, 10 min time resolution is recommended, which increases processing time by a factor of 5. Therefore, analyzing a large number of plant sensitivities, as required during the techno-economic optimization procedure, the detailed thermodynamic simulation approach becomes impracticable. Suntrace has developed an in-house CSP-Simulation tool (CSPsim), based on EBSILON and applying predictive models, to approximate the CSP plant performance for central receiver and parabolic trough technology. CSPsim significantly increases the speed of energy yield calculations by factor ≥ 35 and has automated the simulation run of all predefined design configurations in sequential order during the optimization procedure. To develop the predictive models, multiple linear regression techniques and Design of Experiment methods are applied. The annual energy yield and derived LCOE calculated by the predictive model deviates less than ±1.5 % from the thermodynamic simulation in EBSILON and effectively identifies the optimal range of main design parameters for further, more specific analysis.

  14. Watershed-scale evaluation of the Water Erosion Prediction Project (WEPP) model in the Lake Tahoe basin

    Treesearch

    Erin S. Brooks; Mariana Dobre; William J. Elliot; Joan Q. Wu; Jan Boll

    2016-01-01

    Forest managers need methods to evaluate the impacts of management at the watershed scale. The Water Erosion Prediction Project (WEPP) has the ability to model disturbed forested hillslopes, but has difficulty addressing some of the critical processes that are important at a watershed scale, including baseflow and water yield. In order to apply WEPP to...

  15. An adapted yield criterion for the evolution of subsequent yield surfaces

    NASA Astrophysics Data System (ADS)

    Küsters, N.; Brosius, A.

    2017-09-01

    In numerical analysis of sheet metal forming processes, the anisotropic material behaviour is often modelled with isotropic work hardening and an average Lankford coefficient. In contrast, experimental observations show an evolution of the Lankford coefficients, which can be associated with a yield surface change due to kinematic and distortional hardening. Commonly, extensive efforts are carried out to describe these phenomena. In this paper an isotropic material model based on the Yld2000-2d criterion is adapted with an evolving yield exponent in order to change the yield surface shape. The yield exponent is linked to the accumulative plastic strain. This change has the effect of a rotating yield surface normal. As the normal is directly related to the Lankford coefficient, the change can be used to model the evolution of the Lankford coefficient during yielding. The paper will focus on the numerical implementation of the adapted material model for the FE-code LS-Dyna, mpi-version R7.1.2-d. A recently introduced identification scheme [1] is used to obtain the parameters for the evolving yield surface and will be briefly described for the proposed model. The suitability for numerical analysis will be discussed for deep drawing processes in general. Efforts for material characterization and modelling will be compared to other common yield surface descriptions. Besides experimental efforts and achieved accuracy, the potential of flexibility in material models and the risk of ambiguity during identification are of major interest in this paper.

  16. How model and input uncertainty impact maize yield simulations in West Africa

    NASA Astrophysics Data System (ADS)

    Waha, Katharina; Huth, Neil; Carberry, Peter; Wang, Enli

    2015-02-01

    Crop models are common tools for simulating crop yields and crop production in studies on food security and global change. Various uncertainties however exist, not only in the model design and model parameters, but also and maybe even more important in soil, climate and management input data. We analyze the performance of the point-scale crop model APSIM and the global scale crop model LPJmL with different climate and soil conditions under different agricultural management in the low-input maize-growing areas of Burkina Faso, West Africa. We test the models’ response to different levels of input information from little to detailed information on soil, climate (1961-2000) and agricultural management and compare the models’ ability to represent the observed spatial (between locations) and temporal variability (between years) in crop yields. We found that the resolution of different soil, climate and management information influences the simulated crop yields in both models. However, the difference between models is larger than between input data and larger between simulations with different climate and management information than between simulations with different soil information. The observed spatial variability can be represented well from both models even with little information on soils and management but APSIM simulates a higher variation between single locations than LPJmL. The agreement of simulated and observed temporal variability is lower due to non-climatic factors e.g. investment in agricultural research and development between 1987 and 1991 in Burkina Faso which resulted in a doubling of maize yields. The findings of our study highlight the importance of scale and model choice and show that the most detailed input data does not necessarily improve model performance.

  17. Using historical and projected future climate model simulations as drivers of agricultural and biological models (Invited)

    NASA Astrophysics Data System (ADS)

    Stefanova, L. B.

    2013-12-01

    Climate model evaluation is frequently performed as a first step in analyzing climate change simulations. Atmospheric scientists are accustomed to evaluating climate models through the assessment of model climatology and biases, the models' representation of large-scale modes of variability (such as ENSO, PDO, AMO, etc) and the relationship between these modes and local variability (e.g. the connection between ENSO and the wintertime precipitation in the Southeast US). While these provide valuable information about the fidelity of historical and projected climate model simulations from an atmospheric scientist's point of view, the application of climate model data to fields such as agriculture, ecology and biology may require additional analyses focused on the particular application's requirements and sensitivities. Typically, historical climate simulations are used to determine a mapping between the model and observed climate, either through a simple (additive for temperature or multiplicative for precipitation) or a more sophisticated (such as quantile matching) bias correction on a monthly or seasonal time scale. Plants, animals and humans however are not directly affected by monthly or seasonal means. To assess the impact of projected climate change on living organisms and related industries (e.g. agriculture, forestry, conservation, utilities, etc.), derivative measures such as the heating degree-days (HDD), cooling degree-days (CDD), growing degree-days (GDD), accumulated chill hours (ACH), wet season onset (WSO) and duration (WSD), among others, are frequently useful. We will present a comparison of the projected changes in such derivative measures calculated by applying: (a) the traditional temperature/precipitation bias correction described above versus (b) a bias correction based on the mapping between the historical model and observed derivative measures themselves. In addition, we will present and discuss examples of various application-based climate

  18. Climate change impacts on crop yield in the Euro-Mediterranean region

    NASA Astrophysics Data System (ADS)

    Toreti, Andrea; Ceglar, Andrej; Dentener, Frank; Niemeyer, Stefan; Dosio, Alessandro; Fumagalli, Davide

    2017-04-01

    Agriculture is strongly influenced by climate variability, climate extremes and climate changes. Recent studies on past decades have identified and analysed the effects of climate variability and extremes on crop yields in the Euro-Mediterranean region. As these effects could be amplified in a changing climate context, it is essential to analyse available climate projections and investigate the possible impacts on European agriculture in terms of crop yield. In this study, five model runs from the Euro-CORDEX initiative under two scenarios (RCP4.5 and RCP8.5) have been used. Climate model data have been bias corrected and then used to feed a mechanistic crop growth model. The crop model has been run under different settings to better sample the intrinsic uncertainties. Among the main results, it is worth to report a weak but significant and spatially homogeneous increase in potential wheat yield at mid-century (under a CO2 fertilisation effect scenario). While more complex changes seem to characterise potential maize yield, with large areas in the region showing a weak-to-moderate decrease.

  19. A Theoretical Model for Estimation of Yield Strength of Fiber Metal Laminate

    NASA Astrophysics Data System (ADS)

    Bhat, Sunil; Nagesh, Suresh; Umesh, C. K.; Narayanan, S.

    2017-08-01

    The paper presents a theoretical model for estimation of yield strength of fiber metal laminate. Principles of elasticity and formulation of residual stress are employed to determine the stress state in metal layer of the laminate that is found to be higher than the stress applied over the laminate resulting in reduced yield strength of the laminate in comparison with that of the metal layer. The model is tested over 4A-3/2 Glare laminate comprising three thin aerospace 2014-T6 aluminum alloy layers alternately bonded adhesively with two prepregs, each prepreg built up of three uni-directional glass fiber layers laid in longitudinal and transverse directions. Laminates with prepregs of E-Glass and S-Glass fibers are investigated separately under uni-axial tension. Yield strengths of both the Glare variants are found to be less than that of aluminum alloy with use of S-Glass fiber resulting in higher laminate yield strength than with the use of E-Glass fiber. Results from finite element analysis and tensile tests conducted over the laminates substantiate the theoretical model.

  20. Evaluation of weather-based rice yield models in India

    NASA Astrophysics Data System (ADS)

    Sudharsan, D.; Adinarayana, J.; Reddy, D. Raji; Sreenivas, G.; Ninomiya, S.; Hirafuji, M.; Kiura, T.; Tanaka, K.; Desai, U. B.; Merchant, S. N.

    2013-01-01

    The objective of this study was to compare two different rice simulation models—standalone (Decision Support System for Agrotechnology Transfer [DSSAT]) and web based (SImulation Model for RIce-Weather relations [SIMRIW])—with agrometeorological data and agronomic parameters for estimation of rice crop production in southern semi-arid tropics of India. Studies were carried out on the BPT5204 rice variety to evaluate two crop simulation models. Long-term experiments were conducted in a research farm of Acharya N G Ranga Agricultural University (ANGRAU), Hyderabad, India. Initially, the results were obtained using 4 years (1994-1997) of data with weather parameters from a local weather station to evaluate DSSAT simulated results with observed values. Linear regression models used for the purpose showed a close relationship between DSSAT and observed yield. Subsequently, yield comparisons were also carried out with SIMRIW and DSSAT, and validated with actual observed values. Realizing the correlation coefficient values of SIMRIW simulation values in acceptable limits, further rice experiments in monsoon (Kharif) and post-monsoon (Rabi) agricultural seasons (2009, 2010 and 2011) were carried out with a location-specific distributed sensor network system. These proximal systems help to simulate dry weight, leaf area index and potential yield by the Java based SIMRIW on a daily/weekly/monthly/seasonal basis. These dynamic parameters are useful to the farming community for necessary decision making in a ubiquitous manner. However, SIMRIW requires fine tuning for better results/decision making.

  1. Atmospheric CO2 concentration impacts on maize yield performance under dry conditions: do crop model simulate it right ?

    NASA Astrophysics Data System (ADS)

    Durand, Jean-Louis; Delusca, Kénel; Boote, Ken; Lizaso, Jon; Manderscheid, Remy; Jochaim Weigel, Hans; Ruane, Alex C.; Rosenzweig, Cynthia; Jones, Jim; Ahuja, Laj; Anapalli, Saseendran; Basso, Bruno; Baron, Christian; Bertuzzi, Patrick; Biernath, Christian; Deryng, Delphine; Ewert, Frank; Gaiser, Thomas; Gayler, Sebastian; Heinlein, Florian; Kersebaum, Kurt Christian; Kim, Soo-Hyung; Müller, Christoph; Nendel, Claas; Olioso, Albert; Priesack, Eckhart; Ramirez-Villegas, Julian; Ripoche, Dominique; Rötter, Reimund; Seidel, Sabine; Srivastava, Amit; Tao, Fulu; Timlin, Dennis; Twine, Tracy; Wang, Enli; Webber, Heidi; Zhao, Shigan

    2017-04-01

    In most regions of the world, maize yields are at risk of be reduced due to rising temperatures and reduced water availability. Rising temperature tends to reduce the length of the growth cycle and the amount of intercepted solar energy. Water deficits reduce the leaf area expansion, photosynthesis and sometimes, with an even more pronounced impact, severely reduce the efficiency of kernel set. In maize, the major consequence of atmospheric CO2 concentration ([CO2]) is the stomatal closure-induced reduction of leaf transpiration rate, which tends to mitigate those negative impacts. Indeed FACE studies report significant positive responses to CO2 of maize yields (and other C4 crops) under dry conditions only. Given the projections by climatologists (typically doubling of [CO2] by the end of this century) projected impacts must take that climate variable into account. However, several studies show a large incertitude in estimating the impact of increasing [CO2] on maize remains using the main crop models. The aim of this work was to compare the simulations of different models using input data from a FACE experiment conducted in Braunschweig during 2 years under limiting and non-limiting water conditions. Twenty modelling groups using different maize models were given the same instructions and input data. Following calibration of cultivar parameters under non-limiting water conditions and under ambient [CO2] treatments of both years, simulations were undertaken for the other treatments: High [ CO2 ] (550 ppm) 2007 and 2008 in both irrigation regimes, and DRY AMBIENT 2007 and 2008. Only under severe water deficits did models simulate an increase in yield for CO2 enrichment, which was associated with higher harvest index and, for those models which simulated it, higher grain number. However, the CO2 enhancement under water deficit simulated by the 20 models was 20 % at most and 10 % on average only, i.e. twice less than observed in that experiment. As in the experiment

  2. Yield Stress Model for Molten Composition B-3

    NASA Astrophysics Data System (ADS)

    Davis, Stephen; Zerkle, David

    2017-06-01

    Composition B-3 (Comp B-3) is a melt-castable explosive composed of 60/40 wt% RDX/TNT (hexahydro-1,3,5-trinitro-1,3,5-triazine/2,4,6-trinitrotoluene). During casting operations thermal conditions are controlled which along with the low melting point of TNT and the insensitivity of the mixture to external stimuli leading to safe use. Outside these standard operating conditions a more rigorous model of Comp B-3 rheological properties is necessary to model thermal transport as Comp B-3 evolves from quiescent solid through vaporization/decomposition upon heating. One particular rheological phenomena of interest is Bingham plasticity, where a material behaves as a quiescent solid unless a sufficient load is applied, resulting in fluid flow. In this study falling ball viscometer data is used to model the change in Bingham plastic yield stresses as a function of RDX particle volume fraction; a function of temperature. Results show the yield stress of Comp B-3 (τy) follows the expression τy = B ϕ -ϕc N , where Φ and Φc are the volume fraction of RDX and a critical volume fraction, respectively and B and N are experimentally evaluated constants.

  3. Competency model for the project managers of technical projects

    NASA Astrophysics Data System (ADS)

    Duncan, William R.

    1992-05-01

    Traditional job description techniques were developed to support compensation decisions for hourly wage earners in a manufacturing environment. Their resultant focus on activities performed on the job works well in this environment where the ability to perform the activity adequately is objectively verifiable by testing and observation. Although many organizations have adapted these techniques for salaried employees and service environments, the focus on activities performed has never been satisfactory. For example, stating that a project manager `prepares regular project status reports' tells us little about what to look for in a potential project manager or how to determine if a practicing project manager is ready for additional responsibilities. The concept of a `competency model' has been developed within the last decade to address this shortcoming. Competency models focus on what skills are needed to perform the tasks defined by the job description. For example, a project manager must be able to communicate well both orally and in writing in order to `prepare regular project status reports.'

  4. Statistical rice yield modeling using blended MODIS-Landsat based crop phenology metrics in Taiwan

    NASA Astrophysics Data System (ADS)

    Chen, C. R.; Chen, C. F.; Nguyen, S. T.; Lau, K. V.

    2015-12-01

    Taiwan is a populated island with a majority of residents settled in the western plains where soils are suitable for rice cultivation. Rice is not only the most important commodity, but also plays a critical role for agricultural and food marketing. Information of rice production is thus important for policymakers to devise timely plans for ensuring sustainably socioeconomic development. Because rice fields in Taiwan are generally small and yet crop monitoring requires information of crop phenology associating with the spatiotemporal resolution of satellite data, this study used Landsat-MODIS fusion data for rice yield modeling in Taiwan. We processed the data for the first crop (Feb-Mar to Jun-Jul) and the second (Aug-Sep to Nov-Dec) in 2014 through five main steps: (1) data pre-processing to account for geometric and radiometric errors of Landsat data, (2) Landsat-MODIS data fusion using using the spatial-temporal adaptive reflectance fusion model, (3) construction of the smooth time-series enhanced vegetation index 2 (EVI2), (4) rice yield modeling using EVI2-based crop phenology metrics, and (5) error verification. The fusion results by a comparison bewteen EVI2 derived from the fusion image and that from the reference Landsat image indicated close agreement between the two datasets (R2 > 0.8). We analysed smooth EVI2 curves to extract phenology metrics or phenological variables for establishment of rice yield models. The results indicated that the established yield models significantly explained more than 70% variability in the data (p-value < 0.001). The comparison results between the estimated yields and the government's yield statistics for the first and second crops indicated a close significant relationship between the two datasets (R2 > 0.8), in both cases. The root mean square error (RMSE) and mean absolute error (MAE) used to measure the model accuracy revealed the consistency between the estimated yields and the government's yield statistics. This

  5. System dynamics approach for modeling of sugar beet yield considering the effects of climatic variables.

    PubMed

    Pervin, Lia; Islam, Md Saiful

    2015-02-01

    The aim of this study was to develop a system dynamics model for computation of yields and to investigate the dependency of yields on some major climatic parameters, i.e. temperature and rainfall, for Beta vulgaris subsp. (sugar beet crops) under future climate change scenarios. A system dynamics model was developed which takes account of the effects of rainfall and temperature on sugar beet yields under limited irrigation conditions. A relationship was also developed between the seasonal evapotranspiration and seasonal growing degree days for sugar beet crops. The proposed model was set to run for the present time period of 1993-2012 and for the future period 2013-2040 for Lethbridge region (Alberta, Canada). The model provides sugar beet yields on a yearly basis which are comparable to the present field data. It was found that the future average yield will be increased at about 14% with respect to the present average yield. The proposed model can help to improve the understanding of soil water conditions and irrigation water requirements of an area under certain climatic conditions and can be used for future prediction of yields for any crops in any region (with the required information to be provided). The developed system dynamics model can be used as a supporting tool for decision making, for improvement of agricultural management practice of any region. © 2014 Society of Chemical Industry.

  6. Inflow, Outflow, Yields, and Stellar Population Mixing in Chemical Evolution Models

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Andrews, Brett H.; Weinberg, David H.; Schönrich, Ralph

    Chemical evolution models are powerful tools for interpreting stellar abundance surveys and understanding galaxy evolution. However, their predictions depend heavily on the treatment of inflow, outflow, star formation efficiency (SFE), the stellar initial mass function, the SN Ia delay time distribution, stellar yields, and stellar population mixing. Using flexCE, a flexible one-zone chemical evolution code, we investigate the effects of and trade-offs between parameters. Two critical parameters are SFE and the outflow mass-loading parameter, which shift the knee in [O/Fe]–[Fe/H] and the equilibrium abundances that the simulations asymptotically approach, respectively. One-zone models with simple star formation histories follow narrow tracksmore » in [O/Fe]–[Fe/H] unlike the observed bimodality (separate high- α and low- α sequences) in this plane. A mix of one-zone models with inflow timescale and outflow mass-loading parameter variations, motivated by the inside-out galaxy formation scenario with radial mixing, reproduces the two sequences better than a one-zone model with two infall epochs. We present [X/Fe]–[Fe/H] tracks for 20 elements assuming three different supernova yield models and find some significant discrepancies with solar neighborhood observations, especially for elements with strongly metallicity-dependent yields. We apply principal component abundance analysis to the simulations and existing data to reveal the main correlations among abundances and quantify their contributions to variation in abundance space. For the stellar population mixing scenario, the abundances of α -elements and elements with metallicity-dependent yields dominate the first and second principal components, respectively, and collectively explain 99% of the variance in the model. flexCE is a python package available at https://github.com/bretthandrews/flexCE.« less

  7. Operational modelling: the mechanisms influencing TB diagnostic yield in an Xpert® MTB/RIF-based algorithm.

    PubMed

    Dunbar, R; Naidoo, P; Beyers, N; Langley, I

    2017-04-01

    Cape Town, South Africa. To compare the diagnostic yield for smear/culture and Xpert® MTB/RIF algorithms and to investigate the mechanisms influencing tuberculosis (TB) yield. We developed and validated an operational model of the TB diagnostic process, first with the smear/culture algorithm and then with the Xpert algorithm. We modelled scenarios by varying TB prevalence, adherence to diagnostic algorithms and human immunodeficiency virus (HIV) status. This enabled direct comparisons of diagnostic yield in the two algorithms to be made. Routine data showed that diagnostic yield had decreased over the period of the Xpert algorithm roll-out compared to the yield when the smear/culture algorithm was in place. However, modelling yield under identical conditions indicated a 13.3% increase in diagnostic yield from the Xpert algorithm compared to smear/culture. The model demonstrated that the extensive use of culture in the smear/culture algorithm and the decline in TB prevalence are the main factors contributing to not finding an increase in diagnostic yield in the routine data. We demonstrate the benefits of an operational model to determine the effect of scale-up of a new diagnostic algorithm, and recommend that policy makers use operational modelling to make appropriate decisions before new diagnostic algorithms are scaled up.

  8. Multivariate regression model for predicting yields of grade lumber from yellow birch sawlogs

    Treesearch

    Andrew F. Howard; Daniel A. Yaussy

    1986-01-01

    A multivariate regression model was developed to predict green board-foot yields for the common grades of factory lumber processed from yellow birch factory-grade logs. The model incorporates the standard log measurements of scaling diameter, length, proportion of scalable defects, and the assigned USDA Forest Service log grade. Differences in yields between band and...

  9. NEST: a comprehensive model for scintillation yield in liquid xenon

    DOE PAGES

    Szydagis, M.; Barry, N.; Kazkaz, K.; ...

    2011-10-03

    Here, a comprehensive model for explaining scintillation yield in liquid xenon is introduced. We unify various definitions of work function which abound in the literature and incorporate all available data on electron recoil scintillation yield. This results in a better understanding of electron recoil, and facilitates an improved description of nuclear recoil. An incident gamma energy range of O(1 keV) to O(1 MeV) and electric fields between 0 and O(10 kV/cm) are incorporated into this heuristic model. We show results from a Geant4 implementation, but because the model has a few free parameters, implementation in any simulation package should bemore » simple. We use a quasi-empirical approach, with an objective of improving detector calibrations and performance verification. The model will aid in the design and optimization of future detectors. This model is also easy to extend to other noble elements. In this paper we lay the foundation for an exhaustive simulation code which we call NEST (Noble Element Simulation Technique).« less

  10. Growth models for ponderosa pine: I. Yield of unthinned plantations in northern California.

    Treesearch

    William W. Oliver; Robert F. Powers

    1978-01-01

    Yields for high-survival, unthinned ponderosa pine (Pinus ponderosa Laws.) plantations in northern California are estimated. Stems of 367 trees in 12 plantations were analyzed to produce a growth model simulating stand yields. Diameter, basal area, and net cubic volume yields by Site Indices50 40 through 120 are tabulated for...

  11. A mathematical framework for yield (vs. rate) optimization in constraint-based modeling and applications in metabolic engineering.

    PubMed

    Klamt, Steffen; Müller, Stefan; Regensburger, Georg; Zanghellini, Jürgen

    2018-05-01

    The optimization of metabolic rates (as linear objective functions) represents the methodical core of flux-balance analysis techniques which have become a standard tool for the study of genome-scale metabolic models. Besides (growth and synthesis) rates, metabolic yields are key parameters for the characterization of biochemical transformation processes, especially in the context of biotechnological applications. However, yields are ratios of rates, and hence the optimization of yields (as nonlinear objective functions) under arbitrary linear constraints is not possible with current flux-balance analysis techniques. Despite the fundamental importance of yields in constraint-based modeling, a comprehensive mathematical framework for yield optimization is still missing. We present a mathematical theory that allows one to systematically compute and analyze yield-optimal solutions of metabolic models under arbitrary linear constraints. In particular, we formulate yield optimization as a linear-fractional program. For practical computations, we transform the linear-fractional yield optimization problem to a (higher-dimensional) linear problem. Its solutions determine the solutions of the original problem and can be used to predict yield-optimal flux distributions in genome-scale metabolic models. For the theoretical analysis, we consider the linear-fractional problem directly. Most importantly, we show that the yield-optimal solution set (like the rate-optimal solution set) is determined by (yield-optimal) elementary flux vectors of the underlying metabolic model. However, yield- and rate-optimal solutions may differ from each other, and hence optimal (biomass or product) yields are not necessarily obtained at solutions with optimal (growth or synthesis) rates. Moreover, we discuss phase planes/production envelopes and yield spaces, in particular, we prove that yield spaces are convex and provide algorithms for their computation. We illustrate our findings by a small

  12. Simple agrometeorological models for estimating Guineagrass yield in Southeast Brazil.

    PubMed

    Pezzopane, José Ricardo Macedo; da Cruz, Pedro Gomes; Santos, Patricia Menezes; Bosi, Cristiam; de Araujo, Leandro Coelho

    2014-09-01

    The objective of this work was to develop and evaluate agrometeorological models to simulate the production of Guineagrass. For this purpose, we used forage yield from 54 growing periods between December 2004-January 2007 and April 2010-March 2012 in irrigated and non-irrigated pastures in São Carlos, São Paulo state, Brazil (latitude 21°57'42″ S, longitude 47°50'28″ W and altitude 860 m). Initially we performed linear regressions between the agrometeorological variables and the average dry matter accumulation rate for irrigated conditions. Then we determined the effect of soil water availability on the relative forage yield considering irrigated and non-irrigated pastures, by means of segmented linear regression among water balance and relative production variables (dry matter accumulation rates with and without irrigation). The models generated were evaluated with independent data related to 21 growing periods without irrigation in the same location, from eight growing periods in 2000 and 13 growing periods between December 2004-January 2007 and April 2010-March 2012. The results obtained show the satisfactory predictive capacity of the agrometeorological models under irrigated conditions based on univariate regression (mean temperature, minimum temperature and potential evapotranspiration or degreedays) or multivariate regression. The response of irrigation on production was well correlated with the climatological water balance variables (ratio between actual and potential evapotranspiration or between actual and maximum soil water storage). The models that performed best for estimating Guineagrass yield without irrigation were based on minimum temperature corrected by relative soil water storage, determined by the ratio between the actual soil water storage and the soil water holding capacity.irrigation in the same location, in 2000, 2010 and 2011. The results obtained show the satisfactory predictive capacity of the agrometeorological models under

  13. Partitioning potential fish yields from the Great Lakes

    USGS Publications Warehouse

    Loftus, D.H.; Olver, C.H.; Brown, Edward H.; Colby, P.J.; Hartman, Wilbur L.; Schupp, D.H.

    1987-01-01

    We proposed and implemented procedures for partitioning future fish yields from the Great Lakes into taxonomic components. These projections are intended as guidelines for Great Lakes resource managers and scientists. Attainment of projected yields depends on restoration of stable fish communities containing some large piscivores that will use prey efficiently, continuation of control of the sea lamprey (Petromyzon marinus), and restoration of high-quality fish habitat. Because Great Lakes fish communities were harmonic before their collapse, we used their historic yield properties as part of the basis for projecting potential yields of rehabilitated communities. This use is qualified, however, because of possible inaccuracies in the wholly commercial yield data, the presence now of greatly expanded sport fisheries that affect yield composition and magnitude, and some possibly irreversible changes since the 1950s in the various fish communities themselves. We predict that total yields from Lakes Superior, Huron, and Ontario will be increased through rehabilitation, while those from Lakes Michigan and Erie will decline. Salmonines and coregonines will dominate future yields from the upper lakes. The Lake Erie fishery will continue to yield mostly rainbow smelt (Osmerus mordax), but the relative importance of percids, especially of walleye (Stizostedion vitreum vitreum) will increase. In Lake Ontario, yields of salmonines will be increased. Managers will have to apply the most rigorous management strictures to major predator species.

  14. Comprehensive Cost Planning Yields Successful Tech Projects

    ERIC Educational Resources Information Center

    Breeding, Marshall

    2006-01-01

    In this article, the author calls for librarians to find ways to implement technology projects with very limited budgets and to consider all the cost components of a technology project amidst the economic pressures. The author offers some perspective on what is involved in trying to accomplish important work with limited resources while…

  15. Evaluating accuracy of DSSAT model for soybean yield estimation using satellite weather data

    NASA Astrophysics Data System (ADS)

    Ovando, Gustavo; Sayago, Silvina; Bocco, Mónica

    2018-04-01

    Crop models allow simulating the development and yield of the crops, to represent and to evaluate the influence of multiple factors. The DSSAT cropping system model is one of the most widely used and contains CROPGRO module for soybean. This crop has a great importance for many southern countries of Latin America and for Argentina. Solar radiation and rainfall are necessary variables as inputs for crop models; however these data are not as readily available. The satellital products from Clouds and Earth's Radiant Energy System (CERES) and Tropic Rainfall Measurement Mission (TRMM) provide continuous spatial and temporal information of solar radiation and precipitation, respectively. This study evaluates and quantifies the uncertainty in estimating soybean yield using a DSSAT model, when recorded weather data are replaced with CERES and TRMM ones. Different percentages of data replacements, soybean maturity groups and planting dates are considered, for 2006-2016 period in Oliveros (Argentina). Results show that CERES and TRMM products can be used for soybean yield estimation with DSSAT considering that: percentage of data replacement, campaign, planting date and maturity group, determine the amounts and trends of yield errors. Replacements with CERES data up to 30% result in %RMSE lower than 10% in 87% of the cases; while the replacement with TRMM data presents the best statisticals in campaigns with high yields. Simulations based entirely on CERES solar radiation give better results than those with TRMM. In general, similar percentages of replacement show better performance in the estimation of soybean yield for solar radiation than the replacement of precipitation values.

  16. Development of a Coupled Hydrological/Sediment Yield Model for a Watershed at Regional Level

    NASA Technical Reports Server (NTRS)

    Rajbhandaril, Narayan; Crosson, William; Tsegaye, Teferi; Coleman, Tommy; Liu, Yaping; Soman, Vishwas

    1998-01-01

    Development of a hydrologic model for the study of environmental conservation requires a comprehensive understanding of individual-storm affecting hydrologic and sedimentologic processes. The hydrologic models that we are currently coupling are the Simulator for Hydrology and Energy Exchange at the Land Surface (SHEELS) and the Distributed Runoff Model (DRUM). SHEELS runs continuously to estimate surface energy fluxes and sub-surface soil water fluxes, while DRUM operates during and following precipitation events to predict surface runoff and peak flow through channel routing. The lateral re-distribution of surface water determined by DRUM is passed to SHEELS, which then adjusts soil water contents throughout the profile. The model SHEELS is well documented in Smith et al. (1993) and Laymen and Crosson (1995). The model DRUM is well documented in Vieux et al. (1990) and Vieux and Gauer (1994). The coupled hydrologic model, SHEELS/DRUM, does not simulate sedimentologic processes. The simulation of the sedimentologic process is important for environmental conservation planning and management. Therefore, we attempted to develop a conceptual frame work for coupling a sediment yield model with SHEELS/DRUM to estimate individual-storm sediment yield from a watershed at a regional level. The sediment yield model that will be used for this study is the Universal Soil Loss Equation (USLE) with some modifications to enable the model to predict individual-storm sediment yield. The predicted sediment yield does not include wind erosion and erosion caused by irrigation and snow melt. Units used for this study are those given by Foster et al. (1981) for SI units.

  17. Growth and yield models for central hardwoods

    Treesearch

    Martin E. Dale; Donald E. Hilt

    1989-01-01

    Over the last 20 years computers have become an efficient tool to estimate growth and yield. Computerized yield estimates vary from simple approximation or interpolation of traditional normal yield tables to highly sophisticated programs that simulate the growth and yield of each individual tree.

  18. Evaluation of the Williams-type model for barley yields in North Dakota and Minnesota

    NASA Technical Reports Server (NTRS)

    Barnett, T. L. (Principal Investigator)

    1981-01-01

    The Williams-type yield model is based on multiple regression analysis of historial time series data at CRD level pooled to regional level (groups of similar CRDs). Basic variables considered in the analysis include USDA yield, monthly mean temperature, monthly precipitation, soil texture and topographic information, and variables derived from these. Technologic trend is represented by piecewise linear and/or quadratic functions of year. Indicators of yield reliability obtained from a ten-year bootstrap test (1970-1979) demonstrate that biases are small and performance based on root mean square appears to be acceptable for the intended AgRISTARS large area applications. The model is objective, adequate, timely, simple, and not costly. It consideres scientific knowledge on a broad scale but not in detail, and does not provide a good current measure of modeled yield reliability.

  19. Yield estimation of corn with multispectral data and the potential of using imaging spectrometers

    NASA Astrophysics Data System (ADS)

    Bach, Heike

    1997-05-01

    In the frame of the special yield estimation, a regular procedure conducted for the European Union to more accurately estimate agricultural yield, a project was conducted for the state minister for Rural Environment, Food and Forestry of Baden-Wuerttemberg, Germany) to test remote sensing data with advanced yield formation models for accuracy and timelines of yield estimation of corn. The methodology employed uses field-based plant parameter estimation from atmospherically corrected multitemporal/multispectral LANDSAT-TM data. An agrometeorological plant-production-model is used for yield prediction. Based solely on 4 LANDSAT-derived estimates and daily meteorological data the grain yield of corn stands was determined for 1995. The modeled yield was compared with results independently gathered within the special yield estimation for 23 test fields in the Upper Rhine Valley. The agrement between LANDSAT-based estimates and Special Yield Estimation shows a relative error of 2.3 percent. The comparison of the results for single fields shows, that six weeks before harvest the grain yield of single corn fields was estimated with a mean relative accuracy of 13 percent using satellite information. The presented methodology can be transferred to other crops and geographical regions. For future applications hyperspectral sensors show great potential to further enhance the results or yield prediction with remote sensing.

  20. Updated stomatal flux and flux-effect models for wheat for quantifying effects of ozone on grain yield, grain mass and protein yield.

    PubMed

    Grünhage, Ludger; Pleijel, Håkan; Mills, Gina; Bender, Jürgen; Danielsson, Helena; Lehmann, Yvonne; Castell, Jean-Francois; Bethenod, Olivier

    2012-06-01

    Field measurements and open-top chamber experiments using nine current European winter wheat cultivars provided a data set that was used to revise and improve the parameterisation of a stomatal conductance model for wheat, including a revised value for maximum stomatal conductance and new functions for phenology and soil moisture. For the calculation of stomatal conductance for ozone a diffusivity ratio between O(3) and H(2)O in air of 0.663 was applied, based on a critical review of the literature. By applying the improved parameterisation for stomatal conductance, new flux-effect relationships for grain yield, grain mass and protein yield were developed for use in ozone risk assessments including effects on food security. An example of application of the flux model at the local scale in Germany shows that negative effects of ozone on wheat grain yield were likely each year and on protein yield in most years since the mid 1980s. Copyright © 2012 Elsevier Ltd. All rights reserved.

  1. Spiral model pilot project information model

    NASA Technical Reports Server (NTRS)

    1991-01-01

    The objective was an evaluation of the Spiral Model (SM) development approach to allow NASA Marshall to develop an experience base of that software management methodology. A discussion is presented of the Information Model (IM) that was used as part of the SM methodology. A key concept of the SM is the establishment of an IM to be used by management to track the progress of a project. The IM is the set of metrics that is to be measured and reported throughout the life of the project. These metrics measure both the product and the process to ensure the quality of the final delivery item and to ensure the project met programmatic guidelines. The beauty of the SM, along with the IM, is the ability to measure not only the correctness of the specification and implementation of the requirements but to also obtain a measure of customer satisfaction.

  2. A multivariate model and statistical method for validating tree grade lumber yield equations

    Treesearch

    Donald W. Seegrist

    1975-01-01

    Lumber yields within lumber grades can be described by a multivariate linear model. A method for validating lumber yield prediction equations when there are several tree grades is presented. The method is based on multivariate simultaneous test procedures.

  3. Impacts of climate change on paddy rice yield in a temperate climate.

    PubMed

    Kim, Han-Yong; Ko, Jonghan; Kang, Suchel; Tenhunen, John

    2013-02-01

    The crop simulation model is a suitable tool for evaluating the potential impacts of climate change on crop production and on the environment. This study investigates the effects of climate change on paddy rice production in the temperate climate regions under the East Asian monsoon system using the CERES-Rice 4.0 crop simulation model. This model was first calibrated and validated for crop production under elevated CO2 and various temperature conditions. Data were obtained from experiments performed using a temperature gradient field chamber (TGFC) with a CO2 enrichment system installed at Chonnam National University in Gwangju, Korea in 2009 and 2010. Based on the empirical calibration and validation, the model was applied to deliver a simulated forecast of paddy rice production for the region, as well as for the other Japonica rice growing regions in East Asia, projecting for years 2050 and 2100. In these climate change projection simulations in Gwangju, Korea, the yield increases (+12.6 and + 22.0%) due to CO2 elevation were adjusted according to temperature increases showing variation dependent upon the cultivars, which resulted in significant yield decreases (-22.1% and -35.0%). The projected yields were determined to increase as latitude increases due to reduced temperature effects, showing the highest increase for any of the study locations (+24%) in Harbin, China. It appears that the potential negative impact on crop production may be mediated by appropriate cultivar selection and cultivation changes such as alteration of the planting date. Results reported in this study using the CERES-Rice 4.0 model demonstrate the promising potential for its further application in simulating the impacts of climate change on rice production from a local to a regional scale under the monsoon climate system. © 2012 Blackwell Publishing Ltd.

  4. Simulated vs. empirical weather responsiveness of crop yields: US evidence and implications for the agricultural impacts of climate change

    DOE PAGES

    Mistry, Malcolm N.; Wing, Ian Sue; De Cian, Enrica

    2017-07-10

    Global gridded crop models (GGCMs) are the workhorse of assessments of the agricultural impacts of climate change. Yet the changes in crop yields projected by different models in response to the same meteorological forcing can differ substantially. Through an inter-method comparison, we provide a first glimpse into the origins and implications of this divergence—both among GGCMs and between GGCMs and historical observations. We examine yields of rainfed maize, wheat, and soybeans simulated by six GGCMs as part of the Inter-Sectoral Impact Model Intercomparison Project-Fast Track (ISIMIP-FT) exercise, comparing 1981–2004 hindcast yields over the coterminous United States (US) against US Departmentmore » of Agriculture (USDA) time series for about 1000 counties. Leveraging the empirical climate change impacts literature, we estimate reduced-form econometric models of crop yield responses to temperature and precipitation exposures for both GGCMs and observations. We find that up to 60% of the variance in both simulated and observed yields is attributable to weather variation. A majority of the GGCMs have difficulty reproducing the observed distribution of percentage yield anomalies, and exhibit aggregate responses that show yields to be more weather-sensitive than in the observational record over the predominant range of temperature and precipitation conditions. In conclusion, this disparity is largely attributable to heterogeneity in GGCMs' responses, as opposed to uncertainty in historical weather forcings, and is responsible for widely divergent impacts of climate on future crop yields.« less

  5. Simulated vs. empirical weather responsiveness of crop yields: US evidence and implications for the agricultural impacts of climate change

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Mistry, Malcolm N.; Wing, Ian Sue; De Cian, Enrica

    Global gridded crop models (GGCMs) are the workhorse of assessments of the agricultural impacts of climate change. Yet the changes in crop yields projected by different models in response to the same meteorological forcing can differ substantially. Through an inter-method comparison, we provide a first glimpse into the origins and implications of this divergence—both among GGCMs and between GGCMs and historical observations. We examine yields of rainfed maize, wheat, and soybeans simulated by six GGCMs as part of the Inter-Sectoral Impact Model Intercomparison Project-Fast Track (ISIMIP-FT) exercise, comparing 1981–2004 hindcast yields over the coterminous United States (US) against US Departmentmore » of Agriculture (USDA) time series for about 1000 counties. Leveraging the empirical climate change impacts literature, we estimate reduced-form econometric models of crop yield responses to temperature and precipitation exposures for both GGCMs and observations. We find that up to 60% of the variance in both simulated and observed yields is attributable to weather variation. A majority of the GGCMs have difficulty reproducing the observed distribution of percentage yield anomalies, and exhibit aggregate responses that show yields to be more weather-sensitive than in the observational record over the predominant range of temperature and precipitation conditions. In conclusion, this disparity is largely attributable to heterogeneity in GGCMs' responses, as opposed to uncertainty in historical weather forcings, and is responsible for widely divergent impacts of climate on future crop yields.« less

  6. Simulated vs. empirical weather responsiveness of crop yields: US evidence and implications for the agricultural impacts of climate change

    NASA Astrophysics Data System (ADS)

    Mistry, Malcolm N.; Wing, Ian Sue; De Cian, Enrica

    2017-07-01

    Global gridded crop models (GGCMs) are the workhorse of assessments of the agricultural impacts of climate change. Yet the changes in crop yields projected by different models in response to the same meteorological forcing can differ substantially. Through an inter-method comparison, we provide a first glimpse into the origins and implications of this divergence—both among GGCMs and between GGCMs and historical observations. We examine yields of rainfed maize, wheat, and soybeans simulated by six GGCMs as part of the Inter-Sectoral Impact Model Intercomparison Project-Fast Track (ISIMIP-FT) exercise, comparing 1981-2004 hindcast yields over the coterminous United States (US) against US Department of Agriculture (USDA) time series for about 1000 counties. Leveraging the empirical climate change impacts literature, we estimate reduced-form econometric models of crop yield responses to temperature and precipitation exposures for both GGCMs and observations. We find that up to 60% of the variance in both simulated and observed yields is attributable to weather variation. A majority of the GGCMs have difficulty reproducing the observed distribution of percentage yield anomalies, and exhibit aggregate responses that show yields to be more weather-sensitive than in the observational record over the predominant range of temperature and precipitation conditions. This disparity is largely attributable to heterogeneity in GGCMs’ responses, as opposed to uncertainty in historical weather forcings, and is responsible for widely divergent impacts of climate on future crop yields.

  7. Classifying Multi-Model Wheat Yield Impact Response Surfaces Showing Sensitivity to Temperature and Precipitation Change

    NASA Technical Reports Server (NTRS)

    Fronzek, Stefan; Pirttioja, Nina; Carter, Timothy R.; Bindi, Marco; Hoffmann, Holger; Palosuo, Taru; Ruiz-Ramos, Margarita; Tao, Fulu; Trnka, Miroslav; Acutis, Marco; hide

    2017-01-01

    Crop growth simulation models can differ greatly in their treatment of key processes and hence in their response to environmental conditions. Here, we used an ensemble of 26 process-based wheat models applied at sites across a European transect to compare their sensitivity to changes in temperature (minus 2 to plus 9 degrees Centigrade) and precipitation (minus 50 to plus 50 percent). Model results were analysed by plotting them as impact response surfaces (IRSs), classifying the IRS patterns of individual model simulations, describing these classes and analysing factors that may explain the major differences in model responses. The model ensemble was used to simulate yields of winter and spring wheat at four sites in Finland, Germany and Spain. Results were plotted as IRSs that show changes in yields relative to the baseline with respect to temperature and precipitation. IRSs of 30-year means and selected extreme years were classified using two approaches describing their pattern. The expert diagnostic approach (EDA) combines two aspects of IRS patterns: location of the maximum yield (nine classes) and strength of the yield response with respect to climate (four classes), resulting in a total of 36 combined classes defined using criteria pre-specified by experts. The statistical diagnostic approach (SDA) groups IRSs by comparing their pattern and magnitude, without attempting to interpret these features. It applies a hierarchical clustering method, grouping response patterns using a distance metric that combines the spatial correlation and Euclidian distance between IRS pairs. The two approaches were used to investigate whether different patterns of yield response could be related to different properties of the crop models, specifically their genealogy, calibration and process description. Although no single model property across a large model ensemble was found to explain the integrated yield response to temperature and precipitation perturbations, the

  8. Comparison of CEAS and Williams-type models for spring wheat yields in North Dakota and Minnesota

    NASA Technical Reports Server (NTRS)

    Barnett, T. L. (Principal Investigator)

    1982-01-01

    The CEAS and Williams-type yield models are both based on multiple regression analysis of historical time series data at CRD level. The CEAS model develops a separate relation for each CRD; the Williams-type model pools CRD data to regional level (groups of similar CRDs). Basic variables considered in the analyses are USDA yield, monthly mean temperature, monthly precipitation, and variables derived from these. The Williams-type model also used soil texture and topographic information. Technological trend is represented in both by piecewise linear functions of year. Indicators of yield reliability obtained from a ten-year bootstrap test of each model (1970-1979) demonstrate that the models are very similar in performance in all respects. Both models are about equally objective, adequate, timely, simple, and inexpensive. Both consider scientific knowledge on a broad scale but not in detail. Neither provides a good current measure of modeled yield reliability. The CEAS model is considered very slightly preferable for AgRISTARS applications.

  9. Effects of stage of pregnancy on variance components, daily milk yields and 305-day milk yield in Holstein cows, as estimated by using a test-day model.

    PubMed

    Yamazaki, T; Hagiya, K; Takeda, H; Osawa, T; Yamaguchi, S; Nagamine, Y

    2016-08-01

    Pregnancy and calving are elements indispensable for dairy production, but the daily milk yield of cows decline as pregnancy progresses, especially during the late stages. Therefore, the effect of stage of pregnancy on daily milk yield must be clarified to accurately estimate the breeding values and lifetime productivity of cows. To improve the genetic evaluation model for daily milk yield and determine the effect of the timing of pregnancy on productivity, we used a test-day model to assess the effects of stage of pregnancy on variance component estimates, daily milk yields and 305-day milk yield during the first three lactations of Holstein cows. Data were 10 646 333 test-day records for the first lactation; 8 222 661 records for the second; and 5 513 039 records for the third. The data were analyzed within each lactation by using three single-trait random regression animal models: one model that did not account for the stage of pregnancy effect and two models that did. The effect of stage of pregnancy on test-day milk yield was included in the model by applying a regression on days pregnant or fitting a separate lactation curve for each days open (days from calving to pregnancy) class (eight levels). Stage of pregnancy did not affect the heritability estimates of daily milk yield, although the additive genetic and permanent environmental variances in late lactation were decreased by accounting for the stage of pregnancy effect. The effects of days pregnant on daily milk yield during late lactation were larger in the second and third lactations than in the first lactation. The rates of reduction of the 305-day milk yield of cows that conceived fewer than 90 days after the second or third calving were significantly (P<0.05) greater than that after the first calving. Therefore, we conclude that differences between the negative effects of early pregnancy in the first, compared with later, lactations should be included when determining the optimal number of days open

  10. An alternative approach for modeling strength differential effect in sheet metals with symmetric yield functions

    NASA Astrophysics Data System (ADS)

    Kurukuri, Srihari; Worswick, Michael J.

    2013-12-01

    An alternative approach is proposed to utilize symmetric yield functions for modeling the tension-compression asymmetry commonly observed in hcp materials. In this work, the strength differential (SD) effect is modeled by choosing separate symmetric plane stress yield functions (for example, Barlat Yld 2000-2d) for the tension i.e., in the first quadrant of principal stress space, and compression i.e., third quadrant of principal stress space. In the second and fourth quadrants, the yield locus is constructed by adopting interpolating functions between uniaxial tensile and compressive stress states. In this work, different interpolating functions are chosen and the predictive capability of each approach is discussed. The main advantage of this proposed approach is that the yield locus parameters are deterministic and relatively easy to identify when compared to the Cazacu family of yield functions commonly used for modeling SD effect observed in hcp materials.

  11. SPIDER: A new tool for measuring fission yields

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Meierbachtol, Krista C.

    2014-03-27

    The goals of this project are to measure fission-fragment yields as a function of (En, Z,A, TKE); develop theory in order to evaluate fission yield data; and provide an evaluation of the Pu-239 fission yields.

  12. Global crop yield response to extreme heat stress under multiple climate change futures

    NASA Astrophysics Data System (ADS)

    Deryng, D.; Conway, D.; Ramankutty, N.; Price, J.; Warren, R.

    2014-12-01

    Extreme heat stress during the crop reproductive period can be critical for crop productivity. Projected changes in the frequency and severity of extreme climatic events are expected to negatively impact crop yields and global food production. This study applies the global crop model PEGASUS to quantify, for the first time at the global scale, impacts of extreme heat stress on maize, spring wheat and soybean yields resulting from 72 climate change scenarios for the 21st century. Our results project maize to face progressively worse impacts under a range of RCPs but spring wheat and soybean to improve globally through to the 2080s due to CO2 fertilization effects, even though parts of the tropic and sub-tropic regions could face substantial yield declines. We find extreme heat stress at anthesis (HSA) by the 2080s (relative to the 1980s) under RCP 8.5, taking into account CO2 fertilization effects, could double global losses of maize yield (dY = -12.8 ± 6.7% versus -7.0 ± 5.3% without HSA), reduce projected gains in spring wheat yield by half (dY = 34.3 ± 13.5% versus 72.0 ± 10.9% without HSA) and in soybean yield by a quarter (dY = 15.3 ± 26.5% versus 20.4 ± 22.1% without HSA). The range reflects uncertainty due to differences between climate model scenarios; soybean exhibits both positive and negative impacts, maize is generally negative and spring wheat generally positive. Furthermore, when assuming CO2 fertilization effects to be negligible, we observe drastic climate mitigation policy as in RCP 2.6 could avoid more than 80% of the global average yield losses otherwise expected by the 2080s under RCP 8.5. We show large disparities in climate impacts across regions and find extreme heat stress adversely affects major producing regions and lower income countries.

  13. Global crop yield response to extreme heat stress under multiple climate change futures

    NASA Astrophysics Data System (ADS)

    Deryng, Delphine; Conway, Declan; Ramankutty, Navin; Price, Jeff; Warren, Rachel

    2014-03-01

    Extreme heat stress during the crop reproductive period can be critical for crop productivity. Projected changes in the frequency and severity of extreme climatic events are expected to negatively impact crop yields and global food production. This study applies the global crop model PEGASUS to quantify, for the first time at the global scale, impacts of extreme heat stress on maize, spring wheat and soybean yields resulting from 72 climate change scenarios for the 21st century. Our results project maize to face progressively worse impacts under a range of RCPs but spring wheat and soybean to improve globally through to the 2080s due to CO2 fertilization effects, even though parts of the tropic and sub-tropic regions could face substantial yield declines. We find extreme heat stress at anthesis (HSA) by the 2080s (relative to the 1980s) under RCP 8.5, taking into account CO2 fertilization effects, could double global losses of maize yield (ΔY = -12.8 ± 6.7% versus - 7.0 ± 5.3% without HSA), reduce projected gains in spring wheat yield by half (ΔY = 34.3 ± 13.5% versus 72.0 ± 10.9% without HSA) and in soybean yield by a quarter (ΔY = 15.3 ± 26.5% versus 20.4 ± 22.1% without HSA). The range reflects uncertainty due to differences between climate model scenarios; soybean exhibits both positive and negative impacts, maize is generally negative and spring wheat generally positive. Furthermore, when assuming CO2 fertilization effects to be negligible, we observe drastic climate mitigation policy as in RCP 2.6 could avoid more than 80% of the global average yield losses otherwise expected by the 2080s under RCP 8.5. We show large disparities in climate impacts across regions and find extreme heat stress adversely affects major producing regions and lower income countries.

  14. Modeling precipitation-runoff relationships to determine water yield from a ponderosa pine forest watershed

    Treesearch

    Assefa S. Desta

    2006-01-01

    A stochastic precipitation-runoff modeling is used to estimate a cold and warm-seasons water yield from a ponderosa pine forested watershed in the north-central Arizona. The model consists of two parts namely, simulation of the temporal and spatial distribution of precipitation using a stochastic, event-based approach and estimation of water yield from the watershed...

  15. Estimating the impact of mineral aerosols on crop yields in food insecure regions using statistical crop models

    NASA Astrophysics Data System (ADS)

    Hoffman, A.; Forest, C. E.; Kemanian, A.

    2016-12-01

    A significant number of food-insecure nations exist in regions of the world where dust plays a large role in the climate system. While the impacts of common climate variables (e.g. temperature, precipitation, ozone, and carbon dioxide) on crop yields are relatively well understood, the impact of mineral aerosols on yields have not yet been thoroughly investigated. This research aims to develop the data and tools to progress our understanding of mineral aerosol impacts on crop yields. Suspended dust affects crop yields by altering the amount and type of radiation reaching the plant, modifying local temperature and precipitation. While dust events (i.e. dust storms) affect crop yields by depleting the soil of nutrients or by defoliation via particle abrasion. The impact of dust on yields is modeled statistically because we are uncertain which impacts will dominate the response on national and regional scales considered in this study. Multiple linear regression is used in a number of large-scale statistical crop modeling studies to estimate yield responses to various climate variables. In alignment with previous work, we develop linear crop models, but build upon this simple method of regression with machine-learning techniques (e.g. random forests) to identify important statistical predictors and isolate how dust affects yields on the scales of interest. To perform this analysis, we develop a crop-climate dataset for maize, soybean, groundnut, sorghum, rice, and wheat for the regions of West Africa, East Africa, South Africa, and the Sahel. Random forest regression models consistently model historic crop yields better than the linear models. In several instances, the random forest models accurately capture the temperature and precipitation threshold behavior in crops. Additionally, improving agricultural technology has caused a well-documented positive trend that dominates time series of global and regional yields. This trend is often removed before regression with

  16. Modeling Long-Term Corn Yield Response to Nitrogen Rate and Crop Rotation

    PubMed Central

    Puntel, Laila A.; Sawyer, John E.; Barker, Daniel W.; Dietzel, Ranae; Poffenbarger, Hanna; Castellano, Michael J.; Moore, Kenneth J.; Thorburn, Peter; Archontoulis, Sotirios V.

    2016-01-01

    Improved prediction of optimal N fertilizer rates for corn (Zea mays L.) can reduce N losses and increase profits. We tested the ability of the Agricultural Production Systems sIMulator (APSIM) to simulate corn and soybean (Glycine max L.) yields, the economic optimum N rate (EONR) using a 16-year field-experiment dataset from central Iowa, USA that included two crop sequences (continuous corn and soybean-corn) and five N fertilizer rates (0, 67, 134, 201, and 268 kg N ha-1) applied to corn. Our objectives were to: (a) quantify model prediction accuracy before and after calibration, and report calibration steps; (b) compare crop model-based techniques in estimating optimal N rate for corn; and (c) utilize the calibrated model to explain factors causing year to year variability in yield and optimal N. Results indicated that the model simulated well long-term crop yields response to N (relative root mean square error, RRMSE of 19.6% before and 12.3% after calibration), which provided strong evidence that important soil and crop processes were accounted for in the model. The prediction of EONR was more complex and had greater uncertainty than the prediction of crop yield (RRMSE of 44.5% before and 36.6% after calibration). For long-term site mean EONR predictions, both calibrated and uncalibrated versions can be used as the 16-year mean differences in EONR’s were within the historical N rate error range (40–50 kg N ha-1). However, for accurate year-by-year simulation of EONR the calibrated version should be used. Model analysis revealed that higher EONR values in years with above normal spring precipitation were caused by an exponential increase in N loss (denitrification and leaching) with precipitation. We concluded that long-term experimental data were valuable in testing and refining APSIM predictions. The model can be used as a tool to assist N management guidelines in the US Midwest and we identified five avenues on how the model can add value toward

  17. Modeling Long-Term Corn Yield Response to Nitrogen Rate and Crop Rotation.

    PubMed

    Puntel, Laila A; Sawyer, John E; Barker, Daniel W; Dietzel, Ranae; Poffenbarger, Hanna; Castellano, Michael J; Moore, Kenneth J; Thorburn, Peter; Archontoulis, Sotirios V

    2016-01-01

    Improved prediction of optimal N fertilizer rates for corn ( Zea mays L. ) can reduce N losses and increase profits. We tested the ability of the Agricultural Production Systems sIMulator (APSIM) to simulate corn and soybean ( Glycine max L. ) yields, the economic optimum N rate (EONR) using a 16-year field-experiment dataset from central Iowa, USA that included two crop sequences (continuous corn and soybean-corn) and five N fertilizer rates (0, 67, 134, 201, and 268 kg N ha -1 ) applied to corn. Our objectives were to: (a) quantify model prediction accuracy before and after calibration, and report calibration steps; (b) compare crop model-based techniques in estimating optimal N rate for corn; and (c) utilize the calibrated model to explain factors causing year to year variability in yield and optimal N. Results indicated that the model simulated well long-term crop yields response to N (relative root mean square error, RRMSE of 19.6% before and 12.3% after calibration), which provided strong evidence that important soil and crop processes were accounted for in the model. The prediction of EONR was more complex and had greater uncertainty than the prediction of crop yield (RRMSE of 44.5% before and 36.6% after calibration). For long-term site mean EONR predictions, both calibrated and uncalibrated versions can be used as the 16-year mean differences in EONR's were within the historical N rate error range (40-50 kg N ha -1 ). However, for accurate year-by-year simulation of EONR the calibrated version should be used. Model analysis revealed that higher EONR values in years with above normal spring precipitation were caused by an exponential increase in N loss (denitrification and leaching) with precipitation. We concluded that long-term experimental data were valuable in testing and refining APSIM predictions. The model can be used as a tool to assist N management guidelines in the US Midwest and we identified five avenues on how the model can add value toward

  18. Testing Software Development Project Productivity Model

    NASA Astrophysics Data System (ADS)

    Lipkin, Ilya

    Software development is an increasingly influential factor in today's business environment, and a major issue affecting software development is how an organization estimates projects. If the organization underestimates cost, schedule, and quality requirements, the end results will not meet customer needs. On the other hand, if the organization overestimates these criteria, resources that could have been used more profitably will be wasted. There is no accurate model or measure available that can guide an organization in a quest for software development, with existing estimation models often underestimating software development efforts as much as 500 to 600 percent. To address this issue, existing models usually are calibrated using local data with a small sample size, with resulting estimates not offering improved cost analysis. This study presents a conceptual model for accurately estimating software development, based on an extensive literature review and theoretical analysis based on Sociotechnical Systems (STS) theory. The conceptual model serves as a solution to bridge organizational and technological factors and is validated using an empirical dataset provided by the DoD. Practical implications of this study allow for practitioners to concentrate on specific constructs of interest that provide the best value for the least amount of time. This study outlines key contributing constructs that are unique for Software Size E-SLOC, Man-hours Spent, and Quality of the Product, those constructs having the largest contribution to project productivity. This study discusses customer characteristics and provides a framework for a simplified project analysis for source selection evaluation and audit task reviews for the customers and suppliers. Theoretical contributions of this study provide an initial theory-based hypothesized project productivity model that can be used as a generic overall model across several application domains such as IT, Command and Control

  19. Custom map projections for regional groundwater models

    USGS Publications Warehouse

    Kuniansky, Eve L.

    2017-01-01

    For regional groundwater flow models (areas greater than 100,000 km2), improper choice of map projection parameters can result in model error for boundary conditions dependent on area (recharge or evapotranspiration simulated by application of a rate using cell area from model discretization) and length (rivers simulated with head-dependent flux boundary). Smaller model areas can use local map coordinates, such as State Plane (United States) or Universal Transverse Mercator (correct zone) without introducing large errors. Map projections vary in order to preserve one or more of the following properties: area, shape, distance (length), or direction. Numerous map projections are developed for different purposes as all four properties cannot be preserved simultaneously. Preservation of area and length are most critical for groundwater models. The Albers equal-area conic projection with custom standard parallels, selected by dividing the length north to south by 6 and selecting standard parallels 1/6th above or below the southern and northern extent, preserves both area and length for continental areas in mid latitudes oriented east-west. Custom map projection parameters can also minimize area and length error in non-ideal projections. Additionally, one must also use consistent vertical and horizontal datums for all geographic data. The generalized polygon for the Floridan aquifer system study area (306,247.59 km2) is used to provide quantitative examples of the effect of map projections on length and area with different projections and parameter choices. Use of improper map projection is one model construction problem easily avoided.

  20. Crop Yield Predictions - High Resolution Statistical Model for Intra-season Forecasts Applied to Corn in the US

    NASA Astrophysics Data System (ADS)

    Cai, Y.

    2017-12-01

    Accurately forecasting crop yields has broad implications for economic trading, food production monitoring, and global food security. However, the variation of environmental variables presents challenges to model yields accurately, especially when the lack of highly accurate measurements creates difficulties in creating models that can succeed across space and time. In 2016, we developed a sequence of machine-learning based models forecasting end-of-season corn yields for the US at both the county and national levels. We combined machine learning algorithms in a hierarchical way, and used an understanding of physiological processes in temporal feature selection, to achieve high precision in our intra-season forecasts, including in very anomalous seasons. During the live run, we predicted the national corn yield within 1.40% of the final USDA number as early as August. In the backtesting of the 2000-2015 period, our model predicts national yield within 2.69% of the actual yield on average already by mid-August. At the county level, our model predicts 77% of the variation in final yield using data through the beginning of August and improves to 80% by the beginning of October, with the percentage of counties predicted within 10% of the average yield increasing from 68% to 73%. Further, the lowest errors are in the most significant producing regions, resulting in very high precision national-level forecasts. In addition, we identify the changes of important variables throughout the season, specifically early-season land surface temperature, and mid-season land surface temperature and vegetation index. For the 2017 season, we feed 2016 data to the training set, together with additional geospatial data sources, aiming to make the current model even more precise. We will show how our 2017 US corn yield forecasts converges in time, which factors affect the yield the most, as well as present our plans for 2018 model adjustments.

  1. Operation of the yield estimation subsystem

    NASA Technical Reports Server (NTRS)

    Mccrary, D. G.; Rogers, J. L.; Hill, J. D. (Principal Investigator)

    1979-01-01

    The organization and products of the yield estimation subsystem (YES) are described with particular emphasis on meteorological data acquisition, yield estimation, crop calendars, weekly weather summaries, and project reports. During the three phases of LACIE, YES demonstrated that it is possible to use the flow of global meteorological data and provide valuable information regarding global wheat production. It was able to establish a capability to collect, in a timely manner, detailed weather data from all regions of the world, and to evaluate and convert that data into information appropriate to the project's needs.

  2. Evaluation of Thompson-type trend and monthly weather data models for corn yields in Iowa, Illinois, and Indiana

    NASA Technical Reports Server (NTRS)

    French, V. (Principal Investigator)

    1982-01-01

    An evaluation was made of Thompson-Type models which use trend terms (as a surrogate for technology), meteorological variables based on monthly average temperature, and total precipitation to forecast and estimate corn yields in Iowa, Illinois, and Indiana. Pooled and unpooled Thompson-type models were compared. Neither was found to be consistently superior to the other. Yield reliability indicators show that the models are of limited use for large area yield estimation. The models are objective and consistent with scientific knowledge. Timely yield forecasts and estimates can be made during the growing season by using normals or long range weather forecasts. The models are not costly to operate and are easy to use and understand. The model standard errors of prediction do not provide a useful current measure of modeled yield reliability.

  3. Influence of Different Yield Loci on Failure Prediction with Damage Models

    NASA Astrophysics Data System (ADS)

    Heibel, S.; Nester, W.; Clausmeyer, T.; Tekkaya, A. E.

    2017-09-01

    Advanced high strength steels are widely used in the automotive industry to simultaneously improve crash performance and reduce the car body weight. A drawback of these multiphase steels is their sensitivity to damage effects and thus the reduction of ductility. For that reason the Forming Limit Curve is only partially suitable for this class of steels. An improvement in failure prediction can be obtained by using damage mechanics. The objective of this paper is to comparatively review the phenomenological damage model GISSMO and the Enhanced Lemaitre Damage Model. GISSMO is combined with three different yield loci, namely von Mises, Hill48 and Barlat2000 to investigate the influence of the choice of the plasticity description on damage modelling. The Enhanced Lemaitre Model is used with Hill48. An inverse parameter identification strategy for a DP1000 based on stress-strain curves and optical strain measurements of shear, uniaxial, notch and (equi-)biaxial tension tests is applied to calibrate the models. A strong dependency of fracture strains on the choice of yield locus can be observed. The identified models are validated on a cross-die cup showing ductile fracture with slight necking.

  4. The impact of Global Warming on global crop yields due to changes in pest pressure

    NASA Astrophysics Data System (ADS)

    Battisti, D. S.; Tewksbury, J. J.; Deutsch, C. A.

    2011-12-01

    A billion people currently lack reliable access to sufficient food and almost half of the calories feeding these people come from just three crops: rice, maize, wheat. Insect pests are among the largest factors affecting the yield of these three crops, but models assessing the effects of global warming on crops rarely consider changes in insect pest pressure on crop yields. We use well-established relationships between temperature and insect physiology to project climate-driven changes in pest pressure, defined as integrated population metabolism, for the three major crops. By the middle of this century, under most scenarios, insect pest pressure is projected to increase by more than 50% in temperate areas, while increases in tropical regions will be more modest. Yield relationships indicate that the largest increases in insect pest pressure are likely to occur in areas where yield is greatest, suggesting increased strain on global food markets.

  5. Continental-scale Sensitivity of Water Yield to Changes in Impervious Cover

    NASA Astrophysics Data System (ADS)

    Caldwell, P.; Sun, G.; McNulty, S.; Cohen, E.; Moore Myers, J.

    2012-12-01

    Projected land conversion from native forest, grassland, and shrubland to urban impervious cover will alter watershed water balances by reducing groundwater recharge and evapotranspiration, increasing surface runoff, and potentially altering regional weather patterns. These hydrologic changes have important ecohydrological implications to local watersheds, including stream channel habitat degradation and the loss of aquatic biodiversity. Many observational studies have evaluated the impact of urbanization on water yield in small catchments downstream of specific urban areas. However it is often difficult to separate the impact of impervious cover from other impacts of urbanization such as leaking water infrastructure, irrigation runoff, water supply withdrawals, and effluent discharge. In addition, the impact of impervious cover has not been evaluated at scales large enough to assess spatial differences in water yield sensitivity to changes in impervious cover. The objective of this study was to assess the sensitivity of water yield to impervious cover across the conterminous U.S., and to identify locations where water yield will be most impacted by future urbanization. We used the Water Supply Stress Index (WaSSI) model to simulate monthly water yield as impacted by impervious cover for the approximately 82,000 12-digit HUC watersheds across the conterminous U.S. WaSSI computed infiltration, surface runoff, soil moisture, and baseflow processes explicitly for ten vegetative land cover classes and impervious cover in each watershed using the 2006 National Land Cover Dataset estimates of impervious cover. Our results indicate that impervious cover has increased total water yield in urban areas (relative to native vegetation), and that the increase was most significant during the growing season. The proportion of stream flow that occurred as baseflow decreased, even though total water yield increased as a result of impervious cover. Water yield was most sensitive to

  6. Projecting water yield and ecosystem productivity across the United States by linking an ecohydrological model to WRF dynamically downscaled climate data

    NASA Astrophysics Data System (ADS)

    Sun, Shanlei; Sun, Ge; Cohen, Erika; McNulty, Steven G.; Caldwell, Peter V.; Duan, Kai; Zhang, Yang

    2016-03-01

    Quantifying the potential impacts of climate change on water yield and ecosystem productivity is essential to developing sound watershed restoration plans, and ecosystem adaptation and mitigation strategies. This study links an ecohydrological model (Water Supply and Stress Index, WaSSI) with WRF (Weather Research and Forecasting Model) using dynamically downscaled climate data of the HadCM3 model under the IPCC SRES A2 emission scenario. We evaluated the future (2031-2060) changes in evapotranspiration (ET), water yield (Q) and gross primary productivity (GPP) from the baseline period of 1979-2007 across the 82 773 watersheds (12-digit Hydrologic Unit Code level) in the coterminous US (CONUS). Across the CONUS, the future multi-year means show increases in annual precipitation (P) of 45 mm yr-1 (6 %), 1.8° C increase in temperature (T), 37 mm yr-1 (7 %) increase in ET, 9 mm yr-1 (3 %) increase in Q, and 106 gC m-2 yr-1 (9 %) increase in GPP. We found a large spatial variability in response to climate change across the CONUS 12-digit HUC watersheds, but in general, the majority would see consistent increases all variables evaluated. Over half of the watersheds, mostly found in the northeast and the southern part of the southwest, would see an increase in annual Q (> 100 mm yr-1 or 20 %). In addition, we also evaluated the future annual and monthly changes of hydrology and ecosystem productivity for the 18 Water Resource Regions (WRRs) or two-digit HUCs. The study provides an integrated method and example for comprehensive assessment of the potential impacts of climate change on watershed water balances and ecosystem productivity at high spatial and temporal resolutions. Results may be useful for policy-makers and land managers to formulate appropriate watershed-specific strategies for sustaining water and carbon sources in the face of climate change.

  7. Infrasound Propagation Modeling for Explosive Yield Estimation

    NASA Astrophysics Data System (ADS)

    Howard, J. E.; Golden, P.; Negraru, P.

    2013-12-01

    This study focuses on developing methods of estimating the size or yield of HE surface explosions from local and regional infrasound measurements in the southwestern United States. A munitions disposal facility near Mina, Nevada provides a repeating ground-truth source for this study, with charge weights ranging from 870 - 3800 lbs. Detonation logs and GPS synchronized videos were obtained for a sample of shots representing the full range of weights. These are used to calibrate a relationship between charge weight and spectral level from seismic waveforms recorded at the Nevada Seismic Array (NVAR) at a distance of 36 km. Origin times and yields for the remaining shots are inferred from the seismic recordings at NVAR. Infrasound arrivals from the detonations have been continuously recorded on three four-element, small aperture infrasound arrays since late 2009. NVIAR is collocated with NVAR at a range of approximately 36 km to the northeast. FALN and DNIAR are located at ranges of 154 km to the north, and 293 km to the southeast respectively. Travel times and amplitudes for stratospheric arrivals at DNIAR show strong seasonal variability with the largest amplitudes and celerities occurring during the winter months when the stratospheric winds are favorable. Stratospheric celerities for FNIAR to the north are more consistent as they are not strongly affected by the predominantly meridional stratospheric winds. Tropospheric arrivals at all three arrays show considerable variability that does not appear to be a seasonal effect. Naval Research Laboratory Ground to Space (NRL-G2S) Mesoscale models are used to specify the atmosphere along the propagation path for each detonation. Ray-tracing is performed for each source/receiver pair to identify events for which the models closely match the travel-time observations. This subset of events is used to establish preliminary wind correction formulas using wind values from the G2S profile for the entire propagation path. These

  8. Climate change and maize yield in southern Africa: what can farm management do?

    PubMed

    Rurinda, Jairos; van Wijk, Mark T; Mapfumo, Paul; Descheemaeker, Katrien; Supit, Iwan; Giller, Ken E

    2015-12-01

    There is concern that food insecurity will increase in southern Africa due to climate change. We quantified the response of maize yield to projected climate change and to three key management options - planting date, fertilizer use and cultivar choice - using the crop simulation model, agricultural production systems simulator (APSIM), at two contrasting sites in Zimbabwe. Three climate periods up to 2100 were selected to cover both near- and long-term climates. Future climate data under two radiative forcing scenarios were generated from five global circulation models. The temperature is projected to increase significantly in Zimbabwe by 2100 with no significant change in mean annual total rainfall. When planting before mid-December with a high fertilizer rate, the simulated average grain yield for all three maize cultivars declined by 13% for the periods 2010-2039 and 2040-2069 and by 20% for 2070-2099 compared with the baseline climate, under low radiative forcing. Larger declines in yield of up to 32% were predicted for 2070-2099 with high radiative forcing. Despite differences in annual rainfall, similar trends in yield changes were observed for the two sites studied, Hwedza and Makoni. The yield response to delay in planting was nonlinear. Fertilizer increased yield significantly under both baseline and future climates. The response of maize to mineral nitrogen decreased with progressing climate change, implying a decrease in the optimal fertilizer rate in the future. Our results suggest that in the near future, improved crop and soil fertility management will remain important for enhanced maize yield. Towards the end of the 21st century, however, none of the farm management options tested in the study can avoid large yield losses in southern Africa due to climate change. There is a need to transform the current cropping systems of southern Africa to offset the negative impacts of climate change. © 2015 John Wiley & Sons Ltd.

  9. Evaluation of the CEAS trend and monthly weather data models for soybean yields in Iowa, Illinois, and Indiana

    NASA Technical Reports Server (NTRS)

    French, V. (Principal Investigator)

    1982-01-01

    The CEAS models evaluated use historic trend and meteorological and agroclimatic variables to forecast soybean yields in Iowa, Illinois, and Indiana. Indicators of yield reliability and current measures of modeled yield reliability were obtained from bootstrap tests on the end of season models. Indicators of yield reliability show that the state models are consistently better than the crop reporting district (CRD) models. One CRD model is especially poor. At the state level, the bias of each model is less than one half quintal/hectare. The standard deviation is between one and two quintals/hectare. The models are adequate in terms of coverage and are to a certain extent consistent with scientific knowledge. Timely yield estimates can be made during the growing season using truncated models. The models are easy to understand and use and are not costly to operate. Other than the specification of values used to determine evapotranspiration, the models are objective. Because the method of variable selection used in the model development is adequately documented, no evaluation can be made of the objectivity and cost of redevelopment of the model.

  10. Crop Yield Simulations Using Multiple Regional Climate Models in the Southwestern United States

    NASA Astrophysics Data System (ADS)

    Stack, D.; Kafatos, M.; Kim, S.; Kim, J.; Walko, R. L.

    2013-12-01

    Agricultural productivity (described by crop yield) is strongly dependent on climate conditions determined by meteorological parameters (e.g., temperature, rainfall, and solar radiation). California is the largest producer of agricultural products in the United States, but crops in associated arid and semi-arid regions live near their physiological limits (e.g., in hot summer conditions with little precipitation). Thus, accurate climate data are essential in assessing the impact of climate variability on agricultural productivity in the Southwestern United States and other arid regions. To address this issue, we produced simulated climate datasets and used them as input for the crop production model. For climate data, we employed two different regional climate models (WRF and OLAM) using a fine-resolution (8km) grid. Performances of the two different models are evaluated in a fine-resolution regional climate hindcast experiment for 10 years from 2001 to 2010 by comparing them to the North American Regional Reanalysis (NARR) dataset. Based on this comparison, multi-model ensembles with variable weighting are used to alleviate model bias and improve the accuracy of crop model productivity over large geographic regions (county and state). Finally, by using a specific crop-yield simulation model (APSIM) in conjunction with meteorological forcings from the multi-regional climate model ensemble, we demonstrate the degree to which maize yields are sensitive to the regional climate in the Southwestern United States.

  11. Model Identification and FE Simulations: Effect of Different Yield Loci and Hardening Laws in Sheet Forming

    NASA Astrophysics Data System (ADS)

    Flores, P.; Duchêne, L.; Lelotte, T.; Bouffioux, C.; El Houdaigui, F.; Van Bael, A.; He, S.; Duflou, J.; Habraken, A. M.

    2005-08-01

    The bi-axial experimental equipment developed by Flores enables to perform Baushinger shear tests and successive or simultaneous simple shear tests and plane-strain tests. Such experiments and classical tensile tests investigate the material behavior in order to identify the yield locus and the hardening models. With tests performed on two steel grades, the methods applied to identify classical yield surfaces such as Hill or Hosford ones as well as isotropic Swift type hardening or kinematic Armstrong-Frederick hardening models are explained. Comparison with the Taylor-Bishop-Hill yield locus is also provided. The effect of both yield locus and hardening model choice will be presented for two applications: Single Point Incremental Forming (SPIF) and a cup deep drawing.

  12. Mars Pathfinder Project: Planetary Constants and Models

    NASA Technical Reports Server (NTRS)

    Vaughan, Robin

    1995-01-01

    This document provides a common set of astrodynamic constants and planetary models for use by the Mars Pathfinder Project. It attempts to collect in a single reference all the quantities and models in use across the project during development and for mission operations. These models are central to the navigation and mission design functions, but they are also used in other aspects of the project such as science observation planning and data reduction.

  13. Estimating climate change, CO2 and technology development effects on wheat yield in northeast Iran

    NASA Astrophysics Data System (ADS)

    Bannayan, M.; Mansoori, H.; Rezaei, E. Eyshi

    2014-04-01

    Wheat is the main food for the majority of Iran's population. Precise estimation of wheat yield change in future is essential for any possible revision of management strategies. The main objective of this study was to evaluate the effects of climate change, CO2 concentration, technology development and their integrated effects on wheat production under future climate change. This study was performed under two scenarios of the IPCC Special Report on Emission Scenarios (SRES): regional economic (A2) and global environmental (B1). Crop production was projected for three future time periods (2020, 2050 and 2080) in comparison with a baseline year (2005) for Khorasan province located in the northeast of Iran. Four study locations in the study area included Mashhad, Birjand, Bojnourd and Sabzevar. The effect of technology development was calculated by fitting a regression equation between the observed wheat yields against historical years considering yield potential increase and yield gap reduction as technology development. Yield relative increase per unit change of CO2 concentration (1 ppm-1) was considered 0.05 % and was used to implement the effect of elevated CO2. The HadCM3 general circulation model along with the CSM-CERES-Wheat crop model were used to project climate change effects on wheat crop yield. Our results illustrate that, among all the factors considered, technology development provided the highest impact on wheat yield change. Highest wheat yield increase across all locations and time periods was obtained under the A2 scenario. Among study locations, Mashhad showed the highest change in wheat yield. Yield change compared to baseline ranged from -28 % to 56 % when the integration of all factors was considered across all locations. It seems that achieving higher yield of wheat in future may be expected in northeast Iran assuming stable improvements in production technology.

  14. Estimating climate change, CO2 and technology development effects on wheat yield in northeast Iran.

    PubMed

    Bannayan, M; Mansoori, H; Rezaei, E Eyshi

    2014-04-01

    Wheat is the main food for the majority of Iran's population. Precise estimation of wheat yield change in future is essential for any possible revision of management strategies. The main objective of this study was to evaluate the effects of climate change, CO2 concentration, technology development and their integrated effects on wheat production under future climate change. This study was performed under two scenarios of the IPCC Special Report on Emission Scenarios (SRES): regional economic (A2) and global environmental (B1). Crop production was projected for three future time periods (2020, 2050 and 2080) in comparison with a baseline year (2005) for Khorasan province located in the northeast of Iran. Four study locations in the study area included Mashhad, Birjand, Bojnourd and Sabzevar. The effect of technology development was calculated by fitting a regression equation between the observed wheat yields against historical years considering yield potential increase and yield gap reduction as technology development. Yield relative increase per unit change of CO2 concentration (1 ppm(-1)) was considered 0.05 % and was used to implement the effect of elevated CO2. The HadCM3 general circulation model along with the CSM-CERES-Wheat crop model were used to project climate change effects on wheat crop yield. Our results illustrate that, among all the factors considered, technology development provided the highest impact on wheat yield change. Highest wheat yield increase across all locations and time periods was obtained under the A2 scenario. Among study locations, Mashhad showed the highest change in wheat yield. Yield change compared to baseline ranged from -28 % to 56 % when the integration of all factors was considered across all locations. It seems that achieving higher yield of wheat in future may be expected in northeast Iran assuming stable improvements in production technology.

  15. Refinement and evaluation of the Massachusetts firm-yield estimator model version 2.0

    USGS Publications Warehouse

    Levin, Sara B.; Archfield, Stacey A.; Massey, Andrew J.

    2011-01-01

    The firm yield is the maximum average daily withdrawal that can be extracted from a reservoir without risk of failure during an extended drought period. Previously developed procedures for determining the firm yield of a reservoir were refined and applied to 38 reservoir systems in Massachusetts, including 25 single- and multiple-reservoir systems that were examined during previous studies and 13 additional reservoir systems. Changes to the firm-yield model include refinements to the simulation methods and input data, as well as the addition of several scenario-testing capabilities. The simulation procedure was adapted to run at a daily time step over a 44-year simulation period, and daily streamflow and meteorological data were compiled for all the reservoirs for input to the model. Another change to the model-simulation methods is the adjustment of the scaling factor used in estimating groundwater contributions to the reservoir. The scaling factor is used to convert the daily groundwater-flow rate into a volume by multiplying the rate by the length of reservoir shoreline that is hydrologically connected to the aquifer. Previous firm-yield analyses used a constant scaling factor that was estimated from the reservoir surface area at full pool. The use of a constant scaling factor caused groundwater flows during periods when the reservoir stage was very low to be overestimated. The constant groundwater scaling factor used in previous analyses was replaced with a variable scaling factor that is based on daily reservoir stage. This change reduced instability in the groundwater-flow algorithms and produced more realistic groundwater-flow contributions during periods of low storage. Uncertainty in the firm-yield model arises from many sources, including errors in input data. The sensitivity of the model to uncertainty in streamflow input data and uncertainty in the stage-storage relation was examined. A series of Monte Carlo simulations were performed on 22 reservoirs

  16. What is the importance of climate model bias when projecting the impacts of climate change on land surface processes?

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Liu, M. L.; Rajagopalan, K.; Chung, S. H.

    2014-05-16

    Regional climate change impact (CCI) studies have widely involved downscaling and bias-correcting (BC) Global Climate Model (GCM)-projected climate for driving land surface models. However, BC may cause uncertainties in projecting hydrologic and biogeochemical responses to future climate due to the impaired spatiotemporal covariance of climate variables and a breakdown of physical conservation principles. Here we quantify the impact of BC on simulated climate-driven changes in water variables(evapotranspiration, ET; runoff; snow water equivalent, SWE; and water demand for irrigation), crop yield, biogenic volatile organic compounds (BVOC), nitric oxide (NO) emissions, and dissolved inorganic nitrogen (DIN) export over the Pacific Northwest (PNW)more » Region. We also quantify the impacts on net primary production (NPP) over a small watershed in the region (HJ Andrews). Simulation results from the coupled ECHAM5/MPI-OM model with A1B emission scenario were firstly dynamically downscaled to 12 km resolutions with WRF model. Then a quantile mapping based statistical downscaling model was used to downscale them into 1/16th degree resolution daily climate data over historical and future periods. Two series climate data were generated according to the option of bias-correction (i.e. with bias-correction (BC) and without bias-correction, NBC). Impact models were then applied to estimate hydrologic and biogeochemical responses to both BC and NBC meteorological datasets. These im20 pact models include a macro-scale hydrologic model (VIC), a coupled cropping system model (VIC-CropSyst), an ecohydrologic model (RHESSys), a biogenic emissions model (MEGAN), and a nutrient export model (Global-NEWS). Results demonstrate that the BC and NBC climate data provide consistent estimates of the climate-driven changes in water fluxes (ET, runoff, and water demand), VOCs (isoprene and monoterpenes) and NO emissions, mean crop yield, and river DIN export over the PNW domain. However

  17. Simulating and Predicting Cereal Crop Yields in Ethiopia: Model Calibration and Verification

    NASA Astrophysics Data System (ADS)

    Yang, M.; Wang, G.; Ahmed, K. F.; Eggen, M.; Adugna, B.; Anagnostou, E. N.

    2017-12-01

    Agriculture in developing countries are extremely vulnerable to climate variability and changes. In East Africa, most people live in the rural areas with outdated agriculture techniques and infrastructure. Smallholder agriculture continues to play a key role in this area, and the rate of irrigation is among the lowest of the world. As a result, seasonal and inter-annual weather patterns play an important role in the spatiotemporal variability of crop yields. This study investigates how various climate variables (e.g., temperature, precipitation, sunshine) and agricultural practice (e.g., fertilization, irrigation, planting date) influence cereal crop yields using a process-based model (DSSAT) and statistical analysis, and focuses on the Blue Nile Basin of Ethiopia. The DSSAT model is driven with meteorological forcing from the ECMWF's latest reanalysis product that cover the past 35 years; the statistical model will be developed by linking the same meteorological reanalysis data with harvest data at the woreda level from the Ethiopian national dataset. Results from this study will set the stage for the development of a seasonal prediction system for weather and crop yields in Ethiopia, which will serve multiple sectors in coping with the agricultural impact of climate variability.

  18. Estimation of dew yield from radiative condensers by means of an energy balance model

    NASA Astrophysics Data System (ADS)

    Maestre-Valero, J. F.; Ragab, R.; Martínez-Alvarez, V.; Baille, A.

    2012-08-01

    SummaryThis paper presents an energy balance modelling approach to predict the nightly water yield and the surface temperature (Tf) of two passive radiative dew condensers (RDCs) tilted 30° from horizontal. One was fitted with a white hydrophilic polyethylene foil recommended for dew harvest and the other with a black polyethylene foil widely used in horticulture. The model was validated in south-eastern Spain by comparing the simulation outputs with field measurements of Tf and dew yield. The results indicate that the model is robust and accurate in reproducing the behaviour of the two RDCs, especially in what refers to Tf, whose estimates were very close to the observations. The results were somewhat less precise for dew yield, with a larger scatter around the 1:1 relationship. A sensitivity analysis showed that the simulated dew yield was highly sensitive to changes in relative humidity and downward longwave radiation. The proposed approach provides a useful tool to water managers for quantifying the amount of dew that could be harvested as a valuable water resource in arid, semiarid and water stressed regions.

  19. Random regression models using different functions to model test-day milk yield of Brazilian Holstein cows.

    PubMed

    Bignardi, A B; El Faro, L; Torres Júnior, R A A; Cardoso, V L; Machado, P F; Albuquerque, L G

    2011-10-31

    We analyzed 152,145 test-day records from 7317 first lactations of Holstein cows recorded from 1995 to 2003. Our objective was to model variations in test-day milk yield during the first lactation of Holstein cows by random regression model (RRM), using various functions in order to obtain adequate and parsimonious models for the estimation of genetic parameters. Test-day milk yields were grouped into weekly classes of days in milk, ranging from 1 to 44 weeks. The contemporary groups were defined as herd-test-day. The analyses were performed using a single-trait RRM, including the direct additive, permanent environmental and residual random effects. In addition, contemporary group and linear and quadratic effects of the age of cow at calving were included as fixed effects. The mean trend of milk yield was modeled with a fourth-order orthogonal Legendre polynomial. The additive genetic and permanent environmental covariance functions were estimated by random regression on two parametric functions, Ali and Schaeffer and Wilmink, and on B-spline functions of days in milk. The covariance components and the genetic parameters were estimated by the restricted maximum likelihood method. Results from RRM parametric and B-spline functions were compared to RRM on Legendre polynomials and with a multi-trait analysis, using the same data set. Heritability estimates presented similar trends during mid-lactation (13 to 31 weeks) and between week 37 and the end of lactation, for all RRM. Heritabilities obtained by multi-trait analysis were of a lower magnitude than those estimated by RRM. The RRMs with a higher number of parameters were more useful to describe the genetic variation of test-day milk yield throughout the lactation. RRM using B-spline and Legendre polynomials as base functions appears to be the most adequate to describe the covariance structure of the data.

  20. Effects of diurnal temperature range and drought on wheat yield in Spain

    NASA Astrophysics Data System (ADS)

    Hernandez-Barrera, S.; Rodriguez-Puebla, C.; Challinor, A. J.

    2017-07-01

    This study aims to provide new insight on the wheat yield historical response to climate processes throughout Spain by using statistical methods. Our data includes observed wheat yield, pseudo-observations E-OBS for the period 1979 to 2014, and outputs of general circulation models in phase 5 of the Coupled Models Inter-comparison Project (CMIP5) for the period 1901 to 2099. In investigating the relationship between climate and wheat variability, we have applied the approach known as the partial least-square regression, which captures the relevant climate drivers accounting for variations in wheat yield. We found that drought occurring in autumn and spring and the diurnal range of temperature experienced during the winter are major processes to characterize the wheat yield variability in Spain. These observable climate processes are used for an empirical model that is utilized in assessing the wheat yield trends in Spain under different climate conditions. To isolate the trend within the wheat time series, we implemented the adaptive approach known as Ensemble Empirical Mode Decomposition. Wheat yields in the twenty-first century are experiencing a downward trend that we claim is a consequence of widespread drought over the Iberian Peninsula and an increase in the diurnal range of temperature. These results are important to inform about the wheat vulnerability in this region to coming changes and to develop adaptation strategies.

  1. Growth and Yield Estimation for Loblolly Pine in the West Gulf

    Treesearch

    Paul A. Murphy; Herbert S. Sternitzke

    1979-01-01

    An equation system is developed to estimate current yield, projected basal area, and projected volume for merchantable natural stands on a per-acre basis. These estimates indicate yields that can be expected from woods-run conditions.

  2. Uncertainty Quantification in Climate Modeling and Projection

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Qian, Yun; Jackson, Charles; Giorgi, Filippo

    The projection of future climate is one of the most complex problems undertaken by the scientific community. Although scientists have been striving to better understand the physical basis of the climate system and to improve climate models, the overall uncertainty in projections of future climate has not been significantly reduced (e.g., from the IPCC AR4 to AR5). With the rapid increase of complexity in Earth system models, reducing uncertainties in climate projections becomes extremely challenging. Since uncertainties always exist in climate models, interpreting the strengths and limitations of future climate projections is key to evaluating risks, and climate change informationmore » for use in Vulnerability, Impact, and Adaptation (VIA) studies should be provided with both well-characterized and well-quantified uncertainty. The workshop aimed at providing participants, many of them from developing countries, information on strategies to quantify the uncertainty in climate model projections and assess the reliability of climate change information for decision-making. The program included a mixture of lectures on fundamental concepts in Bayesian inference and sampling, applications, and hands-on computer laboratory exercises employing software packages for Bayesian inference, Markov Chain Monte Carlo methods, and global sensitivity analyses. The lectures covered a range of scientific issues underlying the evaluation of uncertainties in climate projections, such as the effects of uncertain initial and boundary conditions, uncertain physics, and limitations of observational records. Progress in quantitatively estimating uncertainties in hydrologic, land surface, and atmospheric models at both regional and global scales was also reviewed. The application of Uncertainty Quantification (UQ) concepts to coupled climate system models is still in its infancy. The Coupled Model Intercomparison Project (CMIP) multi-model ensemble currently represents the primary data for

  3. Modeling the initial mechanical response and yielding behavior of gelled crude oil

    NASA Astrophysics Data System (ADS)

    Lei, Chen; Gang, Liu; Xingguo, Lu; Minghai, Xu; Yuannan, Tang

    2018-05-01

    The initial mechanical response and yielding behavior of gelled crude oil under constant shear rate conditions were investigated. By putting the Maxwell mechanical analog and a special dashpot in parallel, a quasi-Jeffreys model was obtained. The kinetic equation of the structural parameter in the Houska model was simplified reasonably so that a simplified constitutive equation of the special dashpot was expressed. By introducing a damage factor into the constitutive equation of the special dashpot and the Maxwell mechanical analog, we established a constitutive equation of the quasi-Jeffreys model. Rheological tests of gelled crude oil were conducted by imposing constant shear rates and the relationship between the shear stress and shear strain under different shear rates was plotted. It is found that the constitutive equation can fit the experimental data well under a wide range of shear rates. Based on the fitted parameters in the quasi-Jeffreys model, the shear stress changing rules of the Maxwell mechanical analog and the special dashpot were calculated and analyzed. It is found that the critical yield strain and the corresponding shear strain where shear stress of the Maxwell analog is the maximum change slightly under different shear rates. And then a critical damage softening strain which is irrelevant to the shearing conditions was put forward to describe the yielding behavior of gelled crude oil.

  4. Climate Variability and Sugarcane Yield in Louisiana.

    NASA Astrophysics Data System (ADS)

    Greenland, David

    2005-11-01

    )], mean maximum August temperature, mean minimum February temperature, soil water surplus between April and September, and occurrence of autumn (fall) hurricanes, were built into a model to simulate adjusted yield values. The CCV model simulates the yield value with an rmse of 5.1 t ha-1. The mean of the adjusted yield data over the study period was 60.4 t ha-1, with values for the highest and lowest years being 73.1 and 50.6 t ha-1, respectively, and a standard deviation of 5.9 t ha-1. Presumably because of the almost constant high water table and soil water availability, higher precipitation totals, which are inversely related to radiation and temperature, tend to have a negative effect on the yields. Past trends in the values of critical climatic variables and general projections of future climate suggest that, with respect to the climatic environment and as long as land drainage is continued and maintained, future levels of sugarcane yield will rise in Louisiana.

  5. Sharks, Minnows, and Wheelbarrows: Calculus Modeling Projects

    ERIC Educational Resources Information Center

    Smith, Michael D.

    2011-01-01

    The purpose of this article is to present two very active applied modeling projects that were successfully implemented in a first semester calculus course at Hollins University. The first project uses a logistic equation to model the spread of a new disease such as swine flu. The second project is a human take on the popular article "Do Dogs Know…

  6. Parametric correlation functions to model the structure of permanent environmental (co)variances in milk yield random regression models.

    PubMed

    Bignardi, A B; El Faro, L; Cardoso, V L; Machado, P F; Albuquerque, L G

    2009-09-01

    The objective of the present study was to estimate milk yield genetic parameters applying random regression models and parametric correlation functions combined with a variance function to model animal permanent environmental effects. A total of 152,145 test-day milk yields from 7,317 first lactations of Holstein cows belonging to herds located in the southeastern region of Brazil were analyzed. Test-day milk yields were divided into 44 weekly classes of days in milk. Contemporary groups were defined by herd-test-day comprising a total of 2,539 classes. The model included direct additive genetic, permanent environmental, and residual random effects. The following fixed effects were considered: contemporary group, age of cow at calving (linear and quadratic regressions), and the population average lactation curve modeled by fourth-order orthogonal Legendre polynomial. Additive genetic effects were modeled by random regression on orthogonal Legendre polynomials of days in milk, whereas permanent environmental effects were estimated using a stationary or nonstationary parametric correlation function combined with a variance function of different orders. The structure of residual variances was modeled using a step function containing 6 variance classes. The genetic parameter estimates obtained with the model using a stationary correlation function associated with a variance function to model permanent environmental effects were similar to those obtained with models employing orthogonal Legendre polynomials for the same effect. A model using a sixth-order polynomial for additive effects and a stationary parametric correlation function associated with a seventh-order variance function to model permanent environmental effects would be sufficient for data fitting.

  7. Development of a European Ensemble System for Seasonal Prediction: Application to crop yield

    NASA Astrophysics Data System (ADS)

    Terres, J. M.; Cantelaube, P.

    2003-04-01

    Western European agriculture is highly intensive and the weather is the main source of uncertainty for crop yield assessment and for crop management. In the current system, at the time when a crop yield forecast is issued, the weather conditions leading up to harvest time are unknown and are therefore a major source of uncertainty. The use of seasonal weather forecast would bring additional information for the remaining crop season and has valuable benefit for improving the management of agricultural markets and environmentally sustainable farm practices. An innovative method for supplying seasonal forecast information to crop simulation models has been developed in the frame of the EU funded research project DEMETER. It consists in running a crop model on each individual member of the seasonal hindcasts to derive a probability distribution of crop yield. Preliminary results of cumulative probability function of wheat yield provides information on both the yield anomaly and the reliability of the forecast. Based on the spread of the probability distribution, the end-user can directly quantify the benefits and risks of taking weather-sensitive decisions.

  8. Model of Yield Response of Corn to Plant Population and Absorption of Solar Energy

    PubMed Central

    Overman, Allen R.; Scholtz, Richard V.

    2011-01-01

    Biomass yield of agronomic crops is influenced by a number of factors, including crop species, soil type, applied nutrients, water availability, and plant population. This article is focused on dependence of biomass yield (Mg ha−1 and g plant−1) on plant population (plants m−2). Analysis includes data from the literature for three independent studies with the warm-season annual corn (Zea mays L.) grown in the United States. Data are analyzed with a simple exponential mathematical model which contains two parameters, viz. Ym (Mg ha−1) for maximum yield at high plant population and c (m2 plant−1) for the population response coefficient. This analysis leads to a new parameter called characteristic plant population, xc = 1/c (plants m−2). The model is shown to describe the data rather well for the three field studies. In one study measurements were made of solar radiation at different positions in the plant canopy. The coefficient of absorption of solar energy was assumed to be the same as c and provided a physical basis for the exponential model. The three studies showed no definitive peak in yield with plant population, but generally exhibited asymptotic approach to maximum yield with increased plant population. Values of xc were very similar for the three field studies with the same crop species. PMID:21297960

  9. e-University Project: Business Model. Consultation.

    ERIC Educational Resources Information Center

    Higher Education Funding Council for England, Bristol.

    This report describes the context and goals of the Higher Education Funding Council for England's e-University project to develop Internet-based higher education. It summarizes the proposed business model and outlines next steps in implementing the project. A February 2000 letter announced the project and invited higher education institutions…

  10. MODELING UNCERTAINTY OF RUNOFF AND SEDIMENT YIELD IN TWO EXPERIMENTAL WATERSHEDS

    EPA Science Inventory

    Sediment loading from agriculture is adversely impacting surface water quality and ecological conditions. In this regard, the use of distributed hydrologic models has gained acceptance in management of soil erosion and sediment yield from agricultural watersheds. Soil infiltrati...

  11. Projections of leaf area index in earth system models

    NASA Astrophysics Data System (ADS)

    Mahowald, Natalie; Lo, Fiona; Zheng, Yun; Harrison, Laura; Funk, Chris; Lombardozzi, Danica; Goodale, Christine

    2016-03-01

    The area of leaves in the plant canopy, measured as leaf area index (LAI), modulates key land-atmosphere interactions, including the exchange of energy, moisture, carbon dioxide (CO2), and other trace gases and aerosols, and is therefore an essential variable in predicting terrestrial carbon, water, and energy fluxes. Here our goal is to characterize the LAI projections from the latest generation of earth system models (ESMs) for the Representative Concentration Pathway (RCP) 8.5 and RCP4.5 scenarios. On average, the models project increases in LAI in both RCP8.5 and RCP4.5 over most of the globe, but also show decreases in some parts of the tropics. Because of projected increases in variability, there are also more frequent periods of low LAI across broad regions of the tropics. Projections of LAI changes varied greatly among models: some models project very modest changes, while others project large changes, usually increases. Modeled LAI typically increases with modeled warming in the high latitudes, but often decreases with increasing local warming in the tropics. The models with the most skill in simulating current LAI in the tropics relative to satellite observations tend to project smaller increases in LAI in the tropics in the future compared to the average of all the models. Using LAI projections to identify regions that may be vulnerable to climate change presents a slightly different picture than using precipitation projections, suggesting LAI may be an additional useful tool for understanding climate change impacts. Going forward, users of LAI projections from the CMIP5 ESMs evaluated here should be aware that model outputs do not exhibit clear-cut relationships to vegetation carbon and precipitation. Our findings underscore the need for more attention to LAI projections, in terms of understanding the drivers of projected changes and improvements to model skill.

  12. Projections of leaf area index in earth system models

    DOE PAGES

    Mahowald, Natalie; Lo, Fiona; Zheng, Yun; ...

    2016-03-09

    The area of leaves in the plant canopy, measured as leaf area index (LAI), modulates key land–atmosphere interactions, including the exchange of energy, moisture, carbon dioxide (CO 2), and other trace gases and aerosols, and is therefore an essential variable in predicting terrestrial carbon, water, and energy fluxes. Here our goal is to characterize the LAI projections from the latest generation of earth system models (ESMs) for the Representative Concentration Pathway (RCP) 8.5 and RCP4.5 scenarios. On average, the models project increases in LAI in both RCP8.5 and RCP4.5 over most of the globe, but also show decreases in somemore » parts of the tropics. Because of projected increases in variability, there are also more frequent periods of low LAI across broad regions of the tropics. Projections of LAI changes varied greatly among models: some models project very modest changes, while others project large changes, usually increases. Modeled LAI typically increases with modeled warming in the high latitudes, but often decreases with increasing local warming in the tropics. The models with the most skill in simulating current LAI in the tropics relative to satellite observations tend to project smaller increases in LAI in the tropics in the future compared to the average of all the models. Using LAI projections to identify regions that may be vulnerable to climate change presents a slightly different picture than using precipitation projections, suggesting LAI may be an additional useful tool for understanding climate change impacts. Going forward, users of LAI projections from the CMIP5 ESMs evaluated here should be aware that model outputs do not exhibit clear-cut relationships to vegetation carbon and precipitation. Lastly, our findings underscore the need for more attention to LAI projections, in terms of understanding the drivers of projected changes and improvements to model skill.« less

  13. Fusion yield: Guderley model and Tsallis statistics

    NASA Astrophysics Data System (ADS)

    Haubold, H. J.; Kumar, D.

    2011-02-01

    The reaction rate probability integral is extended from Maxwell-Boltzmann approach to a more general approach by using the pathway model introduced by Mathai in 2005 (A pathway to matrix-variate gamma and normal densities. Linear Algebr. Appl. 396, 317-328). The extended thermonuclear reaction rate is obtained in the closed form via a Meijer's G-function and the so-obtained G-function is represented as a solution of a homogeneous linear differential equation. A physical model for the hydrodynamical process in a fusion plasma-compressed and laser-driven spherical shock wave is used for evaluating the fusion energy integral by integrating the extended thermonuclear reaction rate integral over the temperature. The result obtained is compared with the standard fusion yield obtained by Haubold and John in 1981 (Analytical representation of the thermonuclear reaction rate and fusion energy production in a spherical plasma shock wave. Plasma Phys. 23, 399-411). An interpretation for the pathway parameter is also given.

  14. Development of a comprehensive watershed model applied to study stream yield under drought conditions

    USGS Publications Warehouse

    Perkins, S.P.; Sophocleous, M.

    1999-01-01

    We developed a model code to simulate a watershed's hydrology and the hydraulic response of an interconnected stream-aquifer system, and applied the model code to the Lower Republican River Basin in Kansas. The model code links two well-known computer programs: MODFLOW (modular 3-D flow model), which simulates ground water flow and stream-aquifer interaction; and SWAT (soil water assessment tool), a soil water budget simulator for an agricultural watershed. SWAT represents a basin as a collection of subbasins in terms of soil, land use, and weather data, and simulates each subbasin on a daily basis to determine runoff, percolation, evaporation, irrigation, pond seepages and crop growth. Because SWAT applies a lumped hydrologic model to each subbasin, spatial heterogeneities with respect to factors such as soil type and land use are not resolved geographically, but can instead be represented statistically. For the Republican River Basin model, each combination of six soil types and three land uses, referred to as a hydrologic response unit (HRU), was simulated with a separate execution of SWAT. A spatially weighted average was then taken over these results for each hydrologic flux and time step by a separate program, SWBAVG. We wrote a package for MOD-FLOW to associate each subbasin with a subset of aquifer grid cells and stream reaches, and to distribute the hydrologic fluxes given for each subbasin by SWAT and SWBAVG over MODFLOW's stream-aquifer grid to represent tributary flow, surface and ground water diversions, ground water recharge, and evapotranspiration from ground water. The Lower Republican River Basin model was calibrated with respect to measured ground water levels, streamflow, and reported irrigation water use. The model was used to examine the relative contributions of stream yield components and the impact on stream yield and base flow of administrative measures to restrict irrigation water use during droughts. Model results indicate that tributary

  15. Weighting climate model projections using observational constraints.

    PubMed

    Gillett, Nathan P

    2015-11-13

    Projected climate change integrates the net response to multiple climate feedbacks. Whereas existing long-term climate change projections are typically based on unweighted individual climate model simulations, as observed climate change intensifies it is increasingly becoming possible to constrain the net response to feedbacks and hence projected warming directly from observed climate change. One approach scales simulated future warming based on a fit to observations over the historical period, but this approach is only accurate for near-term projections and for scenarios of continuously increasing radiative forcing. For this reason, the recent Fifth Assessment Report of the Intergovernmental Panel on Climate Change (IPCC AR5) included such observationally constrained projections in its assessment of warming to 2035, but used raw model projections of longer term warming to 2100. Here a simple approach to weighting model projections based on an observational constraint is proposed which does not assume a linear relationship between past and future changes. This approach is used to weight model projections of warming in 2081-2100 relative to 1986-2005 under the Representative Concentration Pathway 4.5 forcing scenario, based on an observationally constrained estimate of the Transient Climate Response derived from a detection and attribution analysis. The resulting observationally constrained 5-95% warming range of 0.8-2.5 K is somewhat lower than the unweighted range of 1.1-2.6 K reported in the IPCC AR5. © 2015 The Authors.

  16. BioSTAR, a New Biomass and Yield Modeling Software

    NASA Astrophysics Data System (ADS)

    Kappas, M.; Degener, J.; Bauboeck, R.

    2013-12-01

    , sorghum, sunflower and, sugar beet. Calibrations for rye grass, cup plant, poplar and willow still need to be performed. A Comparison of simulated and observed biomass yields for sites in Lower Saxony has rendered good results with errors (RMSE) ranging from below 10% (winter wheat, n= 102) and 18.6 % (sunflower, n=8) (Bauböck, unpublished). Because simulations can be made with limited soil data (soil type or texture class) and a limited climate data set (smallest set can be either monthly means of precipitation, temperature and, radiation or precipitation, temperature and, humidity) and the software is capable of processing large datasets, the model appears to be a promising tool for mid or large scale biomass and yield predictions. Up to now the model has only been used for yield predictions with current state climate and climate change scenarios in Lower Saxony, but comparisons with output data of the model AquaCrop (Steduto, et al., 2009) have shown good performance in arid and semi-arid climates (Bauböck, 2013).

  17. Correlations between the modelled potato crop yield and the general atmospheric circulation

    NASA Astrophysics Data System (ADS)

    Sepp, Mait; Saue, Triin

    2012-07-01

    Biology-related indicators do not usually depend on just one meteorological element but on a combination of several weather indicators. One way to establish such integral indicators is to classify the general atmospheric circulation into a small number of circulation types. The aim of present study is to analyse connections between general atmospheric circulation and potato crop yield in Estonia. Meteorologically possible yield (MPY), calculated by the model POMOD, is used to characterise potato crop yield. Data of three meteorological stations and the biological parameters of two potato sorts were applied to the model, and 73 different classifications of atmospheric circulation from catalogue 1.2 of COST 733, domain 05 are used to qualify circulation conditions. Correlation analysis showed that there is at least one circulation type in each of the classifications with at least one statistically significant (99%) correlation with potato crop yield, whether in Kuressaare, Tallinn or Tartu. However, no classifications with circulation types correlating with MPY in all three stations at the same time were revealed. Circulation types inducing a decrease in the potato crop yield are more clearly represented. Clear differences occurred between the observed geographical locations as well as between the seasons: derived from the number of significant circulation types, summer and Kuressaare stand out. Of potato varieties, late 'Anti' is more influenced by circulation. Analysis of MSLP maps of circulation types revealed that the seaside stations (Tallinn, Kuressaare) suffer from negative effects of anti-cyclonic conditions (drought), while Tartu suffers from the cyclonic activity (excessive water).

  18. Microplume model of spatial-yield spectra. [applying to electron gas degradation in molecular nitrogen gas

    NASA Technical Reports Server (NTRS)

    Green, A. E. S.; Singhal, R. P.

    1979-01-01

    An analytic representation for the spatial (radial and longitudinal) yield spectra is developed in terms of a model containing three simple 'microplumes'. The model is applied to electron energy degradation in molecular nitrogen gas for 0.1 to 5 keV incident electrons. From the nature of the cross section input to this model it is expected that the scaled spatial yield spectra for other gases will be quite similar. The model indicates that each excitation, ionization, etc. plume should have its individual spatial and energy dependence. Extensions and aeronomical and radiological applications of the model are discussed.

  19. Field warming experiments shed light on the wheat yield response to temperature in China

    PubMed Central

    Zhao, Chuang; Piao, Shilong; Huang, Yao; Wang, Xuhui; Ciais, Philippe; Huang, Mengtian; Zeng, Zhenzhong; Peng, Shushi

    2016-01-01

    Wheat growth is sensitive to temperature, but the effect of future warming on yield is uncertain. Here, focusing on China, we compiled 46 observations of the sensitivity of wheat yield to temperature change (SY,T, yield change per °C) from field warming experiments and 102 SY,T estimates from local process-based and statistical models. The average SY,T from field warming experiments, local process-based models and statistical models is −0.7±7.8(±s.d.)% per °C, −5.7±6.5% per °C and 0.4±4.4% per °C, respectively. Moreover, SY,T is different across regions and warming experiments indicate positive SY,T values in regions where growing-season mean temperature is low, and water supply is not limiting, and negative values elsewhere. Gridded crop model simulations from the Inter-Sectoral Impact Model Intercomparison Project appear to capture the spatial pattern of SY,T deduced from warming observations. These results from local manipulative experiments could be used to improve crop models in the future. PMID:27853151

  20. Synthesizing long-term sea level rise projections - the MAGICC sea level model v2.0

    NASA Astrophysics Data System (ADS)

    Nauels, Alexander; Meinshausen, Malte; Mengel, Matthias; Lorbacher, Katja; Wigley, Tom M. L.

    2017-06-01

    estimates. SLR projections for 2300 yield median responses of 1.02 m for RCP2.6, 1.76 m for RCP4.5, 2.38 m for RCP6.0, and 4.73 m for RCP8.5. The MAGICC sea level model provides a flexible and efficient platform for the analysis of major scenario, model, and climate uncertainties underlying long-term SLR projections. It can be used as a tool to directly investigate the SLR implications of different mitigation pathways and may also serve as input for regional SLR assessments via component-wise sea level pattern scaling.

  1. Modeling Research Project Risks with Fuzzy Maps

    ERIC Educational Resources Information Center

    Bodea, Constanta Nicoleta; Dascalu, Mariana Iuliana

    2009-01-01

    The authors propose a risks evaluation model for research projects. The model is based on fuzzy inference. The knowledge base for fuzzy process is built with a causal and cognitive map of risks. The map was especially developed for research projects, taken into account their typical lifecycle. The model was applied to an e-testing research…

  2. Low cost 3D-printing used in an undergraduate project: an integrating sphere for measurement of photoluminescence quantum yield

    NASA Astrophysics Data System (ADS)

    Tomes, John J.; Finlayson, Chris E.

    2016-09-01

    We report upon the exploitation of the latest 3D printing technologies to provide low-cost instrumentation solutions, for use in an undergraduate level final-year project. The project addresses prescient research issues in optoelectronics, which would otherwise be inaccessible to such undergraduate student projects. The experimental use of an integrating sphere in conjunction with a desktop spectrometer presents opportunities to use easily handled, low cost materials as a means to illustrate many areas of physics such as spectroscopy, lasers, optics, simple circuits, black body radiation and data gathering. Presented here is a 3rd year undergraduate physics project which developed a low cost (£25) method to manufacture an experimentally accurate integrating sphere by 3D printing. Details are given of both a homemade internal reflectance coating formulated from readily available materials, and a robust instrument calibration method using a tungsten bulb. The instrument is demonstrated to give accurate and reproducible experimental measurements of luminescence quantum yield of various semiconducting fluorophores, in excellent agreement with literature values.

  3. Rural Health Occupations Model Project. Project Report.

    ERIC Educational Resources Information Center

    Lee Coll., Baytown, TX.

    The Lee College (Baytown, Texas) Rural Health Occupations Model Project was designed to provide health occupations education tailored to disadvantaged, disabled, and/or limited-English-proficient high school students and adults and thereby alleviate the shortage of nurses and health care technicians in two rural Texas counties. A tech prep program…

  4. NASA Earth Science Research Results for Improved Regional Crop Yield Prediction

    NASA Astrophysics Data System (ADS)

    Mali, P.; O'Hara, C. G.; Shrestha, B.; Sinclair, T. R.; G de Goncalves, L. G.; Salado Navarro, L. R.

    2007-12-01

    National agencies such as USDA Foreign Agricultural Service (FAS), Production Estimation and Crop Assessment Division (PECAD) work specifically to analyze and generate timely crop yield estimates that help define national as well as global food policies. The USDA/FAS/PECAD utilizes a Decision Support System (DSS) called CADRE (Crop Condition and Data Retrieval Evaluation) mainly through an automated database management system that integrates various meteorological datasets, crop and soil models, and remote sensing data; providing significant contribution to the national and international crop production estimates. The "Sinclair" soybean growth model has been used inside CADRE DSS as one of the crop models. This project uses Sinclair model (a semi-mechanistic crop growth model) for its potential to be effectively used in a geo-processing environment with remote-sensing-based inputs. The main objective of this proposed work is to verify, validate and benchmark current and future NASA earth science research results for the benefit in the operational decision making process of the PECAD/CADRE DSS. For this purpose, the NASA South American Land Data Assimilation System (SALDAS) meteorological dataset is tested for its applicability as a surrogate meteorological input in the Sinclair model meteorological input requirements. Similarly, NASA sensor MODIS products is tested for its applicability in the improvement of the crop yield prediction through improving precision of planting date estimation, plant vigor and growth monitoring. The project also analyzes simulated Visible/Infrared Imager/Radiometer Suite (VIIRS, a future NASA sensor) vegetation product for its applicability in crop growth prediction to accelerate the process of transition of VIIRS research results for the operational use of USDA/FAS/PECAD DSS. The research results will help in providing improved decision making capacity to the USDA/FAS/PECAD DSS through improved vegetation growth monitoring from high

  5. Robust signals of future projections of Indian summer monsoon rainfall by IPCC AR5 climate models: Role of seasonal cycle and interannual variability

    NASA Astrophysics Data System (ADS)

    Jayasankar, C. B.; Surendran, Sajani; Rajendran, Kavirajan

    2015-05-01

    Coupled Model Intercomparison Project phase 5 (Fifth Assessment Report of Intergovernmental Panel on Climate Change) coupled global climate model Representative Concentration Pathway 8.5 simulations are analyzed to derive robust signals of projected changes in Indian summer monsoon rainfall (ISMR) and its variability. Models project clear future temperature increase but diverse changes in ISMR with substantial intermodel spread. Objective measures of interannual variability (IAV) yields nearly equal chance for future increase or decrease. This leads to discrepancy in quantifying changes in ISMR and variability. However, based primarily on the physical association between mean changes in ISMR and its IAV, and objective methods such as k-means clustering with Dunn's validity index, mean seasonal cycle, and reliability ensemble averaging, projections fall into distinct groups. Physically consistent groups of models with the highest reliability project future reduction in the frequency of light rainfall but increase in high to extreme rainfall and thereby future increase in ISMR by 0.74 ± 0.36 mm d-1, along with increased future IAV. These robust estimates of future changes are important for useful impact assessments.

  6. Quantifying potential yield and water-limited yield of summer maize in the North China Plain

    NASA Astrophysics Data System (ADS)

    Jiang, Mingnuo; Liu, Chaoshun; Chen, Maosi

    2017-09-01

    The North China Plain is a major food producing region in China, and climate change could pose a threat to food production in the region. Based on China Meteorological Forcing Dataset, simulating the growth of summer maize in North China Plain from 1979 to 2015 with the regional implementation of crop growth model WOFOST. The results showed that the model can reflect the potential yield and water-limited yield of Summer Maize in North China Plain through the calibration and validation of WOFOST model. After the regional implementation of model, combined with the reanalysis data, the model can better reproduce the regional history of summer maize yield in the North China Plain. The yield gap in Southeastern Beijing, southern Tianjin, southern Hebei province, Northwestern Shandong province is significant, these means the water condition is the main factor to summer maize yield in these regions.

  7. Climate Change and Projected Impacts in Agriculture: an Example on Mediterranean Crops

    NASA Astrophysics Data System (ADS)

    Ferrise, R.; Moriondo, M.; Bindi, M.

    2009-04-01

    Recently, the availability of multi-model ensemble prediction methods has permitted the assignment of likelihoods to future climate projections. This allowed moving from the scenario-based approach to the risk-based approach in assessing the effects of climate change, thus providing more useful information for decision-makers that, as reported by Schneider (2001), need probability estimates to assess the seriousness of the projected impacts. The probabilistic approach to evaluate crop response to climate change mainly consists in applying an impact model (such as crop growth model) to a very large number of climate projections so to provide a probabilistic distribution of the variable selected to evaluate the impact. By comparing the outputs of the multi-simulation with a critical threshold (such as minimum yield below which it is not admissible to fall), it is possible to evaluate the risk related to future climate conditions. Unfortunately, such an approach is a time-consuming process due to the large number of model runs needed for such a procedure. An alternative method relies on the set up of impact response surfaces (RS) with respect to key climatic variables on which a probabilistic representation of projected changes in the same climatic variables may be overlaid (Fronzek et al. 2008). This approach was exploited within the ENSEMBLES EU Project aiming at assessing climate change impact on typical Mediterranean crops. This work presents the results of the project with a particular concerning about the assessment of risk, of durum wheat (T. turgidum L. subsp. durum (Desf.) Husn) and grapevine (Vitis vinifera L.) yield falling below fixed thresholds, using probabilistic information about future climate. Methodology The simple mechanistic crop growth models, SIRIUS Quality (Jamieson et al., 1998) and VITE-model (Bindi et al., 1997a,b), were selected to respectively simulate durum wheat and grapevine yields in present and future scenarios. SIRIUS Quality is a

  8. Climate-based statistical regression models for crop yield forecasting of coffee in humid tropical Kerala, India

    NASA Astrophysics Data System (ADS)

    Jayakumar, M.; Rajavel, M.; Surendran, U.

    2016-12-01

    A study on the variability of coffee yield of both Coffea arabica and Coffea canephora as influenced by climate parameters (rainfall (RF), maximum temperature (Tmax), minimum temperature (Tmin), and mean relative humidity (RH)) was undertaken at Regional Coffee Research Station, Chundale, Wayanad, Kerala State, India. The result on the coffee yield data of 30 years (1980 to 2009) revealed that the yield of coffee is fluctuating with the variations in climatic parameters. Among the species, productivity was higher for C. canephora coffee than C. arabica in most of the years. Maximum yield of C. canephora (2040 kg ha-1) was recorded in 2003-2004 and there was declining trend of yield noticed in the recent years. Similarly, the maximum yield of C. arabica (1745 kg ha-1) was recorded in 1988-1989 and decreased yield was noticed in the subsequent years till 1997-1998 due to year to year variability in climate. The highest correlation coefficient was found between the yield of C. arabica coffee and maximum temperature during January (0.7) and between C. arabica coffee yield and RH during July (0.4). Yield of C. canephora coffee had highest correlation with maximum temperature, RH and rainfall during February. Statistical regression model between selected climatic parameters and yield of C. arabica and C. canephora coffee was developed to forecast the yield of coffee in Wayanad district in Kerala. The model was validated for years 2010, 2011, and 2012 with the coffee yield data obtained during the years and the prediction was found to be good.

  9. Brazilian Soybean Yields and Yield Gaps Vary with Farm Size

    NASA Astrophysics Data System (ADS)

    Jeffries, G. R.; Cohn, A.; Griffin, T. S.; Bragança, A.

    2017-12-01

    Understanding the farm size-specific characteristics of crop yields and yield gaps may help to improve yields by enabling better targeting of technical assistance and agricultural development programs. Linking remote sensing-based yield estimates with property boundaries provides a novel view of the relationship between farm size and yield structure (yield magnitude, gaps, and stability over time). A growing literature documents variations in yield gaps, but largely ignores the role of farm size as a factor shaping yield structure. Research on the inverse farm size-productivity relationship (IR) theory - that small farms are more productive than large ones all else equal - has documented that yield magnitude may vary by farm size, but has not considered other yield structure characteristics. We examined farm size - yield structure relationships for soybeans in Brazil for years 2001-2015. Using out-of-sample soybean yield predictions from a statistical model, we documented 1) gaps between the 95th percentile of attained yields and mean yields within counties and individual fields, and 2) yield stability defined as the standard deviation of time-detrended yields at given locations. We found a direct relationship between soy yields and farm size at the national level, while the strength and the sign of the relationship varied by region. Soybean yield gaps were found to be inversely related to farm size metrics, even when yields were only compared to farms of similar size. The relationship between farm size and yield stability was nonlinear, with mid-sized farms having the most stable yields. The work suggests that farm size is an important factor in understanding yield structure and that opportunities for improving soy yields in Brazil are greatest among smaller farms.

  10. Closing yield gaps: perils and possibilities for biodiversity conservation.

    PubMed

    Phalan, Ben; Green, Rhys; Balmford, Andrew

    2014-04-05

    Increasing agricultural productivity to 'close yield gaps' creates both perils and possibilities for biodiversity conservation. Yield increases often have negative impacts on species within farmland, but at the same time could potentially make it more feasible to minimize further cropland expansion into natural habitats. We combine global data on yield gaps, projected future production of maize, rice and wheat, the distributions of birds and their estimated sensitivity to changes in crop yields to map where it might be most beneficial for bird conservation to close yield gaps as part of a land-sparing strategy, and where doing so might be most damaging. Closing yield gaps to attainable levels to meet projected demand in 2050 could potentially help spare an area equivalent to that of the Indian subcontinent. Increasing yields this much on existing farmland would inevitably reduce its biodiversity, and therefore we advocate efforts both to constrain further increases in global food demand, and to identify the least harmful ways of increasing yields. The land-sparing potential of closing yield gaps will not be realized without specific mechanisms to link yield increases to habitat protection (and restoration), and therefore we suggest that conservationists, farmers, crop scientists and policy-makers collaborate to explore promising mechanisms.

  11. Closing yield gaps: perils and possibilities for biodiversity conservation

    PubMed Central

    Phalan, Ben; Green, Rhys; Balmford, Andrew

    2014-01-01

    Increasing agricultural productivity to ‘close yield gaps’ creates both perils and possibilities for biodiversity conservation. Yield increases often have negative impacts on species within farmland, but at the same time could potentially make it more feasible to minimize further cropland expansion into natural habitats. We combine global data on yield gaps, projected future production of maize, rice and wheat, the distributions of birds and their estimated sensitivity to changes in crop yields to map where it might be most beneficial for bird conservation to close yield gaps as part of a land-sparing strategy, and where doing so might be most damaging. Closing yield gaps to attainable levels to meet projected demand in 2050 could potentially help spare an area equivalent to that of the Indian subcontinent. Increasing yields this much on existing farmland would inevitably reduce its biodiversity, and therefore we advocate efforts both to constrain further increases in global food demand, and to identify the least harmful ways of increasing yields. The land-sparing potential of closing yield gaps will not be realized without specific mechanisms to link yield increases to habitat protection (and restoration), and therefore we suggest that conservationists, farmers, crop scientists and policy-makers collaborate to explore promising mechanisms. PMID:24535392

  12. The uncertainty of crop yield projections is reduced by improved temperature response functions

    USDA-ARS?s Scientific Manuscript database

    Increasing the accuracy of crop productivity estimates is a key Increasing the accuracy of crop productivity estimates is a key element in planning adaptation strategies to ensure global food security under climate change. Process-based crop models are effective means to project climate impact on cr...

  13. [Effect of near infrared spectrum on the precision of PLS model for oil yield from oil shale].

    PubMed

    Wang, Zhi-Hong; Liu, Jie; Chen, Xiao-Chao; Sun, Yu-Yang; Yu, Yang; Lin, Jun

    2012-10-01

    It is impossible to use present measurement methods for the oil yield of oil shale to realize in-situ detection and these methods unable to meet the requirements of the oil shale resources exploration and exploitation. But in-situ oil yield analysis of oil shale can be achieved by the portable near infrared spectroscopy technique. There are different correlativities of NIR spectrum data formats and contents of sample components, and the different absorption specialities of sample components shows in different NIR spectral regions. So with the proportioning samples, the PLS modeling experiments were done by 3 formats (reflectance, absorbance and K-M function) and 4 regions of modeling spectrum, and the effect of NIR spectral format and region to the precision of PLS model for oil yield from oil shale was studied. The results show that the best data format is reflectance and the best modeling region is combination spectral range by PLS model method and proportioning samples. Therefore, the appropriate data format and the proper characteristic spectral region can increase the precision of PLS model for oil yield form oil shale.

  14. Spectral considerations for modeling yield of canola

    USDA-ARS?s Scientific Manuscript database

    Conspicuous yellow flowers that are present in a Brassica oilseed crop such as canola require careful consideration when selecting a spectral index for yield estimation. This study evaluated spectral indices for multispectral sensors that correlate with the seed yield of Brassica oilseed crops. A ...

  15. A functional-dynamic reflection on participatory processes in modeling projects.

    PubMed

    Seidl, Roman

    2015-12-01

    The participation of nonscientists in modeling projects/studies is increasingly employed to fulfill different functions. However, it is not well investigated if and how explicitly these functions and the dynamics of a participatory process are reflected by modeling projects in particular. In this review study, I explore participatory modeling projects from a functional-dynamic process perspective. The main differences among projects relate to the functions of participation-most often, more than one per project can be identified, along with the degree of explicit reflection (i.e., awareness and anticipation) on the dynamic process perspective. Moreover, two main approaches are revealed: participatory modeling covering diverse approaches and companion modeling. It becomes apparent that the degree of reflection on the participatory process itself is not always explicit and perfectly visible in the descriptions of the modeling projects. Thus, the use of common protocols or templates is discussed to facilitate project planning, as well as the publication of project results. A generic template may help, not in providing details of a project or model development, but in explicitly reflecting on the participatory process. It can serve to systematize the particular project's approach to stakeholder collaboration, and thus quality management.

  16. Ensemble of regional climate model projections for Ireland

    NASA Astrophysics Data System (ADS)

    Nolan, Paul; McGrath, Ray

    2016-04-01

    The method of Regional Climate Modelling (RCM) was employed to assess the impacts of a warming climate on the mid-21st-century climate of Ireland. The RCM simulations were run at high spatial resolution, up to 4 km, thus allowing a better evaluation of the local effects of climate change. Simulations were run for a reference period 1981-2000 and future period 2041-2060. Differences between the two periods provide a measure of climate change. To address the issue of uncertainty, a multi-model ensemble approach was employed. Specifically, the future climate of Ireland was simulated using three different RCMs, driven by four Global Climate Models (GCMs). To account for the uncertainty in future emissions, a number of SRES (B1, A1B, A2) and RCP (4.5, 8.5) emission scenarios were used to simulate the future climate. Through the ensemble approach, the uncertainty in the RCM projections can be partially quantified, thus providing a measure of confidence in the predictions. In addition, likelihood values can be assigned to the projections. The RCMs used in this work are the COnsortium for Small-scale MOdeling-Climate Limited-area Modelling (COSMO-CLM, versions 3 and 4) model and the Weather Research and Forecasting (WRF) model. The GCMs used are the Max Planck Institute's ECHAM5, the UK Met Office's HadGEM2-ES, the CGCM3.1 model from the Canadian Centre for Climate Modelling and the EC-Earth consortium GCM. The projections for mid-century indicate an increase of 1-1.6°C in mean annual temperatures, with the largest increases seen in the east of the country. Warming is enhanced for the extremes (i.e. hot or cold days), with the warmest 5% of daily maximum summer temperatures projected to increase by 0.7-2.6°C. The coldest 5% of night-time temperatures in winter are projected to rise by 1.1-3.1°C. Averaged over the whole country, the number of frost days is projected to decrease by over 50%. The projections indicate an average increase in the length of the growing season

  17. Projecting optimal land-use and -management strategies under population growth and climate change using a coupled ecosystem & land use model framework

    NASA Astrophysics Data System (ADS)

    Rabin, Sam; Alexander, Peter; Anthoni, Peter; Henry, Roslyn; Huntingford, Chris; Pugh, Thomas; Rounsevell, Mark; Arneth, Almut

    2017-04-01

    A major question facing humanity is how well agricultural production systems will be able to feed the world in a future of rapid climate change, population growth, and demand shifts—all while minimizing our impact on the natural world. Global modeling has frequently been used to investigate certain aspects of this question, but in order to properly address the challenge, no one part of the human-environmental system can be assessed in isolation. It is especially critical that the effect on agricultural yields of changing temperature and precipitation regimes (including seasonal timing and frequency and intensity of extreme events), as well as rising atmospheric carbon dioxide levels, be taken into account when planning for future food security. Coupled modeling efforts, where changes in various parts of the Earth system are allowed to feed back onto one another, represent a powerful strategy in this regard. This presentation describes the structure and initial results of an effort to couple a biologically-representative vegetation and crop production simulator, LPJ-GUESS, with the climate emulator IMOGEN and the land-use model PLUMv2. With IMOGEN providing detailed future weather simulations, LPJ-GUESS simulates natural vegetation as well as cropland and pasture/rangeland; the simulated exchange of greenhouse gases between the land and atmosphere feeds back into IMOGEN's predictions. LPJ-GUESS also produces potential vegetation yields for irrigated vs. rainfed crops under three levels of nitrogen fertilizer addition. PLUMv2 combines these potential yields with endogenous demand and agricultural commodity price to calculate an optimal set of land use distributions and management strategies across the world for the next five years of simulation, based on socio-economic scenario data. These land uses are then fed back into LPJ-GUESS, and the cycle of climate, greenhouse gas emissions, crop yields, and land-use change continues. The globally gridded nature of the

  18. Advanced model for the prediction of the neutron-rich fission product yields

    NASA Astrophysics Data System (ADS)

    Rubchenya, V. A.; Gorelov, D.; Jokinen, A.; Penttilä, H.; Äystö, J.

    2013-12-01

    The consistent models for the description of the independent fission product formation cross sections in the spontaneous fission and in the neutron and proton induced fission at the energies up to 100 MeV is developed. This model is a combination of new version of the two-component exciton model and a time-dependent statistical model for fusion-fission process with inclusion of dynamical effects for accurate calculations of nucleon composition and excitation energy of the fissioning nucleus at the scission point. For each member of the compound nucleus ensemble at the scission point, the primary fission fragment characteristics: kinetic and excitation energies and their yields are calculated using the scission-point fission model with inclusion of the nuclear shell and pairing effects, and multimodal approach. The charge distribution of the primary fragment isobaric chains was considered as a result of the frozen quantal fluctuations of the isovector nuclear matter density at the scission point with the finite neck radius. Model parameters were obtained from the comparison of the predicted independent product fission yields with the experimental results and with the neutron-rich fission product data measured with a Penning trap at the Accelerator Laboratory of the University of Jyväskylä (JYFLTRAP).

  19. Application of a CROPWAT Model to Analyze Crop Yields in Nicaragua

    NASA Astrophysics Data System (ADS)

    Doria, R.; Byrne, J. M.

    2013-12-01

    ABSTRACT Changes in climate are likely to influence crop yields due to varying evapotranspiration and precipitation over agricultural regions. In Nicaragua, agriculture is extensive, with new areas of land brought into production as the population increases. Nicaraguan staple food items (maize and beans) are produced mostly by small scale farmers with less than 10 hectares, but they are critical for income generation and food security for rural communities. Given that the majority of these farmers are dependent on rain for crop irrigation, and that maize and beans are sensitive to variations in temperature and rainfall patterns, the present study was undertaken to assess the impact of climate change on these crop yields. Climate data were generated per municipio representing the three major climatic zones of the country: the wet Pacific lowland, the cooler Central highland, and the Caribbean lowland. Historical normal climate data from 1970-2000 (baseline period) were used as input to CROPWAT model to analyze the potential and actual evapotranspiration (ETo and ETa, respectively) that affects crop yields. Further, generated local climatic data of future years (2030-2099) under various scenarios were inputted to the CROPWAT to determine changes in ETo and ETa from the baseline period. Spatial variability maps of both ETo and ETa as well as crop yields were created. Results indicated significant variation in seasonal rainfall depth during the baseline period and predicted decreasing trend in the future years that eventually affects yields. These maps enable us to generate appropriate adaptation measures and best management practices for small scale farmers under future climate change scenarios. KEY WORDS: Climate change, evapotranspiration, CROPWAT, yield, Nicaragua

  20. A hierarchical spatial model for well yield in complex aquifers

    NASA Astrophysics Data System (ADS)

    Montgomery, J.; O'sullivan, F.

    2017-12-01

    Efficiently siting and managing groundwater wells requires reliable estimates of the amount of water that can be produced, or the well yield. This can be challenging to predict in highly complex, heterogeneous fractured aquifers due to the uncertainty around local hydraulic properties. Promising statistical approaches have been advanced in recent years. For instance, kriging and multivariate regression analysis have been applied to well test data with limited but encouraging levels of prediction accuracy. Additionally, some analytical solutions to diffusion in homogeneous porous media have been used to infer "effective" properties consistent with observed flow rates or drawdown. However, this is an under-specified inverse problem with substantial and irreducible uncertainty. We describe a flexible machine learning approach capable of combining diverse datasets with constraining physical and geostatistical models for improved well yield prediction accuracy and uncertainty quantification. Our approach can be implemented within a hierarchical Bayesian framework using Markov Chain Monte Carlo, which allows for additional sources of information to be incorporated in priors to further constrain and improve predictions and reduce the model order. We demonstrate the usefulness of this approach using data from over 7,000 wells in a fractured bedrock aquifer.

  1. Crop weather models of barley and spring wheat yield for agrophysical units in North Dakota

    NASA Technical Reports Server (NTRS)

    Leduc, S. (Principal Investigator)

    1982-01-01

    Models based on multiple regression were developed to estimate barley yield and spring wheat yield from weather data for Agrophysical units(APU) in North Dakota. The predictor variables are derived from monthly average temperature and monthly total precipitation data at meteorological stations in the cooperative network. The models are similar in form to the previous models developed for Crop Reporting Districts (CRD). The trends and derived variables were the same and the approach to select the significant predictors was similar to that used in developing the CRD models. The APU models show sight improvements in some of the statistics of the models, e.g., explained variation. These models are to be independently evaluated and compared to the previously evaluated CRD models. The comparison will indicate the preferred model area for this application, i.e., APU or CRD.

  2. Single Investigator or Group Projects? Which is the More Successful Model for a REU Site?

    NASA Astrophysics Data System (ADS)

    Boush, L. P.; Myrbo, A.; Berman, M. J.; Gnivecki, P.; Michelson, A.; Brady, K. L.

    2012-12-01

    field and lab techniques and helped one another as a cooperative group but was held individually responsible for various aspects of the data collection and analysis. Further, it can be argued that in the short amount of time allotted for REU projects (8-10 weeks), it is difficult for inexperienced students to design a publishable project; and one could question if this is the appropriate venue for having students initiate either projects that are too large to do in the timeframe of the REU or too specific or limited in data and methods to be significant scientific contributions. Thus, we will pursue the 'team model' in our third year of our REU project because it has yielded better scientific outcomes and more satisfying experiences for our students.

  3. Prediction of winter wheat high yield from remote sensing based model: application in United States and Ukraine

    NASA Astrophysics Data System (ADS)

    Franch, B.; Vermote, E.; Roger, J. C.; Skakun, S.; Becker-Reshef, I.; Justice, C. O.

    2017-12-01

    Accurate and timely crop yield forecasts are critical for making informed agricultural policies and investments, as well as increasing market efficiency and stability. In Becker-Reshef et al. (2010) and Franch et al. (2015) we developed an empirical generalized model for forecasting winter wheat yield. It is based on the relationship between the Normalized Difference Vegetation Index (NDVI) at the peak of the growing season and the Growing Degree Day (GDD) information extracted from NCEP/NCAR reanalysis data. These methods were applied to MODIS CMG data in Ukraine, the US and China with errors around 10%. However, the NDVI is saturated for yield values higher than 4 MT/ha. As a consequence, the model had to be re-calibrated in each country and the validation of the national yields showed low correlation coefficients. In this study we present a new model based on the extrapolation of the pure wheat signal (100% of wheat within the pixel) from MODIS data at 1km resolution and using the Difference Vegetation Index (DVI). The model has been applied to monitor the national yield of winter wheat in the United States and Ukraine from 2001 to 2016.

  4. Impacts of land use change on watershed streamflow and sediment yield: An assessment using hydrologic modelling and partial least squares regression

    NASA Astrophysics Data System (ADS)

    Yan, B.; Fang, N. F.; Zhang, P. C.; Shi, Z. H.

    2013-03-01

    SummaryUnderstanding how changes in individual land use types influence the dynamics of streamflow and sediment yield would greatly improve the predictability of the hydrological consequences of land use changes and could thus help stakeholders to make better decisions. Multivariate statistics are commonly used to compare individual land use types to control the dynamics of streamflow or sediment yields. However, one issue with the use of conventional statistical methods to address relationships between land use types and streamflow or sediment yield is multicollinearity. In this study, an integrated approach involving hydrological modelling and partial least squares regression (PLSR) was used to quantify the contributions of changes in individual land use types to changes in streamflow and sediment yield. In a case study, hydrological modelling was conducted using land use maps from four time periods (1978, 1987, 1999, and 2007) for the Upper Du watershed (8973 km2) in China using the Soil and Water Assessment Tool (SWAT). Changes in streamflow and sediment yield across the two simulations conducted using the land use maps from 2007 to 1978 were found to be related to land use changes according to a PLSR, which was used to quantify the effect of this influence at the sub-basin scale. The major land use changes that affected streamflow in the studied catchment areas were related to changes in the farmland, forest and urban areas between 1978 and 2007; the corresponding regression coefficients were 0.232, -0.147 and 1.256, respectively, and the Variable Influence on Projection (VIP) was greater than 1. The dominant first-order factors affecting the changes in sediment yield in our study were: farmland (the VIP and regression coefficient were 1.762 and 14.343, respectively) and forest (the VIP and regression coefficient were 1.517 and -7.746, respectively). The PLSR methodology presented in this paper is beneficial and novel, as it partially eliminates the co

  5. Incorporating uncertainty into the ranking of SPARROW model nutrient yields from Mississippi/Atchafalaya River basin watersheds

    USGS Publications Warehouse

    Robertson, Dale M.; Schwarz, Gregory E.; Saad, David A.; Alexander, Richard B.

    2009-01-01

    Excessive loads of nutrients transported by tributary rivers have been linked to hypoxia in the Gulf of Mexico. Management efforts to reduce the hypoxic zone in the Gulf of Mexico and improve the water quality of rivers and streams could benefit from targeting nutrient reductions toward watersheds with the highest nutrient yields delivered to sensitive downstream waters. One challenge is that most conventional watershed modeling approaches (e.g., mechanistic models) used in these management decisions do not consider uncertainties in the predictions of nutrient yields and their downstream delivery. The increasing use of parameter estimation procedures to statistically estimate model coefficients, however, allows uncertainties in these predictions to be reliably estimated. Here, we use a robust bootstrapping procedure applied to the results of a previous application of the hybrid statistical/mechanistic watershed model SPARROW (Spatially Referenced Regression On Watershed attributes) to develop a statistically reliable method for identifying “high priority” areas for management, based on a probabilistic ranking of delivered nutrient yields from watersheds throughout a basin. The method is designed to be used by managers to prioritize watersheds where additional stream monitoring and evaluations of nutrient-reduction strategies could be undertaken. Our ranking procedure incorporates information on the confidence intervals of model predictions and the corresponding watershed rankings of the delivered nutrient yields. From this quantified uncertainty, we estimate the probability that individual watersheds are among a collection of watersheds that have the highest delivered nutrient yields. We illustrate the application of the procedure to 818 eight-digit Hydrologic Unit Code watersheds in the Mississippi/Atchafalaya River basin by identifying 150 watersheds having the highest delivered nutrient yields to the Gulf of Mexico. Highest delivered yields were from

  6. Subglacial Hydrology Model Intercomparison Project (SHMIP)

    NASA Astrophysics Data System (ADS)

    Werder, Mauro A.; de Fleurian, Basile; Creyts, Timothy T.; Damsgaard, Anders; Delaney, Ian; Dow, Christine F.; Gagliardini, Olivier; Hoffman, Matthew J.; Seguinot, Julien; Sommers, Aleah; Irarrazaval Bustos, Inigo; Downs, Jakob

    2017-04-01

    The SHMIP project is the first intercomparison project of subglacial drainage models (http://shmip.bitbucket.org). Its synthetic test suites and evaluation were designed such that any subglacial hydrology model producing effective pressure can participate. In contrast to ice deformation, the physical processes of subglacial hydrology (which in turn impacts basal sliding of glaciers) are poorly known. A further complication is that different glacial and geological settings can lead to different drainage physics. The aim of the project is therefore to qualitatively compare the outputs of the participating models for a wide range of water forcings and glacier geometries. This will allow to put existing studies, which use different drainage models, into context and will allow new studies to select the most suitable model for the problem at hand. We present the results from the just completed intercomparison exercise. Twelve models participated: eight 2D and four 1D models; nine include both an efficient and inefficient system, the other three one of the systems; all but two models use R-channels as efficient system, and/or a linked-cavity like inefficient system, one exception uses porous layers with different characteristic for each of the systems, the other exception is based on canals. The main variable used for the comparison is effective pressure, as that is a direct proxy for basal sliding of glaciers. The models produce large differences in the effective pressure fields, in particular for higher water input scenarios. This shows that the selection of a subglacial drainage model will likely impact the conclusions of a study significantly.

  7. Collaborative simulations and experiments for a novel yield model of coal devolatilization in oxy-coal combustion conditions

    DOE Office of Scientific and Technical Information (OSTI.GOV)

    Iavarone, Salvatore; Smith, Sean T.; Smith, Philip J.

    Oxy-coal combustion is an emerging low-cost “clean coal” technology for emissions reduction and Carbon Capture and Sequestration (CCS). The use of Computational Fluid Dynamics (CFD) tools is crucial for the development of cost-effective oxy-fuel technologies and the minimization of environmental concerns at industrial scale. The coupling of detailed chemistry models and CFD simulations is still challenging, especially for large-scale plants, because of the high computational efforts required. The development of scale-bridging models is therefore necessary, to find a good compromise between computational efforts and the physical-chemical modeling precision. This paper presents a procedure for scale-bridging modeling of coal devolatilization, inmore » the presence of experimental error, that puts emphasis on the thermodynamic aspect of devolatilization, namely the final volatile yield of coal, rather than kinetics. The procedure consists of an engineering approach based on dataset consistency and Bayesian methodology including Gaussian-Process Regression (GPR). Experimental data from devolatilization tests carried out in an oxy-coal entrained flow reactor were considered and CFD simulations of the reactor were performed. Jointly evaluating experiments and simulations, a novel yield model was validated against the data via consistency analysis. In parallel, a Gaussian-Process Regression was performed, to improve the understanding of the uncertainty associated to the devolatilization, based on the experimental measurements. Potential model forms that could predict yield during devolatilization were obtained. The set of model forms obtained via GPR includes the yield model that was proven to be consistent with the data. Finally, the overall procedure has resulted in a novel yield model for coal devolatilization and in a valuable evaluation of uncertainty in the data, in the model form, and in the model parameters.« less

  8. Collaborative simulations and experiments for a novel yield model of coal devolatilization in oxy-coal combustion conditions

    DOE PAGES

    Iavarone, Salvatore; Smith, Sean T.; Smith, Philip J.; ...

    2017-06-03

    Oxy-coal combustion is an emerging low-cost “clean coal” technology for emissions reduction and Carbon Capture and Sequestration (CCS). The use of Computational Fluid Dynamics (CFD) tools is crucial for the development of cost-effective oxy-fuel technologies and the minimization of environmental concerns at industrial scale. The coupling of detailed chemistry models and CFD simulations is still challenging, especially for large-scale plants, because of the high computational efforts required. The development of scale-bridging models is therefore necessary, to find a good compromise between computational efforts and the physical-chemical modeling precision. This paper presents a procedure for scale-bridging modeling of coal devolatilization, inmore » the presence of experimental error, that puts emphasis on the thermodynamic aspect of devolatilization, namely the final volatile yield of coal, rather than kinetics. The procedure consists of an engineering approach based on dataset consistency and Bayesian methodology including Gaussian-Process Regression (GPR). Experimental data from devolatilization tests carried out in an oxy-coal entrained flow reactor were considered and CFD simulations of the reactor were performed. Jointly evaluating experiments and simulations, a novel yield model was validated against the data via consistency analysis. In parallel, a Gaussian-Process Regression was performed, to improve the understanding of the uncertainty associated to the devolatilization, based on the experimental measurements. Potential model forms that could predict yield during devolatilization were obtained. The set of model forms obtained via GPR includes the yield model that was proven to be consistent with the data. Finally, the overall procedure has resulted in a novel yield model for coal devolatilization and in a valuable evaluation of uncertainty in the data, in the model form, and in the model parameters.« less

  9. Uncertain soil moisture feedbacks in model projections of Sahel precipitation

    NASA Astrophysics Data System (ADS)

    Berg, Alexis; Lintner, Benjamin R.; Findell, Kirsten; Giannini, Alessandra

    2017-06-01

    Given the uncertainties in climate model projections of Sahel precipitation, at the northern edge of the West African Monsoon, understanding the factors governing projected precipitation changes in this semiarid region is crucial. This study investigates how long-term soil moisture changes projected under climate change may feedback on projected changes of Sahel rainfall, using simulations with and without soil moisture change from five climate models participating in the Global Land Atmosphere Coupling Experiment-Coupled Model Intercomparison Project phase 5 experiment. In four out of five models analyzed, soil moisture feedbacks significantly influence the projected West African precipitation response to warming; however, the sign of these feedbacks differs across the models. These results demonstrate that reducing uncertainties across model projections of the West African Monsoon requires, among other factors, improved mechanistic understanding and constraint of simulated land-atmosphere feedbacks, even at the large spatial scales considered here.Plain Language SummaryClimate <span class="hlt">model</span> <span class="hlt">projections</span> of Sahel rainfall remain notoriously uncertain; understanding the physical processes responsible for this uncertainty is thus crucial. Our study focuses on analyzing the feedbacks of soil moisture changes on <span class="hlt">model</span> <span class="hlt">projections</span> of the West African Monsoon under global warming. Soil moisture-atmosphere interactions have been shown in prior studies to play an important role in this region, but the potential feedbacks of long-term soil moisture changes on <span class="hlt">projected</span> precipitation changes have not been investigated specifically. To isolate these feedbacks, we use targeted simulations from five climate <span class="hlt">models</span>, with and without soil moisture change. Importantly, we find that climate <span class="hlt">models</span> exhibit soil moisture-precipitation feedbacks of different sign in this region: in some <span class="hlt">models</span> soil moisture changes amplify precipitation changes</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=3127264','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=3127264"><span><span class="hlt">Projections</span> of global health outcomes from 2005 to 2060 using the International Futures integrated forecasting <span class="hlt">model</span></span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Hughes, Barry B; Peterson, Cecilia M; Rothman, Dale S; Solórzano, José R; Mathers, Colin D; Dickson, Janet R</p> <p>2011-01-01</p> <p>Abstract Objective To develop an integrated health forecasting <span class="hlt">model</span> as part of the International Futures (IFs) <span class="hlt">modelling</span> system. Methods The IFs <span class="hlt">model</span> begins with the historical relationships between economic and social development and cause-specific mortality used by the Global Burden of Disease <span class="hlt">project</span> but builds forecasts from endogenous <span class="hlt">projections</span> of these drivers by incorporating forward linkages from health outcomes back to inputs like population and economic growth. The hybrid IFs system adds alternative structural formulations for causes not well served by regression <span class="hlt">models</span> and accounts for changes in proximate health risk factors. Forecasts are made to 2100 but findings are reported to 2060. Findings The base <span class="hlt">model</span> <span class="hlt">projects</span> that deaths from communicable diseases (CDs) will decline by 50%, whereas deaths from both non-communicable diseases (NCDs) and injuries will more than double. Considerable cross-national convergence in life expectancy will occur. Climate-induced fluctuations in agricultural <span class="hlt">yield</span> will cause little excess childhood mortality from CDs, although other climate−health pathways were not explored. An optimistic scenario will produce 39 million fewer deaths in 2060 than a pessimistic one. Our forward linkage <span class="hlt">model</span> suggests that an optimistic scenario would result in a 20% per cent increase in gross domestic product (GDP) per capita, despite one billion additional people. Southern Asia would experience the greatest relative mortality reduction and the largest resulting benefit in per capita GDP. Conclusion Long-term, integrated health forecasting helps us understand the links between health and other markers of human progress and offers powerful insight into key points of leverage for future improvements. PMID:21734761</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/21734761','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/21734761"><span><span class="hlt">Projections</span> of global health outcomes from 2005 to 2060 using the International Futures integrated forecasting <span class="hlt">model</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Hughes, Barry B; Kuhn, Randall; Peterson, Cecilia M; Rothman, Dale S; Solórzano, José R; Mathers, Colin D; Dickson, Janet R</p> <p>2011-07-01</p> <p>To develop an integrated health forecasting <span class="hlt">model</span> as part of the International Futures (IFs) <span class="hlt">modelling</span> system. The IFs <span class="hlt">model</span> begins with the historical relationships between economic and social development and cause-specific mortality used by the Global Burden of Disease <span class="hlt">project</span> but builds forecasts from endogenous <span class="hlt">projections</span> of these drivers by incorporating forward linkages from health outcomes back to inputs like population and economic growth. The hybrid IFs system adds alternative structural formulations for causes not well served by regression <span class="hlt">models</span> and accounts for changes in proximate health risk factors. Forecasts are made to 2100 but findings are reported to 2060. The base <span class="hlt">model</span> <span class="hlt">projects</span> that deaths from communicable diseases (CDs) will decline by 50%, whereas deaths from both non-communicable diseases (NCDs) and injuries will more than double. Considerable cross-national convergence in life expectancy will occur. Climate-induced fluctuations in agricultural <span class="hlt">yield</span> will cause little excess childhood mortality from CDs, although other climate-health pathways were not explored. An optimistic scenario will produce 39 million fewer deaths in 2060 than a pessimistic one. Our forward linkage <span class="hlt">model</span> suggests that an optimistic scenario would result in a 20% per cent increase in gross domestic product (GDP) per capita, despite one billion additional people. Southern Asia would experience the greatest relative mortality reduction and the largest resulting benefit in per capita GDP. Long-term, integrated health forecasting helps us understand the links between health and other markers of human progress and offers powerful insight into key points of leverage for future improvements.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017EGUGA..19..421M','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017EGUGA..19..421M"><span>Reduction of CMIP5 <span class="hlt">models</span> bias using Cumulative Distribution Function transform and impact on crops <span class="hlt">yields</span> simulations across West Africa.</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Moise Famien, Adjoua; Defrance, Dimitri; Sultan, Benjamin; Janicot, Serge; Vrac, Mathieu</p> <p>2017-04-01</p> <p>Different CMIP exercises show that the simulations of the future/current temperature and precipitation are complex with a high uncertainty degree. For example, the African monsoon system is not correctly simulated and most of the CMIP5 <span class="hlt">models</span> underestimate the precipitation. Therefore, Global Climate <span class="hlt">Models</span> (GCMs) show significant systematic biases that require bias correction before it can be used in impacts studies. Several methods of bias corrections have been developed for several years and are increasingly using more complex statistical methods. The aims of this work is to show the interest of the CDFt (Cumulative Distribution Function transfom (Michelangeli et al.,2009)) method to reduce the data bias from 29 CMIP5 GCMs over Africa and to assess the impact of bias corrected data on crop <span class="hlt">yields</span> prediction by the end of the 21st century. In this work, we apply the CDFt to daily data covering the period from 1950 to 2099 (Historical and RCP8.5) and we correct the climate variables (temperature, precipitation, solar radiation, wind) by the use of the new daily database from the EU <span class="hlt">project</span> WATer and global CHange (WATCH) available from 1979 to 2013 as reference data. The performance of the method is assessed in several cases. First, data are corrected based on different calibrations periods and are compared, on one hand, with observations to estimate the sensitivity of the method to the calibration period and, on other hand, with another bias-correction method used in the ISIMIP <span class="hlt">project</span>. We find that, whatever the calibration period used, CDFt corrects well the mean state of variables and preserves their trend, as well as daily rainfall occurrence and intensity distributions. However, some differences appear when compared to the outputs obtained with the method used in ISIMIP and show that the quality of the correction is strongly related to the reference data. Secondly, we validate the bias correction method with the agronomic simulations (SARRA-H <span class="hlt">model</span> (Kouressy</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/19900015903','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/19900015903"><span>The <span class="hlt">yield</span> and post-<span class="hlt">yield</span> behavior of high-density polyethylene</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Semeliss, M. A.; Wong, R.; Tuttle, M. E.</p> <p>1990-01-01</p> <p>An experimental and analytical evaluation was made of the <span class="hlt">yield</span> and post-<span class="hlt">yield</span> behavior of high-density polyethylene, a semi-crystalline thermoplastic. Polyethylene was selected for study because it is very inexpensive and readily available in the form of thin-walled tubes. Thin-walled tubular specimens were subjected to axial loads and internal pressures, such that the specimens were subjected to a known biaxial loading. A constant octahederal shear stress rate was imposed during all tests. The measured <span class="hlt">yield</span> and post-<span class="hlt">yield</span> behavior was compared with predictions based on both isotropic and anisotropic <span class="hlt">models</span>. Of particular interest was whether inelastic behavior was sensitive to the hydrostatic stress level. The major achievements and conclusions reached are discussed.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016AGUFM.H43B1409H','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016AGUFM.H43B1409H"><span>Estimation of rice <span class="hlt">yield</span> affected by drought and relation between rice <span class="hlt">yield</span> and TVDI</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Hongo, C.; Tamura, E.; Sigit, G.</p> <p>2016-12-01</p> <p>Impact of climate change is not only seen on food production but also on food security and sustainable development of society. Adaptation to climate change is a pressing issue throughout the world to reduce the risks along with the plans and strategies for food security and sustainable development. As a key adaptation to the climate change, agricultural insurance is expected to play an important role in stabilizing agricultural production through compensating the losses caused by the climate change. As the adaptation, the Government of Indonesia has launched agricultural insurance program for damage of rice by drought, flood and pest and disease. The Government started a pilot <span class="hlt">project</span> in 2013 and this year the pilot <span class="hlt">project</span> has been extended to 22 provinces. Having the above as background, we conducted research on development of new damage assessment method for rice using remote sensing data which could be used for evaluation of damage ratio caused by drought in West Java, Indonesia. For assessment of the damage ratio, estimation of rice <span class="hlt">yield</span> is a key. As the result of our study, rice <span class="hlt">yield</span> affected by drought in dry season could be estimated at level of 1 % significance using SPOT 7 data taken in 2015, and the validation result was 0.8t/ha. Then, the decrease ratio in rice <span class="hlt">yield</span> about each individual paddy field was calculated using data of the estimated result and the average <span class="hlt">yield</span> of the past 10 years. In addition, TVDI (Temperature Vegetation Dryness Index) which was calculated from Landsat8 data in heading season indicated the dryness in low <span class="hlt">yield</span> area. The result suggests that rice <span class="hlt">yield</span> was affected by irrigation water shortage around heading season as a result of the decreased precipitation by El Nino. Through our study, it becomes clear that the utilization of remote sensing data can be promising for assessment of the damage ratio of rice production precisely, quickly and quantitatively, and also it can be incorporated into the insurance procedures.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015AGUFM.A33J0323W','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015AGUFM.A33J0323W"><span>Implication of Agricultural Land Use Change on Regional Climate <span class="hlt">Projection</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Wang, G.; Ahmed, K. F.; You, L.</p> <p>2015-12-01</p> <p>Agricultural land use plays an important role in land-atmosphere interaction. Agricultural activity is one of the most important processes driving human-induced land use land cover change (LULCC) in a region. In addition to future socioeconomic changes, climate-induced changes in crop <span class="hlt">yield</span> represent another important factor shaping agricultural land use. In feedback, the resulting LULCC influences the direction and magnitude of global, regional and local climate change by altering Earth's radiative equilibrium. Therefore, assessment of climate change impact on future agricultural land use and its feedback is of great importance in climate change study. In this study, to evaluate the feedback of <span class="hlt">projected</span> land use changes to the regional climate in West Africa, we employed an asynchronous coupling between a regional climate <span class="hlt">model</span> (RegCM) and a prototype land use <span class="hlt">projection</span> <span class="hlt">model</span> (LandPro). The LandPro <span class="hlt">model</span>, which was developed to <span class="hlt">project</span> the future change in agricultural land use and the resulting shift in natural vegetation in West Africa, is a spatially explicit <span class="hlt">model</span> that can account for both climate and socioeconomic changes in <span class="hlt">projecting</span> future land use changes. In the asynchronously coupled <span class="hlt">modeling</span> framework, LandPro was run for every five years during the period of 2005-2050 accounting for climate-induced change in crop <span class="hlt">yield</span> and socioeconomic changes to <span class="hlt">project</span> the land use pattern by the mid-21st century. Climate data at 0.5˚ was derived from RegCM to drive the crop <span class="hlt">model</span> DSSAT for each of the five-year periods to simulate crop <span class="hlt">yields</span>, which was then provided as input data to LandPro. Subsequently, the land use land cover map required to run RegCM was updated every five years using the outputs from the LandPro simulations. Results from the coupled <span class="hlt">model</span> simulations improve the understanding of climate change impact on future land use and the resulting feedback to regional climate.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015AGUFMGC51J..05M','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015AGUFMGC51J..05M"><span>Light- and water-use efficiency <span class="hlt">model</span> synergy: a revised look at crop <span class="hlt">yield</span> estimation for agricultural decision-making</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Marshall, M.; Tu, K. P.</p> <p>2015-12-01</p> <p>Large-area crop <span class="hlt">yield</span> <span class="hlt">models</span> (LACMs) are commonly employed to address climate-driven changes in crop <span class="hlt">yield</span> and inform policy makers concerned with climate change adaptation. Production efficiency <span class="hlt">models</span> (PEMs), a class of LACMs that rely on the conservative response of carbon assimilation to incoming solar radiation absorbed by a crop contingent on environmental conditions, have increasingly been used over large areas with remote sensing spectral information to improve the spatial resolution of crop <span class="hlt">yield</span> estimates and address important data gaps. Here, we present a new PEM that combines <span class="hlt">model</span> principles from the remote sensing-based crop <span class="hlt">yield</span> and evapotranspiration (ET) <span class="hlt">model</span> literature. One of the major limitations of PEMs is that they are evaluated using data restricted in both space and time. To overcome this obstacle, we first validated the <span class="hlt">model</span> using 2009-2014 eddy covariance flux tower Gross Primary Production data in a rice field in the Central Valley of California- a critical agro-ecosystem of the United States. This evaluation <span class="hlt">yielded</span> a Willmot's D and mean absolute error of 0.81 and 5.24 g CO2/d, respectively, using CO2, leaf area, temperature, and moisture constraints from the MOD16 ET <span class="hlt">model</span>, Priestley-Taylor ET <span class="hlt">model</span>, and the Global Production Efficiency <span class="hlt">Model</span> (GLOPEM). A Monte Carlo simulation revealed that the <span class="hlt">model</span> was most sensitive to the Enhanced Vegetation Index (EVI) input, followed by Photosynthetically Active Radiation, vapor pressure deficit, and air temperature. The <span class="hlt">model</span> will now be evaluated using 30 x 30m (Landsat resolution) biomass transects developed in 2011 and 2012 from spectroradiometric and other non-destructive in situ metrics for several cotton, maize, and rice fields across the Central Valley. Finally, the <span class="hlt">model</span> will be driven by Daymet and MODIS data over the entire State of California and compared with county-level crop <span class="hlt">yield</span> statistics. It is anticipated that the new <span class="hlt">model</span> will facilitate agro-climatic decision-making in</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018JPhCS.995a2010S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018JPhCS.995a2010S"><span>A Technique of Fuzzy C-Mean in Multiple Linear Regression <span class="hlt">Model</span> toward Paddy <span class="hlt">Yield</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Syazwan Wahab, Nur; Saifullah Rusiman, Mohd; Mohamad, Mahathir; Amira Azmi, Nur; Che Him, Norziha; Ghazali Kamardan, M.; Ali, Maselan</p> <p>2018-04-01</p> <p>In this paper, we propose a hybrid <span class="hlt">model</span> which is a combination of multiple linear regression <span class="hlt">model</span> and fuzzy c-means method. This research involved a relationship between 20 variates of the top soil that are analyzed prior to planting of paddy <span class="hlt">yields</span> at standard fertilizer rates. Data used were from the multi-location trials for rice carried out by MARDI at major paddy granary in Peninsular Malaysia during the period from 2009 to 2012. Missing observations were estimated using mean estimation techniques. The data were analyzed using multiple linear regression <span class="hlt">model</span> and a combination of multiple linear regression <span class="hlt">model</span> and fuzzy c-means method. Analysis of normality and multicollinearity indicate that the data is normally scattered without multicollinearity among independent variables. Analysis of fuzzy c-means cluster the <span class="hlt">yield</span> of paddy into two clusters before the multiple linear regression <span class="hlt">model</span> can be used. The comparison between two method indicate that the hybrid of multiple linear regression <span class="hlt">model</span> and fuzzy c-means method outperform the multiple linear regression <span class="hlt">model</span> with lower value of mean square error.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018AmJPh..86..105R','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018AmJPh..86..105R"><span>A toy <span class="hlt">model</span> for the <span class="hlt">yield</span> of a tamped fission bomb</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Reed, B. Cameron</p> <p>2018-02-01</p> <p>A simple expression is developed for estimating the <span class="hlt">yield</span> of a tamped fission bomb, that is, a basic nuclear weapon comprising a fissile core jacketed by a surrounding neutron-reflecting tamper. This expression is based on <span class="hlt">modeling</span> the nuclear chain reaction as a geometric progression in combination with a previously published expression for the threshold-criticality condition for such a core. The derivation is especially straightforward, as it requires no knowledge of diffusion theory and should be accessible to students of both physics and policy. The calculation can be set up as a single page spreadsheet. Application to the Little Boy and Fat Man bombs of World War II gives results in reasonable accord with published <span class="hlt">yield</span> estimates for these weapons.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AIPC.1887b0014D','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AIPC.1887b0014D"><span><span class="hlt">Modelling</span> of <span class="hlt">project</span> cash flow on construction <span class="hlt">projects</span> in Malang city</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Djatmiko, Bambang</p> <p>2017-09-01</p> <p>Contractors usually prepare a <span class="hlt">project</span> cash flow (PCF) on construction <span class="hlt">projects</span>. The flow of cash in and cash out within a construction <span class="hlt">project</span> may vary depending on the owner, contract documents, and construction service providers who have their own authority. Other factors affecting the PCF are down payment, termyn, progress schedule, material schedule, equipment schedule, manpower schedules, and wages of workers and subcontractors. This study aims to describe the cash inflow and cash outflow based on the empirical data obtained from contractors, develop a PCF <span class="hlt">model</span> based on Halpen & Woodhead's PCF <span class="hlt">model</span>, and investigate whether or not there is a significant difference between the Halpen & Woodhead's PCF <span class="hlt">model</span> and the empirical PCF <span class="hlt">model</span>. Based on the researcher's observation, the PCF management has never been implemented by the contractors in Malang in serving their clients (owners). The research setting is in Malang City because physical development in all field and there are many new construction service providers. The findings in this current study are summarised as follows: 1) Cash in included current assets (20%), owner's down payment (20%), termyin I (5%-25%), termyin II (20%), termyin III (25%), termyin IV (25%) and retention (5%). Cash out included direct cost (65%), indirect cost (20%), and profit + informal cost(15%), 2)the construction work involving the empirical PCF <span class="hlt">model</span> in this study was started with the funds obtained from DP or current assets and 3) The two <span class="hlt">models</span> bear several similarities in the upward trends of direct cost, indirect cost, Pro Ic, progress billing, and S-curve. The difference between the two <span class="hlt">models</span> is the occurrence of overdraft in the Halpen and Woodhead's PCF <span class="hlt">model</span> only.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018JPhCS1022a2001P','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018JPhCS1022a2001P"><span>Erlang circular <span class="hlt">model</span> motivated by inverse stereographic <span class="hlt">projection</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Pramesti, G.</p> <p>2018-05-01</p> <p>The Erlang distribution is a special case of the Gamma distribution with the shape parameter is an integer. This paper proposed a new circular <span class="hlt">model</span> used inverse stereographic <span class="hlt">projection</span>. The inverse stereographic <span class="hlt">projection</span> which is a mapping that <span class="hlt">projects</span> a random variable from a real line onto a circle can be used in circular statistics to construct a distribution on the circle from real domain. From the circular <span class="hlt">model</span>, then can be derived the characteristics of the Erlang circular <span class="hlt">model</span> such as the mean resultant length, mean direction, circular variance and trigonometric moments of the distribution.</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_11");'>11</a></li> <li><a href="#" onclick='return showDiv("page_12");'>12</a></li> <li class="active"><span>13</span></li> <li><a href="#" onclick='return showDiv("page_14");'>14</a></li> <li><a href="#" onclick='return showDiv("page_15");'>15</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_13 --> <div id="page_14" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_12");'>12</a></li> <li><a href="#" onclick='return showDiv("page_13");'>13</a></li> <li class="active"><span>14</span></li> <li><a href="#" onclick='return showDiv("page_15");'>15</a></li> <li><a href="#" onclick='return showDiv("page_16");'>16</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="261"> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016EGUGA..18..332L','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016EGUGA..18..332L"><span><span class="hlt">Yield</span> gap mapping as a support tool for risk management in agriculture</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Lahlou, Ouiam; Imani, Yasmina; Slimani, Imane; Van Wart, Justin; Yang, Haishun</p> <p>2016-04-01</p> <p>The increasing frequency and magnitude of droughts in Morocco and the mounting losses from extended droughts in the agricultural sector emphasized the need to develop reliable and timely tools to manage drought and to mitigate resulting catastrophic damage. In 2011, Morocco launched a cereals multi-risk insurance with drought as the most threatening and the most frequent hazard in the country. However, and in order to assess the gap and to implement the more suitable compensation, it is essential to quantify the potential <span class="hlt">yield</span> in each area. In collaboration with the University of Nebraska-Lincoln, a study is carried out in Morocco and aims to determine the <span class="hlt">yield</span> potentials and the <span class="hlt">yield</span> gaps in the different agro-climatic zones of the country. It fits into the large <span class="hlt">project</span>: Global <span class="hlt">Yield</span> Gap and Water Productivity Atlas: http://www.yieldgap.org/. The <span class="hlt">yield</span> gap (Yg) is the magnitude and difference between crop <span class="hlt">yield</span> potential (Yp) or water limited <span class="hlt">yield</span> potential (Yw) and actual <span class="hlt">yields</span>, reached by farmers. World Food Studies (WOFOST), which is a Crop simulation mechanistic <span class="hlt">model</span>, has been used for this purpose. Prior to simulations, reliable information about actual <span class="hlt">yields</span>, weather data, crop management data and soil data have been collected in 7 Moroccan buffer zones considered, each, within a circle of 100 km around a weather station point, homogenously spread across the country and where cereals are widely grown. The <span class="hlt">model</span> calibration was also carried out using WOFOST default varieties data. The map-based results represent a robust tool, not only for drought insurance organization, but for agricultural and agricultural risk management. Moreover, accurate and geospatially granular estimates of Yg and Yw will allow to focus on regions with largest unexploited <span class="hlt">yield</span> gaps and greatest potential to close them, and consequently to improve food security in the country.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28753605','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28753605"><span>Spatiotemporal analysis of <span class="hlt">projected</span> impacts of climate change on the major C3 and C4 crop <span class="hlt">yield</span> under representative concentration pathway 4.5: Insight from the coasts of Tamil Nadu, South India.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>A, Ramachandran; Praveen, Dhanya; R, Jaganathan; D, RajaLakshmi; K, Palanivelu</p> <p>2017-01-01</p> <p>India's dependence on a climate sensitive sector like agriculture makes it highly vulnerable to its impacts. However, agriculture is highly heterogeneous across the country owing to regional disparities in exposure, sensitivity, and adaptive capacity. It is essential to know and quantify the possible impacts of changes in climate on crop <span class="hlt">yield</span> for successful agricultural management and planning at a local scale. The Hadley Centre Global Environment <span class="hlt">Model</span> version 2-Earth System (HadGEM-ES) was employed to generate regional climate <span class="hlt">projections</span> for the study area using the Regional Climate <span class="hlt">Model</span> (RCM) RegCM4.4. The dynamics in potential impacts at the sub-district level were evaluated using the Representative Concentration Pathway 4.5 (RCPs). The aim of this study was to simulate the crop <span class="hlt">yield</span> under a plausible change in climate for the coastal areas of South India through the end of this century. The crop simulation <span class="hlt">model</span>, the Decision Support System for Agrotechnology Transfer (DSSAT) 4.5, was used to understand the plausible impacts on the major crop <span class="hlt">yields</span> of rice, groundnuts, and sugarcane under the RCP 4.5 trajectory. The findings reveal that under the RCP 4.5 scenario there will be decreases in the major C3 and C4 crop <span class="hlt">yields</span> in the study area. This would affect not only the local food security, but the livelihood security as well. This necessitates timely planning to achieve sustainable crop productivity and livelihood security. On the other hand, this situation warrants appropriate adaptations and policy intervention at the sub-district level for achieving sustainable crop productivity in the future.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20100039420','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20100039420"><span>Salience Assignment for Multiple-Instance Data and Its Application to Crop <span class="hlt">Yield</span> Prediction</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Wagstaff, Kiri L.; Lane, Terran</p> <p>2010-01-01</p> <p>An algorithm was developed to generate crop <span class="hlt">yield</span> predictions from orbital remote sensing observations, by analyzing thousands of pixels per county and the associated historical crop <span class="hlt">yield</span> data for those counties. The algorithm determines which pixels contain which crop. Since each known <span class="hlt">yield</span> value is associated with thousands of individual pixels, this is a multiple instance learning problem. Because individual crop growth is related to the resulting <span class="hlt">yield</span>, this relationship has been leveraged to identify pixels that are individually related to corn, wheat, cotton, and soybean <span class="hlt">yield</span>. Those that have the strongest relationship to a given crop s <span class="hlt">yield</span> values are most likely to contain fields with that crop. Remote sensing time series data (a new observation every 8 days) was examined for each pixel, which contains information for that pixel s growth curve, peak greenness, and other relevant features. An alternating-<span class="hlt">projection</span> (AP) technique was used to first estimate the "salience" of each pixel, with respect to the given target (crop <span class="hlt">yield</span>), and then those estimates were used to build a regression <span class="hlt">model</span> that relates input data (remote sensing observations) to the target. This is achieved by constructing an exemplar for each crop in each county that is a weighted average of all the pixels within the county; the pixels are weighted according to the salience values. The new regression <span class="hlt">model</span> estimate then informs the next estimate of the salience values. By iterating between these two steps, the algorithm converges to a stable estimate of both the salience of each pixel and the regression <span class="hlt">model</span>. The salience values indicate which pixels are most relevant to each crop under consideration.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=crystallography&pg=3&id=EJ187443','ERIC'); return false;" href="https://eric.ed.gov/?q=crystallography&pg=3&id=EJ187443"><span>Constructing a Stereographic <span class="hlt">Projection</span> <span class="hlt">Model</span></span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Lovett, D. R.; King, G. D.</p> <p>1978-01-01</p> <p>Explains how to construct a three dimensional <span class="hlt">model</span> for stereographic <span class="hlt">projection</span>. It will be suitable for presenting the symmetry of crystal systems, and will help physics students understand the nature of crystallography. (GA)</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017ChJOL..35..894W','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017ChJOL..35..894W"><span>Sustainable fisheries in shallow lakes: an independent empirical test of the Chinese mitten crab <span class="hlt">yield</span> <span class="hlt">model</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Wang, Haijun; Liang, Xiaomin; Wang, Hongzhu</p> <p>2017-07-01</p> <p>Next to excessive nutrient loading, intensive aquaculture is one of the major anthropogenic impacts threatening lake ecosystems. In China, particularly in the shallow lakes of mid-lower Changjiang (Yangtze) River, continuous overstocking of the Chinese mitten crab ( Eriocheir sinensis) could deteriorate water quality and exhaust natural resources. A series of crab <span class="hlt">yield</span> <span class="hlt">models</span> and a general optimum-stocking rate <span class="hlt">model</span> have been established, which seek to benefit both crab culture and the environment. In this research, independent investigations were carried out to evaluate the crab <span class="hlt">yield</span> <span class="hlt">models</span> and modify the optimum-stocking <span class="hlt">model</span>. Low percentage errors (average 47%, median 36%) between observed and calculated crab <span class="hlt">yields</span> were obtained. Specific values were defined for adult crab body mass (135 g/ind.) and recapture rate (18% and 30% in lakes with submerged macrophyte biomass above and below 1 000 g/m2) to modify the optimum-stocking <span class="hlt">model</span>. Analysis based on the modified optimum-stocking <span class="hlt">model</span> indicated that the actual stocking rates in most lakes were much higher than the calculated optimum-stocking rates. This implies that, for most lakes, the current stocking rates should be greatly reduced to maintain healthy lake ecosystems.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1239570-indirect-aerosol-effect-increases-cmip5-models-projected-arctic-warming','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1239570-indirect-aerosol-effect-increases-cmip5-models-projected-arctic-warming"><span>Indirect aerosol effect increases CMIP5 <span class="hlt">models</span> <span class="hlt">projected</span> Arctic warming</span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>Chylek, Petr; Vogelsang, Timothy J.; Klett, James D.; ...</p> <p>2016-02-20</p> <p>Phase 5 of the Coupled <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (CMIP5) climate models’ <span class="hlt">projections</span> of the 2014–2100 Arctic warming under radiative forcing from representative concentration pathway 4.5 (RCP4.5) vary from 0.9° to 6.7°C. Climate <span class="hlt">models</span> with or without a full indirect aerosol effect are both equally successful in reproducing the observed (1900–2014) Arctic warming and its trends. However, the 2014–2100 Arctic warming and the warming trends <span class="hlt">projected</span> by <span class="hlt">models</span> that include a full indirect aerosol effect (denoted here as AA <span class="hlt">models</span>) are significantly higher (mean <span class="hlt">projected</span> Arctic warming is about 1.5°C higher) than those <span class="hlt">projected</span> by <span class="hlt">models</span> without a full indirect aerosolmore » effect (denoted here as NAA <span class="hlt">models</span>). The suggestion is that, within <span class="hlt">models</span> including full indirect aerosol effects, those <span class="hlt">projecting</span> stronger future changes are not necessarily distinguishable historically because any stronger past warming may have been partially offset by stronger historical aerosol cooling. In conclusion, the CMIP5 <span class="hlt">models</span> that include a full indirect aerosol effect follow an inverse radiative forcing to equilibrium climate sensitivity relationship, while <span class="hlt">models</span> without it do not.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/servlets/purl/1239570','SCIGOV-STC'); return false;" href="https://www.osti.gov/servlets/purl/1239570"><span>Indirect aerosol effect increases CMIP5 <span class="hlt">models</span> <span class="hlt">projected</span> Arctic warming</span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Chylek, Petr; Vogelsang, Timothy J.; Klett, James D.</p> <p></p> <p>Phase 5 of the Coupled <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (CMIP5) climate models’ <span class="hlt">projections</span> of the 2014–2100 Arctic warming under radiative forcing from representative concentration pathway 4.5 (RCP4.5) vary from 0.9° to 6.7°C. Climate <span class="hlt">models</span> with or without a full indirect aerosol effect are both equally successful in reproducing the observed (1900–2014) Arctic warming and its trends. However, the 2014–2100 Arctic warming and the warming trends <span class="hlt">projected</span> by <span class="hlt">models</span> that include a full indirect aerosol effect (denoted here as AA <span class="hlt">models</span>) are significantly higher (mean <span class="hlt">projected</span> Arctic warming is about 1.5°C higher) than those <span class="hlt">projected</span> by <span class="hlt">models</span> without a full indirect aerosolmore » effect (denoted here as NAA <span class="hlt">models</span>). The suggestion is that, within <span class="hlt">models</span> including full indirect aerosol effects, those <span class="hlt">projecting</span> stronger future changes are not necessarily distinguishable historically because any stronger past warming may have been partially offset by stronger historical aerosol cooling. In conclusion, the CMIP5 <span class="hlt">models</span> that include a full indirect aerosol effect follow an inverse radiative forcing to equilibrium climate sensitivity relationship, while <span class="hlt">models</span> without it do not.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/24984712','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/24984712"><span>Linking ecophysiological <span class="hlt">modelling</span> with quantitative genetics to support marker-assisted crop design for improved <span class="hlt">yields</span> of rice (Oryza sativa) under drought stress.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Gu, Junfei; Yin, Xinyou; Zhang, Chengwei; Wang, Huaqi; Struik, Paul C</p> <p>2014-09-01</p> <p>Genetic markers can be used in combination with ecophysiological crop <span class="hlt">models</span> to predict the performance of genotypes. Crop <span class="hlt">models</span> can estimate the contribution of individual markers to crop performance in given environments. The objectives of this study were to explore the use of crop <span class="hlt">models</span> to design markers and virtual ideotypes for improving <span class="hlt">yields</span> of rice (Oryza sativa) under drought stress. Using the <span class="hlt">model</span> GECROS, crop <span class="hlt">yield</span> was dissected into seven easily measured parameters. Loci for these parameters were identified for a rice population of 94 introgression lines (ILs) derived from two parents differing in drought tolerance. Marker-based values of ILs for each of these parameters were estimated from additive allele effects of the loci, and were fed to the <span class="hlt">model</span> in order to simulate <span class="hlt">yields</span> of the ILs grown under well-watered and drought conditions and in order to design virtual ideotypes for those conditions. To account for genotypic <span class="hlt">yield</span> differences, it was necessary to parameterize the <span class="hlt">model</span> for differences in an additional trait 'total crop nitrogen uptake' (Nmax) among the ILs. Genetic variation in Nmax had the most significant effect on <span class="hlt">yield</span>; five other parameters also significantly influenced <span class="hlt">yield</span>, but seed weight and leaf photosynthesis did not. Using the marker-based parameter values, GECROS also simulated <span class="hlt">yield</span> variation among 251 recombinant inbred lines of the same parents. The <span class="hlt">model</span>-based dissection approach detected more markers than the analysis using only <span class="hlt">yield</span> per se. <span class="hlt">Model</span>-based sensitivity analysis ranked all markers for their importance in determining <span class="hlt">yield</span> differences among the ILs. Virtual ideotypes based on markers identified by <span class="hlt">modelling</span> had 10-36 % more <span class="hlt">yield</span> than those based on markers for <span class="hlt">yield</span> per se. This study outlines a genotype-to-phenotype approach that exploits the potential value of marker-based crop <span class="hlt">modelling</span> in developing new plant types with high <span class="hlt">yields</span>. The approach can provide more markers for selection programmes for</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4204662','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4204662"><span>Linking ecophysiological <span class="hlt">modelling</span> with quantitative genetics to support marker-assisted crop design for improved <span class="hlt">yields</span> of rice (Oryza sativa) under drought stress</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Gu, Junfei; Yin, Xinyou; Zhang, Chengwei; Wang, Huaqi; Struik, Paul C.</p> <p>2014-01-01</p> <p>Background and Aims Genetic markers can be used in combination with ecophysiological crop <span class="hlt">models</span> to predict the performance of genotypes. Crop <span class="hlt">models</span> can estimate the contribution of individual markers to crop performance in given environments. The objectives of this study were to explore the use of crop <span class="hlt">models</span> to design markers and virtual ideotypes for improving <span class="hlt">yields</span> of rice (Oryza sativa) under drought stress. Methods Using the <span class="hlt">model</span> GECROS, crop <span class="hlt">yield</span> was dissected into seven easily measured parameters. Loci for these parameters were identified for a rice population of 94 introgression lines (ILs) derived from two parents differing in drought tolerance. Marker-based values of ILs for each of these parameters were estimated from additive allele effects of the loci, and were fed to the <span class="hlt">model</span> in order to simulate <span class="hlt">yields</span> of the ILs grown under well-watered and drought conditions and in order to design virtual ideotypes for those conditions. Key Results To account for genotypic <span class="hlt">yield</span> differences, it was necessary to parameterize the <span class="hlt">model</span> for differences in an additional trait ‘total crop nitrogen uptake’ (Nmax) among the ILs. Genetic variation in Nmax had the most significant effect on <span class="hlt">yield</span>; five other parameters also significantly influenced <span class="hlt">yield</span>, but seed weight and leaf photosynthesis did not. Using the marker-based parameter values, GECROS also simulated <span class="hlt">yield</span> variation among 251 recombinant inbred lines of the same parents. The <span class="hlt">model</span>-based dissection approach detected more markers than the analysis using only <span class="hlt">yield</span> per se. <span class="hlt">Model</span>-based sensitivity analysis ranked all markers for their importance in determining <span class="hlt">yield</span> differences among the ILs. Virtual ideotypes based on markers identified by <span class="hlt">modelling</span> had 10–36 % more <span class="hlt">yield</span> than those based on markers for <span class="hlt">yield</span> per se. Conclusions This study outlines a genotype-to-phenotype approach that exploits the potential value of marker-based crop <span class="hlt">modelling</span> in developing new plant types with high <span class="hlt">yields</span>. The</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016EGUGA..1816192Z','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016EGUGA..1816192Z"><span><span class="hlt">Modelling</span> crop <span class="hlt">yield</span>, soil organic C and P under variable long-term fertilizer management in China</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Zhang, Jie; Xu, Guang; Xu, Minggang; Balkovič, Juraj; Azevedo, Ligia B.; Skalský, Rastislav; Wang, Jinzhou; Yu, Chaoqing</p> <p>2016-04-01</p> <p>Phosphorus (P) is a major limiting nutrient for plant growth. P, as a nonrenewable resource and the controlling factor of aquatic entrophication, is critical for food security and human future, and concerns sustainable resource use and environmental impacts. It is thus essential to find an integrated and effective approach to optimize phosphorus fertilizer application in the agro-ecosystem while maintaining crop <span class="hlt">yield</span> and minimizing environmental risk. Crop P <span class="hlt">models</span> have been used to simulate plant-soil interactions but are rarely validated with scattered long-term fertilizer control field experiments. We employed a process-based <span class="hlt">model</span> named Environmental Policy Integrated Climate <span class="hlt">model</span> (EPIC) to simulate grain <span class="hlt">yield</span>, soil organic carbon (SOC) and soil available P based upon 8 field experiments in China with 11 years dataset, representing the typical Chinese soil types and agro-ecosystems of different regions. 4 treatments, including N, P, and K fertilizer (NPK), no fertilizer (CK), N and K fertilizer (NK) and N, P, K and manure (NPKM) were measured and <span class="hlt">modelled</span>. A series of sensitivity tests were conducted to analyze the sensitivity of grain <span class="hlt">yields</span> and soil available P to sequential fertilizer rates in typical humid, normal and drought years. Our results indicated that the EPIC <span class="hlt">model</span> showed a significant agreement for simulating grain <span class="hlt">yields</span> with R2=0.72, index of agreement (d)=0.87, <span class="hlt">modeling</span> efficiency (EF)=0.68, p<0.01 and SOC with R2=0.70, d=0.86, EF=0.59, and p<0.01. EPIC can well simulate soil available P moderately and capture the temporal changes in soil P reservoirs. Both of Crop <span class="hlt">yields</span> and soil available were found more sensitive to the fertilizer P rates in humid than drought year and soil available P is closely linked to concentrated rainfall. This study concludes that EPIC <span class="hlt">model</span> has great potential to simulate the P cycle in croplands in China and can explore the optimum management practices.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2013JGRD..11812458B','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2013JGRD..11812458B"><span>The western Pacific monsoon in CMIP5 <span class="hlt">models</span>: <span class="hlt">Model</span> evaluation and <span class="hlt">projections</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Brown, Josephine R.; Colman, Robert A.; Moise, Aurel F.; Smith, Ian N.</p> <p>2013-11-01</p> <p>ability of 35 <span class="hlt">models</span> from the Coupled <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> Phase 5 (CMIP5) to simulate the western Pacific (WP) monsoon is evaluated over four representative regions around Timor, New Guinea, the Solomon Islands and Palau. Coupled <span class="hlt">model</span> simulations are compared with atmosphere-only <span class="hlt">model</span> simulations (with observed sea surface temperatures, SSTs) to determine the impact of SST biases on <span class="hlt">model</span> performance. Overall, the CMIP5 <span class="hlt">models</span> simulate the WP monsoon better than previous-generation Coupled <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> Phase 3 (CMIP3) <span class="hlt">models</span>, but some systematic biases remain. The atmosphere-only <span class="hlt">models</span> are better able to simulate the seasonal cycle of zonal winds than the coupled <span class="hlt">models</span>, but display comparable biases in the rainfall. The CMIP5 <span class="hlt">models</span> are able to capture features of interannual variability in response to the El Niño-Southern Oscillation. In climate <span class="hlt">projections</span> under the RCP8.5 scenario, monsoon rainfall is increased over most of the WP monsoon domain, while wind changes are small. Widespread rainfall increases at low latitudes in the summer hemisphere appear robust as a large majority of <span class="hlt">models</span> agree on the sign of the change. There is less agreement on rainfall changes in winter. Interannual variability of monsoon wet season rainfall is increased in a warmer climate, particularly over Palau, Timor and the Solomon Islands. A subset of the <span class="hlt">models</span> showing greatest skill in the current climate confirms the overall <span class="hlt">projections</span>, although showing markedly smaller rainfall increases in the western equatorial Pacific. The changes found here may have large impacts on Pacific island countries influenced by the WP monsoon.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/20713836-study-strong-sigma-sub-yields-lambda-sub-pi-sigma-sub-yields-lambda-sub-pi-xi-sub-yields-xi-sub-pi-decays-nonrelativistic-quark-model','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/20713836-study-strong-sigma-sub-yields-lambda-sub-pi-sigma-sub-yields-lambda-sub-pi-xi-sub-yields-xi-sub-pi-decays-nonrelativistic-quark-model"><span>Study of the strong {sigma}{sub c}{<span class="hlt">yields</span>}{lambda}{sub c}{pi},{sigma}{sub c}*{<span class="hlt">yields</span>}{lambda}{sub c}{pi} and {xi}{sub c}*{<span class="hlt">yields</span>}{xi}{sub c}{pi} decays in a nonrelativistic quark <span class="hlt">model</span></span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Albertus, C.; Nieves, J.; Hernandez, E.</p> <p></p> <p>We present results for the strong widths corresponding to the {sigma}{sub c}{<span class="hlt">yields</span>}{lambda}{sub c}{pi}, {sigma}{sub c}*{<span class="hlt">yields</span>}{lambda}{sub c}{pi} and {xi}{sub c}*{<span class="hlt">yields</span>}{xi}{sub c}{pi} decays. The calculations have been done in a nonrelativistic constituent quark <span class="hlt">model</span> with wave functions that take advantage of the constraints imposed by heavy quark symmetry. Partial conservation of axial current hypothesis allows us to determine the strong vertices from an analysis of the axial current matrix elements. Our results {gamma}({sigma}{sub c}{sup ++}{<span class="hlt">yields</span>}{lambda}{sub c}{sup +}{pi}{sup +})=2.41{+-}0.07{+-}0.02 MeV, {gamma}({sigma}{sub c}{sup +}{<span class="hlt">yields</span>}{lambda}{sub c}{sup +}{pi}{sup 0})=2.79{+-}0.08{+-}0.02 MeV, {gamma}({sigma}{sub c}{sup 0}{<span class="hlt">yields</span>}{lambda}{sub c}{sup +}{pi}{sup -})=2.37{+-}0.07{+-}0.02 MeV, {gamma}({sigma}{sub c}*{sup ++}{<span class="hlt">yields</span>}{lambda}{sub c}{sup +}{pi}{sup +})=17.52{+-}0.74{+-}0.12 MeV, {gamma}({sigma}{sub c}*{supmore » +}{<span class="hlt">yields</span>}{lambda}{sub c}{sup +}{pi}{sup 0})=17.31{+-}0.73{+-}0.12 MeV, {gamma}({sigma}{sub c}*{sup 0}{<span class="hlt">yields</span>}{lambda}{sub c}{sup +}{pi}{sup -})=16.90{+-}0.71{+-}0.12 MeV, {gamma}({xi}{sub c}*{sup +}{<span class="hlt">yields</span>}{xi}{sub c}{sup 0}{pi}{sup +}+{xi}{sub c}{sup +}{pi}{sup 0})=3.18{+-}0.10{+-}0.01 MeV, and {gamma}({xi}{sub c}*{sup 0}{<span class="hlt">yields</span>}{xi}{sub c}{sup +}{pi}{sup -}+{xi}{sub c}{sup 0}{pi}{sup 0})=3.03{+-}0.10{+-}0.01 MeV are in good agreement with experimental determinations.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=2772151','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=2772151"><span>SPATIO-TEMPORAL <span class="hlt">MODELING</span> OF AGRICULTURAL <span class="hlt">YIELD</span> DATA WITH AN APPLICATION TO PRICING CROP INSURANCE CONTRACTS</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Ozaki, Vitor A.; Ghosh, Sujit K.; Goodwin, Barry K.; Shirota, Ricardo</p> <p>2009-01-01</p> <p>This article presents a statistical <span class="hlt">model</span> of agricultural <span class="hlt">yield</span> data based on a set of hierarchical Bayesian <span class="hlt">models</span> that allows joint <span class="hlt">modeling</span> of temporal and spatial autocorrelation. This method captures a comprehensive range of the various uncertainties involved in predicting crop insurance premium rates as opposed to the more traditional ad hoc, two-stage methods that are typically based on independent estimation and prediction. A panel data set of county-average <span class="hlt">yield</span> data was analyzed for 290 counties in the State of Paraná (Brazil) for the period of 1990 through 2002. Posterior predictive criteria are used to evaluate different <span class="hlt">model</span> specifications. This article provides substantial improvements in the statistical and actuarial methods often applied to the calculation of insurance premium rates. These improvements are especially relevant to situations where data are limited. PMID:19890450</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016ERL....11l3001S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016ERL....11l3001S"><span>A network-based approach for semi-quantitative knowledge mining and its application to <span class="hlt">yield</span> variability</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Schauberger, Bernhard; Rolinski, Susanne; Müller, Christoph</p> <p>2016-12-01</p> <p>Variability of crop <span class="hlt">yields</span> is detrimental for food security. Under climate change its amplitude is likely to increase, thus it is essential to understand the underlying causes and mechanisms. Crop <span class="hlt">models</span> are the primary tool to <span class="hlt">project</span> future changes in crop <span class="hlt">yields</span> under climate change. A systematic overview of drivers and mechanisms of crop <span class="hlt">yield</span> variability (YV) can thus inform crop <span class="hlt">model</span> development and facilitate improved understanding of climate change impacts on crop <span class="hlt">yields</span>. Yet there is a vast body of literature on crop physiology and YV, which makes a prioritization of mechanisms for implementation in <span class="hlt">models</span> challenging. Therefore this paper takes on a novel approach to systematically mine and organize existing knowledge from the literature. The aim is to identify important mechanisms lacking in <span class="hlt">models</span>, which can help to set priorities in <span class="hlt">model</span> improvement. We structure knowledge from the literature in a semi-quantitative network. This network consists of complex interactions between growing conditions, plant physiology and crop <span class="hlt">yield</span>. We utilize the resulting network structure to assign relative importance to causes of YV and related plant physiological processes. As expected, our findings confirm existing knowledge, in particular on the dominant role of temperature and precipitation, but also highlight other important drivers of YV. More importantly, our method allows for identifying the relevant physiological processes that transmit variability in growing conditions to variability in <span class="hlt">yield</span>. We can identify explicit targets for the improvement of crop <span class="hlt">models</span>. The network can additionally guide <span class="hlt">model</span> development by outlining complex interactions between processes and by easily retrieving quantitative information for each of the 350 interactions. We show the validity of our network method as a structured, consistent and scalable dictionary of literature. The method can easily be applied to many other research fields.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/24115565','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/24115565"><span>Optimizing rice <span class="hlt">yields</span> while minimizing <span class="hlt">yield</span>-scaled global warming potential.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Pittelkow, Cameron M; Adviento-Borbe, Maria A; van Kessel, Chris; Hill, James E; Linquist, Bruce A</p> <p>2014-05-01</p> <p>To meet growing global food demand with limited land and reduced environmental impact, agricultural greenhouse gas (GHG) emissions are increasingly evaluated with respect to crop productivity, i.e., on a <span class="hlt">yield</span>-scaled as opposed to area basis. Here, we compiled available field data on CH4 and N2 O emissions from rice production systems to test the hypothesis that in response to fertilizer nitrogen (N) addition, <span class="hlt">yield</span>-scaled global warming potential (GWP) will be minimized at N rates that maximize <span class="hlt">yields</span>. Within each study, <span class="hlt">yield</span> N surplus was calculated to estimate deficit or excess N application rates with respect to the optimal N rate (defined as the N rate at which maximum <span class="hlt">yield</span> was achieved). Relationships between <span class="hlt">yield</span> N surplus and GHG emissions were assessed using linear and nonlinear mixed-effects <span class="hlt">models</span>. Results indicate that <span class="hlt">yields</span> increased in response to increasing N surplus when moving from deficit to optimal N rates. At N rates contributing to a <span class="hlt">yield</span> N surplus, N2 O and <span class="hlt">yield</span>-scaled N2 O emissions increased exponentially. In contrast, CH4 emissions were not impacted by N inputs. Accordingly, <span class="hlt">yield</span>-scaled CH4 emissions decreased with N addition. Overall, <span class="hlt">yield</span>-scaled GWP was minimized at optimal N rates, decreasing by 21% compared to treatments without N addition. These results are unique compared to aerobic cropping systems in which N2 O emissions are the primary contributor to GWP, meaning <span class="hlt">yield</span>-scaled GWP may not necessarily decrease for aerobic crops when <span class="hlt">yields</span> are optimized by N fertilizer addition. Balancing gains in agricultural productivity with climate change concerns, this work supports the concept that high rice <span class="hlt">yields</span> can be achieved with minimal <span class="hlt">yield</span>-scaled GWP through optimal N application rates. Moreover, additional improvements in N use efficiency may further reduce <span class="hlt">yield</span>-scaled GWP, thereby strengthening the economic and environmental sustainability of rice systems. © 2013 John Wiley & Sons Ltd.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://rosap.ntl.bts.gov/view/dot/5682','DOTNTL'); return false;" href="https://rosap.ntl.bts.gov/view/dot/5682"><span>Frontage road <span class="hlt">yield</span> treatment analysis tool (FRYTAT) database: user guide.</span></a></p> <p><a target="_blank" href="http://ntlsearch.bts.gov/tris/index.do">DOT National Transportation Integrated Search</a></p> <p></p> <p>2009-08-01</p> <p>The Texas Department of Transportation (TxDOT) sponsored <span class="hlt">Project</span> 0-4986, An Assessment of Frontage Road : <span class="hlt">Yield</span> Treatments, to assess the effectiveness of a wide variety of frontage roadexit ramp and frontage roadU-turn : <span class="hlt">yield</span> treatments...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015JASMS..26.1645K','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015JASMS..26.1645K"><span>Ion <span class="hlt">Yields</span> in the Coupled Chemical and Physical Dynamics <span class="hlt">Model</span> of Matrix-Assisted Laser Desorption/Ionization</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Knochenmuss, Richard</p> <p>2015-08-01</p> <p>The Coupled Chemical and Physical Dynamics (CPCD) <span class="hlt">model</span> of matrix assisted laser desorption ionization has been restricted to relative rather than absolute <span class="hlt">yield</span> comparisons because the rate constant for one step in the <span class="hlt">model</span> was not accurately known. Recent measurements are used to constrain this constant, leading to good agreement with experimental <span class="hlt">yield</span> versus fluence data for 2,5-dihydroxybenzoic acid. Parameters for alpha-cyano-4-hydroxycinnamic acid are also estimated, including contributions from a possible triplet state. The results are compared with the polar fluid <span class="hlt">model</span>, the CPCD is found to give better agreement with the data.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28724067','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28724067"><span>Multitrait, Random Regression, or Simple Repeatability <span class="hlt">Model</span> in High-Throughput Phenotyping Data Improve Genomic Prediction for Wheat Grain <span class="hlt">Yield</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Sun, Jin; Rutkoski, Jessica E; Poland, Jesse A; Crossa, José; Jannink, Jean-Luc; Sorrells, Mark E</p> <p>2017-07-01</p> <p>High-throughput phenotyping (HTP) platforms can be used to measure traits that are genetically correlated with wheat ( L.) grain <span class="hlt">yield</span> across time. Incorporating such secondary traits in the multivariate pedigree and genomic prediction <span class="hlt">models</span> would be desirable to improve indirect selection for grain <span class="hlt">yield</span>. In this study, we evaluated three statistical <span class="hlt">models</span>, simple repeatability (SR), multitrait (MT), and random regression (RR), for the longitudinal data of secondary traits and compared the impact of the proposed <span class="hlt">models</span> for secondary traits on their predictive abilities for grain <span class="hlt">yield</span>. Grain <span class="hlt">yield</span> and secondary traits, canopy temperature (CT) and normalized difference vegetation index (NDVI), were collected in five diverse environments for 557 wheat lines with available pedigree and genomic information. A two-stage analysis was applied for pedigree and genomic selection (GS). First, secondary traits were fitted by SR, MT, or RR <span class="hlt">models</span>, separately, within each environment. Then, best linear unbiased predictions (BLUPs) of secondary traits from the above <span class="hlt">models</span> were used in the multivariate prediction <span class="hlt">models</span> to compare predictive abilities for grain <span class="hlt">yield</span>. Predictive ability was substantially improved by 70%, on average, from multivariate pedigree and genomic <span class="hlt">models</span> when including secondary traits in both training and test populations. Additionally, (i) predictive abilities slightly varied for MT, RR, or SR <span class="hlt">models</span> in this data set, (ii) results indicated that including BLUPs of secondary traits from the MT <span class="hlt">model</span> was the best in severe drought, and (iii) the RR <span class="hlt">model</span> was slightly better than SR and MT <span class="hlt">models</span> under drought environment. Copyright © 2017 Crop Science Society of America.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.fs.usda.gov/treesearch/pubs/45854','TREESEARCH'); return false;" href="https://www.fs.usda.gov/treesearch/pubs/45854"><span>Growth and <span class="hlt">yield</span> of shortleaf pine</span></a></p> <p><a target="_blank" href="http://www.fs.usda.gov/treesearch/">Treesearch</a></p> <p>Paul A. Murphy</p> <p>1986-01-01</p> <p>A survey of available growth and <span class="hlt">yield</span> information for shortleaf pine (Pinus echinata Mill.) is given. The kinds of studies and data sources that produce this information are also evaluated, and an example of how a growth and <span class="hlt">yield</span> <span class="hlt">model</span> can be used to answer management questions is illustrated. Guidelines are given for using growth and <span class="hlt">yield</span> <span class="hlt">models</span>, and needs for...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2010PhDT.......110H','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2010PhDT.......110H"><span>Electron-induced electron <span class="hlt">yields</span> of uncharged insulating materials</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Hoffmann, Ryan Carl</p> <p></p> <p>Presented here are electron-induced electron <span class="hlt">yield</span> measurements from high-resistivity, high-<span class="hlt">yield</span> materials to support a <span class="hlt">model</span> for the <span class="hlt">yield</span> of uncharged insulators. These measurements are made using a low-fluence, pulsed electron beam and charge neutralization to minimize charge accumulation. They show charging induced changes in the total <span class="hlt">yield</span>, as much as 75%, even for incident electron fluences of <3 fC/mm2, when compared to an uncharged <span class="hlt">yield</span>. The evolution of the <span class="hlt">yield</span> as charge accumulates in the material is described in terms of electron recapture, based on the extended Chung and Everhart <span class="hlt">model</span> of the electron emission spectrum and the dual dynamic layer <span class="hlt">model</span> for internal charge distribution. This <span class="hlt">model</span> is used to explain charge-induced total <span class="hlt">yield</span> modification measured in high-<span class="hlt">yield</span> ceramics, and to provide a method for determining electron <span class="hlt">yield</span> of uncharged, highly insulating, high-<span class="hlt">yield</span> materials. A sequence of materials with progressively greater charge susceptibility is presented. This series starts with low-<span class="hlt">yield</span> Kapton derivative called CP1, then considers a moderate-<span class="hlt">yield</span> material, Kapton HN, and ends with a high-<span class="hlt">yield</span> ceramic, polycrystalline aluminum oxide. Applicability of conductivity (both radiation induced conductivity (RIC) and dark current conductivity) to the <span class="hlt">yield</span> is addressed. Relevance of these results to spacecraft charging is also discussed.</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_12");'>12</a></li> <li><a href="#" onclick='return showDiv("page_13");'>13</a></li> <li class="active"><span>14</span></li> <li><a href="#" onclick='return showDiv("page_15");'>15</a></li> <li><a href="#" onclick='return showDiv("page_16");'>16</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_14 --> <div id="page_15" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_13");'>13</a></li> <li><a href="#" onclick='return showDiv("page_14");'>14</a></li> <li class="active"><span>15</span></li> <li><a href="#" onclick='return showDiv("page_16");'>16</a></li> <li><a href="#" onclick='return showDiv("page_17");'>17</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="281"> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016EGUGA..18.8761C','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016EGUGA..18.8761C"><span>Remote sensing and <span class="hlt">modelling</span> of vegetation dynamics for early estimation and spatial analysis of grain <span class="hlt">yields</span> in semiarid context in central Tunisia</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Chahbi, Aicha; Zribi, Mehrez; Lili-Chabaane, Zohra</p> <p>2016-04-01</p> <p>In arid and semi-arid areas, population growth, urbanization, food security and climate change have an impact on agriculture in general and particular on the cereal production. Therefore to improve food security in arid countries, crop canopy monitoring and <span class="hlt">yield</span> forecasting cereals are needed. Many <span class="hlt">models</span>, based on the use of remote sensing or agro-meteorological <span class="hlt">models</span>, have been developed to estimate the biomass and grain <span class="hlt">yield</span> of cereals. Through the use of a rich database, acquired over a period of two years for more than 80 test fields, and from optical satellite SPOT/HRV images, the aim of the present study is to evaluate the feasibility of two <span class="hlt">yield</span> prediction approaches. The first approach is based on the application of the semi-empirical growth <span class="hlt">model</span> SAFY, developed to simulate the dynamics of the LAI and the grain <span class="hlt">yield</span>, at the field scale. The <span class="hlt">model</span> is able to reproduce the time evolution of the leaf area index of all fields with acceptable error. However, an inter-comparison between ground <span class="hlt">yield</span> measurements and SAFY <span class="hlt">model</span> simulations reveals that the <span class="hlt">yields</span> are under-estimated by this <span class="hlt">model</span>. We can explain the limits of the semi-empirical <span class="hlt">model</span> SAFY by its simplicity and also by various factors that were not considered (fertilization, irrigation,...). To improve the <span class="hlt">yield</span> estimation, a new approach is proposed: the grain <span class="hlt">yield</span> is estimated in function of the LAI in the growth period between 25 March and 5 April. The LAI of this period is estimated by SAFY <span class="hlt">model</span>. A linear relationship is developed between the measured grain <span class="hlt">yield</span> and the LAI area of the maximum growth period.This approach is robust, the measured and estimated grain <span class="hlt">yields</span> are well correlated. Following the validation of this approach, <span class="hlt">yield</span> estimations are proposed for the entire studied site using the SPOT/HRV images.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.nrel.gov/energy-solutions/project-development-model.html','SCIGOVWS'); return false;" href="https://www.nrel.gov/energy-solutions/project-development-model.html"><span><span class="hlt">Project</span> Development <span class="hlt">Model</span> | Integrated Energy Solutions | NREL</span></a></p> <p><a target="_blank" href="http://www.science.gov/aboutsearch.html">Science.gov Websites</a></p> <p></p> <p></p> <p>. <em>The</em> five <em>elements</em> <em>of</em> <span class="hlt">project</span> fundamentals are: Baseline: Analyze <em>the</em> current situation for <em>the</em> site . <em>The</em> two-phase iterative <span class="hlt">model</span> includes <em>elements</em> in <span class="hlt">project</span> fundamentals and <span class="hlt">project</span> development based State and Local Energy Data (SLED) tool, developed by NREL for <em>the</em> U.S. Department <em>of</em> Energy, to get</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2013AGUFM.B51F0360S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2013AGUFM.B51F0360S"><span>A data-oriented semi-process <span class="hlt">model</span> for evaluating the <span class="hlt">yields</span> of major crops at global scale (PRYSBI-2)</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Sakurai, G.; Iizumi, T.; Yokozawa, M.</p> <p>2013-12-01</p> <p>Demand for major cereal crops will double by 2050 compared to the amount in 2005 due to the population growth, dietary change, and increase in biofuel use. This requires substantial efforts to increase crop <span class="hlt">yields</span> under changing climate, water resources, and land use. In order to explore possible paths to meet the supply target, global crop <span class="hlt">modeling</span> is a useful approach. To that end, we developed a process-based large-area crop <span class="hlt">model</span> (called PRYSBIE-2) for major crops, including soybean. This <span class="hlt">model</span> consisted of the enzyme kinetics <span class="hlt">model</span> for photosynthetic carbon assimilation and soil water balance <span class="hlt">model</span> from SWAT. The parameter values on water stress, nitrogen stress were calibrated over global croplands from one grid cell to another (1.125° in latitude and longitude) using Markov Chain Monte Carlo (MCMC) methods. The historical <span class="hlt">yield</span> data collected from major crop-producing countries on a state, county, or prefecture scale were used as the calibration data. Then we obtained the <span class="hlt">model</span> parameter sets that can give high correlation coefficients between the historical and estimated <span class="hlt">yield</span> time series for the period 1980-2006. We analyzed the impacts on soybean <span class="hlt">yields</span> in the three top soybean-producing countries (the USA, China, and Brazil) associated with the changes in climate and CO2 during the period 1980-2006, using the <span class="hlt">model</span>. We found that, given the simulated <span class="hlt">yields</span> and reported harvested areas, the estimated average net benefit from the CO2 fertilization effect (with one standard deviation) in the USA, Brazil, and China in the years was 42.70×32.52 Mt, 35.30×28.55 Mt, and 12.52×15.11 Mt, respectively. Results suggest that the CO2-induced increases in soybean <span class="hlt">yields</span> in the USA and China likely offset a part of the negative impacts on <span class="hlt">yields</span> due to the historical temperature rise. In contrast, the net effect of the past change in climate and CO2 in Brazil appeared to be positive. This study demonstrates a quantitative estimation of the impacts of the changes</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC34B..07T','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC34B..07T"><span>How changes of climate extremes affect summer and winter crop <span class="hlt">yields</span> and water productivity in the southeast USA</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Tian, D.; Cammarano, D.</p> <p>2017-12-01</p> <p><span class="hlt">Modeling</span> changes of crop production at regional scale is important to make adaptation measures for sustainably food supply under global change. In this study, we explore how changing climate extremes in the 20th and 21st century affect maize (summer crop) and wheat (winter crop) <span class="hlt">yields</span> in an agriculturally important region: the southeast United States. We analyze historical (1950-1999) and <span class="hlt">projected</span> (2006-2055) precipitation and temperature extremes by calculating the changes of 18 climate extreme indices using the statistically downscaled CMIP5 data from 10 general circulation <span class="hlt">models</span> (GCMs). To evaluate how these climate extremes affect maize and wheat <span class="hlt">yields</span>, historical baseline and <span class="hlt">projected</span> maize and wheat <span class="hlt">yields</span> under RCP4.5 and RCP8.5 scenarios are simulated using the DSSAT-CERES maize and wheat <span class="hlt">models</span> driven by the same downscaled GCMs data. All of the changes are examined at 110 locations over the study region. The results show that most of the precipitation extreme indices do not have notable change; mean precipitation, precipitation intensity, and maximum 1-day precipitation are generally increased; the number of rainy days is decreased. The temperature extreme indices mostly showed increased values on mean temperature, number of high temperature days, diurnal temperature range, consecutive high temperature days, maximum daily maximum temperature, and minimum daily minimum temperature; the number of low temperature days and number of consecutive low temperature days are decreased. The conditional probabilistic relationships between changes in crop <span class="hlt">yields</span> and changes in extreme indices suggested different responses of crop <span class="hlt">yields</span> to climate extremes during sowing to anthesis and anthesis to maturity periods. Wheat <span class="hlt">yields</span> and crop water productivity for wheat are increased due to an increased CO2 concentration and minimum temperature; evapotranspiration, maize <span class="hlt">yields</span>, and crop water productivity for wheat are decreased owing to the increased temperature</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.fs.usda.gov/treesearch/pubs/22342','TREESEARCH'); return false;" href="https://www.fs.usda.gov/treesearch/pubs/22342"><span>Integrating Forage, Wildlife, Water, and Fish <span class="hlt">Projections</span> with Timber <span class="hlt">Projections</span> at the Regional Level: A Case Study in Southern United States</span></a></p> <p><a target="_blank" href="http://www.fs.usda.gov/treesearch/">Treesearch</a></p> <p>Linda A. Joyce; Curtis H. Flather; Patricia A. Flebbe; Thomas W. Hoekstra; Stan J. Ursic</p> <p>1990-01-01</p> <p>The impact of timber management and land-use change on forage production, turkey and deer abundance, red-cockaded woodpecker colonies, water <span class="hlt">yield</span>, and trout abundance was <span class="hlt">projected</span> as part of a policy study focusing on the southern United States. The multiresource <span class="hlt">modeling</span> framework used in this study linked extant timber management and land-area policy <span class="hlt">models</span> with...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015SPIE.9637E..29C','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015SPIE.9637E..29C"><span>Forecasting of cereals <span class="hlt">yields</span> in a semi-arid area using the agrometeorological <span class="hlt">model</span> «SAFY» combined to optical SPOT/HRV images</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Chahbi, Aicha; Zribi, Mehrez; Lili-Chabaane, Zohra; Mougenot, Bernard</p> <p>2015-10-01</p> <p>In semi-arid areas, an operational grain <span class="hlt">yield</span> forecasting system, which could help decision-makers to plan annual imports, is needed. It can be challenging to monitor the crop canopy and production capacity of plants, especially cereals. Many <span class="hlt">models</span>, based on the use of remote sensing or agro-meteorological <span class="hlt">models</span>, have been developed to estimate the biomass and grain <span class="hlt">yield</span> of cereals. Remote sensing has demonstrated its strong potential for the monitoring of the vegetation's dynamics and temporal variations. Through the use of a rich database, acquired over a period of two years for more than 60 test fields, and from 20 optical satellite SPOT/HRV images, the aim of the present study is to evaluate the feasibility of two approaches to estimate the dynamics and <span class="hlt">yields</span> of cereals in the context of semi-arid, low productivity regions in North Africa. The first approach is based on the application of the semi-empirical growth <span class="hlt">model</span> SAFY "Simple Algorithm For <span class="hlt">Yield</span> estimation", developed to simulate the dynamics of the leaf area index and the grain <span class="hlt">yield</span>, at the field scale. The <span class="hlt">model</span> is able to reproduce the time evolution of the LAI of all fields. However, the <span class="hlt">yields</span> are under-estimated. Therefore, we developed a new approach to improve the SAFY <span class="hlt">model</span>. The grain <span class="hlt">yield</span> is function of LAI area in the growth period between 25 March and 5 April. This approach is robust, the measured and estimated grain <span class="hlt">yield</span> are well correlated. Finally, this <span class="hlt">model</span> is used in combination with remotely sensed LAI measurements to estimate <span class="hlt">yield</span> for the entire studied site.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC34B..02T','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC34B..02T"><span>Future Warming Increases Global Maize <span class="hlt">Yield</span> Variability with Implications for Food Markets</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Tigchelaar, M.; Battisti, D. S.; Naylor, R. L.; Ray, D. K.</p> <p>2017-12-01</p> <p>If current trends in population growth and dietary shifts continue, the world will need to produce about 70% more food by 2050, while earth's climate is rapidly changing. Rising temperatures in particular are <span class="hlt">projected</span> to negatively impact agricultural production, as the world's staple crops perform poorly in extreme heat. Theoretical <span class="hlt">models</span> suggest that as temperatures rise above plants' optimal temperature for performance, not only will mean <span class="hlt">yields</span> decline rapidly, but the variability of <span class="hlt">yields</span> will increase, even as interannual variations in climate remain unchanged. Here we use global datasets of maize production and climate variability combined with CMIP5 temperature <span class="hlt">projections</span> to quantify how <span class="hlt">yield</span> variability will change in major maize producing countries under 2°C and 4°C of global warming. Maize is the world's most produced crop, and is linked to other staple crops through substitution in consumption and production. We find that in warmer climates - absent any breeding gains in heat tolerance - the Coefficient of Variation (CV) of maize <span class="hlt">yields</span> increases almost everywhere, to values much larger than present-day. This increase in CV is due both to an increase in the standard deviation of <span class="hlt">yields</span>, and a decrease in mean <span class="hlt">yields</span>. In locations where crop failures become the norm under high (4°C) warming (mostly in tropical, low-<span class="hlt">yield</span> environments), the standard deviation of <span class="hlt">yields</span> ultimately decreases. The probability that in any given year the most productive areas in the top three maize producing countries (United States, China, Brazil) have simultaneous production losses greater than 10% is virtually zero under present-day climate conditions, but increases to 12% under 2°C warming, and 89% under 4°C warming. This has major implications for global food markets and staple crop prices, affecting especially the 2.5 billion people that comprise the world's poor, who already spend the majority of their disposable income on food and are particularly vulnerable</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://pubs.usgs.gov/sir/2008/5138/','USGSPUBS'); return false;" href="https://pubs.usgs.gov/sir/2008/5138/"><span>Evaluation of Selected <span class="hlt">Model</span> Constraints and Variables on Simulated Sustainable <span class="hlt">Yield</span> from the Mississippi River Valley Alluvial Aquifer System in Arkansas</span></a></p> <p><a target="_blank" href="http://pubs.er.usgs.gov/pubs/index.jsp?view=adv">USGS Publications Warehouse</a></p> <p>Czarnecki, John B.</p> <p>2008-01-01</p> <p>An existing conjunctive use optimization <span class="hlt">model</span> of the Mississippi River Valley alluvial aquifer was used to evaluate the effect of selected constraints and <span class="hlt">model</span> variables on ground-water sustainable <span class="hlt">yield</span>. Modifications to the optimization <span class="hlt">model</span> were made to evaluate the effects of varying (1) the upper limit of ground-water withdrawal rates, (2) the streamflow constraint associated with the White River, and (3) the specified stage of the White River. Upper limits of ground-water withdrawal rates were reduced to 75, 50, and 25 percent of the 1997 ground-water withdrawal rates. As the upper limit is reduced, the spatial distribution of sustainable pumping increases, although the total sustainable pumping from the entire <span class="hlt">model</span> area decreases. In addition, the number of binding constraint points decreases. In a separate analysis, the streamflow constraint associated with the White River was optimized, resulting in an estimate of the maximum sustainable streamflow at DeValls Bluff, Arkansas, the site of potential surface-water withdrawals from the White River for the Grand Prairie Area Demonstration <span class="hlt">Project</span>. The maximum sustainable streamflow, however, is less than the amount of streamflow allocated in the spring during the paddlefish spawning period. Finally, decreasing the specified stage of the White River was done to evaluate a hypothetical river stage that might result if the White River were to breach the Melinda Head Cut Structure, one of several manmade diversions that prevents the White River from permanently joining the Arkansas River. A reduction in the stage of the White River causes reductions in the sustainable <span class="hlt">yield</span> of ground water.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/25937498','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/25937498"><span>Paddy crop <span class="hlt">yield</span> estimation in Kashmir Himalayan rice bowl using remote sensing and simulation <span class="hlt">model</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Muslim, Mohammad; Romshoo, Shakil Ahmad; Rather, A Q</p> <p>2015-06-01</p> <p>The Kashmir Himalayan region of India is expected to be highly prone to the change in agricultural land use because of its geo-ecological fragility, strategic location vis-à-vis the Himalayan landscape, its trans-boundary river basins, and inherent socio-economic instabilities. Food security and sustainability of the region are thus greatly challenged by these impacts. The effect of future climate change, increased competition for land and water, labor from non-agricultural sectors, and increasing population adds to this complex problem. In current study, paddy rice <span class="hlt">yield</span> at regional level was estimated using GIS-based environment policy integrated climate (GEPIC) <span class="hlt">model</span>. The general approach of current study involved combining regional level crop database, regional soil data base, farm management data, and climatic data outputs with GEPIC <span class="hlt">model</span>. The simulated <span class="hlt">yield</span> showed that estimated production to be 4305.55 kg/ha (43.05 q h(-1)). The crop varieties like Jhelum, K-39, Chenab, China 1039, China-1007, and Shalimar rice-1 grown in plains recorded average <span class="hlt">yield</span> of 4783.3 kg/ha (47.83 q ha(-1)). Meanwhile, high altitude areas with varieties like Kohsaar, K-78 (Barkat), and K-332 recorded <span class="hlt">yield</span> of 4102.2 kg/ha (41.02 q ha(-1)). The observed and simulated <span class="hlt">yield</span> showed a good match with R (2) = 0.95, RMSE = 132.24 kg/ha, respectively.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015EGUGA..17.8688H','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015EGUGA..17.8688H"><span>Remotely sensed vegetation indices for seasonal crop <span class="hlt">yields</span> predictions in the Czech Republic</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Hlavinka, Petr; Semerádová, Daniela; Balek, Jan; Bohovic, Roman; Žalud, Zdeněk; Trnka, Miroslav</p> <p>2015-04-01</p> <p>Remotely sensed vegetation indices by satellites are valuable tool for vegetation conditions assessment also in the case of field crops. This study is based on the use of NDVI (Normalized Difference Vegetation Index) and EVI (Enhanced Vegetation Index) derived from MODIS (Moderate Resolution Imaging Spectroradiometer) aboard Terra satellite. Data available from the year 2000 were analyzed and tested for seasonal <span class="hlt">yields</span> predictions within selected districts of the Czech Republic (Central Europe). Namely the <span class="hlt">yields</span> of spring barley, winter wheat and oilseed winter rape during the period from 2000 to 2014 were assessed. Observed <span class="hlt">yields</span> from 14 districts (NUTS 4) were collected and thus 210 seasons were included. Selected districts differ considerably in their soil fertility and terrain configuration and represent transect across various agroclimatic conditions (from warm and dry to relative cool and wet regions). Two approaches were tested: 1) using of composite remotely sensed data (available in 16 day time step) provided by the USGS (https://lpdaac.usgs.gov/); 2) using daily remotely sensed data in combination with originally developed smoothing method. The <span class="hlt">yields</span> were successfully predicted based on established regression <span class="hlt">models</span> (remotely sensed data used as independent parameter). Besides others the impact of severe drought episodes within vegetation were identified and <span class="hlt">yield</span> reductions at district level predicted (even before harvest). As a result the periods with the best relationship between remotely sensed data and <span class="hlt">yields</span> were identified. The impact of drought conditions as well as normal or above normal <span class="hlt">yields</span> of field crops could be predicted by proposed method within study region up to 30 days prior to the harvest. It could be concluded that remotely sensed vegetation conditions assessment should be important part of early warning systems focused on drought. Such information should be widely available for various users (decision makers, farmers, etc.) in</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2000SPIE.3997..245M','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2000SPIE.3997..245M"><span><span class="hlt">Modeling</span> of <span class="hlt">projection</span> electron lithography</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Mack, Chris A.</p> <p>2000-07-01</p> <p><span class="hlt">Projection</span> Electron Lithography (PEL) has recently become a leading candidate for the next generation of lithography systems after the successful demonstration of SCAPEL by Lucent Technologies and PREVAIL by IBM. These systems use a scattering membrane mask followed by a lens with limited angular acceptance range to form an image of the mask when illuminated by high energy electrons. This paper presents an initial <span class="hlt">modeling</span> system for such types of <span class="hlt">projection</span> electron lithography systems. Monte Carlo <span class="hlt">modeling</span> of electron scattering within the mask structure creates an effective mask 'diffraction' pattern, to borrow the standard optical terminology. A cutoff of this scattered pattern by the imaging 'lens' provides an electron energy distribution striking the wafer. This distribution is then convolved with a 'point spread function,' the results of a Monte Carlo scattering calculation of a point beam of electrons striking the resist coated substrate and including the effects of beam blur. Resist exposure and development <span class="hlt">models</span> from standard electron beam lithography simulation are used to simulate the final three-dimensional resist profile.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018ThApC.tmp..169R','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018ThApC.tmp..169R"><span><span class="hlt">Modelling</span> drought-related <span class="hlt">yield</span> losses in Iberia using remote sensing and multiscalar indices</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Ribeiro, Andreia F. S.; Russo, Ana; Gouveia, Célia M.; Páscoa, Patrícia</p> <p>2018-04-01</p> <p>The response of two rainfed winter cereal <span class="hlt">yields</span> (wheat and barley) to drought conditions in the Iberian Peninsula (IP) was investigated for a long period (1986-2012). Drought hazard was evaluated based on the multiscalar Standardized Precipitation Evapotranspiration Index (SPEI) and three remote sensing indices, namely the Vegetation Condition (VCI), the Temperature Condition (TCI), and the Vegetation Health (VHI) Indices. A correlation analysis between the <span class="hlt">yield</span> and the drought indicators was conducted, and multiple linear regression (MLR) and artificial neural network (ANN) <span class="hlt">models</span> were established to estimate <span class="hlt">yield</span> at the regional level. The correlation values suggested that <span class="hlt">yield</span> reduces with moisture depletion (low values of VCI) during early-spring and with too high temperatures (low values of TCI) close to the harvest time. Generally, all drought indicators displayed greatest influence during the plant stages in which the crop is photosynthetically more active (spring and summer), rather than the earlier moments of plants life cycle (autumn/winter). Our results suggested that SPEI is more relevant in the southern sector of the IP, while remote sensing indices are rather good in estimating cereal <span class="hlt">yield</span> in the northern sector of the IP. The strength of the statistical relationships found by MLR and ANN methods is quite similar, with some improvements found by the ANN. A great number of true positives (hits) of occurrence of <span class="hlt">yield</span>-losses exhibiting hit rate (HR) values higher than 69% was obtained.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=financial+AND+ratio+AND+comments&id=ED371147','ERIC'); return false;" href="https://eric.ed.gov/?q=financial+AND+ratio+AND+comments&id=ED371147"><span>Introduction to Financial <span class="hlt">Projection</span> <span class="hlt">Models</span>. Business Management Instructional Software.</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Pomeroy, Robert W., III</p> <p></p> <p>This guidebook and teacher's guide accompany a personal computer software program and introduce the key elements of financial <span class="hlt">projection</span> <span class="hlt">modeling</span> to <span class="hlt">project</span> the financial statements of an industrial enterprise. The student will then build a <span class="hlt">model</span> on an electronic spreadsheet. The guidebook teaches the purpose of a financial <span class="hlt">model</span> and the steps…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFM.B52C..05D','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFM.B52C..05D"><span>Climate driven crop planting date in the ACME Land <span class="hlt">Model</span> (ALM): Impacts on productivity and <span class="hlt">yield</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Drewniak, B.</p> <p>2017-12-01</p> <p>Climate is one of the key drivers of crop suitability and productivity in a region. The influence of climate and weather on the growing season determine the amount of time crops spend in each growth phase, which in turn impacts productivity and, more importantly, <span class="hlt">yields</span>. Planting date can have a strong influence on <span class="hlt">yields</span> with earlier planting generally resulting in higher <span class="hlt">yields</span>, a sensitivity that is also present in some crop <span class="hlt">models</span>. Furthermore, planting date is already changing and may continue, especially if longer growing seasons caused by future climate change drive early (or late) planting decisions. Crop <span class="hlt">models</span> need an accurate method to predict plant date to allow these <span class="hlt">models</span> to: 1) capture changes in crop management to adapt to climate change, 2) accurately <span class="hlt">model</span> the timing of crop phenology, and 3) improve crop simulated influences on carbon, nutrient, energy, and water cycles. Previous studies have used climate as a predictor for planting date. Climate as a plant date predictor has more advantages than fixed plant dates. For example, crop expansion and other changes in land use (e.g., due to changing temperature conditions), can be accommodated without additional <span class="hlt">model</span> inputs. As such, a new methodology to implement a predictive planting date based on climate inputs is added to the Accelerated Climate <span class="hlt">Model</span> for Energy (ACME) Land <span class="hlt">Model</span> (ALM). The <span class="hlt">model</span> considers two main sources of climate data important for planting: precipitation and temperature. This method expands the current temperature threshold planting trigger and improves the estimated plant date in ALM. Furthermore, the precipitation metric for planting, which synchronizes the crop growing season with the wettest months, allows tropical crops to be introduced to the <span class="hlt">model</span>. This presentation will demonstrate how the improved <span class="hlt">model</span> enhances the ability of ALM to capture planting date compared with observations. More importantly, the impact of changing the planting date and introducing tropical</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/22490019','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/22490019"><span>Computational <span class="hlt">model</span> of chromosome aberration <span class="hlt">yield</span> induced by high- and low-LET radiation exposures.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Ponomarev, Artem L; George, Kerry; Cucinotta, Francis A</p> <p>2012-06-01</p> <p>We present a computational <span class="hlt">model</span> for calculating the <span class="hlt">yield</span> of radiation-induced chromosomal aberrations in human cells based on a stochastic Monte Carlo approach and calibrated using the relative frequencies and distributions of chromosomal aberrations reported in the literature. A previously developed DNA-fragmentation <span class="hlt">model</span> for high- and low-LET radiation called the NASARadiationTrackImage <span class="hlt">model</span> was enhanced to simulate a stochastic process of the formation of chromosomal aberrations from DNA fragments. The current version of the <span class="hlt">model</span> gives predictions of the <span class="hlt">yields</span> and sizes of translocations, dicentrics, rings, and more complex-type aberrations formed in the G(0)/G(1) cell cycle phase during the first cell division after irradiation. As the <span class="hlt">model</span> can predict smaller-sized deletions and rings (<3 Mbp) that are below the resolution limits of current cytogenetic analysis techniques, we present predictions of hypothesized small deletions that may be produced as a byproduct of properly repaired DNA double-strand breaks (DSB) by nonhomologous end-joining. Additionally, the <span class="hlt">model</span> was used to scale chromosomal exchanges in two or three chromosomes that were obtained from whole-chromosome FISH painting analysis techniques to whole-genome equivalent values.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5533328','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5533328"><span>Spatiotemporal analysis of <span class="hlt">projected</span> impacts of climate change on the major C3 and C4 crop <span class="hlt">yield</span> under representative concentration pathway 4.5: Insight from the coasts of Tamil Nadu, South India</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>A, Ramachandran; Praveen, Dhanya; R, Jaganathan; D, RajaLakshmi; K, Palanivelu</p> <p>2017-01-01</p> <p>India's dependence on a climate sensitive sector like agriculture makes it highly vulnerable to its impacts. However, agriculture is highly heterogeneous across the country owing to regional disparities in exposure, sensitivity, and adaptive capacity. It is essential to know and quantify the possible impacts of changes in climate on crop <span class="hlt">yield</span> for successful agricultural management and planning at a local scale. The Hadley Centre Global Environment <span class="hlt">Model</span> version 2-Earth System (HadGEM-ES) was employed to generate regional climate <span class="hlt">projections</span> for the study area using the Regional Climate <span class="hlt">Model</span> (RCM) RegCM4.4. The dynamics in potential impacts at the sub-district level were evaluated using the Representative Concentration Pathway 4.5 (RCPs). The aim of this study was to simulate the crop <span class="hlt">yield</span> under a plausible change in climate for the coastal areas of South India through the end of this century. The crop simulation <span class="hlt">model</span>, the Decision Support System for Agrotechnology Transfer (DSSAT) 4.5, was used to understand the plausible impacts on the major crop <span class="hlt">yields</span> of rice, groundnuts, and sugarcane under the RCP 4.5 trajectory. The findings reveal that under the RCP 4.5 scenario there will be decreases in the major C3 and C4 crop <span class="hlt">yields</span> in the study area. This would affect not only the local food security, but the livelihood security as well. This necessitates timely planning to achieve sustainable crop productivity and livelihood security. On the other hand, this situation warrants appropriate adaptations and policy intervention at the sub-district level for achieving sustainable crop productivity in the future. PMID:28753605</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.fs.usda.gov/treesearch/pubs/2251','TREESEARCH'); return false;" href="https://www.fs.usda.gov/treesearch/pubs/2251"><span>Testing the accuracy of growth and <span class="hlt">yield</span> <span class="hlt">models</span> for southern hardwood forests</span></a></p> <p><a target="_blank" href="http://www.fs.usda.gov/treesearch/">Treesearch</a></p> <p>H. Michael Rauscher; Michael J. Young; Charles D. Webb; Daniel J. Robison</p> <p>2000-01-01</p> <p>The accuracy of ten growth and <span class="hlt">yield</span> <span class="hlt">models</span> for Southern Appalachian upland hardwood forests and southern bottomland forests was evaluated. In technical applications, accuracy is the composite of both bias (average error) and precision. Results indicate that GHAT, NATPIS, and a locally calibrated version of NETWIGS may be regarded as being operationally valid...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.fs.usda.gov/treesearch/pubs/37511','TREESEARCH'); return false;" href="https://www.fs.usda.gov/treesearch/pubs/37511"><span>Stand-level growth and <span class="hlt">yield</span> component <span class="hlt">models</span> for red oak-sweetgum forests on Mid-South minor stream bottoms</span></a></p> <p><a target="_blank" href="http://www.fs.usda.gov/treesearch/">Treesearch</a></p> <p>Emily B. Schultz; J. Clint Iles; Thomas G. Matney; Andrew W. Ezell; James S. Meadows; Theodor D. Leininger; al. et.</p> <p>2010-01-01</p> <p>Greater emphasis is being placed on Southern bottomland hardwood management, but relatively few growth and <span class="hlt">yield</span> prediction systems exist that are based on sufficient measurements. We present the aggregate stand-level expected <span class="hlt">yield</span> and structural component equations for a red oak (Quercus section Lobatae)-sweetgum (Liquidambar styraciflua L.) growth and <span class="hlt">yield</span> <span class="hlt">model</span>....</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018JOM...tmp..245L','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018JOM...tmp..245L"><span>Influence of <span class="hlt">Yield</span> Stress Determination in Anisotropic Hardening <span class="hlt">Model</span> on Springback Prediction in Dual-Phase Steel</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Lee, J.; Bong, H. J.; Ha, J.; Choi, J.; Barlat, F.; Lee, M.-G.</p> <p>2018-05-01</p> <p>In this study, a numerical sensitivity analysis of the springback prediction was performed using advanced strain hardening <span class="hlt">models</span>. In particular, the springback in U-draw bending for dual-phase 780 steel sheets was investigated while focusing on the effect of the initial <span class="hlt">yield</span> stress determined from the cyclic loading tests. The anisotropic hardening <span class="hlt">models</span> could reproduce the flow stress behavior under the non-proportional loading condition for the considered parametric cases. However, various identification schemes for determining the <span class="hlt">yield</span> stress of the anisotropic hardening <span class="hlt">models</span> significantly influenced the springback prediction. The deviations from the measured springback varied from 4% to 13.5% depending on the identification method.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2012AGUFMGC41B0970T','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2012AGUFMGC41B0970T"><span>Assessment of Climate Change Impacts on Agricultural Water Demands and Crop <span class="hlt">Yields</span> in California's Central Valley</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Tansey, M. K.; Flores-Lopez, F.; Young, C. A.; Huntington, J. L.</p> <p>2012-12-01</p> <p>Long term planning for the management of California's water resources requires assessment of the effects of future climate changes on both water supply and demand. Considerable progress has been made on the evaluation of the effects of future climate changes on water supplies but less information is available with regard to water demands. Uncertainty in future climate <span class="hlt">projections</span> increases the difficulty of assessing climate impacts and evaluating long range adaptation strategies. Compounding the uncertainty in the future climate <span class="hlt">projections</span> is the fact that most readily available downscaled climate <span class="hlt">projections</span> lack sufficient meteorological information to compute evapotranspiration (ET) by the widely accepted ASCE Penman-Monteith (PM) method. This study addresses potential changes in future Central Valley water demands and crop <span class="hlt">yields</span> by examining the effects of climate change on soil evaporation, plant transpiration, growth and <span class="hlt">yield</span> for major types of crops grown in the Central Valley of California. Five representative climate scenarios based on 112 bias corrected spatially downscaled CMIP 3 GCM climate simulations were developed using the hybrid delta ensemble method to span a wide range future climate uncertainty. Analysis of historical California Irrigation Management Information System meteorological data was combined with several meteorological estimation methods to compute future solar radiation, wind speed and dew point temperatures corresponding to the GCM <span class="hlt">projected</span> temperatures and precipitation. Future atmospheric CO2 concentrations corresponding to the 5 representative climate <span class="hlt">projections</span> were developed based on weighting IPCC SRES emissions scenarios. The Land, Atmosphere, and Water Simulator (LAWS) <span class="hlt">model</span> was used to compute ET and <span class="hlt">yield</span> changes in the early, middle and late 21st century for 24 representative agricultural crops grown in the Sacramento, San Joaquin and Tulare Lake basins. Study results indicate that changes in ET and <span class="hlt">yield</span> vary</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_13");'>13</a></li> <li><a href="#" onclick='return showDiv("page_14");'>14</a></li> <li class="active"><span>15</span></li> <li><a href="#" onclick='return showDiv("page_16");'>16</a></li> <li><a href="#" onclick='return showDiv("page_17");'>17</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_15 --> <div id="page_16" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_14");'>14</a></li> <li><a href="#" onclick='return showDiv("page_15");'>15</a></li> <li class="active"><span>16</span></li> <li><a href="#" onclick='return showDiv("page_17");'>17</a></li> <li><a href="#" onclick='return showDiv("page_18");'>18</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="301"> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017EGUGA..1912354C','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017EGUGA..1912354C"><span>Winter wheat <span class="hlt">yield</span> estimation of remote sensing research based on WOFOST crop <span class="hlt">model</span> and leaf area index assimilation</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Chen, Yanling; Gong, Adu; Li, Jing; Wang, Jingmei</p> <p>2017-04-01</p> <p>Accurate crop growth monitoring and <span class="hlt">yield</span> predictive information are significant to improve the sustainable development of agriculture and ensure the security of national food. Remote sensing observation and crop growth simulation <span class="hlt">models</span> are two new technologies, which have highly potential applications in crop growth monitoring and <span class="hlt">yield</span> forecasting in recent years. However, both of them have limitations in mechanism or regional application respectively. Remote sensing information can not reveal crop growth and development, inner mechanism of <span class="hlt">yield</span> formation and the affection of environmental meteorological conditions. Crop growth simulation <span class="hlt">models</span> have difficulties in obtaining data and parameterization from single-point to regional application. In order to make good use of the advantages of these two technologies, the coupling technique of remote sensing information and crop growth simulation <span class="hlt">models</span> has been studied. Filtering and optimizing <span class="hlt">model</span> parameters are key to <span class="hlt">yield</span> estimation by remote sensing and crop <span class="hlt">model</span> based on regional crop assimilation. Winter wheat of GaoCheng was selected as the experiment object in this paper. And then the essential data was collected, such as biochemical data and farmland environmental data and meteorological data about several critical growing periods. Meanwhile, the image of environmental mitigation small satellite HJ-CCD was obtained. In this paper, research work and major conclusions are as follows. (1) Seven vegetation indexes were selected to retrieve LAI, and then linear regression <span class="hlt">model</span> was built up between each of these indexes and the measured LAI. The result shows that the accuracy of EVI <span class="hlt">model</span> was the highest (R2=0.964 at anthesis stage and R2=0.920 at filling stage). Thus, EVI as the most optimal vegetation index to predict LAI in this paper. (2) EFAST method was adopted in this paper to conduct the sensitive analysis to the 26 initial parameters of the WOFOST <span class="hlt">model</span> and then a sensitivity index was constructed</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20180002836','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20180002836"><span>Technology Investments in the NASA Entry Systems <span class="hlt">Modeling</span> <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Barnhardt, Michael; Wright, Michael; Hughes, Monica</p> <p>2017-01-01</p> <p>The Entry Systems <span class="hlt">Modeling</span> (ESM) technology development <span class="hlt">project</span>, initiated in 2012 under NASAs Game Changing Development (GCD) Program, is engaged in maturation of fundamental research developing aerosciences, materials, and integrated systems products for entry, descent, and landing(EDL)technologies [1]. To date, the ESM <span class="hlt">project</span> has published over 200 papers in these areas, comprising the bulk of NASAs research program for EDL <span class="hlt">modeling</span>. This presentation will provide an overview of the <span class="hlt">projects</span> successes and challenges, and an assessment of future investments in EDL <span class="hlt">modeling</span> and simulation relevant to NASAs mission</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=pre+AND+project+AND+CBT&id=EJ611725','ERIC'); return false;" href="https://eric.ed.gov/?q=pre+AND+project+AND+CBT&id=EJ611725"><span>Streamline Your <span class="hlt">Project</span>: A Lifecycle <span class="hlt">Model</span>.</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Viren, John</p> <p>2000-01-01</p> <p>Discusses one approach to <span class="hlt">project</span> organization providing a baseline lifecycle <span class="hlt">model</span> for multimedia/CBT development. This variation of the standard four-phase <span class="hlt">model</span> of Analysis, Design, Development, and Implementation includes a Pre-Analysis phase, called Definition, and a Post-Implementation phase, known as Maintenance. Each phase is described.…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018E%26ES..122a2036A','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018E%26ES..122a2036A"><span>Growth and <span class="hlt">yield</span> <span class="hlt">model</span> for non-timber forest product of kemenyan (Styrax sumatrana J.J. Sm) in Tapanuli, North Sumatra</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Aswandi; Kholibrina, C. R.</p> <p>2018-02-01</p> <p>Kemenyan is Styrax tree resin, the main of non-timber forest product commodity in Lake Toba catchment area, North Sumatra since hundreds years ago. However, there are lack of information about the growth and <span class="hlt">yield</span> prediction for this tree species. The objective of study is to construct the growth and <span class="hlt">yield</span> <span class="hlt">models</span> for Styrax sumatrana in Tapanuli region, North Sumatra. Measurement data from 20 temporary plots were used to formulate stand diameter and height equations, and to <span class="hlt">project</span> the incense production. The highest Current Annual Increment (CAI) of diameter occurs in the stand’s age 21 to 25 years (1.00 cm/year). The growth of diameter declines significantly to 0.48 cm/year in age 46 to 50 years, and decrease to 0.26 cm/year at age 50 years up. The intersection of CAI and MAI curves occur in stand age 31 to 35 years. It shows that the optimal growth occurs in this period. The average of incenses production was 318.59 g/tree/year. The optimum incense production was achieved when the diameter growth was maximal and tapping scars accumulation was limited.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20150021875','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20150021875"><span>ISMIP6: Ice Sheet <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> for CMIP6</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Nowicki, S.</p> <p>2015-01-01</p> <p>ISMIP6 (Ice Sheet <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> for CMIP6) targets the Cryosphere in a Changing Climate and the Future Sea Level Grand Challenges of the WCRP (World Climate Research Program). Primary goal is to provide future sea level contribution from the Greenland and Antarctic ice sheets, along with associated uncertainty. Secondary goal is to investigate feedback due to dynamic ice sheet <span class="hlt">models</span>. Experiment design uses and augment the existing CMIP6 (Coupled <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> Phase 6) DECK (Diagnosis, Evaluation, and Characterization of Klima) experiments. Additonal MIP (<span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span>)- specific experiments will be designed for ISM (Ice Sheet <span class="hlt">Model</span>). Effort builds on the Ice2sea, SeaRISE (Sea-level Response to Ice Sheet Evolution) and COMBINE (Comprehensive <span class="hlt">Modelling</span> of the Earth System for Better Climate Prediction and <span class="hlt">Projection</span>) efforts.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/29732853','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/29732853"><span>[Response of water <span class="hlt">yield</span> function of ecosystem to land use change in Nansi Lake Basin based on CLUE-S <span class="hlt">model</span> and InVEST <span class="hlt">model</span> .</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Guo, Hong Wei; Sun, Xiao Yin; Lian, Li Shu; Zhang, Da Zhi; Xu, Yan</p> <p>2016-09-01</p> <p>Land use change has an important role in hydrological processes and utilization of water resources, and is the main driving force of water <span class="hlt">yield</span> function of ecosystem. This paper analyzed the change of land use from 1990 to 2013 in Nansi Lake Basin, Shandong Province. The future land use in 2030 was also predicted and simulated by CLUE-S <span class="hlt">model</span>. Based on land use scenarios, we analyzed the influence of land use change on ecosystem function of water <span class="hlt">yield</span> in nearly 25 years through InVEST water <span class="hlt">yield</span> <span class="hlt">model</span> and spatial mapping. The results showed that the area of construction land increased by 3.5% in 2013 because of burgeoning urbanization process, but farmland area decreased by 2.4% which was conversed to construction land mostly. The simulated result of InVEST <span class="hlt">model</span> suggested that water <span class="hlt">yield</span> level of whole basin decreased firstly and increased subsequently during last 25 years and peaked at 232.1 mm in 2013. The construction land area would increase by 6.7% in 2030 based on the land use scenarios of fast urbanization, which would lead to a remarkable growth for water <span class="hlt">yield</span> and risk of flowing flooding. However, the water <span class="hlt">yield</span> level of whole basin would decrease by 1.2 % in 2013 if 300 meter-wide forest buffer strips around Nansi Lake were built up.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2000PhDT.......218G','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2000PhDT.......218G"><span>Assessing disease stress and <span class="hlt">modeling</span> <span class="hlt">yield</span> losses in alfalfa</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Guan, Jie</p> <p></p> <p> weight, percentage reflectance (810 nm), and green leaf area index (GLAI). Percentage reflectance (810 nm) assessments had a stronger relationship with dry weight and green leaf area index than percentage defoliation assessments. Our research conclusively demonstrates that percentage reflectance measurements can be used to nondestructively assess green leaf area index which is a direct measure of plant health and an indirect measure of productivity. This research conclusively demonstrates that remote sensing is superior to visual assessment method to assess alfalfa stress and to <span class="hlt">model</span> <span class="hlt">yield</span> and GLAI in the alfalfa foliar disease pathosystem.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015GMDD....8.4545F','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015GMDD....8.4545F"><span>A sub-canopy structure for simulating oil palm in the Community Land <span class="hlt">Model</span>: phenology, allocation and <span class="hlt">yield</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Fan, Y.; Roupsard, O.; Bernoux, M.; Le Maire, G.; Panferov, O.; Kotowska, M. M.; Knohl, A.</p> <p>2015-06-01</p> <p>Land surface <span class="hlt">modelling</span> has been widely used to characterize the two-way interactions between climate and human activities in terrestrial ecosystems such as deforestation, agricultural expansion, and urbanization. Towards an effort to quantify the effects of forests to oil palm conversion occurring in the tropics on land-atmosphere carbon, water and energy fluxes, we introduce a new perennial crop plant functional type (PFT) for oil palm. Due to the modular and sequential nature of oil palm growth (around 40 stacked phytomers) and <span class="hlt">yield</span> (fruit bunches axillated on each phytomer), we developed a specific sub-canopy structure for simulating palm's growth and <span class="hlt">yield</span> within the framework of the Community Land <span class="hlt">Model</span> (CLM4.5). In this structure each phytomer has its own prognostic leaf growth and fruit <span class="hlt">yield</span> capacity like a PFT but with shared stem and root components among all phytomers. Phenology and carbon and nitrogen allocation operate on the different phytomers in parallel but at unsynchronized steps, so that multiple fruit <span class="hlt">yields</span> per annum are enabled in terms of carbon and nitrogen outputs. An important phenological phase is identified for the palm PFT - the storage growth period of bud and "spear" leaves which are photosynthetically inactive before expansion. Agricultural practices such as transplanting, fertilization, and leaf pruning are represented. Parameters introduced for the new PFT were calibrated and validated with field measurements of leaf area index (LAI) and <span class="hlt">yield</span> from Sumatra, Indonesia. In calibration with a mature oil palm plantation, the cumulative <span class="hlt">yields</span> from 2005 to 2014 matched perfectly between simulation and observation (mean percentage error = 4 %). Simulated inter-annual dynamics of PFT-level and phytomer-level LAI were both within the range of field measurements. Validation from eight independent oil palm sites shows the ability of the <span class="hlt">model</span> to adequately predict the average leaf growth and fruit <span class="hlt">yield</span> across sites but also indicates that</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015AGUFM.H52B..03G','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015AGUFM.H52B..03G"><span><span class="hlt">Yielding</span> physically-interpretable emulators - A Sparse PCA approach</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Galelli, S.; Alsahaf, A.; Giuliani, M.; Castelletti, A.</p> <p>2015-12-01</p> <p><span class="hlt">Projection</span>-based techniques, such as Principal Orthogonal Decomposition (POD), are a common approach to surrogate high-fidelity process-based <span class="hlt">models</span> by lower order dynamic emulators. With POD, the dimensionality reduction is achieved by using observations, or 'snapshots' - generated with the high-fidelity <span class="hlt">model</span> -, to <span class="hlt">project</span> the entire set of input and state variables of this <span class="hlt">model</span> onto a smaller set of basis functions that account for most of the variability in the data. While reduction efficiency and variance control of POD techniques are usually very high, the resulting emulators are structurally highly complex and can hardly be given a physically meaningful interpretation as each basis is a <span class="hlt">projection</span> of the entire set of inputs and states. In this work, we propose a novel approach based on Sparse Principal Component Analysis (SPCA) that combines the several assets of POD methods with the potential for ex-post interpretation of the emulator structure. SPCA reduces the number of non-zero coefficients in the basis functions by identifying a sparse matrix of coefficients. While the resulting set of basis functions may retain less variance of the snapshots, the presence of a few non-zero coefficients assists in the interpretation of the underlying physical processes. The SPCA approach is tested on the reduction of a 1D hydro-ecological <span class="hlt">model</span> (DYRESM-CAEDYM) used to describe the main ecological and hydrodynamic processes in Tono Dam, Japan. An experimental comparison against a standard POD approach shows that SPCA achieves the same accuracy in emulating a given output variable - for the same level of dimensionality reduction - while <span class="hlt">yielding</span> better insights of the main process dynamics.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/19900013757','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/19900013757"><span>Component <span class="hlt">model</span> reduction via the <span class="hlt">projection</span> and assembly method</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Bernard, Douglas E.</p> <p>1989-01-01</p> <p>The problem of acquiring a simple but sufficiently accurate <span class="hlt">model</span> of a dynamic system is made more difficult when the dynamic system of interest is a multibody system comprised of several components. A low order system <span class="hlt">model</span> may be created by reducing the order of the component <span class="hlt">models</span> and making use of various available multibody dynamics programs to assemble them into a system <span class="hlt">model</span>. The difficulty is in choosing the reduced order component <span class="hlt">models</span> to meet system level requirements. The <span class="hlt">projection</span> and assembly method, proposed originally by Eke, solves this difficulty by forming the full order system <span class="hlt">model</span>, performing <span class="hlt">model</span> reduction at the the system level using system level requirements, and then <span class="hlt">projecting</span> the desired modes onto the components for component level <span class="hlt">model</span> reduction. The <span class="hlt">projection</span> and assembly method is analyzed to show the conditions under which the desired modes are captured exactly; to the numerical precision of the algorithm.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2014PhDT........21A','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2014PhDT........21A"><span>Analytic <span class="hlt">model</span> to estimate thermonuclear neutron <span class="hlt">yield</span> in z-pinches using the magnetic Noh problem</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Allen, Robert C.</p> <p></p> <p>The objective was to build a <span class="hlt">model</span> which could be used to estimate neutron <span class="hlt">yield</span> in pulsed z-pinch experiments, benchmark future z-pinch simulation tools and to assist scaling for breakeven systems. To accomplish this, a recent solution to the magnetic Noh problem was utilized which incorporates a self-similar solution with cylindrical symmetry and azimuthal magnetic field (Velikovich, 2012). The self-similar solution provides the conditions needed to calculate the time dependent implosion dynamics from which batch burn is assumed and used to calculate neutron <span class="hlt">yield</span>. The solution to the <span class="hlt">model</span> is presented. The ion densities and time scales fix the initial mass and implosion velocity, providing estimates of the experimental results given specific initial conditions. Agreement is shown with experimental data (Coverdale, 2007). A parameter sweep was done to find the neutron <span class="hlt">yield</span>, implosion velocity and gain for a range of densities and time scales for DD reactions and a curve fit was done to predict the scaling as a function of preshock conditions.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.fs.usda.gov/treesearch/pubs/934','TREESEARCH'); return false;" href="https://www.fs.usda.gov/treesearch/pubs/934"><span>Growth and <span class="hlt">Yield</span> Predictions for Thinned and Unthinned Slash Pine Plantations on Cutover Sites in the West Gulf Region</span></a></p> <p><a target="_blank" href="http://www.fs.usda.gov/treesearch/">Treesearch</a></p> <p>Stanley J. Zarnoch; Donald P. Feduccia; V. Clark Baldwin; Tommy R. Dell</p> <p>1991-01-01</p> <p>A-growth and <span class="hlt">yield</span> <span class="hlt">model</span> has been developed for slash pine plantations on problem-free cutover sites in the west gulf region. The <span class="hlt">model</span> was based on the moment-percentile method using the Weibull distribution for tree diameters. This technique was applied to untbinned and thinned stand <span class="hlt">projections</span> and, subsequently, to the prediction of residual stands immediately...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/25681775','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/25681775"><span>Identifying critical nitrogen application rate for maize <span class="hlt">yield</span> and nitrate leaching in a Haplic Luvisol soil using the DNDC <span class="hlt">model</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Zhang, Yitao; Wang, Hongyuan; Liu, Shen; Lei, Qiuliang; Liu, Jian; He, Jianqiang; Zhai, Limei; Ren, Tianzhi; Liu, Hongbin</p> <p>2015-05-01</p> <p>Identification of critical nitrogen (N) application rate can provide management supports for ensuring grain <span class="hlt">yield</span> and reducing amount of nitrate leaching to ground water. A five-year (2008-2012) field lysimeter (1 m × 2 m × 1.2 m) experiment with three N treatments (0, 180 and 240 kg Nha(-1)) was conducted to quantify maize <span class="hlt">yields</span> and amount of nitrate leaching from a Haplic Luvisol soil in the North China Plain. The experimental data were used to calibrate and validate the process-based <span class="hlt">model</span> of Denitrification-Decomposition (DNDC). After this, the <span class="hlt">model</span> was used to simulate maize <span class="hlt">yield</span> production and amount of nitrate leaching under a series of N application rates and to identify critical N application rate based on acceptable <span class="hlt">yield</span> and amount of nitrate leaching for this cropping system. The results of <span class="hlt">model</span> calibration and validation indicated that the <span class="hlt">model</span> could correctly simulate maize <span class="hlt">yield</span> and amount of nitrate leaching, with satisfactory values of RMSE-observation standard deviation ratio, <span class="hlt">model</span> efficiency and determination coefficient. The <span class="hlt">model</span> simulations confirmed the measurements that N application increased maize <span class="hlt">yield</span> compared with the control, but the high N rate (240 kg Nha(-1)) did not produce more <span class="hlt">yield</span> than the low one (120 kg Nha(-1)), and that the amount of nitrate leaching increased with increasing N application rate. The simulation results suggested that the optimal N application rate was in a range between 150 and 240 kg ha(-1), which would keep the amount of nitrate leaching below 18.4 kg NO₃(-)-Nha(-1) and meanwhile maintain acceptable maize <span class="hlt">yield</span> above 9410 kg ha(-1). Furthermore, 180 kg Nha(-1) produced the highest <span class="hlt">yields</span> (9837 kg ha(-1)) and comparatively lower amount of nitrate leaching (10.0 kg NO₃(-)-Nha(-1)). This study will provide a valuable reference for determining optimal N application rate (or range) in other crop systems and regions in China. Copyright © 2015 Elsevier B.V. All rights reserved.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=crosstalk&pg=4&id=ED286068','ERIC'); return false;" href="https://eric.ed.gov/?q=crosstalk&pg=4&id=ED286068"><span>Workplace Literacy. Essays from the <span class="hlt">Model</span> Literacy <span class="hlt">Project</span>.</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Holzman, Michael, Ed.; Connolly, Olga, Ed.</p> <p></p> <p>The 20 essays in this collection are based on a <span class="hlt">project</span> undertaken by the California Conservation Corps (CCC) and the <span class="hlt">Model</span> Literacy <span class="hlt">Project</span> in 1983-85. (The goal of the <span class="hlt">project</span> was to institute changes within the CCC to enhance the literacy of corpsmembers.) Essays describe innovative approaches to literacy education, analyze bureaucratic…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.fs.usda.gov/treesearch/pubs/27462','TREESEARCH'); return false;" href="https://www.fs.usda.gov/treesearch/pubs/27462"><span>Growth and <span class="hlt">yield</span> in Eucalyptus globulus</span></a></p> <p><a target="_blank" href="http://www.fs.usda.gov/treesearch/">Treesearch</a></p> <p>James A. Rinehart; Richard B. Standiford</p> <p>1983-01-01</p> <p>A study of the major Eucalyptus globulus stands throughout California conducted by Woodbridge Metcalf in 1924 provides a complete and accurate data set for generating variable site-density <span class="hlt">yield</span> <span class="hlt">models</span>. Two <span class="hlt">models</span> were developed using linear regression techniques. <span class="hlt">Model</span> I depicts a linear relationship between age and <span class="hlt">yield</span> best used for stands between five and fifteen...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=distance+AND+learning+AND+public+AND+health&pg=5&id=ED394506','ERIC'); return false;" href="https://eric.ed.gov/?q=distance+AND+learning+AND+public+AND+health&pg=5&id=ED394506"><span>Star Schools <span class="hlt">Projects</span>: Distance Learning <span class="hlt">Model</span> Practices.</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Lane, Carla; Cassidy, Sheila</p> <p></p> <p>This document describes <span class="hlt">model</span> practices of the Star Schools Program, whose purpose is to provide quality, cost-effective instruction and training through distance education technologies. Benefits which have resulted from the Star Schools <span class="hlt">Projects</span> for local staff, teachers, and parents are identified. The TEAMS <span class="hlt">Project</span> focuses on a Three-Tier…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2004AIPC..712.1645A','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2004AIPC..712.1645A"><span>An advanced constitutive <span class="hlt">model</span> in the sheet metal forming simulation: the Teodosiu microstructural <span class="hlt">model</span> and the Cazacu Barlat <span class="hlt">yield</span> criterion</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Alves, J. L.; Oliveira, M. C.; Menezes, L. F.</p> <p>2004-06-01</p> <p>Two constitutive <span class="hlt">models</span> used to describe the plastic behavior of sheet metals in the numerical simulation of sheet metal forming process are studied: a recently proposed advanced constitutive <span class="hlt">model</span> based on the Teodosiu microstructural <span class="hlt">model</span> and the Cazacu Barlat <span class="hlt">yield</span> criterion is compared with a more classical one, based on the Swift law and the Hill 1948 <span class="hlt">yield</span> criterion. These constitutive <span class="hlt">models</span> are implemented into DD3IMP, a finite element home code specifically developed to simulate sheet metal forming processes, which generically is a 3-D elastoplastic finite element code with an updated Lagrangian formulation, following a fully implicit time integration scheme, large elastoplastic strains and rotations. Solid finite elements and parametric surfaces are used to <span class="hlt">model</span> the blank sheet and tool surfaces, respectively. Some details of the numerical implementation of the constitutive <span class="hlt">models</span> are given. Finally, the theory is illustrated with the numerical simulation of the deep drawing of a cylindrical cup. The results show that the proposed advanced constitutive <span class="hlt">model</span> predicts with more exactness the final shape (medium height and ears profile) of the formed part, as one can conclude from the comparison with the experimental results.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://rosap.ntl.bts.gov/view/dot/5669','DOTNTL'); return false;" href="https://rosap.ntl.bts.gov/view/dot/5669"><span>Development of frontage road <span class="hlt">yield</span> treatment analysis tool (FRYTAT) database software.</span></a></p> <p><a target="_blank" href="http://ntlsearch.bts.gov/tris/index.do">DOT National Transportation Integrated Search</a></p> <p></p> <p>2009-03-01</p> <p>The Texas Department of Transportation (TxDOT) sponsored <span class="hlt">Project</span> 0-4986, An Assessment of Frontage Road : <span class="hlt">Yield</span> Treatments, to assess the effectiveness of a wide variety of frontage roadexit ramp and frontage roadU-turn : <span class="hlt">yield</span> treatments...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=mips&pg=2&id=EJ385791','ERIC'); return false;" href="https://eric.ed.gov/?q=mips&pg=2&id=EJ385791"><span>Microcomputer Infusion <span class="hlt">Project</span>: A <span class="hlt">Model</span>.</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Rossberg, Stephen A.; Bitter, Gary G.</p> <p>1988-01-01</p> <p>Describes the Microcomputer Infusion <span class="hlt">Project</span> (MIP), which was developed at Arizona State University to provide faculty with the necessary hardware, software, and training to become <span class="hlt">models</span> of computer use in both lesson development and presentation for preservice teacher education students. Topics discussed include word processing; database…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/19830006294','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/19830006294"><span>Comparison of the CEAS and Williams-type barley <span class="hlt">yield</span> <span class="hlt">models</span> for North Dakota and Minnesota</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Leduc, S. (Principal Investigator)</p> <p>1982-01-01</p> <p>The CEAS and Williams type <span class="hlt">models</span> were compared based on specified selection criteria which includes a ten year bootstrap test (1970-1979). Based on this, the <span class="hlt">models</span> were quite comparable; however, the CEAS <span class="hlt">model</span> was slightly better overall. The Williams type <span class="hlt">model</span> seemed better for the 1974 estimates. Because that year spring wheat <span class="hlt">yield</span> was particularly low, the Williams type <span class="hlt">model</span> should not be excluded from further consideration.</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_14");'>14</a></li> <li><a href="#" onclick='return showDiv("page_15");'>15</a></li> <li class="active"><span>16</span></li> <li><a href="#" onclick='return showDiv("page_17");'>17</a></li> <li><a href="#" onclick='return showDiv("page_18");'>18</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_16 --> <div id="page_17" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_15");'>15</a></li> <li><a href="#" onclick='return showDiv("page_16");'>16</a></li> <li class="active"><span>17</span></li> <li><a href="#" onclick='return showDiv("page_18");'>18</a></li> <li><a href="#" onclick='return showDiv("page_19");'>19</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="321"> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018ApSS..444..780C','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018ApSS..444..780C"><span>Effect of nanoconfinement on the sputter <span class="hlt">yield</span> in ultrathin polymeric films: Experiments and <span class="hlt">model</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Cristaudo, Vanina; Poleunis, Claude; Delcorte, Arnaud</p> <p>2018-06-01</p> <p>This fundamental contribution on secondary ion mass spectrometry (SIMS) polymer depth-profiling by large argon clusters investigates the dependence of the sputter <span class="hlt">yield</span> volume (Y) on the thickness (d) of ultrathin films as a function of the substrate nature, i.e. hard vs soft. For this purpose, thin films of polystyrene (PS) oligomers (∼4,000 amu) are spin-coated, respectively, onto silicon and poly (methyl methacrylate) supports and, then, bombarded by 10 keV Ar3000+ ions. The investigated thickness ranges from 15 to 230 nm. Additionally, the influence of the polymer molecular weight on Y(d) for PS thin films on Si is explored. The sputtering efficiency is found to be strongly dependent on the overlayer thickness, only in the case of the silicon substrate. A simple phenomenological <span class="hlt">model</span> is proposed for the description of the thickness influence on the sputtering <span class="hlt">yield</span>. Molecular dynamics (MD) simulations conducted on amorphous films of polyethylene-like oligomers of increasing thickness (from 2 to 20 nm), under comparable cluster bombardment conditions, predict a significant increase of the sputtering <span class="hlt">yield</span> for ultrathin layers on hard substrates, induced by energy confinement in the polymer, and support our phenomenological <span class="hlt">model</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/27251794','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/27251794"><span>Do maize <span class="hlt">models</span> capture the impacts of heat and drought stresses on <span class="hlt">yield</span>? Using algorithm ensembles to identify successful approaches.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Jin, Zhenong; Zhuang, Qianlai; Tan, Zeli; Dukes, Jeffrey S; Zheng, Bangyou; Melillo, Jerry M</p> <p>2016-09-01</p> <p>Stresses from heat and drought are expected to increasingly suppress crop <span class="hlt">yields</span>, but the degree to which current <span class="hlt">models</span> can represent these effects is uncertain. Here we evaluate the algorithms that determine impacts of heat and drought stress on maize in 16 major maize <span class="hlt">models</span> by incorporating these algorithms into a standard <span class="hlt">model</span>, the Agricultural Production Systems sIMulator (APSIM), and running an ensemble of simulations. Although both daily mean temperature and daylight temperature are common choice of forcing heat stress algorithms, current parameterizations in most <span class="hlt">models</span> favor the use of daylight temperature even though the algorithm was designed for daily mean temperature. Different drought algorithms (i.e., a function of soil water content, of soil water supply to demand ratio, and of actual to potential transpiration ratio) simulated considerably different patterns of water shortage over the growing season, but nonetheless predicted similar decreases in annual <span class="hlt">yield</span>. Using the selected combination of algorithms, our simulations show that maize <span class="hlt">yield</span> reduction was more sensitive to drought stress than to heat stress for the US Midwest since the 1980s, and this pattern will continue under future scenarios; the influence of excessive heat will become increasingly prominent by the late 21st century. Our review of algorithms in 16 crop <span class="hlt">models</span> suggests that the impacts of heat and drought stress on plant <span class="hlt">yield</span> can be best described by crop <span class="hlt">models</span> that: (i) incorporate event-based descriptions of heat and drought stress, (ii) consider the effects of nighttime warming, and (iii) coordinate the interactions among multiple stresses. Our study identifies the proficiency with which different <span class="hlt">model</span> formulations capture the impacts of heat and drought stress on maize biomass and <span class="hlt">yield</span> production. The framework presented here can be applied to other <span class="hlt">modeled</span> processes and used to improve <span class="hlt">yield</span> predictions of other crops with a wide variety of crop <span class="hlt">models</span>. © 2016 John</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016ESASP.739E.110S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016ESASP.739E.110S"><span>Comparison Between the Use of SAR and Optical Data for Wheat <span class="hlt">Yield</span> Estimations Using Crop <span class="hlt">Model</span> Assimilation</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Silvestro, Paolo Cosmo; Yang, Hao; Jin, X. L.; Yang, Guijun; Casa, Raffaele; Pignatti, Stefano</p> <p>2016-08-01</p> <p>The ultimate aim of this work is to develop methods for the assimilation of the biophysical variables estimated by remote sensing in a suitable crop growth <span class="hlt">model</span>. Two strategies were followed, one based on the use of Leaf Area Index (LAI) estimated by optical data, and the other based on the use of biomass estimated by SAR. The first one estimates LAI from the reflectance measured by the optical sensors on board of HJ1A, HJ1B and Landsat, using a method based on the training of artificial neural networks (ANN) with PROSAIL <span class="hlt">model</span> simulations. The retrieved LAI is used to improve wheat <span class="hlt">yield</span> estimation, using assimilation methods based on the Ensemble Kalman Filter, which assimilate the biophysical variables into growth crop <span class="hlt">model</span>. The second strategy estimates biomass from SAR imagery. Polarimetric decomposition methods were used based on multi-temporal fully polarimetric Radarsat-2 data during the entire growing season. The estimated biomass was assimilating to FAO Aqua crop <span class="hlt">model</span> for improving the winter wheat <span class="hlt">yield</span> estimation, with the Particle Swarm Optimization (PSO) method. These procedures were used in a spatial application with data collected in the rural area of Yangling (Shaanxi Province) in 2014 and were validated for a number of wheat fields for which ground <span class="hlt">yield</span> data had been recorded and according to statistical <span class="hlt">yield</span> data for the area.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20100040507','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20100040507"><span>The Lunar Mapping and <span class="hlt">Modeling</span> <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Nall, M.; French, R.; Noble, S.; Muery, K.</p> <p>2010-01-01</p> <p>The Lunar Mapping and <span class="hlt">Modeling</span> <span class="hlt">Project</span> (LMMP) is managing a suite of lunar mapping and <span class="hlt">modeling</span> tools and data products that support lunar exploration activities, including the planning, de-sign, development, test, and operations associated with crewed and/or robotic operations on the lunar surface. Although the <span class="hlt">project</span> was initiated primarily to serve the needs of the Constellation program, it is equally suited for supporting landing site selection and planning for a variety of robotic missions, including NASA science and/or human precursor missions and commercial missions such as those planned by the Google Lunar X-Prize participants. In addition, LMMP should prove to be a convenient and useful tool for scientific analysis and for education and public out-reach (E/PO) activities.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC31G..08S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC31G..08S"><span>Benefits of seasonal forecasts of crop <span class="hlt">yields</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Sakurai, G.; Okada, M.; Nishimori, M.; Yokozawa, M.</p> <p>2017-12-01</p> <p>Major factors behind recent fluctuations in food prices include increased biofuel production and oil price fluctuations. In addition, several extreme climate events that reduced worldwide food production coincided with upward spikes in food prices. The stabilization of crop <span class="hlt">yields</span> is one of the most important tasks to stabilize food prices and thereby enhance food security. Recent development of technologies related to crop <span class="hlt">modeling</span> and seasonal weather forecasting has made it possible to forecast future crop <span class="hlt">yields</span> for maize and soybean. However, the effective use of these technologies remains limited. Here we present the potential benefits of seasonal crop-<span class="hlt">yield</span> forecasts on a global scale for choice of planting day. For this purpose, we used a <span class="hlt">model</span> (PRYSBI-2) that can well replicate past crop <span class="hlt">yields</span> both for maize and soybean. This <span class="hlt">model</span> system uses a Bayesian statistical approach to estimate the parameters of a basic process-based <span class="hlt">model</span> of crop growth. The spatial variability of <span class="hlt">model</span> parameters was considered by estimating the posterior distribution of the parameters from historical <span class="hlt">yield</span> data by using the Markov-chain Monte Carlo (MCMC) method with a resolution of 1.125° × 1.125°. The posterior distributions of <span class="hlt">model</span> parameters were estimated for each spatial grid with 30 000 MCMC steps of 10 chains each. By using this <span class="hlt">model</span> and the estimated parameter distributions, we were able to estimate not only crop <span class="hlt">yield</span> but also levels of associated uncertainty. We found that the global average crop <span class="hlt">yield</span> increased about 30% as the result of the optimal selection of planting day and that the seasonal forecast of crop <span class="hlt">yield</span> had a large benefit in and near the eastern part of Brazil and India for maize and the northern area of China for soybean. In these countries, the effects of El Niño and Indian Ocean dipole are large. The results highlight the importance of developing a system to forecast global crop <span class="hlt">yields</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=models+AND+Innovation+AND+interactive&pg=3&id=EJ973623','ERIC'); return false;" href="https://eric.ed.gov/?q=models+AND+Innovation+AND+interactive&pg=3&id=EJ973623"><span><span class="hlt">Modelling</span> in Evaluating a Working Life <span class="hlt">Project</span> in Higher Education</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Sarja, Anneli; Janhonen, Sirpa; Havukainen, Pirjo; Vesterinen, Anne</p> <p>2012-01-01</p> <p>This article describes an evaluation method based on collaboration between the higher education, a care home and university, in a R&D <span class="hlt">project</span>. The aim of the <span class="hlt">project</span> was to elaborate <span class="hlt">modelling</span> as a tool of developmental evaluation for innovation and competence in <span class="hlt">project</span> cooperation. The approach was based on activity theory. <span class="hlt">Modelling</span> enabled a…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20150020884','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20150020884"><span>Criteria for <span class="hlt">Yielding</span> of Dispersion-Strengthened Alloys</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Ansell, G. S.; Lenel, F. V.</p> <p>1960-01-01</p> <p>A dislocation <span class="hlt">model</span> is presented in order to account for the <span class="hlt">yield</span> behavior of alloys with a finely dispersed second-phase. The criteria for <span class="hlt">yielding</span> used in the <span class="hlt">model</span>, is that appreciable <span class="hlt">yielding</span> occurs in these alloys when the shear stress due to piled-up groups of dislocations is sufficient to fracture or plastically deform the dispersed second-phase particles, relieving the back stress on the dislocation sources. Equations derived on the basis of this <span class="hlt">model</span>, predict that the <span class="hlt">yield</span> stress of the alloys varies as the reciprocal square root of the mean free path between dispersed particles. Experimental data is presented for several SAP-Type alloys, precipitation-hardened alloys and steels which are in good agreement with the <span class="hlt">yield</span> strength variation as a function of dispersion spacing predicted by this theoretical treatment.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2013AGUFMGC41B1010H','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2013AGUFMGC41B1010H"><span>ISI-MIP: The Inter-Sectoral Impact <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Huber, V.; Dahlemann, S.; Frieler, K.; Piontek, F.; Schewe, J.; Serdeczny, O.; Warszawski, L.</p> <p>2013-12-01</p> <p>The Inter-Sectoral Impact <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (ISI-MIP) aims to synthesize the state-of-the-art knowledge of climate change impacts at different levels of global warming. The <span class="hlt">project</span>'s experimental design is formulated to distinguish the uncertainty introduced by the impact <span class="hlt">models</span> themselves, from the inherent uncertainty in the climate <span class="hlt">projections</span> and the variety of plausible socio-economic futures. The unique cross-sectoral scope of the <span class="hlt">project</span> provides the opportunity to study cascading effects of impacts in interacting sectors and to identify regional 'hot spots' where multiple sectors experience extreme impacts. Another emphasis lies on the development of novel metrics to describe societal impacts of a warmer climate. We briefly outline the methodological framework, and then present selected results of the first, fast-tracked phase of ISI-MIP. The fast track brought together 35 global impact <span class="hlt">models</span> internationally, spanning five sectors across human society and the natural world (agriculture, water, natural ecosystems, health and coastal infrastructure), and using the latest generation of global climate simulations (RCP <span class="hlt">projections</span> from the CMIP5 archive) and socioeconomic drivers provided within the SSP process. We also introduce the second phase of the <span class="hlt">project</span>, which will enlarge the scope of ISI-MIP by encompassing further impact sectors (e.g., forestry, fisheries, permafrost) and regional <span class="hlt">modeling</span> approaches. The focus for the next round of simulations will be the validation and improvement of <span class="hlt">models</span> based on historical observations and the analysis of variability and extreme events. Last but not least, we discuss the longer-term objective of ISI-MIP to initiate a coordinated, ongoing impact assessment process, driven by the entire impact community and in parallel with well-established climate <span class="hlt">model</span> intercomparisons (CMIP).</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4236125','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4236125"><span>Bayesian Inference of Baseline Fertility and Treatment Effects via a Crop <span class="hlt">Yield</span>-Fertility <span class="hlt">Model</span></span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Chen, Hungyen; Yamagishi, Junko; Kishino, Hirohisa</p> <p>2014-01-01</p> <p>To effectively manage soil fertility, knowledge is needed of how a crop uses nutrients from fertilizer applied to the soil. Soil quality is a combination of biological, chemical and physical properties and is hard to assess directly because of collective and multiple functional effects. In this paper, we focus on the application of these concepts to agriculture. We define the baseline fertility of soil as the level of fertility that a crop can acquire for growth from the soil. With this strict definition, we propose a new crop <span class="hlt">yield</span>-fertility <span class="hlt">model</span> that enables quantification of the process of improving baseline fertility and the effects of treatments solely from the time series of crop <span class="hlt">yields</span>. The <span class="hlt">model</span> was modified from Michaelis-Menten kinetics and measured the additional effects of the treatments given the baseline fertility. Using more than 30 years of experimental data, we used the Bayesian framework to estimate the improvements in baseline fertility and the effects of fertilizer and farmyard manure (FYM) on maize (Zea mays), barley (Hordeum vulgare), and soybean (Glycine max) <span class="hlt">yields</span>. Fertilizer contributed the most to the barley <span class="hlt">yield</span> and FYM contributed the most to the soybean <span class="hlt">yield</span> among the three crops. The baseline fertility of the subsurface soil was very low for maize and barley prior to fertilization. In contrast, the baseline fertility in this soil approximated half-saturated fertility for the soybean crop. The long-term soil fertility was increased by adding FYM, but the effect of FYM addition was reduced by the addition of fertilizer. Our results provide evidence that long-term soil fertility under continuous farming was maintained, or increased, by the application of natural nutrients compared with the application of synthetic fertilizer. PMID:25405353</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2006PhDT.......164G','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2006PhDT.......164G"><span><span class="hlt">Model</span> and controller reduction of large-scale structures based on <span class="hlt">projection</span> methods</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Gildin, Eduardo</p> <p></p> <p>The design of low-order controllers for high-order plants is a challenging problem theoretically as well as from a computational point of view. Frequently, robust controller design techniques result in high-order controllers. It is then interesting to achieve reduced-order <span class="hlt">models</span> and controllers while maintaining robustness properties. Controller designed for large structures based on <span class="hlt">models</span> obtained by finite element techniques <span class="hlt">yield</span> large state-space dimensions. In this case, problems related to storage, accuracy and computational speed may arise. Thus, <span class="hlt">model</span> reduction methods capable of addressing controller reduction problems are of primary importance to allow the practical applicability of advanced controller design methods for high-order systems. A challenging large-scale control problem that has emerged recently is the protection of civil structures, such as high-rise buildings and long-span bridges, from dynamic loadings such as earthquakes, high wind, heavy traffic, and deliberate attacks. Even though significant effort has been spent in the application of control theory to the design of civil structures in order increase their safety and reliability, several challenging issues are open problems for real-time implementation. This dissertation addresses with the development of methodologies for controller reduction for real-time implementation in seismic protection of civil structures using <span class="hlt">projection</span> methods. Three classes of schemes are analyzed for <span class="hlt">model</span> and controller reduction: nodal truncation, singular value decomposition methods and Krylov-based methods. A family of benchmark problems for structural control are used as a framework for a comparative study of <span class="hlt">model</span> and controller reduction techniques. It is shown that classical <span class="hlt">model</span> and controller reduction techniques, such as balanced truncation, modal truncation and moment matching by Krylov techniques, <span class="hlt">yield</span> reduced-order controllers that do not guarantee stability of the closed-loop system, that</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFM.H23M..04T','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFM.H23M..04T"><span><span class="hlt">Modeling</span> sediment <span class="hlt">yield</span> in small catchments at event scale: <span class="hlt">Model</span> comparison, development and evaluation</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Tan, Z.; Leung, L. R.; Li, H. Y.; Tesfa, T. K.</p> <p>2017-12-01</p> <p>Sediment <span class="hlt">yield</span> (SY) has significant impacts on river biogeochemistry and aquatic ecosystems but it is rarely represented in Earth System <span class="hlt">Models</span> (ESMs). Existing SY <span class="hlt">models</span> focus on estimating SY from large river basins or individual catchments so it is not clear how well they simulate SY in ESMs at larger spatial scales and globally. In this study, we compare the strengths and weaknesses of eight well-known SY <span class="hlt">models</span> in simulating annual mean SY at about 400 small catchments ranging in size from 0.22 to 200 km2 in the US, Canada and Puerto Rico. In addition, we also investigate the performance of these <span class="hlt">models</span> in simulating event-scale SY at six catchments in the US using high-quality hydrological inputs. The <span class="hlt">model</span> comparison shows that none of the <span class="hlt">models</span> can reproduce the SY at large spatial scales but the Morgan <span class="hlt">model</span> performs the better than others despite its simplicity. In all <span class="hlt">model</span> simulations, large underestimates occur in catchments with very high SY. A possible pathway to reduce the discrepancies is to incorporate sediment detachment by landsliding, which is currently not included in the <span class="hlt">models</span> being evaluated. We propose a new SY <span class="hlt">model</span> that is based on the Morgan <span class="hlt">model</span> but including a landsliding soil detachment scheme that is being developed. Along with the results of the <span class="hlt">model</span> comparison and evaluation, preliminary findings from the revised Morgan <span class="hlt">model</span> will be presented.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/22029936-yields-cc-bar-yields-gamma-gamma-yields-bb-bar-yields-gamma-gamma-triangle-diagrams-yields-gamma-psi-yields-gamma-decays','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/22029936-yields-cc-bar-yields-gamma-gamma-yields-bb-bar-yields-gamma-gamma-triangle-diagrams-yields-gamma-psi-yields-gamma-decays"><span>The Z {<span class="hlt">yields</span>} cc-bar {<span class="hlt">yields</span>} {gamma}{gamma}*, Z {<span class="hlt">yields</span>} bb-bar {<span class="hlt">yields</span>} {gamma}{gamma}* triangle diagrams and the Z {<span class="hlt">yields</span>} {gamma}{psi}, Z {<span class="hlt">yields</span>} {gamma}Y decays</span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Achasov, N. N., E-mail: achasov@math.nsc.ru</p> <p>2011-03-15</p> <p>The approach to the Z {<span class="hlt">yields</span>} {gamma}{psi} and Z {<span class="hlt">yields</span>} {gamma}Y decay study is presented in detail, based on the sum rules for the Z {<span class="hlt">yields</span>} cc-bar {<span class="hlt">yields</span>} {gamma}{gamma}* and Z {<span class="hlt">yields</span>} bb-bar {<span class="hlt">yields</span>} {gamma}{gamma}* amplitudes and their derivatives. The branching ratios of the Z {<span class="hlt">yields</span>} {gamma}{psi} and Z {<span class="hlt">yields</span>} {gamma}Y decays are calculated for different hypotheses on saturation of the sum rules. The lower bounds of {Sigma}{sub {psi}} BR(Z {<span class="hlt">yields</span>} {gamma}{psi}) = 1.95 Multiplication-Sign 10{sup -7} and {Sigma}{sub {upsilon}} BR(Z {<span class="hlt">yields</span>} {gamma}Y) = 7.23 Multiplication-Sign 10{sup -7} are found. Deviations from the lower bounds are discussed, including the possibilitymore » of BR(Z {<span class="hlt">yields</span>} {gamma}J/{psi}(1S)) {approx} BR(Z {<span class="hlt">yields</span>} {gamma}Y(1S)) {approx} 10{sup -6}, that could be probably measured in LHC. The angular distributions in the Z {<span class="hlt">yields</span>} {gamma}{psi} and Z {<span class="hlt">yields</span>} {gamma}Y decays are also calculated.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/19910016622','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/19910016622"><span>Development of a funding, cost, and spending <span class="hlt">model</span> for satellite <span class="hlt">projects</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Johnson, Jesse P.</p> <p>1989-01-01</p> <p>The need for a predictive budget/funging <span class="hlt">model</span> is obvious. The current <span class="hlt">models</span> used by the Resource Analysis Office (RAO) are used to predict the total costs of satellite <span class="hlt">projects</span>. An effort to extend the <span class="hlt">modeling</span> capabilities from total budget analysis to total budget and budget outlays over time analysis was conducted. A statistical based and data driven methodology was used to derive and develop the <span class="hlt">model</span>. Th budget data for the last 18 GSFC-sponsored satellite <span class="hlt">projects</span> were analyzed and used to build a funding <span class="hlt">model</span> which would describe the historical spending patterns. This raw data consisted of dollars spent in that specific year and their 1989 dollar equivalent. This data was converted to the standard format used by the RAO group and placed in a database. A simple statistical analysis was performed to calculate the gross statistics associated with <span class="hlt">project</span> length and <span class="hlt">project</span> cost ant the conditional statistics on <span class="hlt">project</span> length and <span class="hlt">project</span> cost. The <span class="hlt">modeling</span> approach used is derived form the theory of embedded statistics which states that properly analyzed data will produce the underlying generating function. The process of funding large scale <span class="hlt">projects</span> over extended periods of time is described by Life Cycle Cost <span class="hlt">Models</span> (LCCM). The data was analyzed to find a <span class="hlt">model</span> in the generic form of a LCCM. The <span class="hlt">model</span> developed is based on a Weibull function whose parameters are found by both nonlinear optimization and nonlinear regression. In order to use this <span class="hlt">model</span> it is necessary to transform the problem from a dollar/time space to a percentage of total budget/time space. This transformation is equivalent to moving to a probability space. By using the basic rules of probability, the validity of both the optimization and the regression steps are insured. This statistically significant <span class="hlt">model</span> is then integrated and inverted. The resulting output represents a <span class="hlt">project</span> schedule which relates the amount of money spent to the percentage of <span class="hlt">project</span> completion.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017EGUGA..19.4758O','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017EGUGA..19.4758O"><span>Characterizing bias correction uncertainty in wheat <span class="hlt">yield</span> predictions</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Ortiz, Andrea Monica; Jones, Julie; Freckleton, Robert; Scaife, Adam</p> <p>2017-04-01</p> <p>Farming systems are under increased pressure due to current and future climate change, variability and extremes. Research on the impacts of climate change on crop production typically rely on the output of complex Global and Regional Climate <span class="hlt">Models</span>, which are used as input to crop impact <span class="hlt">models</span>. <span class="hlt">Yield</span> predictions from these top-down approaches can have high uncertainty for several reasons, including diverse <span class="hlt">model</span> construction and parameterization, future emissions scenarios, and inherent or response uncertainty. These uncertainties propagate down each step of the 'cascade of uncertainty' that flows from climate input to impact predictions, leading to <span class="hlt">yield</span> predictions that may be too complex for their intended use in practical adaptation options. In addition to uncertainty from impact <span class="hlt">models</span>, uncertainty can also stem from the intermediate steps that are used in impact studies to adjust climate <span class="hlt">model</span> simulations to become more realistic when compared to observations, or to correct the spatial or temporal resolution of climate simulations, which are often not directly applicable as input into impact <span class="hlt">models</span>. These important steps of bias correction or calibration also add uncertainty to final <span class="hlt">yield</span> predictions, given the various approaches that exist to correct climate <span class="hlt">model</span> simulations. In order to address how much uncertainty the choice of bias correction method can add to <span class="hlt">yield</span> predictions, we use several evaluation runs from Regional Climate <span class="hlt">Models</span> from the Coordinated Regional Downscaling Experiment over Europe (EURO-CORDEX) at different resolutions together with different bias correction methods (linear and variance scaling, power transformation, quantile-quantile mapping) as input to a statistical crop <span class="hlt">model</span> for wheat, a staple European food crop. The objective of our work is to compare the resulting simulation-driven hindcasted wheat <span class="hlt">yields</span> to climate observation-driven wheat <span class="hlt">yield</span> hindcasts from the UK and Germany in order to determine ranges of <span class="hlt">yield</span></p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017JMPSo.107..253D','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017JMPSo.107..253D"><span>Influence of <span class="hlt">yield</span> surface curvature on the macroscopic <span class="hlt">yielding</span> and ductile failure of isotropic porous plastic materials</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Dæhli, Lars Edvard Bryhni; Morin, David; Børvik, Tore; Hopperstad, Odd Sture</p> <p>2017-10-01</p> <p>Numerical unit cell <span class="hlt">models</span> of an approximative representative volume element for a porous ductile solid are utilized to investigate differences in the mechanical response between a quadratic and a non-quadratic matrix <span class="hlt">yield</span> surface. A Hershey equivalent stress measure with two distinct values of the <span class="hlt">yield</span> surface exponent is employed as the matrix description. Results from the unit cell calculations are further used to calibrate a heuristic extension of the Gurson <span class="hlt">model</span> which incorporates effects of the third deviatoric stress invariant. An assessment of the porous plasticity <span class="hlt">model</span> reveals its ability to describe the unit cell response to some extent, however underestimating the effect of the Lode parameter for the lower triaxiality ratios imposed in this study when compared to unit cell simulations. Ductile failure predictions by means of finite element simulations using a unit cell <span class="hlt">model</span> that resembles an imperfection band are then conducted to examine how the non-quadratic matrix <span class="hlt">yield</span> surface influences the failure strain as compared to the quadratic matrix <span class="hlt">yield</span> surface. Further, strain localization predictions based on bifurcation analyses and imperfection band analyses are undertaken using the calibrated porous plasticity <span class="hlt">model</span>. These simulations are then compared to the unit cell calculations in order to elucidate the differences between the various <span class="hlt">modelling</span> strategies. The current study reveals that strain localization analyses using an imperfection band <span class="hlt">model</span> and a spatially discretized unit cell are in reasonable agreement, while the bifurcation analyses predict higher strain levels at localization. Imperfection band analyses are finally used to calculate failure loci for the quadratic and the non-quadratic matrix <span class="hlt">yield</span> surface under a wide range of loading conditions. The underlying matrix <span class="hlt">yield</span> surface is demonstrated to have a pronounced influence on the onset of strain localization.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2013AGUFMGC13B1069R','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2013AGUFMGC13B1069R"><span>Global Agriculture <span class="hlt">Yields</span> and Conflict under Future Climate</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Rising, J.; Cane, M. A.</p> <p>2013-12-01</p> <p>Aspects of climate have been shown to correlate significantly with conflict. We investigate a possible pathway for these effects through changes in agriculture <span class="hlt">yields</span>, as predicted by field crop <span class="hlt">models</span> (FAO's AquaCrop and DSSAT). Using satellite and station weather data, and surveyed data for soil and management, we simulate major crop <span class="hlt">yields</span> across all countries between 1961 and 2008, and compare these to FAO and USDA reported <span class="hlt">yields</span>. Correlations vary by country and by crop, from approximately .8 to -.5. Some of this range in crop <span class="hlt">model</span> performance is explained by crop varieties, data quality, and other natural, economic, and political features. We also quantify the ability of AquaCrop and DSSAT to simulate <span class="hlt">yields</span> under past cycles of ENSO as a proxy for their performance under changes in climate. We then describe two statistical <span class="hlt">models</span> which relate crop <span class="hlt">yields</span> to conflict events from the UCDP/PRIO Armed Conflict dataset. The first relates several preceding years of predicted <span class="hlt">yields</span> of the major grain in each country to any conflict involving that country. The second uses the GREG ethnic group maps to identify differences in predicted <span class="hlt">yields</span> between neighboring regions. By using variation in predicted <span class="hlt">yields</span> to explain conflict, rather than actual <span class="hlt">yields</span>, we can identify the exogenous effects of weather on conflict. Finally, we apply precipitation and temperature time-series under IPCC's A1B scenario to the statistical <span class="hlt">models</span>. This allows us to estimate the scale of the impact of future <span class="hlt">yields</span> on future conflict. Centroids of the major growing regions for each country's primary crop, based on USDA FAS consumption. Correlations between simulated <span class="hlt">yields</span> and reported <span class="hlt">yields</span>, for AquaCrop and DSSAT, under the assumption that no irrigation, fertilization, or pest control is used. Reported <span class="hlt">yields</span> are the average of FAO <span class="hlt">yields</span> and USDA FAS <span class="hlt">yields</span>, where both are available.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/23764473','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/23764473"><span>Evaluating the capabilities of watershed-scale <span class="hlt">models</span> in estimating sediment <span class="hlt">yield</span> at field-scale.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Sommerlot, Andrew R; Nejadhashemi, A Pouyan; Woznicki, Sean A; Giri, Subhasis; Prohaska, Michael D</p> <p>2013-09-30</p> <p>Many watershed <span class="hlt">model</span> interfaces have been developed in recent years for predicting field-scale sediment loads. They share the goal of providing data for decisions aimed at improving watershed health and the effectiveness of water quality conservation efforts. The objectives of this study were to: 1) compare three watershed-scale <span class="hlt">models</span> (Soil and Water Assessment Tool (SWAT), Field_SWAT, and the High Impact Targeting (HIT) <span class="hlt">model</span>) against calibrated field-scale <span class="hlt">model</span> (RUSLE2) in estimating sediment <span class="hlt">yield</span> from 41 randomly selected agricultural fields within the River Raisin watershed; 2) evaluate the statistical significance among <span class="hlt">models</span>; 3) assess the watershed <span class="hlt">models</span>' capabilities in identifying areas of concern at the field level; 4) evaluate the reliability of the watershed-scale <span class="hlt">models</span> for field-scale analysis. The SWAT <span class="hlt">model</span> produced the most similar estimates to RUSLE2 by providing the closest median and the lowest absolute error in sediment <span class="hlt">yield</span> predictions, while the HIT <span class="hlt">model</span> estimates were the worst. Concerning statistically significant differences between <span class="hlt">models</span>, SWAT was the only <span class="hlt">model</span> found to be not significantly different from the calibrated RUSLE2 at α = 0.05. Meanwhile, all <span class="hlt">models</span> were incapable of identifying priorities areas similar to the RUSLE2 <span class="hlt">model</span>. Overall, SWAT provided the most correct estimates (51%) within the uncertainty bounds of RUSLE2 and is the most reliable among the studied <span class="hlt">models</span>, while HIT is the least reliable. The results of this study suggest caution should be exercised when using watershed-scale <span class="hlt">models</span> for field level decision-making, while field specific data is of paramount importance. Copyright © 2013 Elsevier Ltd. All rights reserved.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5662947','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5662947"><span>Evaluating the sensitivity of agricultural <span class="hlt">model</span> performance to different climate inputs</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Glotter, Michael J.; Moyer, Elisabeth J.; Ruane, Alex C.; Elliott, Joshua W.</p> <p>2017-01-01</p> <p><span class="hlt">Projections</span> of future food production necessarily rely on <span class="hlt">models</span>, which must themselves be validated through historical assessments comparing <span class="hlt">modeled</span> to observed <span class="hlt">yields</span>. Reliable historical validation requires both accurate agricultural <span class="hlt">models</span> and accurate climate inputs. Problems with either may compromise the validation exercise. Previous studies have compared the effects of different climate inputs on agricultural <span class="hlt">projections</span>, but either incompletely or without a ground truth of observed <span class="hlt">yields</span> that would allow distinguishing errors due to climate inputs from those intrinsic to the crop <span class="hlt">model</span>. This study is a systematic evaluation of the reliability of a widely-used crop <span class="hlt">model</span> for simulating U.S. maize <span class="hlt">yields</span> when driven by multiple observational data products. The parallelized Decision Support System for Agrotechnology Transfer (pDSSAT) is driven with climate inputs from multiple sources – reanalysis, reanalysis bias-corrected with observed climate, and a control dataset – and compared to observed historical <span class="hlt">yields</span>. The simulations show that <span class="hlt">model</span> output is more accurate when driven by any observation-based precipitation product than when driven by un-bias-corrected reanalysis. The simulations also suggest, in contrast to previous studies, that biased precipitation distribution is significant for <span class="hlt">yields</span> only in arid regions. However, some issues persist for all choices of climate inputs: crop <span class="hlt">yields</span> appear oversensitive to precipitation fluctuations but undersensitive to floods and heat waves. These results suggest that the most important issue for agricultural <span class="hlt">projections</span> may be not climate inputs but structural limitations in the crop <span class="hlt">models</span> themselves. PMID:29097985</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28827751','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28827751"><span>A new standard <span class="hlt">model</span> for milk <span class="hlt">yield</span> in dairy cows based on udder physiology at the milking-session level.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Gasqui, Patrick; Trommenschlager, Jean-Marie</p> <p>2017-08-21</p> <p>Milk production in dairy cow udders is a complex and dynamic physiological process that has resisted explanatory <span class="hlt">modelling</span> thus far. The current standard <span class="hlt">model</span>, Wood's <span class="hlt">model</span>, is empirical in nature, represents <span class="hlt">yield</span> in daily terms, and was published in 1967. Here, we have developed a dynamic and integrated explanatory <span class="hlt">model</span> that describes milk <span class="hlt">yield</span> at the scale of the milking session. Our approach allowed us to formally represent and mathematically relate biological features of known relevance while accounting for stochasticity and conditional elements in the form of explicit hypotheses, which could then be tested and validated using real-life data. Using an explanatory mathematical and biological <span class="hlt">model</span> to explore a physiological process and pinpoint potential problems (i.e., "problem finding"), it is possible to filter out unimportant variables that can be ignored, retaining only those essential to generating the most realistic <span class="hlt">model</span> possible. Such <span class="hlt">modelling</span> efforts are multidisciplinary by necessity. It is also helpful downstream because <span class="hlt">model</span> results can be compared with observed data, via parameter estimation using maximum likelihood and statistical testing using <span class="hlt">model</span> residuals. The process in its entirety <span class="hlt">yields</span> a coherent, robust, and thus repeatable, <span class="hlt">model</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC33B1075K','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC33B1075K"><span><span class="hlt">Projecting</span> water resources changes in potential large-scale agricultural investment areas of the Kafue River Basin in Zambia</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Kim, Y.; Trainor, A. M.; Baker, T. J.</p> <p>2017-12-01</p> <p>Climate change impacts regional water availability through the spatial and temporal redistribution of available water resources. This study focuses on understanding possible response of water resources to climate change in regions where potentials for large-scale agricultural investments are planned in the upper and middle Kafue River Basin in Zambia. We used historical and <span class="hlt">projected</span> precipitation and temperature to assess changes in water <span class="hlt">yield</span>, using the Soil and Water Assessment Tool (SWAT) hydrological <span class="hlt">model</span>. Some of the Coupled <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> Phase 5 (CMIP5) climate <span class="hlt">model</span> outputs for the Representative Concentration Pathway (RCP) 4.5 and 8.5 scenarios <span class="hlt">project</span> a temperature warming range from 1.8 - 5.7 °C over the region from 2020 to 2095. Precipitation <span class="hlt">projection</span> patterns vary monthly but tend toward drier dry seasons with a slight increase in precipitation during the rainy season as compared to the historical time series. The best five calibrated parameter sets generated for the historical record (1965 - 2005) were applied for two future periods, 2020 - 2060 and 2055 - 2095, to <span class="hlt">project</span> water <span class="hlt">yield</span> change. Simulations <span class="hlt">projected</span> that the 90th percentile water <span class="hlt">yield</span> would be exceeded across most of the study area by up to 800% under the medium-low (RCP4.5) CO2 emission scenario, whereas the high (RCP8.5) CO2 emission scenario resulted in a more spatially varied pattern mixed with increasing (up to 500%) and decreasing (up to -54%) trends. The 10th percentile water <span class="hlt">yield</span> indicated spatially varied pattern across the basin, increasing by as much as 500% though decreasing in some areas by 66%, with the greatest decreases during the dry season under RCP8.5. Overall, available water resources in the study area are <span class="hlt">projected</span> to trend toward increased floods (i.e. water <span class="hlt">yields</span> far exceeding 90th percentile) as well as increasing drought (i.e. water <span class="hlt">yield</span> far below 10th percentile) vulnerability. Because surface water is a primary source for agriculture</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_15");'>15</a></li> <li><a href="#" onclick='return showDiv("page_16");'>16</a></li> <li class="active"><span>17</span></li> <li><a href="#" onclick='return showDiv("page_18");'>18</a></li> <li><a href="#" onclick='return showDiv("page_19");'>19</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_17 --> <div id="page_18" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_16");'>16</a></li> <li><a href="#" onclick='return showDiv("page_17");'>17</a></li> <li class="active"><span>18</span></li> <li><a href="#" onclick='return showDiv("page_19");'>19</a></li> <li><a href="#" onclick='return showDiv("page_20");'>20</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="341"> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/29110424','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/29110424"><span>Increasing drought and diminishing benefits of elevated carbon dioxide for soybean <span class="hlt">yields</span> across the US Midwest.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Jin, Zhenong; Ainsworth, Elizabeth A; Leakey, Andrew D B; Lobell, David B</p> <p>2018-02-01</p> <p>Elevated atmospheric CO 2 concentrations ([CO 2 ]) are expected to increase C3 crop <span class="hlt">yield</span> through the CO 2 fertilization effect (CFE) by stimulating photosynthesis and by reducing stomatal conductance and transpiration. The latter effect is widely believed to lead to greater benefits in dry rather than wet conditions, although some recent experimental evidence challenges this view. Here we used a process-based crop <span class="hlt">model</span>, the Agricultural Production Systems sIMulator (APSIM), to quantify the contemporary and future CFE on soybean in one of its primary production area of the US Midwest. APSIM accurately reproduced experimental data from the Soybean Free-Air CO 2 Enrichment site showing that the CFE declined with increasing drought stress. This resulted from greater radiation use efficiency (RUE) and above-ground biomass production at elevated [CO 2 ] that outpaced gains in transpiration efficiency (TE). Using an ensemble of eight climate <span class="hlt">model</span> <span class="hlt">projections</span>, we found that drought frequency in the US Midwest is <span class="hlt">projected</span> to increase from once every 5 years currently to once every other year by 2050. In addition to directly driving <span class="hlt">yield</span> loss, greater drought also significantly limited the benefit from rising [CO 2 ]. This study provides a link between localized experiments and regional-scale <span class="hlt">modeling</span> to highlight that increased drought frequency and severity pose a formidable challenge to maintaining soybean <span class="hlt">yield</span> progress that is not offset by rising [CO 2 ] as previously anticipated. Evaluating the relative sensitivity of RUE and TE to elevated [CO 2 ] will be an important target for future <span class="hlt">modeling</span> and experimental studies of climate change impacts and adaptation in C3 crops. © 2017 John Wiley & Sons Ltd.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/servlets/purl/898588','SCIGOV-STC'); return false;" href="https://www.osti.gov/servlets/purl/898588"><span>Weather-based forecasts of California crop <span class="hlt">yields</span></span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Lobell, D B; Cahill, K N; Field, C B</p> <p>2005-09-26</p> <p>Crop <span class="hlt">yield</span> forecasts provide useful information to a range of users. <span class="hlt">Yields</span> for several crops in California are currently forecast based on field surveys and farmer interviews, while for many crops official forecasts do not exist. As broad-scale crop <span class="hlt">yields</span> are largely dependent on weather, measurements from existing meteorological stations have the potential to provide a reliable, timely, and cost-effective means to anticipate crop <span class="hlt">yields</span>. We developed weather-based <span class="hlt">models</span> of state-wide <span class="hlt">yields</span> for 12 major California crops (wine grapes, lettuce, almonds, strawberries, table grapes, hay, oranges, cotton, tomatoes, walnuts, avocados, and pistachios), and tested their accuracy using cross-validation over themore » 1980-2003 period. Many crops were forecast with high accuracy, as judged by the percent of <span class="hlt">yield</span> variation explained by the forecast, the number of <span class="hlt">yields</span> with correctly predicted direction of <span class="hlt">yield</span> change, or the number of <span class="hlt">yields</span> with correctly predicted extreme <span class="hlt">yields</span>. The most successfully <span class="hlt">modeled</span> crop was almonds, with 81% of <span class="hlt">yield</span> variance captured by the forecast. Predictions for most crops relied on weather measurements well before harvest time, allowing for lead times that were longer than existing procedures in many cases.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5655914','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5655914"><span>Targeting carbon for crop <span class="hlt">yield</span> and drought resilience</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Griffiths, Cara A</p> <p>2017-01-01</p> <p>Abstract Current methods of crop improvement are not keeping pace with <span class="hlt">projected</span> increases in population growth. Breeding, focused around key traits of stem height and disease resistance, delivered the step‐change <span class="hlt">yield</span> improvements of the green revolution of the 1960s. However, subsequently, <span class="hlt">yield</span> increases through conventional breeding have been below the <span class="hlt">projected</span> requirement of 2.4% per year required by 2050. Genetic modification (GM) mainly for herbicide tolerance and insect resistance has been transformational, akin to a second green revolution, although GM has yet to make major inroads into intrinsic <span class="hlt">yield</span> processes themselves. Drought imposes the major restriction on crop <span class="hlt">yields</span> globally but, as yet, has not benefited substantially from genetic improvement and still presents a major challenge to agriculture. Much still has to be learnt about the complex process of how drought limits <span class="hlt">yield</span> and what should be targeted. Mechanisms of drought adaptation from the natural environment cannot be taken into crops without significant modification for the agricultural environment because mechanisms of drought tolerance are often in contrast with mechanisms of high productivity required in agriculture. However, through convergence of fundamental and translational science, it would appear that a mechanism of sucrose allocation in crops can be modified for both productivity and resilience to drought and other stresses. Recent publications show how this mechanism can be targeted by GM, natural variation and a new chemical approach. Here, with an emphasis on drought, we highlight how understanding fundamental science about how crops grow, develop and what limits their growth and <span class="hlt">yield</span> can be combined with targeted genetic selection and pioneering chemical intervention technology for transformational <span class="hlt">yield</span> improvements. © 2017 The Authors. Journal of The Science of Food and Agriculture published by John Wiley & Sons Ltd on behalf of Society of Chemical Industry. PMID</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/19750018404','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/19750018404"><span><span class="hlt">Yield</span> prediction by analysis of multispectral scanner data</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Colwell, J. E.; Suits, G. H.</p> <p>1975-01-01</p> <p>A preliminary <span class="hlt">model</span> describing the growth and grain <span class="hlt">yield</span> of wheat was developed. The <span class="hlt">modeled</span> growth characteristics of the wheat crop were used to compute wheat canopy reflectance using a <span class="hlt">model</span> of vegetation canopy reflectance. The <span class="hlt">modeled</span> reflectance characteristics were compared with the corresponding growth characteristics and grain <span class="hlt">yield</span> in order to infer their relationships. It appears that periodic wheat canopy reflectance characteristics potentially derivable from earth satellites will be useful in forecasting wheat grain <span class="hlt">yield</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/servlets/purl/6291198','SCIGOV-STC'); return false;" href="https://www.osti.gov/servlets/purl/6291198"><span>Solid waste <span class="hlt">projection</span> <span class="hlt">model</span>: <span class="hlt">Model</span> version 1. 0 technical reference manual</span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Wilkins, M.L.; Crow, V.L.; Buska, D.E.</p> <p>1990-11-01</p> <p>The Solid Waste <span class="hlt">Projection</span> <span class="hlt">Model</span> (SWPM) system is an analytical tool developed by Pacific Northwest Laboratory (PNL) for Westinghouse Hanford Company (WHC). The SWPM system provides a <span class="hlt">modeling</span> and analysis environment that supports decisions in the process of evaluating various solid waste management alternatives. This document, one of a series describing the SWPM system, contains detailed information regarding the software utilized in developing Version 1.0 of the <span class="hlt">modeling</span> unit of SWPM. This document is intended for use by experienced software engineers and supports programming, code maintenance, and <span class="hlt">model</span> enhancement. Those interested in using SWPM should refer to the SWPM Modelmore » User's Guide. This document is available from either the PNL <span class="hlt">project</span> manager (D. L. Stiles, 509-376-4154) or the WHC program monitor (B. C. Anderson, 509-373-2796). 8 figs.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AIPC.1839b0071G','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AIPC.1839b0071G"><span>Relationship between soybean <span class="hlt">yield</span>/quality and soil quality in a major soybean-producing area based on a 2D-QSAR <span class="hlt">model</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Gao, Ming; Li, Shiwei</p> <p>2017-05-01</p> <p>Based on experimental data of the soybean <span class="hlt">yield</span> and quality from 30 sampling points, a quantitative structure-activity relationship <span class="hlt">model</span> (2D-QSAR) was established using the soil quality (elements, pH, organic matter content and cation exchange capacity) as independent variables and soybean <span class="hlt">yield</span> or quality as the dependent variable, with SPSS software. During the <span class="hlt">modeling</span>, the full data set (30 and 14 compounds) was divided into a training set (24 and 11 compounds) for <span class="hlt">model</span> generation and a test set (6 and 3 compounds) for <span class="hlt">model</span> validation. The R2 values of the resulting <span class="hlt">models</span> and data were 0.826 and 0.808 for soybean <span class="hlt">yield</span> and quality, respectively, and all regression coefficients were significant (P < 0.05). The correlation coefficient R2pred of observed values and predicted values of the soybean <span class="hlt">yield</span> and soybean quality in the test set were 0.961 and 0.956, respectively, indicating that the <span class="hlt">models</span> had a good predictive ability. Moreover, the Mo, Se, K, N and organic matter contents and the cation exchange capacity of soil had a positive effect on soybean production, and the B, Mo, Se, K and N contents and cation exchange coefficient had a positive effect on soybean quality. The results are instructive for enhancing soils to improve the <span class="hlt">yield</span> and quality of soybean, and this method can also be used to study other crops or regions, providing a theoretical basis to improving the <span class="hlt">yield</span> and quality of crops.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20140010057','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20140010057"><span>AGSM Functional Fault <span class="hlt">Models</span> for Fault Isolation <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Harp, Janicce Leshay</p> <p>2014-01-01</p> <p>This <span class="hlt">project</span> implements functional fault <span class="hlt">models</span> to automate the isolation of failures during ground systems operations. FFMs will also be used to recommend sensor placement to improve fault isolation capabilities. The <span class="hlt">project</span> enables the delivery of system health advisories to ground system operators.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017Geomo.293..255L','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017Geomo.293..255L"><span><span class="hlt">Modeling</span> the impact of climate change on watershed discharge and sediment <span class="hlt">yield</span> in the black soil region, northeastern China</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Li, Zhiying; Fang, Haiyan</p> <p>2017-09-01</p> <p>Climate change is expected to impact discharge and sediment <span class="hlt">yield</span> in watersheds. The purpose of this paper is to assess the potential impacts of climate change on water discharge and sediment <span class="hlt">yield</span> for the Yi'an watershed of the black soil region, northeastern China, based on the newly released Representative Concentration Pathways (RCPs) during 2071-2099. For this purpose, the TETIS <span class="hlt">model</span> was implemented to simulate the hydrological and sedimentological responses to climate change. The <span class="hlt">model</span> calibration (1971-1977) and validation (1978-1987) performances were rated as satisfactory. The <span class="hlt">modeling</span> results for the four RCP scenarios relative to the control scenario under the same land use configuration indicated an increase in discharge of 16.3% (RCP 2.6), 14.3% (RCP 4.5), 36.7% (RCP 6.0) and 71.4% (RCP 8.5) and an increase in the sediment <span class="hlt">yield</span> of 16.5% (RCP 2.6), 32.4% (RCP 4.5), 81.8% (RCP 6.0) and 170% (RCP 8.5). This implies that the negative impact of climate change on sediment <span class="hlt">yield</span> is generally greater than that on discharge. At the monthly scale, both discharge and sediment <span class="hlt">yield</span> increased dramatically in April to June and August to September. A more vigorous hydrological cycle and an increase in high values of sediment <span class="hlt">yield</span> are also expected. These changes in annual discharge and sediment <span class="hlt">yield</span> were closely linked with changes in precipitation, whereas monthly changes in late spring and autumn were mainly related to temperature. This study highlights the possible adverse impact of climate change on discharge and sediment <span class="hlt">yield</span> in the black soil region of northeastern China and could provide scientific basis for adaptive management.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/29426159','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/29426159"><span>Analyzing and <span class="hlt">modelling</span> the effect of long-term fertilizer management on crop <span class="hlt">yield</span> and soil organic carbon in China.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Zhang, Jie; Balkovič, Juraj; Azevedo, Ligia B; Skalský, Rastislav; Bouwman, Alexander F; Xu, Guang; Wang, Jinzhou; Xu, Minggang; Yu, Chaoqing</p> <p>2018-06-15</p> <p>This study analyzes the influence of various fertilizer management practices on crop <span class="hlt">yield</span> and soil organic carbon (SOC) based on the long-term field observations and <span class="hlt">modelling</span>. Data covering 11 years from 8 long-term field trials were included, representing a range of typical soil, climate, and agro-ecosystems in China. The process-based <span class="hlt">model</span> EPIC (Environmental Policy Integrated Climate <span class="hlt">model</span>) was used to simulate the response of crop <span class="hlt">yield</span> and SOC to various fertilization regimes. The results showed that the <span class="hlt">yield</span> and SOC under additional manure application treatment were the highest while the <span class="hlt">yield</span> under control treatment was the lowest (30%-50% of NPK <span class="hlt">yield</span>) at all sites. The SOC in northern sites appeared more dynamic than that in southern sites. The variance partitioning analysis (VPA) showed more variance of crop <span class="hlt">yield</span> could be explained by the fertilization factor (42%), including synthetic nitrogen (N), phosphorus (P), potassium (K) fertilizers, and fertilizer NPK combined with manure. The interactive influence of soil (total N, P, K, and available N, P, K) and climate factors (mean annual temperature and precipitation) determine the largest part of the SOC variance (32%). EPIC performs well in simulating both the dynamics of crop <span class="hlt">yield</span> (NRMSE = 32% and 31% for <span class="hlt">yield</span> calibration and validation) and SOC (NRMSE = 13% and 19% for SOC calibration and validation) under diverse fertilization practices in China. EPIC can assist in predicting the impacts of different fertilization regimes on crop growth and soil carbon dynamics, and contribute to the optimization of fertilizer management for different areas in China. Copyright © 2018. Published by Elsevier B.V.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016erl1.book..891S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016erl1.book..891S"><span>Dynamic <span class="hlt">Modeling</span> of <span class="hlt">Yield</span> and Particle Size Distribution in Continuous Bayer Precipitation</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Stephenson, Jerry L.; Kapraun, Chris</p> <p></p> <p>Process engineers at Alcoa's Point Comfort refinery are using a dynamic <span class="hlt">model</span> of the Bayer precipitation area to evaluate options in operating strategies. The dynamic <span class="hlt">model</span>, a joint development effort between Point Comfort and the Alcoa Technical Center, predicts process <span class="hlt">yields</span>, particle size distributions and occluded soda levels for various flowsheet configurations of the precipitation and classification circuit. In addition to rigorous heat, material and particle population balances, the <span class="hlt">model</span> includes mechanistic kinetic expressions for particle growth and agglomeration and semi-empirical kinetics for nucleation and attrition. The kinetic parameters have been tuned to Point Comfort's operating data, with excellent matches between the <span class="hlt">model</span> results and plant data. The <span class="hlt">model</span> is written for the ACSL dynamic simulation program with specifically developed input/output graphical user interfaces to provide a user-friendly tool. Features such as a seed charge controller enhance the <span class="hlt">model</span>'s usefulness for evaluating operating conditions and process control approaches.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016AGUFMGC51A1137Z','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016AGUFMGC51A1137Z"><span>Impacts of extreme heat and drought on crop <span class="hlt">yields</span> in China: an assessment by using the DLEM-AG2 <span class="hlt">model</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Zhang, J.; Yang, J.; Pan, S.; Tian, H.</p> <p>2016-12-01</p> <p>China is not only one of the major agricultural production countries with the largest population in the world, but it is also the most susceptible to climate change and extreme events. Much concern has been raised about how extreme climate has affected crop <span class="hlt">yield</span>, which is crucial for China's food supply security. However, the quantitative assessment of extreme heat and drought impacts on crop <span class="hlt">yield</span> in China has rarely been investigated. By using the Dynamic Land Ecosystem <span class="hlt">Model</span> (DLEM-AG2), a highly integrated process-based ecosystem <span class="hlt">model</span> with crop-specific simulation, here we quantified spatial and temporal patterns of extreme climatic heat and drought stress and their impacts on the <span class="hlt">yields</span> of major food crops (rice, wheat, maize, and soybean) across China during 1981-2015, and further investigated the underlying mechanisms. Simulated results showed that extreme heat and drought stress significantly reduced national cereal production and increased the <span class="hlt">yield</span> gaps between potential <span class="hlt">yield</span> and rain-fed <span class="hlt">yield</span>. The drought stress was the primary factor to reduce crop <span class="hlt">yields</span> in the semi-arid and arid regions, and extreme heat stress slightly aggravated the <span class="hlt">yield</span> loss. The <span class="hlt">yield</span> gap between potential <span class="hlt">yield</span> and rain-fed <span class="hlt">yield</span> was larger at locations with lower precipitation. Our results suggest that a large exploitable <span class="hlt">yield</span> gap in response to extreme climatic heat-drought stress offers an opportunity to increase productivity in China by optimizing agronomic practices, such as irrigation, fertilizer use, sowing density, and sowing date.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC41D1045F','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC41D1045F"><span>Evaluation of simulated corn <span class="hlt">yields</span> and associated uncertainty in different climate zones of China using Daycent <span class="hlt">Model</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Fu, A.; Xue, Y.</p> <p>2017-12-01</p> <p>Corn is one of most important agricultural production in China. Research on the simulation of corn <span class="hlt">yields</span> and the impacts of climate change and agricultural management practices on corn <span class="hlt">yields</span> is important in maintaining the stable corn production. After climatic data including daily temperature, precipitation, solar radiation, relative humidity, and wind speed from 1948 to 2010, soil properties, observed corn <span class="hlt">yields</span>, and farmland management information were collected, corn <span class="hlt">yields</span> grown in humidity and hot environment (Sichuang province) and cold and dry environment (Hebei province) in China in the past 63 years were simulated by Daycent, and the results was evaluated based on published <span class="hlt">yield</span> record. The relationship between regional climate change, global warming and corn <span class="hlt">yield</span> were analyzed, the uncertainties of simulation derived from agricultural management practices by changing fertilization levels, land fertilizer maintenance and tillage methods were reported. The results showed that: (1) Daycent <span class="hlt">model</span> is capable to simulate corn <span class="hlt">yields</span> under the different climatic background in China. (2) When studying the relationship between regional climate change and corn <span class="hlt">yields</span>, it has been found that observed and simulated corn <span class="hlt">yields</span> increased along with total regional climate change. (3) When studying the relationship between the global warming and corn <span class="hlt">yields</span>, It was discovered that newly-simulated corn <span class="hlt">yields</span> after removing the global warming trend of original temperature data were lower than before.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMPA23C0380D','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMPA23C0380D"><span>National Variation in Crop <span class="hlt">Yield</span> Production Functions</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Devineni, N.; Rising, J. A.</p> <p>2017-12-01</p> <p>A new multilevel <span class="hlt">model</span> for <span class="hlt">yield</span> prediction at the county scale using regional climate covariates is presented in this paper. A new crop specific water deficit index, growing degree days, extreme degree days, and time-trend as an approximation of technology improvements are used as predictors to estimate annual crop <span class="hlt">yields</span> for each county from 1949 to 2009. Every county in the United States is allowed to have unique parameters describing how these weather predictors are related to <span class="hlt">yield</span> outcomes. County-specific parameters are further <span class="hlt">modeled</span> as varying according to climatic characteristics, allowing the prediction of parameters in regions where crops are not currently grown and into the future. The structural relationships between crop <span class="hlt">yield</span> and regional climate as well as trends are estimated simultaneously. All counties are <span class="hlt">modeled</span> in a single multilevel <span class="hlt">model</span> with partial pooling to automatically group and reduce estimation uncertainties. The <span class="hlt">model</span> captures up to 60% of the variability in crop <span class="hlt">yields</span> after removing the effect of technology, does well in out of sample predictions and is useful in relating the climate responses to local bioclimatic factors. We apply the predicted growing <span class="hlt">models</span> in a cost-benefit analysis to identify the most economically productive crop in each county.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20090033680','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20090033680"><span>Lunar Mapping and <span class="hlt">Modeling</span> <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Noble, Sarah K.; French, Raymond; Nall,Mark; Muery, Kimberly</p> <p>2009-01-01</p> <p>The Lunar Mapping and <span class="hlt">Modeling</span> <span class="hlt">Project</span> (LMMP) has been created to manage the development of a suite of lunar mapping and <span class="hlt">modeling</span> products that support the Constellation Program (CxP) and other lunar exploration activities, including the planning, design, development, test and operations associated with lunar sortie missions, crewed and robotic operations on the surface, and the establishment of a lunar outpost. The <span class="hlt">project</span> draws on expertise from several NASA and non-NASA organizations (MSFC, ARC, GSFC, JPL, CRREL and USGS). LMMP will utilize data predominately from the Lunar Reconnaissance Orbiter, but also historical and international lunar mission data (e.g. Apollo, Lunar Orbiter, Kaguya, Chandrayaan-1), as available and appropriate, to meet Constellation s data needs. LMMP will provide access to this data through a single, common, intuitive and easy to use NASA portal that transparently accesses appropriately sanctioned portions of the widely dispersed and distributed collections of lunar data, products and tools. LMMP will provide such products as DEMs, hazard assessment maps, lighting maps and <span class="hlt">models</span>, gravity <span class="hlt">models</span>, and resource maps. We are working closely with the LRO team to prevent duplication of efforts and ensure the highest quality data products. While Constellation is our primary customer, LMMP is striving to be as useful as possible to the lunar science community, the lunar education and public outreach (E/PO) community, and anyone else interested in accessing or utilizing lunar data.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC42B..08P','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC42B..08P"><span>Towards Better Simulation of US Maize <span class="hlt">Yield</span> Responses to Climate in the Community Earth System <span class="hlt">Model</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Peng, B.; Guan, K.; Chen, M.; Lawrence, D. M.; Jin, Z.; Bernacchi, C.; Ainsworth, E. A.; DeLucia, E. H.; Lombardozzi, D. L.; Lu, Y.</p> <p>2017-12-01</p> <p>Global food security is undergoing continuing pressure from increased population and climate change despites the potential advancement in breeding and management technologies. Earth system <span class="hlt">models</span> (ESMs) are essential tools to study the impacts of historical and future climate on regional and global food production, as well as to assess the effectiveness of possible adaptations and their potential feedback to climate. Here we developed an improved maize representation within the Community Earth System <span class="hlt">Model</span> (CESM) by combining the strengths of both the Community Land <span class="hlt">Model</span> version 4.5 (CLM4.5) and the Agricultural Production Systems sIMulator (APSIM) <span class="hlt">models</span>. Specifically, we modified the maize planting scheme, incorporated the phenology scheme adopted from the APSIM <span class="hlt">model</span>, added a new carbon allocation scheme into CLM4.5, and improved the estimation of canopy structure parameters including leaf area index (LAI) and canopy height. Unique features of the new <span class="hlt">model</span> (CLM-APSIM) include more detailed phenology stages, an explicit implementation of the impacts of various abiotic environmental stresses (including nitrogen, water, temperature and heat stresses) on maize phenology and carbon allocation, as well as an explicit simulation of grain number and grain size. We conducted a regional simulation of this new <span class="hlt">model</span> over the US Corn Belt during 1990 to 2010. The simulated maize <span class="hlt">yield</span> as well as its responses to climate (growing season mean temperature and precipitation) are benchmarked with data from UADA NASS statistics. Our results show that the CLM-APSIM <span class="hlt">model</span> outperforms the CLM4.5 in simulating county-level maize <span class="hlt">yield</span> production and reproduces more realistic <span class="hlt">yield</span> responses to climate variations than CLM4.5. However, some critical processes (such as crop failure due to frost and inundation and suboptimal growth condition due to biotic stresses) are still missing in both CLM-APSIM and CLM4.5, making the simulated <span class="hlt">yield</span> responses to climate slightly deviate from the</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018AdWR..112..266C','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018AdWR..112..266C"><span>Partitioning uncertainty in streamflow <span class="hlt">projections</span> under nonstationary <span class="hlt">model</span> conditions</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Chawla, Ila; Mujumdar, P. P.</p> <p>2018-02-01</p> <p>Assessing the impacts of Land Use (LU) and climate change on future streamflow <span class="hlt">projections</span> is necessary for efficient management of water resources. However, <span class="hlt">model</span> <span class="hlt">projections</span> are burdened with significant uncertainty arising from various sources. Most of the previous studies have considered climate <span class="hlt">models</span> and scenarios as major sources of uncertainty, but uncertainties introduced by land use change and hydrologic <span class="hlt">model</span> assumptions are rarely investigated. In this paper an attempt is made to segregate the contribution from (i) general circulation <span class="hlt">models</span> (GCMs), (ii) emission scenarios, (iii) land use scenarios, (iv) stationarity assumption of the hydrologic <span class="hlt">model</span>, and (v) internal variability of the processes, to overall uncertainty in streamflow <span class="hlt">projections</span> using analysis of variance (ANOVA) approach. Generally, most of the impact assessment studies are carried out with unchanging hydrologic <span class="hlt">model</span> parameters in future. It is, however, necessary to address the nonstationarity in <span class="hlt">model</span> parameters with changing land use and climate. In this paper, a regression based methodology is presented to obtain the hydrologic <span class="hlt">model</span> parameters with changing land use and climate scenarios in future. The Upper Ganga Basin (UGB) in India is used as a case study to demonstrate the methodology. The semi-distributed Variable Infiltration Capacity (VIC) <span class="hlt">model</span> is set-up over the basin, under nonstationary conditions. Results indicate that <span class="hlt">model</span> parameters vary with time, thereby invalidating the often-used assumption of <span class="hlt">model</span> stationarity. The streamflow in UGB under the nonstationary <span class="hlt">model</span> condition is found to reduce in future. The flows are also found to be sensitive to changes in land use. Segregation results suggest that <span class="hlt">model</span> stationarity assumption and GCMs along with their interactions with emission scenarios, act as dominant sources of uncertainty. This paper provides a generalized framework for hydrologists to examine stationarity assumption of <span class="hlt">models</span> before considering them</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016AIPC.1738I0008A','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016AIPC.1738I0008A"><span>Optimization of grapevine <span class="hlt">yield</span> by applying mathematical <span class="hlt">models</span> to obtain quality wine products</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Alina, Dobrei; Alin, Dobrei; Eleonora, Nistor; Teodor, Cristea; Marius, Boldea; Florin, Sala</p> <p>2016-06-01</p> <p>Relationship between the crop load and the grape <span class="hlt">yield</span> and quality is a dynamic process, specific for wine cultivars and for fresh consumption varieties. <span class="hlt">Modeling</span> these relations is important for the improvement of technological works. This study evaluated the interrelationship of crop load (B - buds number) and several production parameters (Y - <span class="hlt">yield</span>; S - sugar; A - acidity; GaI - Glucoacidimetric index; AP - alcoholic potential; F - flavorings, WA - wine alcohol; SR - sugar residue, in Muscat Ottonel wine cultivar and Y - <span class="hlt">yield</span>; S - sugar; A - acidity; GaI - Glucoacidimetric Index; CP - commercial production; BS - berries size in the Victoria table grape cultivar). In both varieties have been identified correlations between the independent variable (B - buds number as a result of pruning and training practices) and quality parameters analyzed (r = -0.699 for B vsY relationship; r = 0.961 for the relationship B vs S; r = -0.959 for B vs AP relationship; r = 0.743 for the relationship Y vs S, p <0.01, in the Muscat Ottonel cultivar, respectively r = -0.907 for relationship B vs Y; r = -0.975 for B vs CP relationship; r = -0.971 for relationship B vs BS; r = 0.990 for CP vs BS relationship in the Victoria cultivar. Through regression analysis were obtained <span class="hlt">models</span> that describe the variation concerning production and quality parameters in relation to the independent variable (B - buds number) with statistical significance results.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1424381-current-irrigation-sustainable-united-states-integrated-assessment-climate-change-impact-water-resources-irrigated-crop-yields','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1424381-current-irrigation-sustainable-united-states-integrated-assessment-climate-change-impact-water-resources-irrigated-crop-yields"><span>Is current irrigation sustainable in the United States? An integrated assessment of climate change impact on water resources and irrigated crop <span class="hlt">yields</span></span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>Blanc, Elodie; Caron, Justin; Fant, Charles; ...</p> <p>2017-06-27</p> <p>While climate change impacts on crop <span class="hlt">yields</span> has been extensively studied, estimating the impact of water shortages on irrigated crop <span class="hlt">yields</span> is challenging because the water resources management system is complex. To investigate this issue, we integrate a crop <span class="hlt">yield</span> reduction module and a water resources <span class="hlt">model</span> into the MIT Integrated Global System <span class="hlt">Modeling</span> framework, an integrated assessment <span class="hlt">model</span> linking a global economic <span class="hlt">model</span> to an Earth system <span class="hlt">model</span>. We assess the effects of climate and socioeconomic changes on water availability for irrigation in the U.S. as well as subsequent impacts on crop <span class="hlt">yields</span> by 2050, while accounting for climatemore » change <span class="hlt">projection</span> uncertainty. We find that climate and socioeconomic changes will increase water shortages and strongly reduce irrigated <span class="hlt">yields</span> for specific crops (i.e., cotton and forage), or in specific regions (i.e., the Southwest) where irrigation is not sustainable. Crop <span class="hlt">modeling</span> studies that do not represent changes in irrigation availability can thus be misleading. Yet, since the most water-stressed basins represent a relatively small share of U.S. irrigated areas, the overall reduction in U.S. crop <span class="hlt">yields</span> is small. The response of crop <span class="hlt">yields</span> to climate change and water stress also suggests that some level of adaptation will be feasible, like relocating croplands to regions with sustainable irrigation or switching to less irrigation intensive crops. Finally, additional simulations show that greenhouse gas (GHG) mitigation can alleviate the effect of water stress on irrigated crop <span class="hlt">yields</span>, enough to offset the reduced CO 2 fertilization effect compared to an unconstrained GHG emission scenario.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017EaFut...5..877B','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017EaFut...5..877B"><span>Is current irrigation sustainable in the United States? An integrated assessment of climate change impact on water resources and irrigated crop <span class="hlt">yields</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Blanc, Elodie; Caron, Justin; Fant, Charles; Monier, Erwan</p> <p>2017-08-01</p> <p>While climate change impacts on crop <span class="hlt">yields</span> has been extensively studied, estimating the impact of water shortages on irrigated crop <span class="hlt">yields</span> is challenging because the water resources management system is complex. To investigate this issue, we integrate a crop <span class="hlt">yield</span> reduction module and a water resources <span class="hlt">model</span> into the MIT Integrated Global System <span class="hlt">Modeling</span> framework, an integrated assessment <span class="hlt">model</span> linking a global economic <span class="hlt">model</span> to an Earth system <span class="hlt">model</span>. We assess the effects of climate and socioeconomic changes on water availability for irrigation in the U.S. as well as subsequent impacts on crop <span class="hlt">yields</span> by 2050, while accounting for climate change <span class="hlt">projection</span> uncertainty. We find that climate and socioeconomic changes will increase water shortages and strongly reduce irrigated <span class="hlt">yields</span> for specific crops (i.e., cotton and forage), or in specific regions (i.e., the Southwest) where irrigation is not sustainable. Crop <span class="hlt">modeling</span> studies that do not represent changes in irrigation availability can thus be misleading. Yet, since the most water-stressed basins represent a relatively small share of U.S. irrigated areas, the overall reduction in U.S. crop <span class="hlt">yields</span> is small. The response of crop <span class="hlt">yields</span> to climate change and water stress also suggests that some level of adaptation will be feasible, like relocating croplands to regions with sustainable irrigation or switching to less irrigation intensive crops. Finally, additional simulations show that greenhouse gas (GHG) mitigation can alleviate the effect of water stress on irrigated crop <span class="hlt">yields</span>, enough to offset the reduced CO2 fertilization effect compared to an unconstrained GHG emission scenario.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28989943','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28989943"><span>Is current irrigation sustainable in the United States? An integrated assessment of climate change impact on water resources and irrigated crop <span class="hlt">yields</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Blanc, Elodie; Caron, Justin; Fant, Charles; Monier, Erwan</p> <p>2017-08-01</p> <p>While climate change impacts on crop <span class="hlt">yields</span> has been extensively studied, estimating the impact of water shortages on irrigated crop <span class="hlt">yields</span> is challenging because the water resources management system is complex. To investigate this issue, we integrate a crop <span class="hlt">yield</span> reduction module and a water resources <span class="hlt">model</span> into the MIT Integrated Global System <span class="hlt">Modeling</span> framework, an integrated assessment <span class="hlt">model</span> linking a global economic <span class="hlt">model</span> to an Earth system <span class="hlt">model</span>. We assess the effects of climate and socioeconomic changes on water availability for irrigation in the U.S. as well as subsequent impacts on crop <span class="hlt">yields</span> by 2050, while accounting for climate change <span class="hlt">projection</span> uncertainty. We find that climate and socioeconomic changes will increase water shortages and strongly reduce irrigated <span class="hlt">yields</span> for specific crops (i.e., cotton and forage), or in specific regions (i.e., the Southwest) where irrigation is not sustainable. Crop <span class="hlt">modeling</span> studies that do not represent changes in irrigation availability can thus be misleading. Yet, since the most water-stressed basins represent a relatively small share of U.S. irrigated areas, the overall reduction in U.S. crop <span class="hlt">yields</span> is small. The response of crop <span class="hlt">yields</span> to climate change and water stress also suggests that some level of adaptation will be feasible, like relocating croplands to regions with sustainable irrigation or switching to less irrigation intensive crops. Finally, additional simulations show that greenhouse gas (GHG) mitigation can alleviate the effect of water stress on irrigated crop <span class="hlt">yields</span>, enough to offset the reduced CO 2 fertilization effect compared to an unconstrained GHG emission scenario.</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_16");'>16</a></li> <li><a href="#" onclick='return showDiv("page_17");'>17</a></li> <li class="active"><span>18</span></li> <li><a href="#" onclick='return showDiv("page_19");'>19</a></li> <li><a href="#" onclick='return showDiv("page_20");'>20</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_18 --> <div id="page_19" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_17");'>17</a></li> <li><a href="#" onclick='return showDiv("page_18");'>18</a></li> <li class="active"><span>19</span></li> <li><a href="#" onclick='return showDiv("page_20");'>20</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="361"> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/servlets/purl/1424381','SCIGOV-STC'); return false;" href="https://www.osti.gov/servlets/purl/1424381"><span>Is current irrigation sustainable in the United States? An integrated assessment of climate change impact on water resources and irrigated crop <span class="hlt">yields</span></span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Blanc, Elodie; Caron, Justin; Fant, Charles</p> <p></p> <p>While climate change impacts on crop <span class="hlt">yields</span> has been extensively studied, estimating the impact of water shortages on irrigated crop <span class="hlt">yields</span> is challenging because the water resources management system is complex. To investigate this issue, we integrate a crop <span class="hlt">yield</span> reduction module and a water resources <span class="hlt">model</span> into the MIT Integrated Global System <span class="hlt">Modeling</span> framework, an integrated assessment <span class="hlt">model</span> linking a global economic <span class="hlt">model</span> to an Earth system <span class="hlt">model</span>. We assess the effects of climate and socioeconomic changes on water availability for irrigation in the U.S. as well as subsequent impacts on crop <span class="hlt">yields</span> by 2050, while accounting for climatemore » change <span class="hlt">projection</span> uncertainty. We find that climate and socioeconomic changes will increase water shortages and strongly reduce irrigated <span class="hlt">yields</span> for specific crops (i.e., cotton and forage), or in specific regions (i.e., the Southwest) where irrigation is not sustainable. Crop <span class="hlt">modeling</span> studies that do not represent changes in irrigation availability can thus be misleading. Yet, since the most water-stressed basins represent a relatively small share of U.S. irrigated areas, the overall reduction in U.S. crop <span class="hlt">yields</span> is small. The response of crop <span class="hlt">yields</span> to climate change and water stress also suggests that some level of adaptation will be feasible, like relocating croplands to regions with sustainable irrigation or switching to less irrigation intensive crops. Finally, additional simulations show that greenhouse gas (GHG) mitigation can alleviate the effect of water stress on irrigated crop <span class="hlt">yields</span>, enough to offset the reduced CO 2 fertilization effect compared to an unconstrained GHG emission scenario.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFM.B53D1984K','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFM.B53D1984K"><span>Drought mitigation in perennial crops by fertilization and adjustments of regional <span class="hlt">yield</span> <span class="hlt">models</span> for future climate variability</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Kantola, I. B.; Blanc-Betes, E.; Gomez-Casanovas, N.; Masters, M. D.; Bernacchi, C.; DeLucia, E. H.</p> <p>2017-12-01</p> <p>Increased variability and intensity of precipitation in the Midwest agricultural belt due to climate change is a major concern. The success of perennial bioenergy crops in replacing maize for bioethanol production is dependent on sustained <span class="hlt">yields</span> that exceed maize, and the marketing of perennial crops often emphasizes the resilience of perennial agriculture to climate stressors. Land conversion from maize for bioethanol to Miscanthus x giganteus (miscanthus) increases <span class="hlt">yields</span> and annual evapotranspiration rates (ET). However, establishment of miscanthus also increases biome water use efficiency (the ratio between net ecosystem productivity after harvest and ET), due to greater belowground biomass in miscanthus than in maize or soybean. In 2012, a widespread drought reduced the <span class="hlt">yield</span> of 5-year-old miscanthus plots in central Illinois by 36% compared to the previous two years. Eddy covariance data indicated continued soil water deficit during the hydrologically-normal growing season in 2013 and miscanthus <span class="hlt">yield</span> failed to rebound as expected, lagging behind pre-drought <span class="hlt">yields</span> by an average of 53% over the next three years. In early 2014, nitrogen fertilizer was applied to half of mature (7-year-old) miscanthus plots in an effort to improve <span class="hlt">yields</span>. In plots with annual post-emergence application of 60 kg ha-1 of urea, peak biomass was 29% greater than unfertilized miscanthus in 2014, and 113% greater in 2015, achieving statistically similar <span class="hlt">yields</span> to the pre-drought average. Regional-scale <span class="hlt">models</span> of perennial crop productivity use 30-year climate averages that are inadequate for predicting long-term effects of short-term extremes on perennial crops. <span class="hlt">Modeled</span> predictions of perennial crop productivity incorporating repeated extreme weather events, observed crop response, and the use of management practices to mitigate water deficit demonstrate divergent effects on predicted <span class="hlt">yields</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/1337598-climate-change-maize-yield-iowa','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/1337598-climate-change-maize-yield-iowa"><span>Climate change and maize <span class="hlt">yield</span> in Iowa</span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Xu, Hong; Twine, Tracy E.; Girvetz, Evan</p> <p></p> <p>Climate is changing across the world, including the major maize-growing state of Iowa in the USA. To maintain crop <span class="hlt">yields</span>, farmers will need a suite of adaptation strategies, and choice of strategy will depend on how the local to regional climate is expected to change. Here we predict how maize <span class="hlt">yield</span> might change through the 21 st century as compared with late 20 th century <span class="hlt">yields</span> across Iowa, USA, a region representing ideal climate and soils for maize production that contributes substantially to the global maize economy. To account for climate <span class="hlt">model</span> uncertainty, we drive a dynamic ecosystem <span class="hlt">model</span> withmore » output from six climate <span class="hlt">models</span> and two future climate forcing scenarios. Despite a wide range in the predicted amount of warming and change to summer precipitation, all simulations predict a decrease in maize <span class="hlt">yields</span> from late 20 th century to middle and late 21 st century ranging from 15% to 50%. Linear regression of all <span class="hlt">models</span> predicts a 6% state-averaged <span class="hlt">yield</span> decrease for every 1°C increase in warm season average air temperature. When the influence of moisture stress on crop growth is removed from the <span class="hlt">model</span>, <span class="hlt">yield</span> decreases either remain the same or are reduced, depending on predicted changes in warm season precipitation. Lastly, our results suggest that even if maize were to receive all the water it needed, under the strongest climate forcing scenario <span class="hlt">yields</span> will decline by 10-20% by the end of the 21 st century.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1337598-climate-change-maize-yield-iowa','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1337598-climate-change-maize-yield-iowa"><span>Climate change and maize <span class="hlt">yield</span> in Iowa</span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>Xu, Hong; Twine, Tracy E.; Girvetz, Evan</p> <p>2016-05-24</p> <p>Climate is changing across the world, including the major maize-growing state of Iowa in the USA. To maintain crop <span class="hlt">yields</span>, farmers will need a suite of adaptation strategies, and choice of strategy will depend on how the local to regional climate is expected to change. Here we predict how maize <span class="hlt">yield</span> might change through the 21 st century as compared with late 20 th century <span class="hlt">yields</span> across Iowa, USA, a region representing ideal climate and soils for maize production that contributes substantially to the global maize economy. To account for climate <span class="hlt">model</span> uncertainty, we drive a dynamic ecosystem <span class="hlt">model</span> withmore » output from six climate <span class="hlt">models</span> and two future climate forcing scenarios. Despite a wide range in the predicted amount of warming and change to summer precipitation, all simulations predict a decrease in maize <span class="hlt">yields</span> from late 20 th century to middle and late 21 st century ranging from 15% to 50%. Linear regression of all <span class="hlt">models</span> predicts a 6% state-averaged <span class="hlt">yield</span> decrease for every 1°C increase in warm season average air temperature. When the influence of moisture stress on crop growth is removed from the <span class="hlt">model</span>, <span class="hlt">yield</span> decreases either remain the same or are reduced, depending on predicted changes in warm season precipitation. Lastly, our results suggest that even if maize were to receive all the water it needed, under the strongest climate forcing scenario <span class="hlt">yields</span> will decline by 10-20% by the end of the 21 st century.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://cfpub.epa.gov/si/si_public_record_report.cfm?dirEntryId=34943&Lab=ORD&keyword=gay&actType=&TIMSType=+&TIMSSubTypeID=&DEID=&epaNumber=&ntisID=&archiveStatus=Both&ombCat=Any&dateBeginCreated=&dateEndCreated=&dateBeginPublishedPresented=&dateEndPublishedPresented=&dateBeginUpdated=&dateEndUpdated=&dateBeginCompleted=&dateEndCompleted=&personID=&role=Any&journalID=&publisherID=&sortBy=revisionDate&count=50','EPA-EIMS'); return false;" href="https://cfpub.epa.gov/si/si_public_record_report.cfm?dirEntryId=34943&Lab=ORD&keyword=gay&actType=&TIMSType=+&TIMSSubTypeID=&DEID=&epaNumber=&ntisID=&archiveStatus=Both&ombCat=Any&dateBeginCreated=&dateEndCreated=&dateBeginPublishedPresented=&dateEndPublishedPresented=&dateBeginUpdated=&dateEndUpdated=&dateBeginCompleted=&dateEndCompleted=&personID=&role=Any&journalID=&publisherID=&sortBy=revisionDate&count=50"><span>THE IMPACTS OF CLIMATE CHANGE ON RICE <span class="hlt">YIELD</span>: A COMPARISON OF FOUR <span class="hlt">MODEL</span> PERFORMANCES</span></a></p> <p><a target="_blank" href="http://oaspub.epa.gov/eims/query.page">EPA Science Inventory</a></p> <p></p> <p></p> <p>Increasing concentrations of carbon dioxide (CO2) and other greenhouse gases are expected to modify temperature and rainfall the next 50-100 years. echanisms and hypotheses of plant response to these changes could be incorporated in <span class="hlt">models</span> predicting crop <span class="hlt">yield</span> estimates to bette...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017JHyd..551..328D','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017JHyd..551..328D"><span>Quantification of the specific <span class="hlt">yield</span> in a two-layer hard-rock aquifer <span class="hlt">model</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Durand, Véronique; Léonardi, Véronique; de Marsily, Ghislain; Lachassagne, Patrick</p> <p>2017-08-01</p> <p>Hard rock aquifers (HRA) have long been considered to be two-layer systems, with a mostly capacitive layer just below the surface, the saprolite layer, and a mainly transmissive layer underneath, the fractured layer. Although this hydrogeological conceptual <span class="hlt">model</span> is widely accepted today within the scientific community, it is difficult to quantify the respective storage properties of each layer with an equivalent porous medium <span class="hlt">model</span>. Based on an HRA field site, this paper attempts to quantify in a distinct manner the respective values of the specific <span class="hlt">yield</span> (Sy) in the saprolite and the fractured layer, with the help of a deterministic hydrogeological <span class="hlt">model</span>. The study site is the Plancoët migmatitic aquifer located in north-western Brittany, France, with piezometric data from 36 observation wells surveyed every two weeks for eight years. Whereas most of the piezometers (26) are located where the water table lies within the saprolite, thus representing the specific <span class="hlt">yield</span> of the unconfined layer (Sy1), 10 of them are representative of the unconfined fractured layer (Sy2), due to their position where the saprolite is eroded or unsaturated. The two-layer <span class="hlt">model</span>, based on field observations of the layer geometry, runs with the MODFLOW code. 81 values of the Sy1/Sy2 parameter sets were tested manually, as an inverse calibration was not able to calibrate these parameters. In order to calibrate the storage properties, a new quality-of-fit criterion called ;AdVar; was also developed, equal to the mean squared deviation of the seasonal piezometric amplitude variation. Contrary to the variance, AdVar is able to select the best values for the specific <span class="hlt">yield</span> in each layer. It is demonstrated that the saprolite layer is about 2.5 times more capacitive than the fractured layer, with Sy1 = 10% (7% < Sy1 < 15%) against Sy2 = 2% (1% < Sy2 < 3%), in this particular example.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016AGUFMPA34A..03N','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016AGUFMPA34A..03N"><span>Hydrological <span class="hlt">Modeling</span> in the Bull Run Watershed in Support of a Piloting Utility <span class="hlt">Modeling</span> Applications (PUMA) <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Nijssen, B.; Chiao, T. H.; Lettenmaier, D. P.; Vano, J. A.</p> <p>2016-12-01</p> <p>Hydrologic <span class="hlt">models</span> with varying complexities and structures are commonly used to evaluate the impact of climate change on future hydrology. While the uncertainties in future climate <span class="hlt">projections</span> are well documented, uncertainties in streamflow <span class="hlt">projections</span> associated with hydrologic <span class="hlt">model</span> structure and parameter estimation have received less attention. In this study, we implemented and calibrated three hydrologic <span class="hlt">models</span> (the Distributed Hydrology Soil Vegetation <span class="hlt">Model</span> (DHSVM), the Precipitation-Runoff <span class="hlt">Modeling</span> System (PRMS), and the Variable Infiltration Capacity <span class="hlt">model</span> (VIC)) for the Bull Run watershed in northern Oregon using consistent data sources and best practice calibration protocols. The <span class="hlt">project</span> was part of a Piloting Utility <span class="hlt">Modeling</span> Applications (PUMA) <span class="hlt">project</span> with the Portland Water Bureau (PWB) under the umbrella of the Water Utility Climate Alliance (WUCA). Ultimately PWB would use the <span class="hlt">model</span> evaluation to select a <span class="hlt">model</span> to perform in-house climate change analysis for Bull Run Watershed. This presentation focuses on the experimental design of the comparison <span class="hlt">project</span>, <span class="hlt">project</span> findings and the collaboration between the team at the University of Washington and at PWB. After calibration, the three <span class="hlt">models</span> showed similar capability to reproduce seasonal and inter-annual variations in streamflow, but differed in their ability to capture extreme events. Furthermore, the annual and seasonal hydrologic sensitivities to changes in climate forcings differed among <span class="hlt">models</span>, potentially attributable to different <span class="hlt">model</span> representations of snow and vegetation processes.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1238738-modeling-impact-bubbling-bed-hydrodynamics-tar-yield-its-fluctuations-during-biomass-fast-pyrolysis','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1238738-modeling-impact-bubbling-bed-hydrodynamics-tar-yield-its-fluctuations-during-biomass-fast-pyrolysis"><span><span class="hlt">Modeling</span> the impact of bubbling bed hydrodynamics on tar <span class="hlt">yield</span> and its fluctuations during biomass fast pyrolysis</span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>Xiong, Qingang; Ramirez, Emilio; Pannala, Sreekanth; ...</p> <p>2015-10-09</p> <p>The impact of bubbling bed hydrodynamics on temporal variations in the exit tar <span class="hlt">yield</span> for biomass fast pyrolysis was investigated using computational simulations of an experimental laboratory-scale reactor. A multi-fluid computational fluid dynamics <span class="hlt">model</span> was employed to simulate the differential conservation equations in the reactor, and this was combined with a multi-component, multi-step pyrolysis kinetics scheme for biomass to account for chemical reactions. The predicted mean tar <span class="hlt">yields</span> at the reactor exit appear to match corresponding experimental observations. Parametric studies predicted that increasing the fluidization velocity should improve the mean tar <span class="hlt">yield</span> but increase its temporal variations. Increases in themore » mean tar <span class="hlt">yield</span> coincide with reducing the diameter of sand particles or increasing the initial sand bed height. However, trends in tar <span class="hlt">yield</span> variability are more complex than the trends in mean <span class="hlt">yield</span>. The standard deviation in tar <span class="hlt">yield</span> reaches a maximum with changes in sand particle size. As a result, the standard deviation in tar <span class="hlt">yield</span> increases with the increases in initial bed height in freely bubbling state, while reaches a maximum in slugging state.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016ERL....11k3004K','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016ERL....11k3004K"><span>Meta-analysis of climate impacts and uncertainty on crop <span class="hlt">yields</span> in Europe</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Knox, Jerry; Daccache, Andre; Hess, Tim; Haro, David</p> <p>2016-11-01</p> <p>Future changes in temperature, rainfall and soil moisture could threaten agricultural land use and crop productivity in Europe, with major consequences for food security. We assessed the <span class="hlt">projected</span> impacts of climate change on the <span class="hlt">yield</span> of seven major crop types (viz wheat, barley, maize, potato, sugar beet, rice and rye) grown in Europe using a systematic review (SR) and meta-analysis of data reported in 41 original publications from an initial screening of 1748 studies. Our approach adopted an established SR procedure developed by the Centre for Evidence Based Conservation constrained by inclusion criteria and defined methods for literature searches, data extraction, meta-analysis and synthesis. Whilst similar studies exist to assess climate impacts on crop <span class="hlt">yield</span> in Africa and South Asia, surprisingly, no comparable synthesis has been undertaken for Europe. Based on the reported results (n = 729) we show that the <span class="hlt">projected</span> change in average <span class="hlt">yield</span> in Europe for the seven crops by the 2050s is +8%. For wheat and sugar beet, average <span class="hlt">yield</span> changes of +14% and +15% are <span class="hlt">projected</span>, respectively. There were strong regional differences with crop impacts in northern Europe being higher (+14%) and more variable compared to central (+6%) and southern (+5) Europe. Maize is <span class="hlt">projected</span> to suffer the largest negative mean change in southern Europe (-11%). Evidence of climate impacts on <span class="hlt">yield</span> was extensive for wheat, maize, sugar beet and potato, but very limited for barley, rice and rye. The implications for supporting climate adaptation policy and informing climate impacts crop science research in Europe are discussed.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2004JMPSo..52.1125J','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2004JMPSo..52.1125J"><span>A generalized self-consistent polycrystal <span class="hlt">model</span> for the <span class="hlt">yield</span> strength of nanocrystalline materials</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Jiang, B.; Weng, G. J.</p> <p>2004-05-01</p> <p>Inspired by recent molecular dynamic simulations of nanocrystalline solids, a generalized self-consistent polycrystal <span class="hlt">model</span> is proposed to study the transition of <span class="hlt">yield</span> strength of polycrystalline metals as the grain size decreases from the traditional coarse grain to the nanometer scale. These atomic simulations revealed that a significant portion of atoms resides in the grain boundaries and the plastic flow of the grain-boundary region is responsible for the unique characteristics displayed by such materials. The proposed <span class="hlt">model</span> takes each oriented grain and its immediate grain boundary to form a pair, which in turn is embedded in the infinite effective medium with a property representing the orientational average of all these pairs. We make use of the linear comparison composite to determine the nonlinear behavior of the nanocrystalline polycrystal through the concept of secant moduli. To this end an auxiliary problem of Christensen and Lo (J. Mech. Phys. Solids 27 (1979) 315) superimposed on the eigenstrain field of Luo and Weng (Mech. Mater. 6 (1987) 347) is first considered, and then the nonlinear elastoplastic polycrystal problem is addressed. The plastic flow of each grain is calculated from its crystallographic slips, but the plastic behavior of the grain-boundary phase is <span class="hlt">modeled</span> as that of an amorphous material. The calculated <span class="hlt">yield</span> stress for Cu is found to follow the classic Hall-Petch relation initially, but as the gain size decreases it begins to depart from it. The <span class="hlt">yield</span> strength eventually attains a maximum at a critical grain size and then the Hall-Petch slope turns negative in the nano-range. It is also found that, when the Hall-Petch relation is observed, the plastic behavior of the polycrystal is governed by crystallographic slips in the grains, but when the slope is negative it is governed by the grain boundaries. During the transition both grains and grain boundaries contribute competitively.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=lunar&id=EJ956294','ERIC'); return false;" href="https://eric.ed.gov/?q=lunar&id=EJ956294"><span>The Lunar Phases <span class="hlt">Project</span>: A Mental <span class="hlt">Model</span>-Based Observational <span class="hlt">Project</span> for Undergraduate Nonscience Majors</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Meyer, Angela Osterman; Mon, Manuel J.; Hibbard, Susan T.</p> <p>2011-01-01</p> <p>We present our Lunar Phases <span class="hlt">Project</span>, an ongoing effort utilizing students' actual observations within a mental <span class="hlt">model</span> building framework to improve student understanding of the causes and process of the lunar phases. We implement this <span class="hlt">project</span> with a sample of undergraduate, nonscience major students enrolled in a midsized public university located…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4554847','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4554847"><span>Genetic Parameters for Milk <span class="hlt">Yield</span> and Lactation Persistency Using Random Regression <span class="hlt">Models</span> in Girolando Cattle</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Canaza-Cayo, Ali William; Lopes, Paulo Sávio; da Silva, Marcos Vinicius Gualberto Barbosa; de Almeida Torres, Robledo; Martins, Marta Fonseca; Arbex, Wagner Antonio; Cobuci, Jaime Araujo</p> <p>2015-01-01</p> <p>A total of 32,817 test-day milk <span class="hlt">yield</span> (TDMY) records of the first lactation of 4,056 Girolando cows daughters of 276 sires, collected from 118 herds between 2000 and 2011 were utilized to estimate the genetic parameters for TDMY via random regression <span class="hlt">models</span> (RRM) using Legendre’s polynomial functions whose orders varied from 3 to 5. In addition, nine measures of persistency in milk <span class="hlt">yield</span> (PSi) and the genetic trend of 305-day milk <span class="hlt">yield</span> (305MY) were evaluated. The fit quality criteria used indicated RRM employing the Legendre’s polynomial of orders 3 and 5 for fitting the genetic additive and permanent environment effects, respectively, as the best <span class="hlt">model</span>. The heritability and genetic correlation for TDMY throughout the lactation, obtained with the best <span class="hlt">model</span>, varied from 0.18 to 0.23 and from −0.03 to 1.00, respectively. The heritability and genetic correlation for persistency and 305MY varied from 0.10 to 0.33 and from −0.98 to 1.00, respectively. The use of PS7 would be the most suitable option for the evaluation of Girolando cattle. The estimated breeding values for 305MY of sires and cows showed significant and positive genetic trends. Thus, the use of selection indices would be indicated in the genetic evaluation of Girolando cattle for both traits. PMID:26323397</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC31C1014Z','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC31C1014Z"><span>Evaluation of <span class="hlt">Projected</span> Agricultural Climate Risk over the Contiguous US</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Zhu, X.; Troy, T. J.; Devineni, N.</p> <p>2017-12-01</p> <p>Food demands are rising due to an increasing population with changing food preferences, which places pressure on agricultural production. Additionally, climate extremes have recently highlighted the vulnerability of our agricultural system to climate variability. This study seeks to fill two important gaps in current knowledge: how does the widespread response of irrigated crops differ from rainfed and how can we best account for uncertainty in <span class="hlt">yield</span> responses. We developed a stochastic approach to evaluate climate risk quantitatively to better understand the historical impacts of climate change and estimate the future impacts it may bring about to agricultural system. Our <span class="hlt">model</span> consists of Bayesian regression, distribution fitting, and Monte Carlo simulation to simulate rainfed and irrigated crop <span class="hlt">yields</span> at the US county level. The <span class="hlt">model</span> was fit using historical data for 1970-2010 and was then applied over different climate regions in the contiguous US using the CMIP5 climate <span class="hlt">projections</span>. The relative importance of many major growing season climate indices, such as consecutive dry days without rainfall or heavy precipitation, was evaluated to determine what climate indices play a role in affecting future crop <span class="hlt">yields</span>. The statistical <span class="hlt">modeling</span> framework also evaluated the impact of irrigation by using county-level irrigated and rainfed <span class="hlt">yields</span> separately. Furthermore, the <span class="hlt">projected</span> years with negative <span class="hlt">yield</span> anomalies were specifically evaluated in terms of magnitude, trend and potential climate drivers. This framework provides estimates of the agricultural climate risk for the 21st century that account for the full uncertainty of climate occurrences, range of crop response, and spatial correlation in climate. The results of this study can contribute to decision making about crop choice and water use in an uncertain future climate.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20100038446','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20100038446"><span><span class="hlt">Project</span> M: Scale <span class="hlt">Model</span> of Lunar Landing Site of Apollo 17</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>O'Brien, Hollie; Crain, Timothy P.</p> <p>2010-01-01</p> <p>The basis of the <span class="hlt">project</span> was creating a scale <span class="hlt">model</span> representation of the Apollo 17 lunar landing site. Vital components included surface slope characteristics, crater sizes and locations, prominent rocks, and lighting conditions. The <span class="hlt">model</span> was made for <span class="hlt">Project</span> M support when evaluating approach and terminal descent as well as when planning surface operations with respect to the terrain. The <span class="hlt">project</span> had five main mi lestones during the length of the <span class="hlt">project</span>. The first was examining the best method to use to re-create the Apollo 17 landing site and then reviewing research fmdings with Dr. Tim Crain and EO staff which occurred on June 25, 2010 at a meeting. The second step was formulating a construction plan, budget, and schedule and then presenting the plan for authority to proceed which occurred on July 6,2010. The third part was building a prototype to test materials and building processes which were completed by July 13, 2010. Next was assembling the landing site <span class="hlt">model</span> and presenting a mid-term construction status report on July 29, 2010. The fifth and final milestone was demonstrating the <span class="hlt">model</span> and presenting an exit pitch which happened on August 4, 2010. The <span class="hlt">project</span> was very technical: it needed a lot of research about moon topography, lighting conditions and angles of the sun on the moon, Apollo 17, and Autonomous Landing and Hazard Avoidance Technology (ALHAT), before starting the actual building process. This required using Spreadsheets, searching internet sources and conducting personal meetings with <span class="hlt">project</span> representatives. This information assisted the interns in deciding the scale of the <span class="hlt">model</span> with respect to cracks, craters and rocks and their relative sizes as the objects mentioned could interfere with any of the Lunar Landers: Apollo, <span class="hlt">Project</span> M and future Landers. The <span class="hlt">project</span> concluded with the completion of a three dimensional scale <span class="hlt">model</span> of the Apollo 17 Lunar landing site. This <span class="hlt">model</span> assists <span class="hlt">Project</span> M members because they can now visualize</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/19910004035','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/19910004035"><span>Space market <span class="hlt">model</span> development <span class="hlt">project</span>, phase 3</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Bishop, Peter C.; Hamel, Gary P.</p> <p>1989-01-01</p> <p>The results of a research <span class="hlt">project</span> investigating information needs for space commercialization is described. The Space Market <span class="hlt">Model</span> Development <span class="hlt">Project</span> (SMMDP) was designed to help NASA identify the information needs of the business community and to explore means to meet those needs. The activity of the SMMDP is reviewed and a report of its operation via three sections is presented. The first part contains a brief historical review of the <span class="hlt">project</span> since inception. The next part reports results of Phase 3, the most recent stage of activity. Finally, overall conclusions and observations based on the SMMDP research results are presented.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2010AGUFMGC34A..06C','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2010AGUFMGC34A..06C"><span>Regional-scale <span class="hlt">yield</span> simulations using crop and climate <span class="hlt">models</span>: assessing uncertainties, sensitivity to temperature and adaptation options</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Challinor, A. J.</p> <p>2010-12-01</p> <p>Recent progress in assessing the impacts of climate variability and change on crops using multiple regional-scale simulations of crop and climate (i.e. ensembles) is presented. Simulations for India and China used perturbed responses to elevated carbon dioxide constrained using observations from FACE studies and controlled environments. Simulations with crop parameter sets representing existing and potential future adapted varieties were also carried out. The results for India are compared to sensitivity tests on two other crop <span class="hlt">models</span>. For China, a parallel approach used socio-economic data to account for autonomous farmer adaptation. Results for the USA analysed cardinal temperatures under a range of local warming scenarios for 2711 varieties of spring wheat. The results are as follows: 1. Quantifying and reducing uncertainty. The relative contribution of uncertainty in crop and climate simulation to the total uncertainty in <span class="hlt">projected</span> <span class="hlt">yield</span> changes is examined. The observational constraints from FACE and controlled environment studies are shown to be the likely critical factor in maintaining relatively low crop parameter uncertainty. Without these constraints, crop simulation uncertainty in a doubled CO2 environment would likely be greater than uncertainty in simulating climate. However, consensus across crop <span class="hlt">models</span> in India varied across different biophysical processes. 2. The response of <span class="hlt">yield</span> to changes in local mean temperature was examined and compared to that found in the literature. No consistent response to temperature change was found across studies. 3. Implications for adaptation. China. The simulations of spring wheat in China show the relative importance of tolerance to water and heat stress in avoiding future crop failures. The greatest potential for reducing the number of harvests less than one standard deviation below the baseline mean <span class="hlt">yield</span> value comes from alleviating water stress; the greatest potential for reducing harvests less than two</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://ntrs.nasa.gov/search.jsp?R=20000094519&hterms=projects+Physics&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D60%26Ntt%3Dprojects%2BPhysics','NASA-TRS'); return false;" href="https://ntrs.nasa.gov/search.jsp?R=20000094519&hterms=projects+Physics&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D60%26Ntt%3Dprojects%2BPhysics"><span>GCSS Idealized Cirrus <span class="hlt">Model</span> Comparison <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Starr, David OC.; Benedetti, Angela; Boehm, Matt; Brown, Philip R. A.; Gierens, Klaus; Girard, Eric; Giraud, Vincent; Jakob, Christian; Jensen, Eric; Khvorostyanov, Vitaly; <a style="text-decoration: none; " href="javascript:void(0); " onClick="displayelement('author_20000094519'); toggleEditAbsImage('author_20000094519_show'); toggleEditAbsImage('author_20000094519_hide'); "> <img style="display:inline; width:12px; height:12px; " src="images/arrow-up.gif" width="12" height="12" border="0" alt="hide" id="author_20000094519_show"> <img style="width:12px; height:12px; display:none; " src="images/arrow-down.gif" width="12" height="12" border="0" alt="hide" id="author_20000094519_hide"></p> <p>2000-01-01</p> <p>The GCSS Working Group on Cirrus Cloud Systems (WG2) is conducting a systematic comparison and evaluation of cirrus cloud <span class="hlt">models</span>. This fundamental activity seeks to support the improvement of <span class="hlt">models</span> used for climate simulation and numerical weather prediction through assessment and improvement of the "process" <span class="hlt">models</span> underlying parametric treatments of cirrus cloud processes in large-scale <span class="hlt">models</span>. The WG2 Idealized Cirrus <span class="hlt">Model</span> Comparison <span class="hlt">Project</span> is an initial comparison of cirrus cloud simulations by a variety of cloud <span class="hlt">models</span> for a series of idealized situations with relatively simple initial conditions and forcing. The <span class="hlt">models</span> (16) represent the state-of-the-art and include 3-dimensional large eddy simulation (LES) <span class="hlt">models</span>, two-dimensional cloud resolving <span class="hlt">models</span> (CRMs), and single column <span class="hlt">model</span> (SCM) versions of GCMs. The <span class="hlt">model</span> microphysical components are similarly varied, ranging from single-moment bulk (relative humidity) schemes to fully size-resolved (bin) treatments where ice crystal growth is explicitly calculated. Radiative processes are included in the physics package of each <span class="hlt">model</span>. The baseline simulations include "warm" and "cold" cirrus cases where cloud top initially occurs at about -47C and -66C, respectively. All simulations are for nighttime conditions (no solar radiation) where the cloud is generated in an ice supersaturated layer, about 1 km in depth, with an ice pseudoadiabatic thermal stratification (neutral). Continuing cloud formation is forced via an imposed diabatic cooling representing a 3 cm/s uplift over a 4-hour time span followed by a 2-hour dissipation stage with no cooling. Variations of these baseline cases include no-radiation and stable-thermal-stratification cases. Preliminary results indicated the great importance of ice crystal fallout in determining even the gross cloud characteristics, such as average vertically-integrated ice water path (IWP). Significant inter-<span class="hlt">model</span> differences were found. Ice water fall speed is directly</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017JCoPh.346..242L','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017JCoPh.346..242L"><span>Data-driven reduced order <span class="hlt">models</span> for effective <span class="hlt">yield</span> strength and partitioning of strain in multiphase materials</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Latypov, Marat I.; Kalidindi, Surya R.</p> <p>2017-10-01</p> <p>There is a critical need for the development and verification of practically useful multiscale <span class="hlt">modeling</span> strategies for simulating the mechanical response of multiphase metallic materials with heterogeneous microstructures. In this contribution, we present data-driven reduced order <span class="hlt">models</span> for effective <span class="hlt">yield</span> strength and strain partitioning in such microstructures. These <span class="hlt">models</span> are built employing the recently developed framework of Materials Knowledge Systems that employ 2-point spatial correlations (or 2-point statistics) for the quantification of the heterostructures and principal component analyses for their low-dimensional representation. The <span class="hlt">models</span> are calibrated to a large collection of finite element (FE) results obtained for a diverse range of microstructures with various sizes, shapes, and volume fractions of the phases. The performance of the <span class="hlt">models</span> is evaluated by comparing the predictions of <span class="hlt">yield</span> strength and strain partitioning in two-phase materials with the corresponding predictions from a classical self-consistent <span class="hlt">model</span> as well as results of full-field FE simulations. The reduced-order <span class="hlt">models</span> developed in this work show an excellent combination of accuracy and computational efficiency, and therefore present an important advance towards computationally efficient microstructure-sensitive multiscale <span class="hlt">modeling</span> frameworks.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2008AGUFM.B41E..08L','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2008AGUFM.B41E..08L"><span>Smoke and Emissions <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (SEMIP)</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Larkin, N. K.; Raffuse, S.; Strand, T.; Solomon, R.; Sullivan, D.; Wheeler, N.</p> <p>2008-12-01</p> <p>Fire emissions and smoke impacts from wildland fire are a growing concern due to increasing fire season severity, dwindling tolerance of smoke by the public, tightening air quality regulations, and their role in climate change issues. Unfortunately, while a number of <span class="hlt">models</span> and <span class="hlt">modeling</span> system solutions are available to address these issues, the lack of quantitative information on the limitations and difference between smoke and emissions <span class="hlt">models</span> impedes the use of these tools for real-world applications (JFSP, 2007). We describe a new, open-access <span class="hlt">project</span> to directly address this issue, the open-access Smoke Emissions <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (SEMIP) and invite the community to participate. Preliminary work utilizing the modular BlueSky framework to directly compare fire location and size information, fuel loading amounts, fuel consumption rates, and fire emissions from a number of current <span class="hlt">models</span> that has found <span class="hlt">model-to-model</span> variability as high as two orders of magnitude for an individual fire. Fire emissions inventories also show significant variability on both regional and national scales that are dependant on the fire location information used (ground report vs. satellite), the fuel loading maps assumed, and the fire consumption <span class="hlt">models</span> employed. SEMIP expands on this work and creates an open-access database of <span class="hlt">model</span> results and observations with the goal of furthering <span class="hlt">model</span> development and <span class="hlt">model</span> prediction usability for real-world decision support.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2014SPIE.9150E..0LK','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2014SPIE.9150E..0LK"><span><span class="hlt">Model</span> based systems engineering for astronomical <span class="hlt">projects</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Karban, R.; Andolfato, L.; Bristow, P.; Chiozzi, G.; Esselborn, M.; Schilling, M.; Schmid, C.; Sommer, H.; Zamparelli, M.</p> <p>2014-08-01</p> <p><span class="hlt">Model</span> Based Systems Engineering (MBSE) is an emerging field of systems engineering for which the System <span class="hlt">Modeling</span> Language (SysML) is a key enabler for descriptive, prescriptive and predictive <span class="hlt">models</span>. This paper surveys some of the capabilities, expectations and peculiarities of tools-assisted MBSE experienced in real-life astronomical <span class="hlt">projects</span>. The examples range in depth and scope across a wide spectrum of applications (for example documentation, requirements, analysis, trade studies) and purposes (addressing a particular development need, or accompanying a <span class="hlt">project</span> throughout many - if not all - its lifecycle phases, fostering reuse and minimizing ambiguity). From the beginnings of the Active Phasing Experiment, through VLT instrumentation, VLTI infrastructure, Telescope Control System for the E-ELT, until Wavefront Control for the E-ELT, we show how stepwise refinements of tools, processes and methods have provided tangible benefits to customary system engineering activities like requirement flow-down, design trade studies, interfaces definition, and validation, by means of a variety of approaches (like <span class="hlt">Model</span> Checking, Simulation, <span class="hlt">Model</span> Transformation) and methodologies (like OOSEM, State Analysis)</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_17");'>17</a></li> <li><a href="#" onclick='return showDiv("page_18");'>18</a></li> <li class="active"><span>19</span></li> <li><a href="#" onclick='return showDiv("page_20");'>20</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_19 --> <div id="page_20" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_18");'>18</a></li> <li><a href="#" onclick='return showDiv("page_19");'>19</a></li> <li class="active"><span>20</span></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="381"> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018E3SWC..3303005B','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018E3SWC..3303005B"><span><span class="hlt">Project</span> Management Life Cycle <span class="hlt">Models</span> to Improve Management in High-rise Construction</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Burmistrov, Andrey; Siniavina, Maria; Iliashenko, Oksana</p> <p>2018-03-01</p> <p>The paper describes a possibility to improve <span class="hlt">project</span> management in high-rise buildings construction through the use of various <span class="hlt">Project</span> Management Life Cycle <span class="hlt">Models</span> (PMLC <span class="hlt">models</span>) based on traditional and agile <span class="hlt">project</span> management approaches. Moreover, the paper describes, how the split the whole large-scale <span class="hlt">project</span> to the "<span class="hlt">project</span> chain" will create the factor for better manageability of the large-scale buildings <span class="hlt">project</span> and increase the efficiency of the activities of all participants in such <span class="hlt">projects</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017JIEIA..98..493M','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017JIEIA..98..493M"><span><span class="hlt">Modeling</span> Manpower and Equipment Productivity in Tall Building Construction <span class="hlt">Projects</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Mudumbai Krishnaswamy, Parthasarathy; Rajiah, Murugasan; Vasan, Ramya</p> <p>2017-12-01</p> <p>Tall building construction <span class="hlt">projects</span> involve two critical resources of manpower and equipment. Their usage, however, widely varies due to several factors affecting their productivity. Currently, no systematic study for estimating and increasing their productivity is available. What is prevalent is the use of empirical data, experience of similar <span class="hlt">projects</span> and assumptions. As tall building <span class="hlt">projects</span> are here to stay and increase, to meet the emerging demands in ever shrinking urban spaces, it is imperative to explore ways and means of scientific productivity <span class="hlt">models</span> for basic construction activities: concrete, reinforcement, formwork, block work and plastering for the input of specific resources in a mixed environment of manpower and equipment usage. Data pertaining to 72 tall building <span class="hlt">projects</span> in India were collected and analyzed. Then, suitable productivity estimation <span class="hlt">models</span> were developed using multiple linear regression analysis and validated using independent field data. It is hoped that the <span class="hlt">models</span> developed in the study will be useful for quantity surveyors, cost engineers and <span class="hlt">project</span> managers to estimate productivity of resources in tall building <span class="hlt">projects</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/27991912','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/27991912"><span>Plausible rice <span class="hlt">yield</span> losses under future climate warming.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Zhao, Chuang; Piao, Shilong; Wang, Xuhui; Huang, Yao; Ciais, Philippe; Elliott, Joshua; Huang, Mengtian; Janssens, Ivan A; Li, Tao; Lian, Xu; Liu, Yongwen; Müller, Christoph; Peng, Shushi; Wang, Tao; Zeng, Zhenzhong; Peñuelas, Josep</p> <p>2016-12-19</p> <p>Rice is the staple food for more than 50% of the world's population 1-3 . Reliable prediction of changes in rice <span class="hlt">yield</span> is thus central for maintaining global food security. This is an extraordinary challenge. Here, we compare the sensitivity of rice <span class="hlt">yield</span> to temperature increase derived from field warming experiments and three <span class="hlt">modelling</span> approaches: statistical <span class="hlt">models</span>, local crop <span class="hlt">models</span> and global gridded crop <span class="hlt">models</span>. Field warming experiments produce a substantial rice <span class="hlt">yield</span> loss under warming, with an average temperature sensitivity of -5.2 ± 1.4% K -1 . Local crop <span class="hlt">models</span> give a similar sensitivity (-6.3 ± 0.4% K -1 ), but statistical and global gridded crop <span class="hlt">models</span> both suggest less negative impacts of warming on <span class="hlt">yields</span> (-0.8 ± 0.3% and -2.4 ± 3.7% K -1 , respectively). Using data from field warming experiments, we further propose a conditional probability approach to constrain the large range of global gridded crop <span class="hlt">model</span> results for the future <span class="hlt">yield</span> changes in response to warming by the end of the century (from -1.3% to -9.3% K -1 ). The constraint implies a more negative response to warming (-8.3 ± 1.4% K -1 ) and reduces the spread of the <span class="hlt">model</span> ensemble by 33%. This <span class="hlt">yield</span> reduction exceeds that estimated by the International Food Policy Research Institute assessment (-4.2 to -6.4% K -1 ) (ref. 4). Our study suggests that without CO 2 fertilization, effective adaptation and genetic improvement, severe rice <span class="hlt">yield</span> losses are plausible under intensive climate warming scenarios.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://www.ars.usda.gov/research/publications/publication/?seqNo115=318436','TEKTRAN'); return false;" href="http://www.ars.usda.gov/research/publications/publication/?seqNo115=318436"><span>The grain drain. Ozone effects on historical maize and soybean <span class="hlt">yields</span></span></a></p> <p><a target="_blank" href="https://www.ars.usda.gov/research/publications/find-a-publication/">USDA-ARS?s Scientific Manuscript database</a></p> <p></p> <p></p> <p>Numerous controlled experiments find that elevated ground-level ozone concentrations ([O3]) damage crops and reduce <span class="hlt">yield</span>. There have been no estimates of the actual field <span class="hlt">yield</span> losses in the USA from [O3], even though such estimates would be valuable for <span class="hlt">projections</span> of future food production and fo...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018PhRvD..97g4504H','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018PhRvD..97g4504H"><span>Particle <span class="hlt">yields</span> from numerical simulations</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Homor, Marietta M.; Jakovác, Antal</p> <p>2018-04-01</p> <p>In this paper we use numerical field theoretical simulations to calculate particle <span class="hlt">yields</span>. We demonstrate that in the <span class="hlt">model</span> of local particle creation the deviation from the pure exponential distribution is natural even in equilibrium, and an approximate Tsallis-Pareto-like distribution function can be well fitted to the calculated <span class="hlt">yields</span>, in accordance with the experimental observations. We present numerical simulations in the classical Φ4 <span class="hlt">model</span> as well as in the SU(3) quantum Yang-Mills theory to clarify this issue.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC51A0792L','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC51A0792L"><span>Climate change and future wildfire in the western USA: what <span class="hlt">model</span> <span class="hlt">projections</span> do and don't tell us</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Littell, J. S.; McKenzie, D.; Cushman, S. A.; Wan, H. Y.</p> <p>2017-12-01</p> <p>We developed statistical climate-fire <span class="hlt">models</span> describing area burned for 70 ecosections in the western U.S. Historically, these ecosections collectively represent a gradient of climate-fire relationships from purely fuel limited (characterized by antecedent positive water balance anomalies and/or negative energy balance anomalies) to purely flammability limited (characterized by antecedent negative water balance anomalies and/or positive energy balance anomalies). Sixty-eight ecosection linear <span class="hlt">models</span> included significant climate predictors, and 56 ecosections satisfied regression diagnostics, <span class="hlt">yielding</span> acceptable climate-fire <span class="hlt">models</span>. There is considerable diversity in seasonality, dominant variables, and prevalence of lagged climatic terms in the climate-fire regression <span class="hlt">models</span>, indicating variation in mechanisms of climate-fire linkages across ecosystems. This diversity, however, is not random - there is a clear pattern in the fuzzy set membership of the relative dominance of regression predictor variables. This pattern defines a fuel-flammability gradient of limitations, with a tendency toward warm season drought on the flammability end and a tendency toward antecedent moisture on the fuel end. <span class="hlt">Projected</span> area burned under a multi-<span class="hlt">model</span> composite future climate scenarios varies, with increasing area burned in 41 ecosections in the West by 2030-2059 (median 132% among 10 purely flammability limited ecosections, median 240% among 25 flammability limited systems with a fuel limitation component, and median 43% among 6 systems with equal control) but decreasing (median -119% among 13 fuel limited systems with a flammability component). For the period 2070-2099, the <span class="hlt">projected</span> area burned increases much more in the flammability (769%) and flammability-fuel hybrid (442%) systems than those with joint control (139%), and continues to decrease (-178%) in fuel-flammability hybrid systems. Filtering the <span class="hlt">projected</span> results with fire rotation limits <span class="hlt">projections</span> biased high by the</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/22444071','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/22444071"><span>Genetic parameters for test-day <span class="hlt">yield</span> of milk, fat and protein in buffaloes estimated by random regression <span class="hlt">models</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Aspilcueta-Borquis, Rúsbel R; Araujo Neto, Francisco R; Baldi, Fernando; Santos, Daniel J A; Albuquerque, Lucia G; Tonhati, Humberto</p> <p>2012-08-01</p> <p>The test-day <span class="hlt">yields</span> of milk, fat and protein were analysed from 1433 first lactations of buffaloes of the Murrah breed, daughters of 113 sires from 12 herds in the state of São Paulo, Brazil, born between 1985 and 2007. For the test-day <span class="hlt">yields</span>, 10 monthly classes of lactation days were considered. The contemporary groups were defined as the herd-year-month of the test day. Random additive genetic, permanent environmental and residual effects were included in the <span class="hlt">model</span>. The fixed effects considered were the contemporary group, number of milkings (1 or 2 milkings), linear and quadratic effects of the covariable cow age at calving and the mean lactation curve of the population (<span class="hlt">modelled</span> by third-order Legendre orthogonal polynomials). The random additive genetic and permanent environmental effects were estimated by means of regression on third- to sixth-order Legendre orthogonal polynomials. The residual variances were <span class="hlt">modelled</span> with a homogenous structure and various heterogeneous classes. According to the likelihood-ratio test, the best <span class="hlt">model</span> for milk and fat production was that with four residual variance classes, while a third-order Legendre polynomial was best for the additive genetic effect for milk and fat <span class="hlt">yield</span>, a fourth-order polynomial was best for the permanent environmental effect for milk production and a fifth-order polynomial was best for fat production. For protein <span class="hlt">yield</span>, the best <span class="hlt">model</span> was that with three residual variance classes and third- and fourth-order Legendre polynomials were best for the additive genetic and permanent environmental effects, respectively. The heritability estimates for the characteristics analysed were moderate, varying from 0·16±0·05 to 0·29±0·05 for milk <span class="hlt">yield</span>, 0·20±0·05 to 0·30±0·08 for fat <span class="hlt">yield</span> and 0·18±0·06 to 0·27±0·08 for protein <span class="hlt">yield</span>. The estimates of the genetic correlations between the tests varied from 0·18±0·120 to 0·99±0·002; from 0·44±0·080 to 0·99±0·004; and from 0·41±0·080 to</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC33D1099S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC33D1099S"><span>Development of predictive weather scenarios for early prediction of rice <span class="hlt">yield</span> in South Korea</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Shin, Y.; Cho, J.; Jung, I.</p> <p>2017-12-01</p> <p>International grain prices are becoming unstable due to frequent occurrence of abnormal weather phenomena caused by climate change. Early prediction of grain <span class="hlt">yield</span> using weather forecast data is important for stabilization of international grain prices. The APEC Climate Center (APCC) is providing seasonal forecast data based on monthly climate prediction <span class="hlt">models</span> for global seasonal forecasting services. The 3-month and 6-month seasonal forecast data using the multi-<span class="hlt">model</span> ensemble (MME) technique are provided in their own website, ADSS (APCC Data Service System, http://adss.apcc21.org/). The spatial resolution of seasonal forecast data for each individual <span class="hlt">model</span> is 2.5°×2.5°(about 250km) and the time scale is created as monthly. In this study, we developed customized weather forecast scenarios that are combined seasonal forecast data and observational data apply to early rice <span class="hlt">yield</span> prediction <span class="hlt">model</span>. Statistical downscale method was applied to produce meteorological input data of crop <span class="hlt">model</span> because field scale crop <span class="hlt">model</span> (ORYZA2000) requires daily weather data. In order to determine whether the forecasting data is suitable for the crop <span class="hlt">model</span>, we produced spatio-temporal downscaled weather scenarios and evaluated the predictability by comparison with observed weather data at 57 ASOS stations in South Korea. The customized weather forecast scenarios can be applied to various application fields not only early rice <span class="hlt">yield</span> prediction. Acknowledgement This work was carried out with the support of "Cooperative Research Program for Agriculture Science and Technology Development (<span class="hlt">Project</span> No: PJ012855022017)" Rural Development Administration, Republic of Korea.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20110012425','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20110012425"><span>Improving <span class="hlt">Project</span> Management Using Formal <span class="hlt">Models</span> and Architectures</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Kahn, Theodore; Sturken, Ian</p> <p>2011-01-01</p> <p>This talk discusses the advantages formal <span class="hlt">modeling</span> and architecture brings to <span class="hlt">project</span> management. These emerging technologies have both great potential and challenges for improving information available for decision-making. The presentation covers standards, tools and cultural issues needing consideration, and includes lessons learned from <span class="hlt">projects</span> the presenters have worked on.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2014EGUGA..1610104N','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2014EGUGA..1610104N"><span>Simulation of nitrous oxide effluxes, crop <span class="hlt">yields</span> and soil physical properties using the LandscapeDNDC <span class="hlt">model</span> in managed ecosystem</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Nyckowiak, Jedrzej; Lesny, Jacek; Haas, Edwin; Juszczak, Radoslaw; Kiese, Ralf; Butterbach-Bahl, Klaus; Olejnik, Janusz</p> <p>2014-05-01</p> <p><span class="hlt">Modeling</span> of nitrous oxide emissions from soil is very complex. Many different biological and chemical processes take place in soils which determine the amount of emitted nitrous oxide. Additionaly, biogeochemical <span class="hlt">models</span> contain many detailed factors which may determine fluxes and other simulated variables. We used the LandscapeDNDC <span class="hlt">model</span> in order to simulate N2O emissions, crop <span class="hlt">yields</span> and soil physical properties from mineral cultivated soils in Poland. Nitrous oxide emissions from soils were <span class="hlt">modeled</span> for fields with winter wheat, winter rye, spring barley, triticale, potatoes and alfalfa crops. Simulations were carried out for the plots of the Brody arable experimental station of Poznan University of Life Science in western Poland and covered the period 2003 - 2012. The <span class="hlt">model</span> accuracy and its efficiency was determined by comparing simulations result with measurements of nitrous oxide emissions (measured with static chambers) from about 40 field campaigns. N2O emissions are strongly dependent on temperature and soil water content, hence we compared also simulated soil temperature at 10cm depth and soil water content at the same depth with the daily measured values of these driving variables. We compared also simulated <span class="hlt">yield</span> quantities for each individual experimental plots with <span class="hlt">yield</span> quantities which were measured in the period 2003-2012. We conclude that the LandscapeDNDC <span class="hlt">model</span> is capable to simulate soil N2O emissions, crop <span class="hlt">yields</span> and physical properties of soil with satisfactorily good accuracy and efficiency.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMIN54A..02D','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMIN54A..02D"><span>What is the Best <span class="hlt">Model</span> Specification and Earth Observation Product for Predicting Regional Grain <span class="hlt">Yields</span> in Food Insecure Countries?</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Davenport, F., IV; Harrison, L.; Shukla, S.; Husak, G. J.; Funk, C. C.</p> <p>2017-12-01</p> <p>We evaluate the predictive accuracy of an ensemble of empirical <span class="hlt">model</span> specifications that use earth observation data to predict sub-national grain <span class="hlt">yields</span> in Mexico and East Africa. Products that are actively used for seasonal drought monitoring are tested as <span class="hlt">yield</span> predictors. Our research is driven by the fact that East Africa is a region where decisions regarding agricultural production are critical to preventing the loss of economic livelihoods and human life. Regional grain <span class="hlt">yield</span> forecasts can be used to anticipate availability and prices of key staples, which can turn can inform decisions about targeting humanitarian response such as food aid. Our objective is to identify-for a given region, grain, and time year- what type of <span class="hlt">model</span> and/or earth observation can most accurately predict end of season <span class="hlt">yields</span>. We fit a set of <span class="hlt">models</span> to county level panel data from Mexico, Kenya, Sudan, South Sudan, and Somalia. We then examine out of sample predicative accuracy using various linear and non-linear <span class="hlt">models</span> that incorporate spatial and time varying coefficients. We compare accuracy within and across <span class="hlt">models</span> that use predictor variables from remotely sensed measures of precipitation, temperature, soil moisture, and other land surface processes. We also examine at what point in the season a given <span class="hlt">model</span> or product is most useful for determining predictive accuracy. Finally we compare predictive accuracy across a variety of agricultural regimes including high intensity irrigated commercial agricultural and rain fed subsistence level farms.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/14672201','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/14672201"><span>Genetic parameters for body condition score, body weight, milk <span class="hlt">yield</span>, and fertility estimated using random regression <span class="hlt">models</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Berry, D P; Buckley, F; Dillon, P; Evans, R D; Rath, M; Veerkamp, R F</p> <p>2003-11-01</p> <p>Genetic (co)variances between body condition score (BCS), body weight (BW), milk <span class="hlt">yield</span>, and fertility were estimated using a random regression animal <span class="hlt">model</span> extended to multivariate analysis. The data analyzed included 81,313 BCS observations, 91,937 BW observations, and 100,458 milk test-day <span class="hlt">yields</span> from 8725 multiparous Holstein-Friesian cows. A cubic random regression was sufficient to <span class="hlt">model</span> the changing genetic variances for BCS, BW, and milk across different days in milk. The genetic correlations between BCS and fertility changed little over the lactation; genetic correlations between BCS and interval to first service and between BCS and pregnancy rate to first service varied from -0.47 to -0.31, and from 0.15 to 0.38, respectively. This suggests that maximum genetic gain in fertility from indirect selection on BCS should be based on measurements taken in midlactation when the genetic variance for BCS is largest. Selection for increased BW resulted in shorter intervals to first service, but more services and poorer pregnancy rates; genetic correlations between BW and pregnancy rate to first service varied from -0.52 to -0.45. Genetic selection for higher lactation milk <span class="hlt">yield</span> alone through selection on increased milk <span class="hlt">yield</span> in early lactation is likely to have a more deleterious effect on genetic merit for fertility than selection on higher milk <span class="hlt">yield</span> in late lactation.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/19990047592','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/19990047592"><span>The Chancellor's <span class="hlt">Model</span> School <span class="hlt">Project</span> (CMSP)</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Lopez, Gil</p> <p>1999-01-01</p> <p>What does it take to create and implement a 7th to 8th grade middle school program where the great majority of students achieve at high academic levels regardless of their previous elementary school backgrounds? This was the major question that guided the research and development of a 7-year long <span class="hlt">project</span> effort entitled the Chancellor's <span class="hlt">Model</span> School <span class="hlt">Project</span> (CMSP) from September 1991 to August 1998. The CMSP effort conducted largely in two New York City public schools was aimed at creating and testing a prototype 7th and 8th grade <span class="hlt">model</span> program that was organized and test-implemented in two distinct <span class="hlt">project</span> phases: Phase I of the CMSP effort was conducted from 1991 to 1995 as a 7th to 8th grade extension of an existing K-6 elementary school, and Phase II was conducted from 1995 to 1998 as a 7th to 8th grade middle school program that became an integral part of a newly established 7-12th grade high school. In Phase I, the CMSP demonstrated that with a highly structured curriculum coupled with strong academic support and increased learning time, students participating in the CMSP were able to develop a strong foundation for rigorous high school coursework within the space of 2 years (at the 7th and 8th grades). Mathematics and Reading test score data during Phase I of the <span class="hlt">project</span>, clearly indicated that significant academic gains were obtained by almost all students -- at both the high and low ends of the spectrum -- regardless of their previous academic performance in the K-6 elementary school experience. The CMSP effort expanded in Phase II to include a fully operating 7-12 high school <span class="hlt">model</span>. Achievement gains at the 7th and 8th grade levels in Phase II were tempered by the fact that incoming 7th grade students' academic background at the CMSP High School was significantly lower than students participating in Phase 1. Student performance in Phase II was also affected by the broadening of the CMSP effort from a 7-8th grade program to a fully functioning 7-12 high</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/2572022','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/2572022"><span>Population <span class="hlt">projections</span> for AIDS using an actuarial <span class="hlt">model</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Wilkie, A D</p> <p>1989-09-05</p> <p>This paper gives details of a <span class="hlt">model</span> for forecasting AIDS, developed for actuarial purposes, but used also for population <span class="hlt">projections</span>. The <span class="hlt">model</span> is only appropriate for homosexual transmission, but it is age-specific, and it allows variation in the transition intensities by age, duration in certain states and calendar year. The differential equations controlling transitions between states are defined, the method of numerical solution is outlined, and the parameters used in five different Bases of <span class="hlt">projection</span> are given in detail. Numerical results for the population of England and Wales are shown.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/27862253','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/27862253"><span>Plateletpheresis efficiency and mathematical correction of software-derived platelet <span class="hlt">yield</span> prediction: A linear regression and ROC <span class="hlt">modeling</span> approach.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Jaime-Pérez, José Carlos; Jiménez-Castillo, Raúl Alberto; Vázquez-Hernández, Karina Elizabeth; Salazar-Riojas, Rosario; Méndez-Ramírez, Nereida; Gómez-Almaguer, David</p> <p>2017-10-01</p> <p>Advances in automated cell separators have improved the efficiency of plateletpheresis and the possibility of obtaining double products (DP). We assessed cell processor accuracy of predicted platelet (PLT) <span class="hlt">yields</span> with the goal of a better prediction of DP collections. This retrospective proof-of-concept study included 302 plateletpheresis procedures performed on a Trima Accel v6.0 at the apheresis unit of a hematology department. Donor variables, software predicted <span class="hlt">yield</span> and actual PLT <span class="hlt">yield</span> were statistically evaluated. Software prediction was optimized by linear regression analysis and its optimal cut-off to obtain a DP assessed by receiver operating characteristic curve (ROC) <span class="hlt">modeling</span>. Three hundred and two plateletpheresis procedures were performed; in 271 (89.7%) occasions, donors were men and in 31 (10.3%) women. Pre-donation PLT count had the best direct correlation with actual PLT <span class="hlt">yield</span> (r = 0.486. P < .001). Means of software machine-derived values differed significantly from actual PLT <span class="hlt">yield</span>, 4.72 × 10 11 vs.6.12 × 10 11 , respectively, (P < .001). The following equation was developed to adjust these values: actual PLT <span class="hlt">yield</span>= 0.221 + (1.254 × theoretical platelet <span class="hlt">yield</span>). ROC curve <span class="hlt">model</span> showed an optimal apheresis device software prediction cut-off of 4.65 × 10 11 to obtain a DP, with a sensitivity of 82.2%, specificity of 93.3%, and an area under the curve (AUC) of 0.909. Trima Accel v6.0 software consistently underestimated PLT <span class="hlt">yields</span>. Simple correction derived from linear regression analysis accurately corrected this underestimation and ROC analysis identified a precise cut-off to reliably predict a DP. © 2016 Wiley Periodicals, Inc.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://ntrs.nasa.gov/search.jsp?R=20160003527&hterms=food+choice&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D70%26Ntt%3Dfood%2Bchoice','NASA-TRS'); return false;" href="https://ntrs.nasa.gov/search.jsp?R=20160003527&hterms=food+choice&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D70%26Ntt%3Dfood%2Bchoice"><span>Evaluating the Sensitivity of Agricultural <span class="hlt">Model</span> Performance to Different Climate Inputs: Supplemental Material</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Glotter, Michael J.; Ruane, Alex C.; Moyer, Elisabeth J.; Elliott, Joshua W.</p> <p>2015-01-01</p> <p><span class="hlt">Projections</span> of future food production necessarily rely on <span class="hlt">models</span>, which must themselves be validated through historical assessments comparing <span class="hlt">modeled</span> and observed <span class="hlt">yields</span>. Reliable historical validation requires both accurate agricultural <span class="hlt">models</span> and accurate climate inputs. Problems with either may compromise the validation exercise. Previous studies have compared the effects of different climate inputs on agricultural <span class="hlt">projections</span> but either incompletely or without a ground truth of observed <span class="hlt">yields</span> that would allow distinguishing errors due to climate inputs from those intrinsic to the crop <span class="hlt">model</span>. This study is a systematic evaluation of the reliability of a widely used crop <span class="hlt">model</span> for simulating U.S. maize <span class="hlt">yields</span> when driven by multiple observational data products. The parallelized Decision Support System for Agrotechnology Transfer (pDSSAT) is driven with climate inputs from multiple sources reanalysis, reanalysis that is bias corrected with observed climate, and a control dataset and compared with observed historical <span class="hlt">yields</span>. The simulations show that <span class="hlt">model</span> output is more accurate when driven by any observation-based precipitation product than when driven by non-bias-corrected reanalysis. The simulations also suggest, in contrast to previous studies, that biased precipitation distribution is significant for <span class="hlt">yields</span> only in arid regions. Some issues persist for all choices of climate inputs: crop <span class="hlt">yields</span> appear to be oversensitive to precipitation fluctuations but under sensitive to floods and heat waves. These results suggest that the most important issue for agricultural <span class="hlt">projections</span> may be not climate inputs but structural limitations in the crop <span class="hlt">models</span> themselves.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016ERL....11i4012C','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016ERL....11i4012C"><span>Separating heat stress from moisture stress: analyzing <span class="hlt">yield</span> response to high temperature in irrigated maize</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Carter, Elizabeth K.; Melkonian, Jeff; Riha, Susan J.; Shaw, Stephen B.</p> <p>2016-09-01</p> <p>Several recent studies have indicated that high air temperatures are limiting maize (Zea mays L.) <span class="hlt">yields</span> in the US Corn Belt and <span class="hlt">project</span> significant <span class="hlt">yield</span> losses with expected increases in growing season temperatures. Further work has suggested that high air temperatures are indicative of high evaporative demand, and that decreases in maize <span class="hlt">yields</span> which correlate to high temperatures and vapor pressure deficits (VPD) likely reflect underlying soil moisture limitations. It remains unclear whether direct high temperature impacts on <span class="hlt">yields</span>, independent of moisture stress, can be observed under current temperature regimes. Given that <span class="hlt">projected</span> high temperature and moisture may not co-vary the same way as they have historically, quantitative analyzes of direct temperature impacts are critical for accurate <span class="hlt">yield</span> <span class="hlt">projections</span> and targeted mitigation strategies under shifting temperature regimes. To evaluate <span class="hlt">yield</span> response to above optimum temperatures independent of soil moisture stress, we analyzed climate impacts on irrigated maize <span class="hlt">yields</span> obtained from the National Corn Growers Association (NCGA) corn <span class="hlt">yield</span> contests for Nebraska, Kansas and Missouri. In irrigated maize, we found no evidence of a direct negative impact on <span class="hlt">yield</span> by daytime air temperature, calculated canopy temperature, or VPD when analyzed seasonally. Solar radiation was the primary <span class="hlt">yield</span>-limiting climate variable. Our analyses suggested that elevated night temperature impacted <span class="hlt">yield</span> by increasing rates of phenological development. High temperatures during grain-fill significantly interacted with <span class="hlt">yields</span>, but this effect was often beneficial and included evidence of acquired thermo-tolerance. Furthermore, genetics and management—information uniquely available in the NCGA contest data—explained more <span class="hlt">yield</span> variability than climate, and significantly modified crop response to climate. Thermo-acclimation, improved genetics and changes to management practices have the potential to partially or completely</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20100005131','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20100005131"><span>The Lunar Mapping and <span class="hlt">Modeling</span> <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Noble, Sarah; French, Raymond; Nall, Mark; Muery, Kimberly</p> <p>2009-01-01</p> <p>LMMP was initiated in 2007 to help in making the anticipated results of the LRO spacecraft useful and accessible to Constellation. The LMMP is managing and developing a suite of lunar mapping and <span class="hlt">modeling</span> tools and products that support the Constellation Program (CxP) and other lunar exploration activities. In addition to the LRO Principal Investigators, relevant activities and expertise that had already been funded by NASA was identified at ARC, CRREL (Army Cold Regions Research & Engineering Laboratory), GSFC, JPL, & USGS. LMMP is a cost capped, design-to-cost <span class="hlt">project</span> (<span class="hlt">Project</span> budget was established prior to obtaining Constellation needs)</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20000086215','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20000086215"><span>Cirrus Parcel <span class="hlt">Model</span> Comparison <span class="hlt">Project</span>. Phase 1</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Lin, Ruei-Fong; Starr, David O'C.; DeMott, Paul J.; Cotton, Richard; Jensen, Eric; Sassen, Kenneth</p> <p>2000-01-01</p> <p>The Cirrus Parcel <span class="hlt">Model</span> Comparison (CPMC) is a <span class="hlt">project</span> of the GEWEX Cloud System Study Working Group on Cirrus Cloud Systems (GCSS WG2). The primary goal of this <span class="hlt">project</span> is to identify cirrus <span class="hlt">model</span> sensitivities to the state of our knowledge of nucleation and microphysics. Furthermore, the common ground of the findings may provide guidelines for <span class="hlt">models</span> with simpler cirrus microphysics modules. We focus on the nucleation regimes of the warm (parcel starting at -40 C and 340 hPa) and cold (-60 C and 170 hPa) cases studied in the GCSS WG2 Idealized Cirrus <span class="hlt">Model</span> Comparison <span class="hlt">Project</span>. Nucleation and ice crystal growth were forced through an externally imposed rate of lift and consequent adiabatic cooling. The background haze particles are assumed to be lognormally-distributed H2SO4 particles. Only the homogeneous nucleation mode is allowed to form ice crystals in the HN-ONLY runs; all nucleation modes are switched on in the ALL-MODE runs. Participants were asked to run the HN-lambda-fixed runs by setting lambda = 2 (lambda is further discussed in section 2) or tailoring the nucleation rate calculation in agreement with lambda = 2 (exp 1). The depth of parcel lift (800 m) was set to assure that parcels underwent complete transition through the nucleation regime to a stage of approximate equilibrium between ice mass growth and vapor supplied by the specified updrafts.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://ntrs.nasa.gov/search.jsp?R=20000094516&hterms=disabled&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D50%26Ntt%3Ddisabled','NASA-TRS'); return false;" href="https://ntrs.nasa.gov/search.jsp?R=20000094516&hterms=disabled&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D50%26Ntt%3Ddisabled"><span>GCSS Cirrus Parcel <span class="hlt">Model</span> Comparison <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Lin, Ruei-Fong; Starr, David OC.; DeMott, Paul J.; Cotton, Richard; Jensen, Eric; Sassen, Kenneth; Einaudi, Franco (Technical Monitor)</p> <p>2000-01-01</p> <p>The Cirrus Parcel <span class="hlt">Model</span> Comparison <span class="hlt">Project</span>, a <span class="hlt">project</span> of GCSS Working Group on Cirrus Cloud Systems (WG2), involves the systematic comparison of current <span class="hlt">models</span> of ice crystal nucleation and growth for specified, typical, cirrus cloud environments. The goal of this <span class="hlt">project</span> is to document and understand the factors resulting in significant inter-<span class="hlt">model</span> differences. The intent is to foment research leading to <span class="hlt">model</span> improvement and validation. In Phase 1 of the <span class="hlt">project</span> reported here, simulated cirrus cloud microphysical properties are compared for situations of "warm" (-40 C) and "cold" (-60 C) cirrus subject to updrafts of 4, 20 and 100 cm/s, respectively. Five <span class="hlt">models</span> participated. These <span class="hlt">models</span> employ explicit microphysical schemes wherein the size distribution of each class of particles (aerosols and ice crystals) is resolved into bins. Simulations are made including both homogeneous and heterogeneous ice nucleation mechanisms. A single initial aerosol population of sulfuric acid particles is prescribed for all simulations. To isolate the treatment of the homogeneous freezing (of haze drops) nucleation process, the heterogeneous nucleation mechanism is disabled for a second parallel set of simulations. Qualitative agreement is found for the homogeneous-nucleation-only simulations, e.g., the number density of nucleated ice crystals increases with the strength of the prescribed updraft. However, non-negligible quantitative differences are found. Detailed analysis reveals that the homogeneous nucleation formulation, aerosol size, ice crystal growth rate (particularly the deposition coefficient), and water vapor uptake rate are critical components that lead to differences in predicted microphysics. Systematic bias exists between results based on a modified classical theory approach and <span class="hlt">models</span> using an effective freezing temperature approach to the treatment of nucleation. Each approach is constrained by critical freezing data from laboratory studies, but each includes</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_18");'>18</a></li> <li><a href="#" onclick='return showDiv("page_19");'>19</a></li> <li class="active"><span>20</span></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_20 --> <div id="page_21" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_19");'>19</a></li> <li><a href="#" onclick='return showDiv("page_20");'>20</a></li> <li class="active"><span>21</span></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li><a href="#" onclick='return showDiv("page_23");'>23</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="401"> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015IJBm...59..707P','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015IJBm...59..707P"><span>Nut crop <span class="hlt">yield</span> records show that budbreak-based chilling requirements may not reflect <span class="hlt">yield</span> decline chill thresholds</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Pope, Katherine S.; Dose, Volker; Da Silva, David; Brown, Patrick H.; DeJong, Theodore M.</p> <p>2015-06-01</p> <p>Warming winters due to climate change may critically affect temperate tree species. Insufficiently cold winters are thought to result in fewer viable flower buds and the subsequent development of fewer fruits or nuts, decreasing the <span class="hlt">yield</span> of an orchard or fecundity of a species. The best existing approximation for a threshold of sufficient cold accumulation, the "chilling requirement" of a species or variety, has been quantified by manipulating or <span class="hlt">modeling</span> the conditions that result in dormant bud breaking. However, the physiological processes that affect budbreak are not the same as those that determine <span class="hlt">yield</span>. This study sought to test whether budbreak-based chilling thresholds can reasonably approximate the thresholds that affect <span class="hlt">yield</span>, particularly regarding the potential impacts of climate change on temperate tree crop <span class="hlt">yields</span>. County-wide <span class="hlt">yield</span> records for almond ( Prunus dulcis), pistachio ( Pistacia vera), and walnut ( Juglans regia) in the Central Valley of California were compared with 50 years of weather records. Bayesian nonparametric function estimation was used to <span class="hlt">model</span> <span class="hlt">yield</span> potentials at varying amounts of chill accumulation. In almonds, average <span class="hlt">yields</span> occurred when chill accumulation was close to the budbreak-based chilling requirement. However, in the other two crops, pistachios and walnuts, the best previous estimate of the budbreak-based chilling requirements was 19-32 % higher than the chilling accumulations associated with average or above average <span class="hlt">yields</span>. This research indicates that physiological processes beyond requirements for budbreak should be considered when estimating chill accumulation thresholds of <span class="hlt">yield</span> decline and potential impacts of climate change.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://files.eric.ed.gov/fulltext/ED069867.pdf','ERIC'); return false;" href="http://files.eric.ed.gov/fulltext/ED069867.pdf"><span>A Comprehensive Careers Cluster Curriculum <span class="hlt">Model</span>. Health Occupations Cluster Curriculum <span class="hlt">Project</span> and Health-Care Aide Curriculum <span class="hlt">Project</span>.</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Bortz, Richard F.</p> <p></p> <p>To prepare learning materials for health careers programs at the secondary level, the developmental phase of two curriculum <span class="hlt">projects</span>--the Health Occupations Cluster Curriculum <span class="hlt">Project</span> and Health-Care Aide Curriculum <span class="hlt">Project</span>--utilized a <span class="hlt">model</span> which incorporated a key factor analysis technique. Entitled "A Comprehensive Careers Cluster Curriculum…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018ClDy..tmp.2320F','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018ClDy..tmp.2320F"><span>Consistency of climate change <span class="hlt">projections</span> from multiple global and regional <span class="hlt">model</span> intercomparison <span class="hlt">projects</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Fernández, J.; Frías, M. D.; Cabos, W. D.; Cofiño, A. S.; Domínguez, M.; Fita, L.; Gaertner, M. A.; García-Díez, M.; Gutiérrez, J. M.; Jiménez-Guerrero, P.; Liguori, G.; Montávez, J. P.; Romera, R.; Sánchez, E.</p> <p>2018-03-01</p> <p>We present an unprecedented ensemble of 196 future climate <span class="hlt">projections</span> arising from different global and regional <span class="hlt">model</span> intercomparison <span class="hlt">projects</span> (MIPs): CMIP3, CMIP5, ENSEMBLES, ESCENA, EURO- and Med-CORDEX. This multi-MIP ensemble includes all regional climate <span class="hlt">model</span> (RCM) <span class="hlt">projections</span> publicly available to date, along with their driving global climate <span class="hlt">models</span> (GCMs). We illustrate consistent and conflicting messages using continental Spain and the Balearic Islands as target region. The study considers near future (2021-2050) changes and their dependence on several uncertainty sources sampled in the multi-MIP ensemble: GCM, future scenario, internal variability, RCM, and spatial resolution. This initial work focuses on mean seasonal precipitation and temperature changes. The results show that the potential GCM-RCM combinations have been explored very unevenly, with favoured GCMs and large ensembles of a few RCMs that do not respond to any ensemble design. Therefore, the grand-ensemble is weighted towards a few <span class="hlt">models</span>. The selection of a balanced, credible sub-ensemble is challenged in this study by illustrating several conflicting responses between the RCM and its driving GCM and among different RCMs. Sub-ensembles from different initiatives are dominated by different uncertainty sources, being the driving GCM the main contributor to uncertainty in the grand-ensemble. For this analysis of the near future changes, the emission scenario does not lead to a strong uncertainty. Despite the extra computational effort, for mean seasonal changes, the increase in resolution does not lead to important changes.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28653336','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28653336"><span>Targeting carbon for crop <span class="hlt">yield</span> and drought resilience.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Griffiths, Cara A; Paul, Matthew J</p> <p>2017-11-01</p> <p>Current methods of crop improvement are not keeping pace with <span class="hlt">projected</span> increases in population growth. Breeding, focused around key traits of stem height and disease resistance, delivered the step-change <span class="hlt">yield</span> improvements of the green revolution of the 1960s. However, subsequently, <span class="hlt">yield</span> increases through conventional breeding have been below the <span class="hlt">projected</span> requirement of 2.4% per year required by 2050. Genetic modification (GM) mainly for herbicide tolerance and insect resistance has been transformational, akin to a second green revolution, although GM has yet to make major inroads into intrinsic <span class="hlt">yield</span> processes themselves. Drought imposes the major restriction on crop <span class="hlt">yields</span> globally but, as yet, has not benefited substantially from genetic improvement and still presents a major challenge to agriculture. Much still has to be learnt about the complex process of how drought limits <span class="hlt">yield</span> and what should be targeted. Mechanisms of drought adaptation from the natural environment cannot be taken into crops without significant modification for the agricultural environment because mechanisms of drought tolerance are often in contrast with mechanisms of high productivity required in agriculture. However, through convergence of fundamental and translational science, it would appear that a mechanism of sucrose allocation in crops can be modified for both productivity and resilience to drought and other stresses. Recent publications show how this mechanism can be targeted by GM, natural variation and a new chemical approach. Here, with an emphasis on drought, we highlight how understanding fundamental science about how crops grow, develop and what limits their growth and <span class="hlt">yield</span> can be combined with targeted genetic selection and pioneering chemical intervention technology for transformational <span class="hlt">yield</span> improvements. © 2017 The Authors. Journal of The Science of Food and Agriculture published by John Wiley & Sons Ltd on behalf of Society of Chemical Industry. © 2017 The Authors</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5419785','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5419785"><span>Using an Active-Optical Sensor to Develop an Optimal NDVI Dynamic <span class="hlt">Model</span> for High-<span class="hlt">Yield</span> Rice Production (Yangtze, China)</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Liu, Xiaojun; Ferguson, Richard B.; Zheng, Hengbiao; Cao, Qiang; Tian, Yongchao; Cao, Weixing; Zhu, Yan</p> <p>2017-01-01</p> <p>The successful development of an optimal canopy vegetation index dynamic <span class="hlt">model</span> for obtaining higher <span class="hlt">yield</span> can offer a technical approach for real-time and nondestructive diagnosis of rice (Oryza sativa L) growth and nitrogen (N) nutrition status. In this study, multiple rice cultivars and N treatments of experimental plots were carried out to obtain: normalized difference vegetation index (NDVI), leaf area index (LAI), above-ground dry matter (DM), and grain <span class="hlt">yield</span> (GY) data. The quantitative relationships between NDVI and these growth indices (e.g., LAI, DM and GY) were analyzed, showing positive correlations. Using the normalized <span class="hlt">modeling</span> method, an appropriate NDVI simulation <span class="hlt">model</span> of rice was established based on the normalized NDVI (RNDVI) and relative accumulative growing degree days (RAGDD). The NDVI dynamic <span class="hlt">model</span> for high-<span class="hlt">yield</span> production in rice can be expressed by a double logistic <span class="hlt">model</span>: RNDVI=(1+e−15.2829×(RAGDDi−0.1944))−1−(1+e−11.6517×(RAGDDi−1.0267))−1 (R2 = 0.8577**), which can be used to accurately predict canopy NDVI dynamic changes during the entire growth period. Considering variation among rice cultivars, we constructed two relative NDVI (RNDVI) dynamic <span class="hlt">models</span> for Japonica and Indica rice types, with R2 reaching 0.8764** and 0.8874**, respectively. Furthermore, independent experimental data were used to validate the RNDVI dynamic <span class="hlt">models</span>. The results showed that during the entire growth period, the accuracy (k), precision (R2), and standard deviation of RNDVI dynamic <span class="hlt">models</span> for the Japonica and Indica cultivars were 0.9991, 1.0170; 0.9084**, 0.8030**; and 0.0232, 0.0170, respectively. These results indicated that RNDVI dynamic <span class="hlt">models</span> could accurately reflect crop growth and predict dynamic changes in high-<span class="hlt">yield</span> crop populations, providing a rapid approach for monitoring rice growth status. PMID:28338637</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28338637','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28338637"><span>Using an Active-Optical Sensor to Develop an Optimal NDVI Dynamic <span class="hlt">Model</span> for High-<span class="hlt">Yield</span> Rice Production (Yangtze, China).</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Liu, Xiaojun; Ferguson, Richard B; Zheng, Hengbiao; Cao, Qiang; Tian, Yongchao; Cao, Weixing; Zhu, Yan</p> <p>2017-03-24</p> <p>The successful development of an optimal canopy vegetation index dynamic <span class="hlt">model</span> for obtaining higher <span class="hlt">yield</span> can offer a technical approach for real-time and nondestructive diagnosis of rice (Oryza sativa L) growth and nitrogen (N) nutrition status. In this study, multiple rice cultivars and N treatments of experimental plots were carried out to obtain: normalized difference vegetation index (NDVI), leaf area index (LAI), above-ground dry matter (DM), and grain <span class="hlt">yield</span> (GY) data. The quantitative relationships between NDVI and these growth indices (e.g., LAI, DM and GY) were analyzed, showing positive correlations. Using the normalized <span class="hlt">modeling</span> method, an appropriate NDVI simulation <span class="hlt">model</span> of rice was established based on the normalized NDVI (RNDVI) and relative accumulative growing degree days (RAGDD). The NDVI dynamic <span class="hlt">model</span> for high-<span class="hlt">yield</span> production in rice can be expressed by a double logistic <span class="hlt">model</span>: RNDVI = ( 1 + e - 15.2829 × ( R A G D D i - 0.1944 ) ) - 1 - ( 1 + e - 11.6517 × ( R A G D D i - 1.0267 ) ) - 1 (R2 = 0.8577**), which can be used to accurately predict canopy NDVI dynamic changes during the entire growth period. Considering variation among rice cultivars, we constructed two relative NDVI (RNDVI) dynamic <span class="hlt">models</span> for Japonica and Indica rice types, with R2 reaching 0.8764** and 0.8874**, respectively. Furthermore, independent experimental data were used to validate the RNDVI dynamic <span class="hlt">models</span>. The results showed that during the entire growth period, the accuracy (k), precision (R2), and standard deviation of RNDVI dynamic <span class="hlt">models</span> for the Japonica and Indica cultivars were 0.9991, 1.0170; 0.9084**, 0.8030**; and 0.0232, 0.0170, respectively. These results indicated that RNDVI dynamic <span class="hlt">models</span> could accurately reflect crop growth and predict dynamic changes in high-<span class="hlt">yield</span> crop populations, providing a rapid approach for monitoring rice growth status.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1341358-modeling-reduced-effective-secondary-electron-emission-yield-from-velvet-surface','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1341358-modeling-reduced-effective-secondary-electron-emission-yield-from-velvet-surface"><span><span class="hlt">Modeling</span> of reduced effective secondary electron emission <span class="hlt">yield</span> from a velvet surface</span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>Swanson, Charles; Kaganovich, Igor D.</p> <p>2016-12-05</p> <p>Complex structures on a material surface can significantly reduce total secondary electron emission from that surface. A velvet is a surface that consists of an array of vertically standing whiskers. The reduction occurs due to the capture of low-energy, true secondary electrons emitted at the bottom of the structure and on the sides of the velvet whiskers. We performed numerical simulations and developed an approximate analytical <span class="hlt">model</span> that calculates the net secondary electron emission <span class="hlt">yield</span> from a velvet surface as a function of the velvet whisker length and packing density, and the angle of incidence of primary electrons. We foundmore » that to suppress secondary electrons, the following condition on dimensionless parameters must be met: (π/2) DΑ tan θ >> 1, where theta is the angle of incidence of the primary electron from the normal, D is the fraction of surface area taken up by the velvet whisker bases, and A is the aspect ratio, A = h/r, the ratio of height to radius of the velvet whiskers. We find that velvets available today can reduce the secondary electron <span class="hlt">yield</span> by 90% from the value of a flat surface. As a result, the values of optimal velvet whisker packing density that maximally suppresses the secondary electron emission <span class="hlt">yield</span> are determined as a function of velvet aspect ratio and the electron angle of incidence.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017EGUGA..19.2838S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017EGUGA..19.2838S"><span><span class="hlt">Modelling</span> predicts that tolerance to drought during reproductive development will be required for high <span class="hlt">yield</span> potential and stability of wheat in Europe</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Semenov, Mikhail A.; Stratonovitch, Pierre; Paul, Matthew J.</p> <p>2017-04-01</p> <p>Short periods of extreme weather, such as a spell of high temperature or drought during a sensitive stage of development, could result in substantial <span class="hlt">yield</span> losses due to reduction in grain number and grain size. In a <span class="hlt">modelling</span> study (Stratonovitch & Semenov 2015), heat tolerance around flowering in wheat was identified as a key trait for increased <span class="hlt">yield</span> potential in Europe under climate change. Ji et all (Ji et al. 2010) demonstrated cultivar specific responses of <span class="hlt">yield</span> to drought stress around flowering in wheat. They hypothesised that carbohydrate supply to anthers may be the key in maintaining pollen fertility and grain number in wheat. It was shown in (Nuccio et al. 2015) that genetically modified varieties of maize that increase the concentration of sucrose in ear spikelets, performed better under non-drought and drought conditions in field experiments. The objective of this <span class="hlt">modelling</span> study was to assess potential benefits of tolerance to drought during reproductive development for wheat <span class="hlt">yield</span> potential and <span class="hlt">yield</span> stability across Europe. We used the Sirius wheat <span class="hlt">model</span> to optimise wheat ideotypes for 2050 (HadGEM2, RCP8.5) climate scenarios at selected European sites. Eight cultivar parameters were optimised to maximise mean <span class="hlt">yields</span>, including parameters controlling phenology, canopy growth and water limitation. At those sites where water could be limited, ideotypes sensitive to drought produced substantially lower mean <span class="hlt">yields</span> and higher <span class="hlt">yield</span> variability compare with tolerant ideotypes. Therefore, tolerance to drought during reproductive development is likely to be required for wheat cultivars optimised for the future climate in Europe in order to achieve high <span class="hlt">yield</span> potential and <span class="hlt">yield</span> stability.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/25147845','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/25147845"><span>The study on stage financing <span class="hlt">model</span> of IT <span class="hlt">project</span> investment.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Chen, Si-hua; Xu, Sheng-hua; Lee, Changhoon; Xiong, Neal N; He, Wei</p> <p>2014-01-01</p> <p>Stage financing is the basic operation of venture capital investment. In investment, usually venture capitalists use different strategies to obtain the maximum returns. Due to its advantages to reduce the information asymmetry and agency cost, stage financing is widely used by venture capitalists. Although considerable attentions are devoted to stage financing, very little is known about the risk aversion strategies of IT <span class="hlt">projects</span>. This paper mainly addresses the problem of risk aversion of venture capital investment in IT <span class="hlt">projects</span>. Based on the analysis of characteristics of venture capital investment of IT <span class="hlt">projects</span>, this paper introduces a real option pricing <span class="hlt">model</span> to measure the value brought by the stage financing strategy and design a risk aversion <span class="hlt">model</span> for IT <span class="hlt">projects</span>. Because real option pricing method regards investment activity as contingent decision, it helps to make judgment on the management flexibility of IT <span class="hlt">projects</span> and then make a more reasonable evaluation about the IT programs. Lastly by being applied to a real case, it further illustrates the effectiveness and feasibility of the <span class="hlt">model</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4132331','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4132331"><span>The Study on Stage Financing <span class="hlt">Model</span> of IT <span class="hlt">Project</span> Investment</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Xu, Sheng-hua; Xiong, Neal N.</p> <p>2014-01-01</p> <p>Stage financing is the basic operation of venture capital investment. In investment, usually venture capitalists use different strategies to obtain the maximum returns. Due to its advantages to reduce the information asymmetry and agency cost, stage financing is widely used by venture capitalists. Although considerable attentions are devoted to stage financing, very little is known about the risk aversion strategies of IT <span class="hlt">projects</span>. This paper mainly addresses the problem of risk aversion of venture capital investment in IT <span class="hlt">projects</span>. Based on the analysis of characteristics of venture capital investment of IT <span class="hlt">projects</span>, this paper introduces a real option pricing <span class="hlt">model</span> to measure the value brought by the stage financing strategy and design a risk aversion <span class="hlt">model</span> for IT <span class="hlt">projects</span>. Because real option pricing method regards investment activity as contingent decision, it helps to make judgment on the management flexibility of IT <span class="hlt">projects</span> and then make a more reasonable evaluation about the IT programs. Lastly by being applied to a real case, it further illustrates the effectiveness and feasibility of the <span class="hlt">model</span>. PMID:25147845</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015AGUFMGC12C..06M','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015AGUFMGC12C..06M"><span>Ethiopian Wheat <span class="hlt">Yield</span> and <span class="hlt">Yield</span> Gap Estimation: A Spatial Small Area Integrated Data Approach</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Mann, M.; Warner, J.</p> <p>2015-12-01</p> <p>Despite the collection of routine annual agricultural surveys and significant advances in GIS and remote sensing products, little econometric research has been undertaken in predicting developing nation's agricultural <span class="hlt">yields</span>. In this paper, we explore the determinants of wheat output per hectare in Ethiopia during the 2011-2013 Meher crop seasons aggregated to the woreda administrative area. Using a panel data approach, combining national agricultural field surveys with relevant GIS and remote sensing products, the <span class="hlt">model</span> explains nearly 40% of the total variation in wheat output per hectare across the country. The <span class="hlt">model</span> also identifies specific contributors to wheat <span class="hlt">yields</span> that include farm management techniques (eg. area planted, improved seed, fertilizer, irrigation), weather (eg. rainfall), water availability (vegetation and moisture deficit indexes) and policy intervention. Our findings suggest that woredas produce between 9.8 and 86.5% of their potential wheat output per hectare given their altitude, weather conditions, terrain, and plant health. At the median, Amhara, Oromiya, SNNP, and Tigray produce 48.6, 51.5, 49.7, and 61.3% of their local attainable <span class="hlt">yields</span>, respectively. This research has a broad range of applications, especially from a public policy perspective: identifying causes of <span class="hlt">yield</span> fluctuations, remotely evaluating larger agricultural intervention packages, and analyzing relative <span class="hlt">yield</span> potential. Overall, the combination of field surveys with spatial data can be used to identify management priorities for improving production at a variety of administrative levels.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4109584','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4109584"><span>Do telemonitoring <span class="hlt">projects</span> of heart failure fit the Chronic Care <span class="hlt">Model</span>?</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Willemse, Evi; Adriaenssens, Jef; Dilles, Tinne; Remmen, Roy</p> <p>2014-01-01</p> <p>This study describes the characteristics of extramural and transmural telemonitoring <span class="hlt">projects</span> on chronic heart failure in Belgium. It describes to what extent these telemonitoring <span class="hlt">projects</span> coincide with the Chronic Care <span class="hlt">Model</span> of Wagner. Background The Chronic Care <span class="hlt">Model</span> describes essential components for high-quality health care. Telemonitoring can be used to optimise home care for chronic heart failure. It provides a potential prospective to change the current care organisation. Methods This qualitative study describes seven non-invasive home-care telemonitoring <span class="hlt">projects</span> in patients with heart failure in Belgium. A qualitative design, including interviews and literature review, was used to describe the correspondence of these home-care telemonitoring <span class="hlt">projects</span> with the dimensions of the Chronic Care <span class="hlt">Model</span>. Results The <span class="hlt">projects</span> were situated in primary and secondary health care. Their primary goal was to reduce the number of readmissions for chronic heart failure. None of these <span class="hlt">projects</span> succeeded in a final implementation of telemonitoring in home care after the pilot phase. Not all the <span class="hlt">projects</span> were initiated to accomplish all of the dimensions of the Chronic Care <span class="hlt">Model</span>. A central role for the patient was sparse. Conclusion Limited financial resources hampered continuation after the pilot phase. Cooperation and coordination in telemonitoring appears to be major barriers but are, within primary care as well as between the lines of care, important links in follow-up. This discrepancy can be prohibitive for deployment of good chronic care. Chronic Care <span class="hlt">Model</span> is recommended as basis for future. PMID:25114664</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/25114664','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/25114664"><span>Do telemonitoring <span class="hlt">projects</span> of heart failure fit the Chronic Care <span class="hlt">Model</span>?</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Willemse, Evi; Adriaenssens, Jef; Dilles, Tinne; Remmen, Roy</p> <p>2014-07-01</p> <p>This study describes the characteristics of extramural and transmural telemonitoring <span class="hlt">projects</span> on chronic heart failure in Belgium. It describes to what extent these telemonitoring <span class="hlt">projects</span> coincide with the Chronic Care <span class="hlt">Model</span> of Wagner. The Chronic Care <span class="hlt">Model</span> describes essential components for high-quality health care. Telemonitoring can be used to optimise home care for chronic heart failure. It provides a potential prospective to change the current care organisation. This qualitative study describes seven non-invasive home-care telemonitoring <span class="hlt">projects</span> in patients with heart failure in Belgium. A qualitative design, including interviews and literature review, was used to describe the correspondence of these home-care telemonitoring <span class="hlt">projects</span> with the dimensions of the Chronic Care <span class="hlt">Model</span>. The <span class="hlt">projects</span> were situated in primary and secondary health care. Their primary goal was to reduce the number of readmissions for chronic heart failure. None of these <span class="hlt">projects</span> succeeded in a final implementation of telemonitoring in home care after the pilot phase. Not all the <span class="hlt">projects</span> were initiated to accomplish all of the dimensions of the Chronic Care <span class="hlt">Model</span>. A central role for the patient was sparse. Limited financial resources hampered continuation after the pilot phase. Cooperation and coordination in telemonitoring appears to be major barriers but are, within primary care as well as between the lines of care, important links in follow-up. This discrepancy can be prohibitive for deployment of good chronic care. Chronic Care <span class="hlt">Model</span> is recommended as basis for future.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/25478594','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/25478594"><span>Development and application of new quality <span class="hlt">model</span> for software <span class="hlt">projects</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Karnavel, K; Dillibabu, R</p> <p>2014-01-01</p> <p>The IT industry tries to employ a number of <span class="hlt">models</span> to identify the defects in the construction of software <span class="hlt">projects</span>. In this paper, we present COQUALMO and its limitations and aim to increase the quality without increasing the cost and time. The computation time, cost, and effort to predict the residual defects are very high; this was overcome by developing an appropriate new quality <span class="hlt">model</span> named the software testing defect corrective <span class="hlt">model</span> (STDCM). The STDCM was used to estimate the number of remaining residual defects in the software product; a few assumptions and the detailed steps of the STDCM are highlighted. The application of the STDCM is explored in software <span class="hlt">projects</span>. The implementation of the <span class="hlt">model</span> is validated using statistical inference, which shows there is a significant improvement in the quality of the software <span class="hlt">projects</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/964360-carbon-land-model-intercomparison-project-lamp-model-data-comparison-system-evaluation-coupled-biosphere-atmosphere-models','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/964360-carbon-land-model-intercomparison-project-lamp-model-data-comparison-system-evaluation-coupled-biosphere-atmosphere-models"><span>The Carbon-Land <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (C-LAMP): A <span class="hlt">Model</span>-Data Comparison System for Evaluation of Coupled Biosphere-Atmosphere <span class="hlt">Models</span></span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Hoffman, Forrest M; Randerson, Jim; Thornton, Peter E</p> <p>2009-01-01</p> <p>The need to capture important climate feebacks in general circulation <span class="hlt">models</span> (GCMs) has resulted in new efforts to include atmospheric chemistry and land and ocean biogeochemistry into the next generation of production climate <span class="hlt">models</span>, now often referred to as Earth System <span class="hlt">Models</span> (ESMs). While many terrestrial and ocean carbon <span class="hlt">models</span> have been coupled to GCMs, recent work has shown that such <span class="hlt">models</span> can <span class="hlt">yield</span> a wide range of results, suggesting that a more rigorous set of offline and partially coupled experiments, along with detailed analyses of processes and comparisons with measurements, are warranted. The Carbon-Land <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (C-LAMP) providesmore » a simulation protocol and <span class="hlt">model</span> performance metrics based upon comparisons against best-available satellite- and ground-based measurements (Hoffman et al., 2007). C-LAMP provides feedback to the <span class="hlt">modeling</span> community regarding <span class="hlt">model</span> improvements and to the measurement community by suggesting new observational campaigns. C-LAMP Experiment 1 consists of a set of uncoupled simulations of terrestrial carbon <span class="hlt">models</span> specifically designed to examine the ability of the <span class="hlt">models</span> to reproduce surface carbon and energy fluxes at multiple sites and to exhibit the influence of climate variability, prescribed atmospheric carbon dioxide (CO{sub 2}), nitrogen (N) deposition, and land cover change on <span class="hlt">projections</span> of terrestrial carbon fluxes during the 20th century. Experiment 2 consists of partially coupled simulations of the terrestrial carbon <span class="hlt">model</span> with an active atmosphere <span class="hlt">model</span> exchanging energy and moisture fluxes. In all experiments, atmospheric CO{sub 2} follows the prescribed historical trajectory from C{sup 4}MIP. In Experiment 2, the atmosphere <span class="hlt">model</span> is forced with prescribed sea surface temperatures (SSTs) and corresponding sea ice concentrations from the Hadley Centre; prescribed CO{sub 2} is radiatively active; and land, fossil fuel, and ocean CO{sub 2} fluxes are advected by the <span class="hlt">model</span>. Both sets of</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1410367-incorporating-variability-simulations-seasonally-forced-phenology-using-integral-projection-models','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1410367-incorporating-variability-simulations-seasonally-forced-phenology-using-integral-projection-models"><span>Incorporating variability in simulations of seasonally forced phenology using integral <span class="hlt">projection</span> <span class="hlt">models</span></span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>Goodsman, Devin W.; Aukema, Brian H.; McDowell, Nate G.; ...</p> <p>2017-11-26</p> <p>Phenology <span class="hlt">models</span> are becoming increasingly important tools to accurately predict how climate change will impact the life histories of organisms. We propose a class of integral <span class="hlt">projection</span> phenology <span class="hlt">models</span> derived from stochastic individual-based <span class="hlt">models</span> of insect development and demography. Our derivation, which is based on the rate summation concept, produces integral <span class="hlt">projection</span> <span class="hlt">models</span> that capture the effect of phenotypic rate variability on insect phenology, but which are typically more computationally frugal than equivalent individual-based phenology <span class="hlt">models</span>. We demonstrate our approach using a temperature-dependent <span class="hlt">model</span> of the demography of the mountain pine beetle (Dendroctonus ponderosae Hopkins), an insect that kills maturemore » pine trees. This work illustrates how a wide range of stochastic phenology <span class="hlt">models</span> can be reformulated as integral <span class="hlt">projection</span> <span class="hlt">models</span>. Due to their computational efficiency, these integral <span class="hlt">projection</span> <span class="hlt">models</span> are suitable for deployment in large-scale simulations, such as studies of altered pest distributions under climate change.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/1410367-incorporating-variability-simulations-seasonally-forced-phenology-using-integral-projection-models','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/1410367-incorporating-variability-simulations-seasonally-forced-phenology-using-integral-projection-models"><span>Incorporating variability in simulations of seasonally forced phenology using integral <span class="hlt">projection</span> <span class="hlt">models</span></span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Goodsman, Devin W.; Aukema, Brian H.; McDowell, Nate G.</p> <p></p> <p>Phenology <span class="hlt">models</span> are becoming increasingly important tools to accurately predict how climate change will impact the life histories of organisms. We propose a class of integral <span class="hlt">projection</span> phenology <span class="hlt">models</span> derived from stochastic individual-based <span class="hlt">models</span> of insect development and demography. Our derivation, which is based on the rate summation concept, produces integral <span class="hlt">projection</span> <span class="hlt">models</span> that capture the effect of phenotypic rate variability on insect phenology, but which are typically more computationally frugal than equivalent individual-based phenology <span class="hlt">models</span>. We demonstrate our approach using a temperature-dependent <span class="hlt">model</span> of the demography of the mountain pine beetle (Dendroctonus ponderosae Hopkins), an insect that kills maturemore » pine trees. This work illustrates how a wide range of stochastic phenology <span class="hlt">models</span> can be reformulated as integral <span class="hlt">projection</span> <span class="hlt">models</span>. Due to their computational efficiency, these integral <span class="hlt">projection</span> <span class="hlt">models</span> are suitable for deployment in large-scale simulations, such as studies of altered pest distributions under climate change.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/1439662-incorporating-variability-simulations-seasonally-forced-phenology-using-integral-projection-models','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/1439662-incorporating-variability-simulations-seasonally-forced-phenology-using-integral-projection-models"><span>Incorporating variability in simulations of seasonally forced phenology using integral <span class="hlt">projection</span> <span class="hlt">models</span></span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Goodsman, Devin W.; Aukema, Brian H.; McDowell, Nate G.</p> <p></p> <p>Phenology <span class="hlt">models</span> are becoming increasingly important tools to accurately predict how climate change will impact the life histories of organisms. We propose a class of integral <span class="hlt">projection</span> phenology <span class="hlt">models</span> derived from stochastic individual-based <span class="hlt">models</span> of insect development and demography.Our derivation, which is based on the rate-summation concept, produces integral <span class="hlt">projection</span> <span class="hlt">models</span> that capture the effect of phenotypic rate variability on insect phenology, but which are typically more computationally frugal than equivalent individual-based phenology <span class="hlt">models</span>. We demonstrate our approach using a temperature-dependent <span class="hlt">model</span> of the demography of the mountain pine beetle (Dendroctonus ponderosae Hopkins), an insect that kills mature pine trees.more » This work illustrates how a wide range of stochastic phenology <span class="hlt">models</span> can be reformulated as integral <span class="hlt">projection</span> <span class="hlt">models</span>. Due to their computational efficiency, these integral <span class="hlt">projection</span> <span class="hlt">models</span> are suitable for deployment in large-scale simulations, such as studies of altered pest distributions under climate change.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/20110012947','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/20110012947"><span>NASA's Aviation Safety and <span class="hlt">Modeling</span> <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Chidester, Thomas R.; Statler, Irving C.</p> <p>2006-01-01</p> <p>The Aviation Safety Monitoring and <span class="hlt">Modeling</span> (ASMM) <span class="hlt">Project</span> of NASA's Aviation Safety program is cultivating sources of data and developing automated computer hardware and software to facilitate efficient, comprehensive, and accurate analyses of the data collected from large, heterogeneous databases throughout the national aviation system. The ASMM addresses the need to provide means for increasing safety by enabling the identification and correcting of predisposing conditions that could lead to accidents or to incidents that pose aviation risks. A major component of the ASMM <span class="hlt">Project</span> is the Aviation Performance Measuring System (APMS), which is developing the next generation of software tools for analyzing and interpreting flight data.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017GeoRL..44.1909K','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017GeoRL..44.1909K"><span>A climate <span class="hlt">model</span> <span class="hlt">projection</span> weighting scheme accounting for performance and interdependence</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Knutti, Reto; Sedláček, Jan; Sanderson, Benjamin M.; Lorenz, Ruth; Fischer, Erich M.; Eyring, Veronika</p> <p>2017-02-01</p> <p>Uncertainties of climate <span class="hlt">projections</span> are routinely assessed by considering simulations from different <span class="hlt">models</span>. Observations are used to evaluate <span class="hlt">models</span>, yet there is a debate about whether and how to explicitly weight <span class="hlt">model</span> <span class="hlt">projections</span> by agreement with observations. Here we present a straightforward weighting scheme that accounts both for the large differences in <span class="hlt">model</span> performance and for <span class="hlt">model</span> interdependencies, and we test reliability in a perfect <span class="hlt">model</span> setup. We provide weighted multimodel <span class="hlt">projections</span> of Arctic sea ice and temperature as a case study to demonstrate that, for some questions at least, it is meaningless to treat all <span class="hlt">models</span> equally. The constrained ensemble shows reduced spread and a more rapid sea ice decline than the unweighted ensemble. We argue that the growing number of <span class="hlt">models</span> with different characteristics and considerable interdependence finally justifies abandoning strict <span class="hlt">model</span> democracy, and we provide guidance on when and how this can be achieved robustly.</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_19");'>19</a></li> <li><a href="#" onclick='return showDiv("page_20");'>20</a></li> <li class="active"><span>21</span></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li><a href="#" onclick='return showDiv("page_23");'>23</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_21 --> <div id="page_22" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_20");'>20</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li class="active"><span>22</span></li> <li><a href="#" onclick='return showDiv("page_23");'>23</a></li> <li><a href="#" onclick='return showDiv("page_24");'>24</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="421"> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28769997','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28769997"><span>Genomic Bayesian functional regression <span class="hlt">models</span> with interactions for predicting wheat grain <span class="hlt">yield</span> using hyper-spectral image data.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Montesinos-López, Abelardo; Montesinos-López, Osval A; Cuevas, Jaime; Mata-López, Walter A; Burgueño, Juan; Mondal, Sushismita; Huerta, Julio; Singh, Ravi; Autrique, Enrique; González-Pérez, Lorena; Crossa, José</p> <p>2017-01-01</p> <p>Modern agriculture uses hyperspectral cameras that provide hundreds of reflectance data at discrete narrow bands in many environments. These bands often cover the whole visible light spectrum and part of the infrared and ultraviolet light spectra. With the bands, vegetation indices are constructed for predicting agronomically important traits such as grain <span class="hlt">yield</span> and biomass. However, since vegetation indices only use some wavelengths (referred to as bands), we propose using all bands simultaneously as predictor variables for the primary trait grain <span class="hlt">yield</span>; results of several multi-environment maize (Aguate et al. in Crop Sci 57(5):1-8, 2017) and wheat (Montesinos-López et al. in Plant Methods 13(4):1-23, 2017) breeding trials indicated that using all bands produced better prediction accuracy than vegetation indices. However, until now, these prediction <span class="hlt">models</span> have not accounted for the effects of genotype × environment (G × E) and band × environment (B × E) interactions incorporating genomic or pedigree information. In this study, we propose Bayesian functional regression <span class="hlt">models</span> that take into account all available bands, genomic or pedigree information, the main effects of lines and environments, as well as G × E and B × E interaction effects. The data set used is comprised of 976 wheat lines evaluated for grain <span class="hlt">yield</span> in three environments (Drought, Irrigated and Reduced Irrigation). The reflectance data were measured in 250 discrete narrow bands ranging from 392 to 851 nm (nm). The proposed Bayesian functional regression <span class="hlt">models</span> were implemented using two types of basis: B-splines and Fourier. Results of the proposed Bayesian functional regression <span class="hlt">models</span>, including all the wavelengths for predicting grain <span class="hlt">yield</span>, were compared with results from conventional <span class="hlt">models</span> with and without bands. We observed that the <span class="hlt">models</span> with B × E interaction terms were the most accurate <span class="hlt">models</span>, whereas the functional regression <span class="hlt">models</span> (with B-splines and Fourier</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=team+AND+building&id=EJ908650','ERIC'); return false;" href="https://eric.ed.gov/?q=team+AND+building&id=EJ908650"><span>A Team Building <span class="hlt">Model</span> for Software Engineering Courses Term <span class="hlt">Projects</span></span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Sahin, Yasar Guneri</p> <p>2011-01-01</p> <p>This paper proposes a new <span class="hlt">model</span> for team building, which enables teachers to build coherent teams rapidly and fairly for the term <span class="hlt">projects</span> of software engineering courses. Moreover, the <span class="hlt">model</span> can also be used to build teams for any type of <span class="hlt">project</span>, if the team member candidates are students, or if they are inexperienced on a certain subject. The…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2001PApGe.158.2173S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2001PApGe.158.2173S"><span>Effects of Source RDP <span class="hlt">Models</span> and Near-source Propagation: Implication for Seismic <span class="hlt">Yield</span> Estimation</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Saikia, C. K.; Helmberger, D. V.; Stead, R. J.; Woods, B. B.</p> <p></p> <p>- It has proven difficult to uniquely untangle the source and propagation effects on the observed seismic data from underground nuclear explosions, even when large quantities of near-source, broadband data are available for analysis. This leads to uncertainties in our ability to quantify the nuclear seismic source function and, consequently the accuracy of seismic <span class="hlt">yield</span> estimates for underground explosions. Extensive deterministic <span class="hlt">modeling</span> analyses of the seismic data recorded from underground explosions at a variety of test sites have been conducted over the years and the results of these studies suggest that variations in the seismic source characteristics between test sites may be contributing to the observed differences in the magnitude/<span class="hlt">yield</span> relations applicable at those sites. This contributes to our uncertainty in the determination of seismic <span class="hlt">yield</span> estimates for explosions at previously uncalibrated test sites. In this paper we review issues involving the relationship of Nevada Test Site (NTS) source scaling laws to those at other sites. The Joint Verification Experiment (JVE) indicates that a magnitude (mb) bias (δmb) exists between the Semipalatinsk test site (STS) in the former Soviet Union (FSU) and the Nevada test site (NTS) in the United States. Generally this δmb is attributed to differential attenuation in the upper-mantle beneath the two test sites. This assumption results in rather large estimates of <span class="hlt">yield</span> for large mb tunnel shots at Novaya Zemlya. A re-examination of the US testing experiments suggests that this δmb bias can partly be explained by anomalous NTS (Pahute) source characteristics. This interpretation is based on the <span class="hlt">modeling</span> of US events at a number of test sites. Using a modified Haskell source description, we investigated the influence of the source Reduced Displacement Potential (RDP) parameters ψ ∞ , K and B by fitting short- and long-period data simultaneously, including the near-field body and surface waves. In general</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016EGUGA..18.7377T','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016EGUGA..18.7377T"><span>The UK Earth System <span class="hlt">Model</span> <span class="hlt">project</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Tang, Yongming</p> <p>2016-04-01</p> <p>In this talk we will describe the development and current status of the UK Earth System <span class="hlt">Model</span> (UKESM). This <span class="hlt">project</span> is a NERC/Met Office collaboration and has two objectives; to develop and apply a world-leading Earth System <span class="hlt">Model</span>, and to grow a community of UK Earth System <span class="hlt">Model</span> scientists. We are building numerical <span class="hlt">models</span> that include all the key components of the global climate system, and contain the important process interactions between global biogeochemistry, atmospheric chemistry and the physical climate system. UKESM will be used to make key CMIP6 simulations as well as long-time (e.g. millennium) simulations, large ensemble experiments and investigating a range of future carbon emission scenarios.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1250011-uncertainty-future-agro-climate-projections-united-states-benefits-greenhouse-gas-mitigation','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1250011-uncertainty-future-agro-climate-projections-united-states-benefits-greenhouse-gas-mitigation"><span>Uncertainty in future agro-climate <span class="hlt">projections</span> in the United States and benefits of greenhouse gas mitigation</span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>Monier, Erwan; Xu, Liyi; Snyder, Richard</p> <p>2016-04-26</p> <p>Scientific challenges exist on how to extract information from the wide range of <span class="hlt">projected</span> impacts simulated by crop <span class="hlt">models</span> driven by climate ensembles. A stronger focus is required to understand and identify the mechanisms and drivers of <span class="hlt">projected</span> changes in crop <span class="hlt">yield</span>. In this study, we investigate the robustness of future <span class="hlt">projections</span> of five metrics relevant to agriculture stakeholders (accumulated frost days, dry days, growing season length, plant heat stress and start of field operations). We use a large ensemble of climate simulations by the MIT IGSM-CAM integrated assessment <span class="hlt">model</span> that accounts for the uncertainty associated with different emissions scenarios,more » climate sensitivities, and representations of natural variability. By the end of the century, the US is <span class="hlt">projected</span> to experience fewer frosts, a longer growing season, more heat stress and an earlier start of field operations-although the magnitude and even the sign of these changes vary greatly by regions. <span class="hlt">Projected</span> changes in dry days are shown not to be robust. We highlight the important role of natural variability, in particular for changes in dry days (a precipitation-related index) and heat stress (a threshold index). The wide range of our <span class="hlt">projections</span> compares well the CMIP5 multi-<span class="hlt">model</span> ensemble, especially for temperature-related indices. This suggests that using a single climate <span class="hlt">model</span> that accounts for key sources of uncertainty can provide an efficient and complementary framework to the more common approach of multi-<span class="hlt">model</span> ensembles. We also show that greenhouse gas mitigation has the potential to significantly reduce adverse effects (heat stress, risks of pest and disease) of climate change on agriculture, while also curtailing potentially beneficial impacts (earlier planting, possibility for multiple cropping). A major benefit of climate mitigation is potentially preventing changes in several indices to emerge from the noise of natural variability, even by 2100. This has major</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016ERL....11e5001M','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016ERL....11e5001M"><span>Uncertainty in future agro-climate <span class="hlt">projections</span> in the United States and benefits of greenhouse gas mitigation</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Monier, Erwan; Xu, Liyi; Snyder, Richard</p> <p>2016-05-01</p> <p>Scientific challenges exist on how to extract information from the wide range of <span class="hlt">projected</span> impacts simulated by crop <span class="hlt">models</span> driven by climate ensembles. A stronger focus is required to understand and identify the mechanisms and drivers of <span class="hlt">projected</span> changes in crop <span class="hlt">yield</span>. In this study, we investigate the robustness of future <span class="hlt">projections</span> of five metrics relevant to agriculture stakeholders (accumulated frost days, dry days, growing season length, plant heat stress and start of field operations). We use a large ensemble of climate simulations by the MIT IGSM-CAM integrated assessment <span class="hlt">model</span> that accounts for the uncertainty associated with different emissions scenarios, climate sensitivities, and representations of natural variability. By the end of the century, the US is <span class="hlt">projected</span> to experience fewer frosts, a longer growing season, more heat stress and an earlier start of field operations—although the magnitude and even the sign of these changes vary greatly by regions. <span class="hlt">Projected</span> changes in dry days are shown not to be robust. We highlight the important role of natural variability, in particular for changes in dry days (a precipitation-related index) and heat stress (a threshold index). The wide range of our <span class="hlt">projections</span> compares well the CMIP5 multi-<span class="hlt">model</span> ensemble, especially for temperature-related indices. This suggests that using a single climate <span class="hlt">model</span> that accounts for key sources of uncertainty can provide an efficient and complementary framework to the more common approach of multi-<span class="hlt">model</span> ensembles. We also show that greenhouse gas mitigation has the potential to significantly reduce adverse effects (heat stress, risks of pest and disease) of climate change on agriculture, while also curtailing potentially beneficial impacts (earlier planting, possibility for multiple cropping). A major benefit of climate mitigation is potentially preventing changes in several indices to emerge from the noise of natural variability, even by 2100. This has major implications</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/1250011-uncertainty-future-agro-climate-projections-united-states-benefits-greenhouse-gas-mitigation','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/1250011-uncertainty-future-agro-climate-projections-united-states-benefits-greenhouse-gas-mitigation"><span>Uncertainty in future agro-climate <span class="hlt">projections</span> in the United States and benefits of greenhouse gas mitigation</span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Monier, Erwan; Xu, Liyi; Snyder, Richard</p> <p></p> <p>Scientific challenges exist on how to extract information from the wide range of <span class="hlt">projected</span> impacts simulated by crop <span class="hlt">models</span> driven by climate ensembles. A stronger focus is required to understand and identify the mechanisms and drivers of <span class="hlt">projected</span> changes in crop <span class="hlt">yield</span>. In this study, we investigate the robustness of future <span class="hlt">projections</span> of five metrics relevant to agriculture stakeholders (accumulated frost days, dry days, growing season length, plant heat stress and start of field operations). We use a large ensemble of climate simulations by the MIT IGSM-CAM integrated assessment <span class="hlt">model</span> that accounts for the uncertainty associated with different emissions scenarios,more » climate sensitivities, and representations of natural variability. By the end of the century, the US is <span class="hlt">projected</span> to experience fewer frosts, a longer growing season, more heat stress and an earlier start of field operations-although the magnitude and even the sign of these changes vary greatly by regions. <span class="hlt">Projected</span> changes in dry days are shown not to be robust. We highlight the important role of natural variability, in particular for changes in dry days (a precipitation-related index) and heat stress (a threshold index). The wide range of our <span class="hlt">projections</span> compares well the CMIP5 multi-<span class="hlt">model</span> ensemble, especially for temperature-related indices. This suggests that using a single climate <span class="hlt">model</span> that accounts for key sources of uncertainty can provide an efficient and complementary framework to the more common approach of multi-<span class="hlt">model</span> ensembles. We also show that greenhouse gas mitigation has the potential to significantly reduce adverse effects (heat stress, risks of pest and disease) of climate change on agriculture, while also curtailing potentially beneficial impacts (earlier planting, possibility for multiple cropping). A major benefit of climate mitigation is potentially preventing changes in several indices to emerge from the noise of natural variability, even by 2100. This has major</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.fs.usda.gov/treesearch/pubs/38035','TREESEARCH'); return false;" href="https://www.fs.usda.gov/treesearch/pubs/38035"><span>An evaluation of three growth and <span class="hlt">yield</span> simulators for even-aged hardwood forests of the mid-Appalachian region</span></a></p> <p><a target="_blank" href="http://www.fs.usda.gov/treesearch/">Treesearch</a></p> <p>John R. Brooks; Gary W. Miller</p> <p>2011-01-01</p> <p>Data from even-aged hardwood stands in four ecoregions across the mid-Appalachian region were used to test <span class="hlt">projection</span> accuracy for three available growth and <span class="hlt">yield</span> software systems: SILVAH, the Forest Vegetation Simulator, and the Stand Damage <span class="hlt">Model</span>. Average root mean squared error (RMSE) ranged from 20 to 140 percent of actual trees per acre while RMSE ranged from 2...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017JInst..12P1021A','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017JInst..12P1021A"><span>Effect of low electric fields on alpha scintillation light <span class="hlt">yield</span> in liquid argon</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Agnes, P.; Albuquerque, I. F. M.; Alexander, T.; Alton, A. K.; Asner, D. M.; Back, H. O.; Baldin, B.; Biery, K.; Bocci, V.; Bonfini, G.; Bonivento, W.; Bossa, M.; Bottino, B.; Brigatti, A.; Brodsky, J.; Budano, F.; Bussino, S.; Cadeddu, M.; Cadoni, M.; Calaprice, F.; Canci, N.; Candela, A.; Caravati, M.; Cariello, M.; Carlini, M.; Catalanotti, S.; Cavalcante, P.; Chepurnov, A.; Cicalò, C.; Cocco, A. G.; Covone, G.; D'Angelo, D.; D'Incecco, M.; Davini, S.; De Cecco, S.; De Deo, M.; De Vincenzi, M.; Derbin, A.; Devoto, A.; Di Eusanio, F.; Di Pietro, G.; Dionisi, C.; Edkins, E.; Empl, A.; Fan, A.; Fiorillo, G.; Fomenko, K.; Forster, G.; Franco, D.; Gabriele, F.; Galbiati, C.; Giagu, S.; Giganti, C.; Giovanetti, G. K.; Goretti, A. M.; Granato, F.; Gromov, M.; Guan, M.; Guardincerri, Y.; Hackett, B. R.; Herner, K.; Hughes, D.; Humble, P.; Hungerford, E. V.; Ianni, A.; James, I.; Johnson, T. N.; Jollet, C.; Keeter, K.; Kendziora, C. L.; Koh, G.; Korablev, D.; Korga, G.; Kubankin, A.; Li, X.; Lissia, M.; Loer, B.; Lombardi, P.; Longo, G.; Ma, Y.; Machulin, I. N.; Mandarano, A.; Mari, S. M.; Maricic, J.; Marini, L.; Martoff, C. J.; Meregaglia, A.; Meyers, P. D.; Milincic, R.; Miller, J. D.; Montanari, D.; Monte, A.; Mount, B. J.; Muratova, V. N.; Musico, P.; Napolitano, J.; Navrer Agasson, A.; Odrowski, S.; Oleinik, A.; Orsini, M.; Ortica, F.; Pagani, L.; Pallavicini, M.; Pantic, E.; Parmeggiano, S.; Pelczar, K.; Pelliccia, N.; Pocar, A.; Pordes, S.; Pugachev, D. A.; Qian, H.; Randle, K.; Ranucci, G.; Razeti, M.; Razeto, A.; Reinhold, B.; Renshaw, A. L.; Rescigno, M.; Riffard, Q.; Romani, A.; Rossi, B.; Rossi, N.; Rountree, D.; Sablone, D.; Saggese, P.; Sands, W.; Savarese, C.; Schlitzer, B.; Segreto, E.; Semenov, D. A.; Shields, E.; Singh, P. N.; Skorokhvatov, M. D.; Smirnov, O.; Sotnikov, A.; Stanford, C.; Suvorov, Y.; Tartaglia, R.; Tatarowicz, J.; Testera, G.; Tonazzo, A.; Trinchese, P.; Unzhakov, E. V.; Verducci, M.; Vishneva, A.; Vogelaar, B.; Wada, M.; Walker, S.; Wang, H.; Wang, Y.; Watson, A. W.; Westerdale, S.; Wilhelmi, J.; Wojcik, M. M.; Xiang, X.; Xiao, X.; Xu, J.; Yang, C.; Zhong, W.; Zhu, C.; Zuzel, G.</p> <p>2017-01-01</p> <p>Measurements were made of scintillation light <span class="hlt">yield</span> of alpha particles from the 222Rn decay chain within the DarkSide-50 liquid argon time <span class="hlt">projection</span> chamber. The light <span class="hlt">yield</span> was found to increase as the applied electric field increased, with alphas in a 200 V/cm electric field exhibiting a ~2% increase in light <span class="hlt">yield</span> compared to alphas in no field.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017E%26ES...81a2186Z','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017E%26ES...81a2186Z"><span>Power Grid Construction <span class="hlt">Project</span> Portfolio Optimization Based on Bi-level programming <span class="hlt">model</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Zhao, Erdong; Li, Shangqi</p> <p>2017-08-01</p> <p>As the main body of power grid operation, county-level power supply enterprises undertake an important emission to guarantee the security of power grid operation and safeguard social power using order. The optimization of grid construction <span class="hlt">projects</span> has been a key issue of power supply capacity and service level of grid enterprises. According to the actual situation of power grid construction <span class="hlt">project</span> optimization of county-level power enterprises, on the basis of qualitative analysis of the <span class="hlt">projects</span>, this paper builds a Bi-level programming <span class="hlt">model</span> based on quantitative analysis. The upper layer of the <span class="hlt">model</span> is the target restriction of the optimal portfolio; the lower layer of the <span class="hlt">model</span> is enterprises’ financial restrictions on the size of the enterprise <span class="hlt">project</span> portfolio. Finally, using a real example to illustrate operation proceeding and the optimization result of the <span class="hlt">model</span>. Through qualitative analysis and quantitative analysis, the bi-level programming <span class="hlt">model</span> improves the accuracy and normative standardization of power grid enterprises <span class="hlt">projects</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4248366','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4248366"><span>Development and Application of New Quality <span class="hlt">Model</span> for Software <span class="hlt">Projects</span></span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Karnavel, K.; Dillibabu, R.</p> <p>2014-01-01</p> <p>The IT industry tries to employ a number of <span class="hlt">models</span> to identify the defects in the construction of software <span class="hlt">projects</span>. In this paper, we present COQUALMO and its limitations and aim to increase the quality without increasing the cost and time. The computation time, cost, and effort to predict the residual defects are very high; this was overcome by developing an appropriate new quality <span class="hlt">model</span> named the software testing defect corrective <span class="hlt">model</span> (STDCM). The STDCM was used to estimate the number of remaining residual defects in the software product; a few assumptions and the detailed steps of the STDCM are highlighted. The application of the STDCM is explored in software <span class="hlt">projects</span>. The implementation of the <span class="hlt">model</span> is validated using statistical inference, which shows there is a significant improvement in the quality of the software <span class="hlt">projects</span>. PMID:25478594</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.fs.usda.gov/treesearch/pubs/55919','TREESEARCH'); return false;" href="https://www.fs.usda.gov/treesearch/pubs/55919"><span>OP-<span class="hlt">Yield</span> Version 1.00 user's guide</span></a></p> <p><a target="_blank" href="http://www.fs.usda.gov/treesearch/">Treesearch</a></p> <p>Martin W. Ritchie; Jianwei Zhang</p> <p>2018-01-01</p> <p>OP-<span class="hlt">Yield</span> is a Microsoft Excel™ spreadsheet with 14 specified user inputs to derive custom <span class="hlt">yield</span> estimates using the original Oliver and Powers (1978) functions as the foundation. It presents <span class="hlt">yields</span> for ponderosa pine (Pinus ponderosa Lawson & C. Lawson) plantations in northern California. The basic <span class="hlt">model</span> forms for dominantand...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2012GMDD....5.2933I','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2012GMDD....5.2933I"><span>The Norwegian Earth System <span class="hlt">Model</span>, NorESM1-M - Part 2: Climate response and scenario <span class="hlt">projections</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Iversen, T.; Bentsen, M.; Bethke, I.; Debernard, J. B.; Kirkevåg, A.; Seland, Ø.; Drange, H.; Kristjánsson, J. E.; Medhaug, I.; Sand, M.; Seierstad, I. A.</p> <p>2012-09-01</p> <p>The NorESM1-M simulation results for CMIP5 (<a href="http://cmip-pcmdi.llnl.gov/cmip5/index.html" align=_blank>http://cmip-pcmdi.llnl.gov/cmip5/index.html</a>) are described and discussed. Together with the accompanying paper by Bentsen et al. (2012), this paper documents that NorESM1-M is a valuable global climate <span class="hlt">model</span> for research and for providing complementary results to the evaluation of possible man made climate change. NorESM is based on the <span class="hlt">model</span> CCSM4 operated at NCAR on behalf of many contributors in USA. The ocean <span class="hlt">model</span> is replaced by a developed version of MICOM and the atmospheric <span class="hlt">model</span> is extended with on-line calculations of aerosols, their direct effect, and their indirect effect on warm clouds. <span class="hlt">Model</span> validation is presented in a companion paper (Bentsen et al., 2012). NorESM1-M is estimated to have equilibrium climate sensitivity slightly smaller than 2.9 K, a transient climate response just below 1.4 K, and is less sensitive than most other <span class="hlt">models</span>. Cloud feedbacks damp the response, and a strong AMOC reduces the heat fraction available for increasing near surface temperatures, for evaporation, and for melting ice. The future <span class="hlt">projections</span> based on RCP scenarios <span class="hlt">yield</span> global surface air temperature increase almost one standard deviation lower than a 15-<span class="hlt">model</span> average. Summer sea-ice is <span class="hlt">projected</span> to decrease considerably by 2100, and completely for RCP8.5. The AMOC is <span class="hlt">projected</span> to reduce by 12%, 15-17%, and 32% for the RCP2.6, 4.5, 6.0 and 8.5 respectively. Precipitation is <span class="hlt">projected</span> to increase in the tropics, decrease in the subtropics and in southern parts of the northern extra-tropics during summer, and otherwise increase in most of the extra-tropics. Changes in the atmospheric water cycle indicate that precipitation events over continents will become more intense and dry spells more frequent. Extra-tropical storminess in the Northern Hemisphere is <span class="hlt">projected</span> to shift northwards. There are indications of more frequent spring and summer blocking in</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFM.A22F..07S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFM.A22F..07S"><span>Regional climate <span class="hlt">models</span> reduce biases of global <span class="hlt">models</span> and <span class="hlt">project</span> smaller European summer warming</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Soerland, S.; Schar, C.; Lüthi, D.; Kjellstrom, E.</p> <p>2017-12-01</p> <p>The assessment of regional climate change and the associated planning of adaptation and response strategies are often based on complex <span class="hlt">model</span> chains. Typically, these <span class="hlt">model</span> chains employ global and regional climate <span class="hlt">models</span> (GCMs and RCMs), as well as one or several impact <span class="hlt">models</span>. It is a common belief that the errors in such <span class="hlt">model</span> chains behave approximately additive, thus the uncertainty should increase with each <span class="hlt">modeling</span> step. If this hypothesis were true, the application of RCMs would not lead to any intrinsic improvement (beyond higher-resolution detail) of the GCM results. Here, we investigate the bias patterns (offset during the historical period against observations) and climate change signals of two RCMs that have downscaled a comprehensive set of GCMs following the EURO-CORDEX framework. The two RCMs reduce the biases of the driving GCMs, reduce the spread and modify the amplitude of the GCM <span class="hlt">projected</span> climate change signal. The GCM <span class="hlt">projected</span> summer warming at the end of the century is substantially reduced by both RCMs. These results are important, as the <span class="hlt">projected</span> summer warming and its likely impact on the water cycle are among the most serious concerns regarding European climate change.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016NuPhA.950....1W','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016NuPhA.950....1W"><span>Angular momentum <span class="hlt">projection</span> for a Nilsson mean-field plus pairing <span class="hlt">model</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Wang, Yin; Pan, Feng; Launey, Kristina D.; Luo, Yan-An; Draayer, J. P.</p> <p>2016-06-01</p> <p>The angular momentum <span class="hlt">projection</span> for the axially deformed Nilsson mean-field plus a modified standard pairing (MSP) or the nearest-level pairing (NLP) <span class="hlt">model</span> is proposed. Both the exact <span class="hlt">projection</span>, in which all intrinsic states are taken into consideration, and the approximate <span class="hlt">projection</span>, in which only intrinsic states with K = 0 are taken in the <span class="hlt">projection</span>, are considered. The analysis shows that the approximate <span class="hlt">projection</span> with only K = 0 intrinsic states seems reasonable, of which the configuration subspace considered is greatly reduced. As simple examples for the <span class="hlt">model</span> application, low-lying spectra and electromagnetic properties of 18O and 18Ne are described by using both the exact and approximate angular momentum <span class="hlt">projection</span> of the MSP or the NLP, while those of 20Ne and 24Mg are described by using the approximate angular momentum <span class="hlt">projection</span> of the MSP or NLP.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/1429634-space-time-least-squares-petrov-galerkin-projection-nonlinear-model-reduction','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/1429634-space-time-least-squares-petrov-galerkin-projection-nonlinear-model-reduction"><span>Space-time least-squares Petrov-Galerkin <span class="hlt">projection</span> in nonlinear <span class="hlt">model</span> reduction.</span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Choi, Youngsoo; Carlberg, Kevin Thomas</p> <p></p> <p>Our work proposes a space-time least-squares Petrov-Galerkin (ST-LSPG) <span class="hlt">projection</span> method for <span class="hlt">model</span> reduction of nonlinear dynamical systems. In contrast to typical nonlinear <span class="hlt">model</span>-reduction methods that first apply Petrov-Galerkin <span class="hlt">projection</span> in the spatial dimension and subsequently apply time integration to numerically resolve the resulting low-dimensional dynamical system, the proposed method applies <span class="hlt">projection</span> in space and time simultaneously. To accomplish this, the method first introduces a low-dimensional space-time trial subspace, which can be obtained by computing tensor decompositions of state-snapshot data. The method then computes discrete-optimal approximations in this space-time trial subspace by minimizing the residual arising after time discretization over allmore » space and time in a weighted ℓ 2-norm. This norm can be de ned to enable complexity reduction (i.e., hyper-reduction) in time, which leads to space-time collocation and space-time GNAT variants of the ST-LSPG method. Advantages of the approach relative to typical spatial-<span class="hlt">projection</span>-based nonlinear <span class="hlt">model</span> reduction methods such as Galerkin <span class="hlt">projection</span> and least-squares Petrov-Galerkin <span class="hlt">projection</span> include: (1) a reduction of both the spatial and temporal dimensions of the dynamical system, (2) the removal of spurious temporal modes (e.g., unstable growth) from the state space, and (3) error bounds that exhibit slower growth in time. Numerical examples performed on <span class="hlt">model</span> problems in fluid dynamics demonstrate the ability of the method to generate orders-of-magnitude computational savings relative to spatial-<span class="hlt">projection</span>-based reduced-order <span class="hlt">models</span> without sacrificing accuracy.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=use+AND+force&pg=7&id=EJ903747','ERIC'); return false;" href="https://eric.ed.gov/?q=use+AND+force&pg=7&id=EJ903747"><span>Stabilizing a Bicycle: A <span class="hlt">Modeling</span> <span class="hlt">Project</span></span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Pennings, Timothy J.; Williams, Blair R.</p> <p>2010-01-01</p> <p>This article is a <span class="hlt">project</span> that takes students through the process of forming a mathematical <span class="hlt">model</span> of bicycle dynamics. Beginning with basic ideas from Newtonian mechanics (forces and torques), students use techniques from calculus and differential equations to develop the equations of rotational motion for a bicycle-rider system as it tips from…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2012EGUGA..1413531W','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2012EGUGA..1413531W"><span><span class="hlt">Modelling</span> climate impact on floods under future emission scenarios using an ensemble of climate <span class="hlt">model</span> <span class="hlt">projections</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Wetterhall, F.; Cloke, H. L.; He, Y.; Freer, J.; Pappenberger, F.</p> <p>2012-04-01</p> <p>Evidence provided by <span class="hlt">modelled</span> assessments of climate change impact on flooding is fundamental to water resource and flood risk decision making. Impact <span class="hlt">models</span> usually rely on climate <span class="hlt">projections</span> from Global and Regional Climate <span class="hlt">Models</span>, and there is no doubt that these provide a useful assessment of future climate change. However, cascading ensembles of climate <span class="hlt">projections</span> into impact <span class="hlt">models</span> is not straightforward because of problems of coarse resolution in Global and Regional Climate <span class="hlt">Models</span> (GCM/RCM) and the deficiencies in <span class="hlt">modelling</span> high-intensity precipitation events. Thus decisions must be made on how to appropriately pre-process the meteorological variables from GCM/RCMs, such as selection of downscaling methods and application of <span class="hlt">Model</span> Output Statistics (MOS). In this paper a grand ensemble of <span class="hlt">projections</span> from several GCM/RCM are used to drive a hydrological <span class="hlt">model</span> and analyse the resulting future flood <span class="hlt">projections</span> for the Upper Severn, UK. The impact and implications of applying MOS techniques to precipitation as well as hydrological <span class="hlt">model</span> parameter uncertainty is taken into account. The resultant grand ensemble of future river discharge <span class="hlt">projections</span> from the RCM/GCM-hydrological <span class="hlt">model</span> chain is evaluated against a response surface technique combined with a perturbed physics experiment creating a probabilisic ensemble climate <span class="hlt">model</span> outputs. The ensemble distribution of results show that future risk of flooding in the Upper Severn increases compared to present conditions, however, the study highlights that the uncertainties are large and that strong assumptions were made in using <span class="hlt">Model</span> Output Statistics to produce the estimates of future discharge. The importance of analysing on a seasonal basis rather than just annual is highlighted. The inability of the RCMs (and GCMs) to produce realistic precipitation patterns, even in present conditions, is a major caveat of local climate impact studies on flooding, and this should be a focus for future development.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://cfpub.epa.gov/si/si_public_record_report.cfm?dirEntryId=336061&Lab=NRMRL&keyword=methodological&actType=&TIMSType=+&TIMSSubTypeID=&DEID=&epaNumber=&ntisID=&archiveStatus=Both&ombCat=Any&dateBeginCreated=&dateEndCreated=&dateBeginPublishedPresented=&dateEndPublishedPresented=&dateBeginUpdated=&dateEndUpdated=&dateBeginCompleted=&dateEndCompleted=&personID=&role=Any&journalID=&publisherID=&sortBy=revisionDate&count=50','EPA-EIMS'); return false;" href="https://cfpub.epa.gov/si/si_public_record_report.cfm?dirEntryId=336061&Lab=NRMRL&keyword=methodological&actType=&TIMSType=+&TIMSSubTypeID=&DEID=&epaNumber=&ntisID=&archiveStatus=Both&ombCat=Any&dateBeginCreated=&dateEndCreated=&dateBeginPublishedPresented=&dateEndPublishedPresented=&dateBeginUpdated=&dateEndUpdated=&dateBeginCompleted=&dateEndCompleted=&personID=&role=Any&journalID=&publisherID=&sortBy=revisionDate&count=50"><span>Innovations in <span class="hlt">projecting</span> emissions for air quality <span class="hlt">modeling</span></span></a></p> <p><a target="_blank" href="http://oaspub.epa.gov/eims/query.page">EPA Science Inventory</a></p> <p></p> <p></p> <p>Air quality <span class="hlt">modeling</span> is used in setting air quality standards and in evaluating their costs and benefits. Historically, <span class="hlt">modeling</span> applications have <span class="hlt">projected</span> emissions and the resulting air quality only 5 to 10 years into the future. Recognition that the choice of air quality mana...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2014AGUFM.B33C0190Y','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2014AGUFM.B33C0190Y"><span>The estimation of rice paddy <span class="hlt">yield</span> with GRAMI crop <span class="hlt">model</span> and Geostationary Ocean Color Imager (GOCI) image over South Korea</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Yeom, J. M.; Kim, H. O.</p> <p>2014-12-01</p> <p>In this study, we estimated the rice paddy <span class="hlt">yield</span> with moderate geostationary satellite based vegetation products and GRAMI <span class="hlt">model</span> over South Korea. Rice is the most popular staple food for Asian people. In addition, the effects of climate change are getting stronger especially in Asian region, where the most of rice are cultivated. Therefore, accurate and timely prediction of rice <span class="hlt">yield</span> is one of the most important to accomplish food security and to prepare natural disasters such as crop defoliation, drought, and pest infestation. In the present study, GOCI, which is world first Geostationary Ocean Color Image, was used for estimating temporal vegetation indices of the rice paddy by adopting atmospheric correction BRDF <span class="hlt">modeling</span>. For the atmospheric correction with LUT method based on Second Simulation of the Satellite Signal in the Solar Spectrum (6S), MODIS atmospheric products such as MOD04, MOD05, MOD07 from NASA's Earth Observing System Data and Information System (EOSDIS) were used. In order to correct the surface anisotropy effect, Ross-Thick Li-Sparse Reciprocal (RTLSR) BRDF <span class="hlt">model</span> was performed at daily basis with 16day composite period. The estimated multi-temporal vegetation images was used for crop classification by using high resolution satellite images such as Rapideye, KOMPSAT-2 and KOMPSAT-3 to extract the proportional rice paddy area in corresponding a pixel of GOCI. In the case of GRAMI crop <span class="hlt">model</span>, initial conditions are determined by performing every 2 weeks field works at Chonnam National University, Gwangju, Korea. The corrected GOCI vegetation products were incorporated with GRAMI <span class="hlt">model</span> to predict rice <span class="hlt">yield</span> estimation. The predicted rice <span class="hlt">yield</span> was compared with field measurement of rice <span class="hlt">yield</span>.</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_20");'>20</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li class="active"><span>22</span></li> <li><a href="#" onclick='return showDiv("page_23");'>23</a></li> <li><a href="#" onclick='return showDiv("page_24");'>24</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_22 --> <div id="page_23" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li class="active"><span>23</span></li> <li><a href="#" onclick='return showDiv("page_24");'>24</a></li> <li><a href="#" onclick='return showDiv("page_25");'>25</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="441"> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2011AGUFMGC12A..02R','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2011AGUFMGC12A..02R"><span>The Agricultural <span class="hlt">Model</span> Intercomparison and Improvement <span class="hlt">Project</span> (AgMIP): Progress and Preliminary Results</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Rosenzweig, C.</p> <p>2011-12-01</p> <p>The Agricultural <span class="hlt">Model</span> Intercomparison and Improvement <span class="hlt">Project</span> (AgMIP) is a distributed climate-scenario simulation exercise for historical <span class="hlt">model</span> intercomparison and future climate change conditions with participation of multiple crop and agricultural trade <span class="hlt">modeling</span> groups around the world. The goals of AgMIP are to improve substantially the characterization of risk of hunger and world food security due to climate change and to enhance adaptation capacity in both developing and developed countries. Recent progress and the current status of AgMIP will be presented, highlighting three areas of activity: preliminary results from crop pilot studies, outcomes from regional workshops, and emerging scientific challenges. AgMIP crop <span class="hlt">modeling</span> efforts are being led by pilot studies, which have been established for wheat, maize, rice, and sugarcane. These crop-specific initiatives have proven instrumental in testing and contributing to AgMIP protocols, as well as creating preliminary results for aggregation and input to agricultural trade <span class="hlt">models</span>. Regional workshops are being held to encourage collaborations and set research activities in motion for key agricultural areas. The first of these workshops was hosted by Embrapa and UNICAMP and held in Campinas, Brazil. Outcomes from this meeting have informed crop <span class="hlt">modeling</span> research activities within South America, AgMIP protocols, and future regional workshops. Several scientific challenges have emerged and are currently being addressed by AgMIP researchers. Areas of particular interest include geospatial weather generation, ensemble methods for climate scenarios and crop <span class="hlt">models</span>, spatial aggregation of field-scale <span class="hlt">yields</span> to regional and global production, and characterization of future changes in climate variability.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28822005','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28822005"><span>A supply <span class="hlt">model</span> for nurse workforce <span class="hlt">projection</span> in Malaysia.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Abas, Zuraida Abal; Ramli, Mohamad Raziff; Desa, Mohamad Ishak; Saleh, Nordin; Hanafiah, Ainul Nadziha; Aziz, Nuraini; Abidin, Zaheera Zainal; Shibghatullah, Abdul Samad; Rahman, Ahmad Fadzli Nizam Abdul; Musa, Haslinda</p> <p>2017-08-18</p> <p>The paper aims to provide an insight into the significance of having a simulation <span class="hlt">model</span> to forecast the supply of registered nurses for health workforce planning policy using System Dynamics. A <span class="hlt">model</span> is highly in demand to predict the workforce demand for nurses in the future, which it supports for complete development of a needs-based nurse workforce <span class="hlt">projection</span> using Malaysia as a case study. The supply <span class="hlt">model</span> consists of three sub-<span class="hlt">models</span> to forecast the number of registered nurses for the next 15 years: training <span class="hlt">model</span>, population <span class="hlt">model</span> and Full Time Equivalent (FTE) <span class="hlt">model</span>. In fact, the training <span class="hlt">model</span> is for predicting the number of newly registered nurses after training is completed. Furthermore, the population <span class="hlt">model</span> is for indicating the number of registered nurses in the nation and the FTE <span class="hlt">model</span> is useful for counting the number of registered nurses with direct patient care. Each <span class="hlt">model</span> is described in detail with the logical connection and mathematical governing equation for accurate forecasting. The supply <span class="hlt">model</span> is validated using error analysis approach in terms of the root mean square percent error and the Theil inequality statistics, which is mportant for evaluating the simulation results. Moreover, the output of simulation results provides a useful insight for policy makers as a what-if analysis is conducted. Some recommendations are proposed in order to deal with the nursing deficit. It must be noted that the results from the simulation <span class="hlt">model</span> will be used for the next stage of the Needs-Based Nurse Workforce <span class="hlt">projection</span> <span class="hlt">project</span>. The impact of this study is that it provides the ability for greater planning and policy making with better predictions.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015PhDT........94K','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015PhDT........94K"><span>Mechanical responses, texture evolution, and <span class="hlt">yield</span> loci of extruded AZ31 magnesium alloy under various loading conditions: Experiment and <span class="hlt">modeling</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Kabirian, Farhoud</p> <p></p> <p>Mechanical responses and texture evolution of extruded AZ31 Mg are measured under uniaxial (tension-compression) and multiaxial (free-end torsion) loadings. Compression loading is carried out in three different directions at temperature and strain rate ranges of 77-423 K and 10-4 -3000 s -1, respectively. Texture evolution at different intermediate strains reveals that crystal reorientation is exhausted at smaller strains with increase in strain rate while increase in temperature retards twinning. In addition to the well-known tension-compression <span class="hlt">yield</span> asymmetry, a strong anisotropy in strain hardening response is observed. Strain hardening during the compression experiment is intensified with decreasing and increasing temperature and strain rate, respectively. This complex behavior is explained through understanding the roles of deformation mechanisms using the Visco-Plastic Self Consistent (VPSC) <span class="hlt">model</span>. In order to calibrate the VPSC <span class="hlt">model</span>'s constants as accurate as possible, a vast number of mechanical responses including stress-strain curves in tension, compression in three directions, and free-end torsion, texture evolution at different strains, lateral strains of compression samples, twin volume fraction, and axial strain during the torsion experiment. <span class="hlt">Modeling</span> results show that depending on the number of measurements used for calibration, roles of different mechanisms in plastic deformation change significantly. In addition, a precise definition of <span class="hlt">yield</span> is established for the extruded AZ31magnesium alloy after it is subjected to different loading conditions (uniaxial to multiaxial) at four different plastic strains. The <span class="hlt">yield</span> response is measured in ?-? space. Several <span class="hlt">yield</span> criteria are studied to predict <span class="hlt">yield</span> response of extruded AZ31. This study proposes an asymmetrical fourth-order polynomial <span class="hlt">yield</span> function. Material constants in this <span class="hlt">model</span> can be directly calculated using mechanical measurements. Convexity of the proposed <span class="hlt">model</span> is discussed, and</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/27809406','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/27809406"><span>Proposed best practice for <span class="hlt">projects</span> that involve <span class="hlt">modelling</span> and simulation.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>O'Kelly, Michael; Anisimov, Vladimir; Campbell, Chris; Hamilton, Sinéad</p> <p>2017-03-01</p> <p><span class="hlt">Modelling</span> and simulation has been used in many ways when developing new treatments. To be useful and credible, it is generally agreed that <span class="hlt">modelling</span> and simulation should be undertaken according to some kind of best practice. A number of authors have suggested elements required for best practice in <span class="hlt">modelling</span> and simulation. Elements that have been suggested include the pre-specification of goals, assumptions, methods, and outputs. However, a <span class="hlt">project</span> that involves <span class="hlt">modelling</span> and simulation could be simple or complex and could be of relatively low or high importance to the <span class="hlt">project</span>. It has been argued that the level of detail and the strictness of pre-specification should be allowed to vary, depending on the complexity and importance of the <span class="hlt">project</span>. This best practice document does not prescribe how to develop a statistical <span class="hlt">model</span>. Rather, it describes the elements required for the specification of a <span class="hlt">project</span> and requires that the practitioner justify in the specification the omission of any of the elements and, in addition, justify the level of detail provided about each element. This document is an initiative of the Special Interest Group for <span class="hlt">modelling</span> and simulation. The Special Interest Group for <span class="hlt">modelling</span> and simulation is a body open to members of Statisticians in the Pharmaceutical Industry and the European Federation of Statisticians in the Pharmaceutical Industry. Examples of a very detailed specification and a less detailed specification are included as appendices. Copyright © 2016 John Wiley & Sons, Ltd.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/29691405','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/29691405"><span>Causes and implications of the unforeseen 2016 extreme <span class="hlt">yield</span> loss in the breadbasket of France.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Ben-Ari, Tamara; Boé, Julien; Ciais, Philippe; Lecerf, Remi; Van der Velde, Marijn; Makowski, David</p> <p>2018-04-24</p> <p>In 2016, France, one of the leading wheat-producing and wheat-exporting regions in the world suffered its most extreme <span class="hlt">yield</span> loss in over half a century. Yet, <span class="hlt">yield</span> forecasting systems failed to anticipate this event. We show that this unprecedented event is a new type of compound extreme with a conjunction of abnormally warm temperatures in late autumn and abnormally wet conditions in the following spring. A binomial logistic regression accounting for fall and spring conditions is able to capture key <span class="hlt">yield</span> loss events since 1959. Based on climate <span class="hlt">projections</span>, we show that the conditions that led to the 2016 wheat <span class="hlt">yield</span> loss are <span class="hlt">projected</span> to become more frequent in the future. The increased likelihood of such compound extreme events poses a challenge: farming systems and <span class="hlt">yield</span> forecasting systems, which often support them, must adapt.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://files.eric.ed.gov/fulltext/ED072285.pdf','ERIC'); return false;" href="http://files.eric.ed.gov/fulltext/ED072285.pdf"><span>The Employment Impact of the Des Moines Occupational Upgrading <span class="hlt">Project</span> and <span class="hlt">Model</span> Cities High School Equivalency <span class="hlt">Project</span>: <span class="hlt">Project</span> Year One Evaluation.</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Palomba, Neil A.; And Others</p> <p></p> <p>This study was conducted to: (1) evaluate the Occupational Upgrading <span class="hlt">Project</span> (OUP) and the <span class="hlt">Model</span> Neighborhood High School Equivalency (HSE) <span class="hlt">Project</span>'s first year of operation, and (2) create baseline data from which future and more conclusive evaluation can be undertaken. Data were gathered by conducting open-ended interviews with the…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017NatSR...743122G','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017NatSR...743122G"><span><span class="hlt">Modeling</span> contribution of shallow groundwater to evapotranspiration and <span class="hlt">yield</span> of maize in an arid area</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Gao, Xiaoyu; Huo, Zailin; Qu, Zhongyi; Xu, Xu; Huang, Guanhua; Steenhuis, Tammo S.</p> <p>2017-02-01</p> <p>Capillary rise from shallow groundwater can decrease the need for irrigation water. However, simple techniques do not exist to quantify the contribution of capillary flux to crop water use. In this study we develop the Agricultural Water Productivity <span class="hlt">Model</span> for Shallow Groundwater (AWPM-SG) for calculating capillary fluxes from shallow groundwater using readily available data. The <span class="hlt">model</span> combines an analytical solution of upward flux from groundwater with the EPIC crop growth <span class="hlt">model</span>. AWPM-SG was calibrated and validated with 2-year lysimetric experiment with maize. Predicted soil moisture, groundwater depth and leaf area index agreed with the observations. To investigate the response of <span class="hlt">model</span>, various scenarios were run in which the irrigation amount and groundwater depth were varied. Simulations shows that at groundwater depth of 1 m capillary upward supplied 41% of the evapotranspiration. This reduced to 6% at groundwater depth of 2 m. The <span class="hlt">yield</span> per unit water consumed (water productivity) was nearly constant for 2.3 kg/m3. The <span class="hlt">yield</span> per unit water applied (irrigation water productivity) increased with decreasing irrigation water because capillary rise made up in part for the lack of irrigation water. Consequently, using AWPM-SG in irrigation scheduling will be beneficial to save more water in areas with shallow groundwater.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5318869','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=5318869"><span><span class="hlt">Modeling</span> contribution of shallow groundwater to evapotranspiration and <span class="hlt">yield</span> of maize in an arid area</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Gao, Xiaoyu; Huo, Zailin; Qu, Zhongyi; Xu, Xu; Huang, Guanhua; Steenhuis, Tammo S.</p> <p>2017-01-01</p> <p>Capillary rise from shallow groundwater can decrease the need for irrigation water. However, simple techniques do not exist to quantify the contribution of capillary flux to crop water use. In this study we develop the Agricultural Water Productivity <span class="hlt">Model</span> for Shallow Groundwater (AWPM-SG) for calculating capillary fluxes from shallow groundwater using readily available data. The <span class="hlt">model</span> combines an analytical solution of upward flux from groundwater with the EPIC crop growth <span class="hlt">model</span>. AWPM-SG was calibrated and validated with 2-year lysimetric experiment with maize. Predicted soil moisture, groundwater depth and leaf area index agreed with the observations. To investigate the response of <span class="hlt">model</span>, various scenarios were run in which the irrigation amount and groundwater depth were varied. Simulations shows that at groundwater depth of 1 m capillary upward supplied 41% of the evapotranspiration. This reduced to 6% at groundwater depth of 2 m. The <span class="hlt">yield</span> per unit water consumed (water productivity) was nearly constant for 2.3 kg/m3. The <span class="hlt">yield</span> per unit water applied (irrigation water productivity) increased with decreasing irrigation water because capillary rise made up in part for the lack of irrigation water. Consequently, using AWPM-SG in irrigation scheduling will be beneficial to save more water in areas with shallow groundwater. PMID:28220874</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28220874','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28220874"><span><span class="hlt">Modeling</span> contribution of shallow groundwater to evapotranspiration and <span class="hlt">yield</span> of maize in an arid area.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Gao, Xiaoyu; Huo, Zailin; Qu, Zhongyi; Xu, Xu; Huang, Guanhua; Steenhuis, Tammo S</p> <p>2017-02-21</p> <p>Capillary rise from shallow groundwater can decrease the need for irrigation water. However, simple techniques do not exist to quantify the contribution of capillary flux to crop water use. In this study we develop the Agricultural Water Productivity <span class="hlt">Model</span> for Shallow Groundwater (AWPM-SG) for calculating capillary fluxes from shallow groundwater using readily available data. The <span class="hlt">model</span> combines an analytical solution of upward flux from groundwater with the EPIC crop growth <span class="hlt">model</span>. AWPM-SG was calibrated and validated with 2-year lysimetric experiment with maize. Predicted soil moisture, groundwater depth and leaf area index agreed with the observations. To investigate the response of <span class="hlt">model</span>, various scenarios were run in which the irrigation amount and groundwater depth were varied. Simulations shows that at groundwater depth of 1 m capillary upward supplied 41% of the evapotranspiration. This reduced to 6% at groundwater depth of 2 m. The <span class="hlt">yield</span> per unit water consumed (water productivity) was nearly constant for 2.3 kg/m 3 . The <span class="hlt">yield</span> per unit water applied (irrigation water productivity) increased with decreasing irrigation water because capillary rise made up in part for the lack of irrigation water. Consequently, using AWPM-SG in irrigation scheduling will be beneficial to save more water in areas with shallow groundwater.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=2717918','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=2717918"><span>Developing a scalable <span class="hlt">model</span> of recombinant protein <span class="hlt">yield</span> from Pichia pastoris: the influence of culture conditions, biomass and induction regime</span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Holmes, William J; Darby, Richard AJ; Wilks, Martin DB; Smith, Rodney; Bill, Roslyn M</p> <p>2009-01-01</p> <p>Background The optimisation and scale-up of process conditions leading to high <span class="hlt">yields</span> of recombinant proteins is an enduring bottleneck in the post-genomic sciences. Typical experiments rely on varying selected parameters through repeated rounds of trial-and-error optimisation. To rationalise this, several groups have recently adopted the 'design of experiments' (DoE) approach frequently used in industry. Studies have focused on parameters such as medium composition, nutrient feed rates and induction of expression in shake flasks or bioreactors, as well as oxygen transfer rates in micro-well plates. In this study we wanted to generate a predictive <span class="hlt">model</span> that described small-scale screens and to test its scalability to bioreactors. Results Here we demonstrate how the use of a DoE approach in a multi-well mini-bioreactor permitted the rapid establishment of high <span class="hlt">yielding</span> production phase conditions that could be transferred to a 7 L bioreactor. Using green fluorescent protein secreted from Pichia pastoris, we derived a predictive <span class="hlt">model</span> of protein <span class="hlt">yield</span> as a function of the three most commonly-varied process parameters: temperature, pH and the percentage of dissolved oxygen in the culture medium. Importantly, when <span class="hlt">yield</span> was normalised to culture volume and density, the <span class="hlt">model</span> was scalable from mL to L working volumes. By increasing pre-induction biomass accumulation, <span class="hlt">model</span>-predicted <span class="hlt">yields</span> were further improved. <span class="hlt">Yield</span> improvement was most significant, however, on varying the fed-batch induction regime to minimise methanol accumulation so that the productivity of the culture increased throughout the whole induction period. These findings suggest the importance of matching the rate of protein production with the host metabolism. Conclusion We demonstrate how a rational, stepwise approach to recombinant protein production screens can reduce process development time. PMID:19570229</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/23703873','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/23703873"><span>Climate change and watershed mercury export: a multiple <span class="hlt">projection</span> and <span class="hlt">model</span> analysis.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Golden, Heather E; Knightes, Christopher D; Conrads, Paul A; Feaster, Toby D; Davis, Gary M; Benedict, Stephen T; Bradley, Paul M</p> <p>2013-09-01</p> <p>Future shifts in climatic conditions may impact watershed mercury (Hg) dynamics and transport. An ensemble of watershed <span class="hlt">models</span> was applied in the present study to simulate and evaluate the responses of hydrological and total Hg (THg) fluxes from the landscape to the watershed outlet and in-stream THg concentrations to contrasting climate change <span class="hlt">projections</span> for a watershed in the southeastern coastal plain of the United States. Simulations were conducted under stationary atmospheric deposition and land cover conditions to explicitly evaluate the effect of <span class="hlt">projected</span> precipitation and temperature on watershed Hg export (i.e., the flux of Hg at the watershed outlet). Based on downscaled inputs from 2 global circulation <span class="hlt">models</span> that capture extremes of <span class="hlt">projected</span> wet (Community Climate System <span class="hlt">Model</span>, Ver 3 [CCSM3]) and dry (ECHAM4/HOPE-G [ECHO]) conditions for this region, watershed <span class="hlt">model</span> simulation results suggest a decrease of approximately 19% in ensemble-averaged mean annual watershed THg fluxes using the ECHO climate-change <span class="hlt">model</span> and an increase of approximately 5% in THg fluxes with the CCSM3 <span class="hlt">model</span>. Ensemble-averaged mean annual ECHO in-stream THg concentrations increased 20%, while those of CCSM3 decreased by 9% between the baseline and <span class="hlt">projected</span> simulation periods. Watershed <span class="hlt">model</span> simulation results using both climate change <span class="hlt">models</span> suggest that monthly watershed THg fluxes increase during the summer, when <span class="hlt">projected</span> flow is higher than baseline conditions. The present study's multiple watershed <span class="hlt">model</span> approach underscores the uncertainty associated with climate change response <span class="hlt">projections</span> and their use in climate change management decisions. Thus, single-<span class="hlt">model</span> predictions can be misleading, particularly in developmental stages of watershed Hg <span class="hlt">modeling</span>. Copyright © 2013 SETAC.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://pubs.er.usgs.gov/publication/70048754','USGSPUBS'); return false;" href="https://pubs.er.usgs.gov/publication/70048754"><span>Climate change and watershed mercury export: a multiple <span class="hlt">projection</span> and <span class="hlt">model</span> analysis</span></a></p> <p><a target="_blank" href="http://pubs.er.usgs.gov/pubs/index.jsp?view=adv">USGS Publications Warehouse</a></p> <p>Golden, Heather E.; Knightes, Christopher D.; Conrads, Paul; Feaster, Toby D.; Davis, Gary M.; Benedict, Stephen T.; Bradley, Paul M.</p> <p>2013-01-01</p> <p>Future shifts in climatic conditions may impact watershed mercury (Hg) dynamics and transport. An ensemble of watershed <span class="hlt">models</span> was applied in the present study to simulate and evaluate the responses of hydrological and total Hg (THg) fluxes from the landscape to the watershed outlet and in-stream THg concentrations to contrasting climate change <span class="hlt">projections</span> for a watershed in the southeastern coastal plain of the United States. Simulations were conducted under stationary atmospheric deposition and land cover conditions to explicitly evaluate the effect of <span class="hlt">projected</span> precipitation and temperature on watershed Hg export (i.e., the flux of Hg at the watershed outlet). Based on downscaled inputs from 2 global circulation <span class="hlt">models</span> that capture extremes of <span class="hlt">projected</span> wet (Community Climate System <span class="hlt">Model</span>, Ver 3 [CCSM3]) and dry (ECHAM4/HOPE-G [ECHO]) conditions for this region, watershed <span class="hlt">model</span> simulation results suggest a decrease of approximately 19% in ensemble-averaged mean annual watershed THg fluxes using the ECHO climate-change <span class="hlt">model</span> and an increase of approximately 5% in THg fluxes with the CCSM3 <span class="hlt">model</span>. Ensemble-averaged mean annual ECHO in-stream THg concentrations increased 20%, while those of CCSM3 decreased by 9% between the baseline and <span class="hlt">projected</span> simulation periods. Watershed <span class="hlt">model</span> simulation results using both climate change <span class="hlt">models</span> suggest that monthly watershed THg fluxes increase during the summer, when <span class="hlt">projected</span> flow is higher than baseline conditions. The present study's multiple watershed <span class="hlt">model</span> approach underscores the uncertainty associated with climate change response <span class="hlt">projections</span> and their use in climate change management decisions. Thus, single-<span class="hlt">model</span> predictions can be misleading, particularly in developmental stages of watershed Hg <span class="hlt">modeling</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/servlets/purl/936447','SCIGOV-STC'); return false;" href="https://www.osti.gov/servlets/purl/936447"><span>Multi-<span class="hlt">Model</span> Combination techniques for Hydrological Forecasting: Application to Distributed <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> Results</span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Ajami, N K; Duan, Q; Gao, X</p> <p>2005-04-11</p> <p>This paper examines several multi-<span class="hlt">model</span> combination techniques: the Simple Multi-<span class="hlt">model</span> Average (SMA), the Multi-<span class="hlt">Model</span> Super Ensemble (MMSE), Modified Multi-<span class="hlt">Model</span> Super Ensemble (M3SE) and the Weighted Average Method (WAM). These <span class="hlt">model</span> combination techniques were evaluated using the results from the Distributed <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (DMIP), an international <span class="hlt">project</span> sponsored by the National Weather Service (NWS) Office of Hydrologic Development (OHD). All of the multi-<span class="hlt">model</span> combination results were obtained using uncalibrated DMIP <span class="hlt">model</span> outputs and were compared against the best uncalibrated as well as the best calibrated individual <span class="hlt">model</span> results. The purpose of this study is to understand how different combination techniquesmore » affect the skill levels of the multi-<span class="hlt">model</span> predictions. This study revealed that the multi-<span class="hlt">model</span> predictions obtained from uncalibrated single <span class="hlt">model</span> predictions are generally better than any single member <span class="hlt">model</span> predictions, even the best calibrated single <span class="hlt">model</span> predictions. Furthermore, more sophisticated multi-<span class="hlt">model</span> combination techniques that incorporated bias correction steps work better than simple multi-<span class="hlt">model</span> average predictions or multi-<span class="hlt">model</span> predictions without bias correction.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2012SPIE.8449E..0DA','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2012SPIE.8449E..0DA"><span>Building information <span class="hlt">models</span> for astronomy <span class="hlt">projects</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Ariño, Javier; Murga, Gaizka; Campo, Ramón; Eletxigerra, Iñigo; Ampuero, Pedro</p> <p>2012-09-01</p> <p>A Building Information <span class="hlt">Model</span> is a digital representation of physical and functional characteristics of a building. BIMs represent the geometrical characteristics of the Building, but also properties like bills of quantities, definition of COTS components, status of material in the different stages of the <span class="hlt">project</span>, <span class="hlt">project</span> economic data, etc. The BIM methodology, which is well established in the Architecture Engineering and Construction (AEC) domain for conventional buildings, has been brought one step forward in its application for Astronomical/Scientific facilities. In these facilities steel/concrete structures have high dynamic and seismic requirements, M&E installations are complex and there is a large amount of special equipment and mechanisms involved as a fundamental part of the facility. The detail design definition is typically implemented by different design teams in specialized design software packages. In order to allow the coordinated work of different engineering teams, the overall <span class="hlt">model</span>, and its associated engineering database, is progressively integrated using a coordination and roaming software which can be used before starting construction phase for checking interferences, planning the construction sequence, studying maintenance operation, reporting to the <span class="hlt">project</span> office, etc. This integrated design & construction approach will allow to efficiently plan construction sequence (4D). This is a powerful tool to study and analyze in detail alternative construction sequences and ideally coordinate the work of different construction teams. In addition engineering, construction and operational database can be linked to the virtual <span class="hlt">model</span> (6D), what gives to the end users a invaluable tool for the lifecycle management, as all the facility information can be easily accessed, added or replaced. This paper presents the BIM methodology as implemented by IDOM with the E-ELT and ATST Enclosures as application examples.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018JGP...123...98L','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018JGP...123...98L"><span><span class="hlt">Projective</span> limits of state spaces III. Toy-<span class="hlt">models</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Lanéry, Suzanne; Thiemann, Thomas</p> <p>2018-01-01</p> <p>In this series of papers, we investigate the <span class="hlt">projective</span> framework initiated by Kijowski (1977) and Okołów (2009, 2014, 2013) [1,2], which describes the states of a quantum theory as <span class="hlt">projective</span> families of density matrices. A short reading guide to the series can be found in Lanéry (2016). A strategy to implement the dynamics in this formalism was presented in our first paper Lanéry and Thiemann (2017) (see also Lanéry, 2016, section 4), which we now test in two simple toy-<span class="hlt">models</span>. The first one is a very basic linear <span class="hlt">model</span>, meant as an illustration of the general procedure, and we will only discuss it at the classical level. In the second one, we reformulate the Schrödinger equation, treated as a classical field theory, within this <span class="hlt">projective</span> framework, and proceed to its (non-relativistic) second quantization. We are then able to reproduce the physical content of the usual Fock quantization.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017SPIE10400E..1KM','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017SPIE10400E..1KM"><span>ExEP <span class="hlt">yield</span> <span class="hlt">modeling</span> tool and validation test results</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Morgan, Rhonda; Turmon, Michael; Delacroix, Christian; Savransky, Dmitry; Garrett, Daniel; Lowrance, Patrick; Liu, Xiang Cate; Nunez, Paul</p> <p>2017-09-01</p> <p>EXOSIMS is an open-source simulation tool for parametric <span class="hlt">modeling</span> of the detection <span class="hlt">yield</span> and characterization of exoplanets. EXOSIMS has been adopted by the Exoplanet Exploration Programs Standards Definition and Evaluation Team (ExSDET) as a common mechanism for comparison of exoplanet mission concept studies. To ensure trustworthiness of the tool, we developed a validation test plan that leverages the Python-language unit-test framework, utilizes integration tests for selected module interactions, and performs end-to-end crossvalidation with other <span class="hlt">yield</span> tools. This paper presents the test methods and results, with the physics-based tests such as photometry and integration time calculation treated in detail and the functional tests treated summarily. The test case utilized a 4m unobscured telescope with an idealized coronagraph and an exoplanet population from the IPAC radial velocity (RV) exoplanet catalog. The known RV planets were set at quadrature to allow deterministic validation of the calculation of physical parameters, such as working angle, photon counts and integration time. The observing keepout region was tested by generating plots and movies of the targets and the keepout zone over a year. Although the keepout integration test required the interpretation of a user, the test revealed problems in the L2 halo orbit and the parameterization of keepout applied to some solar system bodies, which the development team was able to address. The validation testing of EXOSIMS was performed iteratively with the developers of EXOSIMS and resulted in a more robust, stable, and trustworthy tool that the exoplanet community can use to simulate exoplanet direct-detection missions from probe class, to WFIRST, up to large mission concepts such as HabEx and LUVOIR.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://cfpub.epa.gov/si/si_public_record_report.cfm?dirEntryId=33025&Lab=NHEERL&keyword=gay&actType=&TIMSType=+&TIMSSubTypeID=&DEID=&epaNumber=&ntisID=&archiveStatus=Both&ombCat=Any&dateBeginCreated=&dateEndCreated=&dateBeginPublishedPresented=&dateEndPublishedPresented=&dateBeginUpdated=&dateEndUpdated=&dateBeginCompleted=&dateEndCompleted=&personID=&role=Any&journalID=&publisherID=&sortBy=revisionDate&count=50','EPA-EIMS'); return false;" href="https://cfpub.epa.gov/si/si_public_record_report.cfm?dirEntryId=33025&Lab=NHEERL&keyword=gay&actType=&TIMSType=+&TIMSSubTypeID=&DEID=&epaNumber=&ntisID=&archiveStatus=Both&ombCat=Any&dateBeginCreated=&dateEndCreated=&dateBeginPublishedPresented=&dateEndPublishedPresented=&dateBeginUpdated=&dateEndUpdated=&dateBeginCompleted=&dateEndCompleted=&personID=&role=Any&journalID=&publisherID=&sortBy=revisionDate&count=50"><span>IMPACTS OF CLIMATE CHANGE ON RICE <span class="hlt">YIELD</span>: EVALUATION OF THE EFFICACITY OF DIFFERENT <span class="hlt">MODELING</span> APPROACHES</span></a></p> <p><a target="_blank" href="http://oaspub.epa.gov/eims/query.page">EPA Science Inventory</a></p> <p></p> <p></p> <p>Increasing concentrations of carbon dioxide (CO2) and other greenhouse gases are expected to modify the climate of the earth in the next 50-100 years. echanisms of plant response to these changes need to be incorporated in <span class="hlt">models</span> that predict crop <span class="hlt">yield</span> to obtain an understanding...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2018EP%26S...70...17S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2018EP%26S...70...17S"><span>Theory, <span class="hlt">modeling</span>, and integrated studies in the Arase (ERG) <span class="hlt">project</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Seki, Kanako; Miyoshi, Yoshizumi; Ebihara, Yusuke; Katoh, Yuto; Amano, Takanobu; Saito, Shinji; Shoji, Masafumi; Nakamizo, Aoi; Keika, Kunihiro; Hori, Tomoaki; Nakano, Shin'ya; Watanabe, Shigeto; Kamiya, Kei; Takahashi, Naoko; Omura, Yoshiharu; Nose, Masahito; Fok, Mei-Ching; Tanaka, Takashi; Ieda, Akimasa; Yoshikawa, Akimasa</p> <p>2018-02-01</p> <p>Understanding of underlying mechanisms of drastic variations of the near-Earth space (geospace) is one of the current focuses of the magnetospheric physics. The science target of the geospace research <span class="hlt">project</span> Exploration of energization and Radiation in Geospace (ERG) is to understand the geospace variations with a focus on the relativistic electron acceleration and loss processes. In order to achieve the goal, the ERG <span class="hlt">project</span> consists of the three parts: the Arase (ERG) satellite, ground-based observations, and theory/<span class="hlt">modeling</span>/integrated studies. The role of theory/<span class="hlt">modeling</span>/integrated studies part is to promote relevant theoretical and simulation studies as well as integrated data analysis to combine different kinds of observations and <span class="hlt">modeling</span>. Here we provide technical reports on simulation and empirical <span class="hlt">models</span> related to the ERG <span class="hlt">project</span> together with their roles in the integrated studies of dynamic geospace variations. The simulation and empirical <span class="hlt">models</span> covered include the radial diffusion <span class="hlt">model</span> of the radiation belt electrons, GEMSIS-RB and RBW <span class="hlt">models</span>, CIMI <span class="hlt">model</span> with global MHD simulation REPPU, GEMSIS-RC <span class="hlt">model</span>, plasmasphere thermosphere <span class="hlt">model</span>, self-consistent wave-particle interaction simulations (electron hybrid code and ion hybrid code), the ionospheric electric potential (GEMSIS-POT) <span class="hlt">model</span>, and SuperDARN electric field <span class="hlt">models</span> with data assimilation. ERG (Arase) science center tools to support integrated studies with various kinds of data are also briefly introduced.[Figure not available: see fulltext.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1346380-effect-low-electric-fields-alpha-scintillation-light-yield-liquid-argon','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1346380-effect-low-electric-fields-alpha-scintillation-light-yield-liquid-argon"><span>Effect of low electric fields on alpha scintillation light <span class="hlt">yield</span> in liquid argon</span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>Agnes, P.; Albuquerque, I. F. M.; Alexander, T.; ...</p> <p>2017-01-24</p> <p>Measurements were made of scintillation light <span class="hlt">yield</span> of alpha particles from themore » $$^{222}$$Rn decay chain within the DarkSide-50 liquid argon time <span class="hlt">projection</span> chamber. Furthermore, the light <span class="hlt">yield</span> was found to increase as the applied electric field increased, with alphas in a 200 V/cm electric field exhibiting a 2% increase in light <span class="hlt">yield</span> compared to alphas in no field.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://ntrs.nasa.gov/search.jsp?R=19840030316&hterms=herbicide&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D50%26Ntt%3Dherbicide','NASA-TRS'); return false;" href="https://ntrs.nasa.gov/search.jsp?R=19840030316&hterms=herbicide&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D50%26Ntt%3Dherbicide"><span>Grapevine canopy reflectance and <span class="hlt">yield</span></span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Minden, K. A.; Philipson, W. R.</p> <p>1982-01-01</p> <p>Field spectroradiometric and airborne multispectral scanner data were applied in a study of Concord grapevines. Spectroradiometric measurements of 18 experimental vines were collected on three dates during one growing season. Spectral reflectance, determined at 30 intervals from 0.4 to 1.1 microns, was correlated with vine <span class="hlt">yield</span>, pruning weight, clusters/vine, and nitrogen input. One date of airborne multispectral scanner data (11 channels) was collected over commercial vineyards, and the average radiance values for eight vineyard sections were correlated with the corresponding average <span class="hlt">yields</span>. Although some correlations were significant, they were inadequate for developing a reliable <span class="hlt">yield</span> prediction <span class="hlt">model</span>.</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li class="active"><span>23</span></li> <li><a href="#" onclick='return showDiv("page_24");'>24</a></li> <li><a href="#" onclick='return showDiv("page_25");'>25</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_23 --> <div id="page_24" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li><a href="#" onclick='return showDiv("page_23");'>23</a></li> <li class="active"><span>24</span></li> <li><a href="#" onclick='return showDiv("page_25");'>25</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="461"> <li> <p><a target="_blank" onclick="trackOutboundLink('https://eric.ed.gov/?q=heiser&pg=4&id=EJ555480','ERIC'); return false;" href="https://eric.ed.gov/?q=heiser&pg=4&id=EJ555480"><span><span class="hlt">Project</span> BLEND: An Inclusive <span class="hlt">Model</span> of Early Intervention Services.</span></a></p> <p><a target="_blank" href="http://www.eric.ed.gov/ERICWebPortal/search/extended.jsp?_pageLabel=advanced">ERIC Educational Resources Information Center</a></p> <p>Brown, William; Horn, Eva M.; Heiser, JoAnn G.; Odom, Samuel L.</p> <p>1996-01-01</p> <p>This paper describes a <span class="hlt">model</span> demonstration <span class="hlt">project</span> to provide inclusive early intervention services to young children with developmental delays and their families. It notes the importance of collaborative partnerships among the significant adults in a child's life as a basis for effective program implementation. The <span class="hlt">project</span> has three major…</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/28251753','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/28251753"><span>Optomechanical Control of Quantum <span class="hlt">Yield</span> in Trans-Cis Ultrafast Photoisomerization of a Retinal Chromophore <span class="hlt">Model</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Valentini, Alessio; Rivero, Daniel; Zapata, Felipe; García-Iriepa, Cristina; Marazzi, Marco; Palmeiro, Raúl; Fdez Galván, Ignacio; Sampedro, Diego; Olivucci, Massimo; Frutos, Luis Manuel</p> <p>2017-03-27</p> <p>The quantum <span class="hlt">yield</span> of a photochemical reaction is one of the most fundamental quantities in photochemistry, as it measures the efficiency of the transduction of light energy into chemical energy. Nature has evolved photoreceptors in which the reactivity of a chromophore is enhanced by its molecular environment to achieve high quantum <span class="hlt">yields</span>. The retinal chromophore sterically constrained inside rhodopsin proteins represents an outstanding example of such a control. In a more general framework, mechanical forces acting on a molecular system can strongly modify its reactivity. Herein, we show that the exertion of tensile forces on a simplified retinal chromophore <span class="hlt">model</span> provokes a substantial and regular increase in the trans-to-cis photoisomerization quantum <span class="hlt">yield</span> in a counterintuitive way, as these extension forces facilitate the formation of the more compressed cis photoisomer. A rationale for the mechanochemical effect on this photoisomerization mechanism is also proposed. © 2017 Wiley-VCH Verlag GmbH & Co. KGaA, Weinheim.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2014ERL.....9h4017S','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2014ERL.....9h4017S"><span>Quantifying <span class="hlt">yield</span> gaps in wheat production in Russia</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Schierhorn, Florian; Faramarzi, Monireh; Prishchepov, Alexander V.; Koch, Friedrich J.; Müller, Daniel</p> <p>2014-08-01</p> <p>Crop <span class="hlt">yields</span> must increase substantially to meet the increasing demands for agricultural products. Crop <span class="hlt">yield</span> increases are particularly important for Russia because low crop <span class="hlt">yields</span> prevail across Russia’s widespread and fertile land resources. However, reliable data are lacking regarding the spatial distribution of potential <span class="hlt">yields</span> in Russia, which can be used to determine <span class="hlt">yield</span> gaps. We used a crop growth <span class="hlt">model</span> to determine the <span class="hlt">yield</span> potentials and <span class="hlt">yield</span> gaps of winter and spring wheat at the provincial level across European Russia. We <span class="hlt">modeled</span> the annual <span class="hlt">yield</span> potentials from 1995 to 2006 with optimal nitrogen supplies for both rainfed and irrigated conditions. Overall, the results suggest <span class="hlt">yield</span> gaps of 1.51-2.10 t ha-1, or 44-52% of the <span class="hlt">yield</span> potential under rainfed conditions. Under irrigated conditions, <span class="hlt">yield</span> gaps of 3.14-3.30 t ha-1, or 62-63% of the <span class="hlt">yield</span> potential, were observed. However, recurring droughts cause large fluctuations in <span class="hlt">yield</span> potentials under rainfed conditions, even when the nitrogen supply is optimal, particularly in the highly fertile black soil areas of southern European Russia. The highest <span class="hlt">yield</span> gaps (up to 4 t ha-1) under irrigated conditions were detected in the steppe areas in southeastern European Russia along the border of Kazakhstan. Improving the nutrient and water supply and using crop breeds that are adapted to the frequent drought conditions are important for reducing <span class="hlt">yield</span> gaps in European Russia. Our regional assessment helps inform policy and agricultural investors and prioritize research that aims to increase crop production in this important region for global agricultural markets.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2012AGUFMGC13B1082G','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2012AGUFMGC13B1082G"><span><span class="hlt">Modeling</span> the <span class="hlt">yield</span> potential of dryland canola under current and future climates in California</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>George, N.; Kaffka, S.; Beeck, C.; Bucaram, S.; Zhang, J.</p> <p>2012-12-01</p> <p><span class="hlt">Models</span> predict that the climate of California will become hotter, drier and more variable under future climate change scenarios. This will lead to both increased irrigation demand and reduced irrigation water availability. In addition, it is predicted that most common Californian crops will suffer a concomitant decline in productivity. To remain productive and economically viable, future agricultural systems will need to have greater water use efficiency, tolerance of high temperatures, and tolerance of more erratic temperature and rainfall patterns. Canola (Brassica napus) is the third most important oilseed globally, supporting large and well-established agricultural industries in Canada, Europe and Australia. It is an agronomically useful and economically valuable crop, with multiple end markets, that can be grown in California as a dryland winter rotation with little to no irrigation demand. This gives canola great potential as a new crop for Californian farmers both now and as the climate changes. Given practical and financial limitations it is not always possible to immediately or widely evaluate a crop in a new region. Crop production <span class="hlt">models</span> are therefore valuable tools for assessing the potential of new crops, better targeting further field research, and refining research questions. APSIM is a modular <span class="hlt">modeling</span> framework developed by the Agricultural Production Systems Research Unit in Australia, it combines biophysical and management modules to simulate cropping systems. This study was undertaken to examine the <span class="hlt">yield</span> potential of Australian canola varieties having different water requirements and maturity classes in California using APSIM. The objective of the work was to identify the agricultural regions of California most ideally suited to the production of Australian cultivars of canola and to simulate the production of canola in these regions to estimate <span class="hlt">yield</span>-potential. This will establish whether the introduction and in-field evaluation of better</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/29098979','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/29098979"><span><span class="hlt">Modeling</span> homeorhetic trajectories of milk component <span class="hlt">yields</span>, body composition and dry-matter intake in dairy cows: Influence of parity, milk production potential and breed.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Daniel, J B; Friggens, N C; van Laar, H; Ingvartsen, K L; Sauvant, D</p> <p>2018-06-01</p> <p>The control of nutrient partitioning is complex and affected by many factors, among them physiological state and production potential. Therefore, the current <span class="hlt">model</span> aims to provide for dairy cows a dynamic framework to predict a consistent set of reference performance patterns (milk component <span class="hlt">yields</span>, body composition change, dry-matter intake) sensitive to physiological status across a range of milk production potentials (within and between breeds). Flows and partition of net energy toward maintenance, growth, gestation, body reserves and milk components are described in the <span class="hlt">model</span>. The structure of the <span class="hlt">model</span> is characterized by two sub-<span class="hlt">models</span>, a regulating sub-<span class="hlt">model</span> of homeorhetic control which sets dynamic partitioning rules along the lactation, and an operating sub-<span class="hlt">model</span> that translates this into animal performance. The regulating sub-<span class="hlt">model</span> describes lactation as the result of three driving forces: (1) use of previously acquired resources through mobilization, (2) acquisition of new resources with a priority of partition towards milk and (3) subsequent use of resources towards body reserves gain. The dynamics of these three driving forces were adjusted separately for fat (milk and body), protein (milk and body) and lactose (milk). Milk <span class="hlt">yield</span> is predicted from lactose and protein <span class="hlt">yields</span> with an empirical equation developed from literature data. The <span class="hlt">model</span> predicts desired dry-matter intake as an outcome of net energy requirements for a given dietary net energy content. The parameters controlling milk component <span class="hlt">yields</span> and body composition changes were calibrated using two data sets in which the diet was the same for all animals. Weekly data from Holstein dairy cows was used to calibrate the <span class="hlt">model</span> within-breed across milk production potentials. A second data set was used to evaluate the <span class="hlt">model</span> and to calibrate it for breed differences (Holstein, Danish Red and Jersey) on the mobilization/reconstitution of body composition and on the <span class="hlt">yield</span> of individual milk components</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016AGUFM.H32C..07N','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016AGUFM.H32C..07N"><span>Global Crop <span class="hlt">Yields</span>, Climatic Trends and Technology Enhancement</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Najafi, E.; Devineni, N.; Khanbilvardi, R.; Kogan, F.</p> <p>2016-12-01</p> <p>During the last decades the global agricultural production has soared up and technology enhancement is still making positive contribution to <span class="hlt">yield</span> growth. However, continuing population, water crisis, deforestation and climate change threaten the global food security. Attempts to predict food availability in the future around the world can be partly understood from the impact of changes to date. A new multilevel <span class="hlt">model</span> for <span class="hlt">yield</span> prediction at the country scale using climate covariates and technology trend is presented in this paper. The structural relationships between average <span class="hlt">yield</span> and climate attributes as well as trends are estimated simultaneously. All countries are <span class="hlt">modeled</span> in a single multilevel <span class="hlt">model</span> with partial pooling and/or clustering to automatically group and reduce estimation uncertainties. El Niño Southern Oscillation (ENSO), Palmer Drought Severity Index (PDSI), Geopotential height (GPH), historical CO2 level and time-trend as a relatively reliable approximation of technology measurement are used as predictors to estimate annual agricultural crop <span class="hlt">yields</span> for each country from 1961 to 2007. Results show that these indicators can explain the variability in historical crop <span class="hlt">yields</span> for most of the countries and the <span class="hlt">model</span> performs well under out-of-sample verifications.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://ntrs.nasa.gov/search.jsp?R=20160004096&hterms=weather&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D80%26Ntt%3Dweather','NASA-TRS'); return false;" href="https://ntrs.nasa.gov/search.jsp?R=20160004096&hterms=weather&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D80%26Ntt%3Dweather"><span>Spatial Sampling of Weather Data for Regional Crop <span class="hlt">Yield</span> Simulations</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Van Bussel, Lenny G. J.; Ewert, Frank; Zhao, Gang; Hoffmann, Holger; Enders, Andreas; Wallach, Daniel; Asseng, Senthold; Baigorria, Guillermo A.; Basso, Bruno; Biernath, Christian; <a style="text-decoration: none; " href="javascript:void(0); " onClick="displayelement('author_20160004096'); toggleEditAbsImage('author_20160004096_show'); toggleEditAbsImage('author_20160004096_hide'); "> <img style="display:inline; width:12px; height:12px; " src="images/arrow-up.gif" width="12" height="12" border="0" alt="hide" id="author_20160004096_show"> <img style="width:12px; height:12px; display:none; " src="images/arrow-down.gif" width="12" height="12" border="0" alt="hide" id="author_20160004096_hide"></p> <p>2016-01-01</p> <p>Field-scale crop <span class="hlt">models</span> are increasingly applied at spatio-temporal scales that range from regions to the globe and from decades up to 100 years. Sufficiently detailed data to capture the prevailing spatio-temporal heterogeneity in weather, soil, and management conditions as needed by crop <span class="hlt">models</span> are rarely available. Effective sampling may overcome the problem of missing data but has rarely been investigated. In this study the effect of sampling weather data has been evaluated for simulating <span class="hlt">yields</span> of winter wheat in a region in Germany over a 30-year period (1982-2011) using 12 process-based crop <span class="hlt">models</span>. A stratified sampling was applied to compare the effect of different sizes of spatially sampled weather data (10, 30, 50, 100, 500, 1000 and full coverage of 34,078 sampling points) on simulated wheat <span class="hlt">yields</span>. Stratified sampling was further compared with random sampling. Possible interactions between sample size and crop <span class="hlt">model</span> were evaluated. The results showed differences in simulated <span class="hlt">yields</span> among crop <span class="hlt">models</span> but all <span class="hlt">models</span> reproduced well the pattern of the stratification. Importantly, the regional mean of simulated <span class="hlt">yields</span> based on full coverage could already be reproduced by a small sample of 10 points. This was also true for reproducing the temporal variability in simulated <span class="hlt">yields</span> but more sampling points (about 100) were required to accurately reproduce spatial <span class="hlt">yield</span> variability. The number of sampling points can be smaller when a stratified sampling is applied as compared to a random sampling. However, differences between crop <span class="hlt">models</span> were observed including some interaction between the effect of sampling on simulated <span class="hlt">yields</span> and the <span class="hlt">model</span> used. We concluded that stratified sampling can considerably reduce the number of required simulations. But, differences between crop <span class="hlt">models</span> must be considered as the choice for a specific <span class="hlt">model</span> can have larger effects on simulated <span class="hlt">yields</span> than the sampling strategy. Assessing the impact of sampling soil and crop management</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017MS%26E..271a2043M','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017MS%26E..271a2043M"><span>Adoption of Building Information <span class="hlt">Modelling</span> in <span class="hlt">project</span> planning risk management</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Mering, M. M.; Aminudin, E.; Chai, C. S.; Zakaria, R.; Tan, C. S.; Lee, Y. Y.; Redzuan, A. A.</p> <p>2017-11-01</p> <p>An efficient and effective risk management required a systematic and proper methodology besides knowledge and experience. However, if the risk management is not discussed from the starting of the <span class="hlt">project</span>, this duty is notably complicated and no longer efficient. This paper presents the adoption of Building Information <span class="hlt">Modelling</span> (BIM) in <span class="hlt">project</span> planning risk management. The objectives is to identify the traditional risk management practices and its function, besides, determine the best function of BIM in risk management and investigating the efficiency of adopting BIM-based risk management during the <span class="hlt">project</span> planning phase. In order to obtain data, a quantitative approach is adopted in this research. Based on data analysis, the lack of compliance with <span class="hlt">project</span> requirements and failure to recognise risk and develop responses to opportunity are the risks occurred when traditional risk management is implemented. When using BIM in <span class="hlt">project</span> planning, it works as the tracking of cost control and cash flow give impact on the <span class="hlt">project</span> cycle to be completed on time. 5D cost estimation or cash flow <span class="hlt">modeling</span> benefit risk management in planning, controlling and managing budget and cost reasonably. There were two factors that mostly benefit a BIM-based technology which were formwork plan with integrated fall plan and design for safety <span class="hlt">model</span> check. By adopting risk management, potential risks linked with a <span class="hlt">project</span> and acknowledging to those risks can be identified to reduce them to an acceptable extent. This means recognizing potential risks and avoiding threat by reducing their negative effects. The BIM-based risk management can enhance the planning process of construction <span class="hlt">projects</span>. It benefits the construction players in various aspects. It is important to know the application of BIM-based risk management as it can be a lesson learnt to others to implement BIM and increase the quality of the <span class="hlt">project</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/22558969','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/22558969"><span>e-Cow: an animal <span class="hlt">model</span> that predicts herbage intake, milk <span class="hlt">yield</span> and live weight change in dairy cows grazing temperate pastures, with and without supplementary feeding.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Baudracco, J; Lopez-Villalobos, N; Holmes, C W; Comeron, E A; Macdonald, K A; Barry, T N; Friggens, N C</p> <p>2012-06-01</p> <p>This animal simulation <span class="hlt">model</span>, named e-Cow, represents a single dairy cow at grazing. The <span class="hlt">model</span> integrates algorithms from three previously published <span class="hlt">models</span>: a <span class="hlt">model</span> that predicts herbage dry matter (DM) intake by grazing dairy cows, a mammary gland <span class="hlt">model</span> that predicts potential milk <span class="hlt">yield</span> and a body lipid <span class="hlt">model</span> that predicts genetically driven live weight (LW) and body condition score (BCS). Both nutritional and genetic drives are accounted for in the prediction of energy intake and its partitioning. The main inputs are herbage allowance (HA; kg DM offered/cow per day), metabolisable energy and NDF concentrations in herbage and supplements, supplements offered (kg DM/cow per day), type of pasture (ryegrass or lucerne), days in milk, days pregnant, lactation number, BCS and LW at calving, breed or strain of cow and genetic merit, that is, potential <span class="hlt">yields</span> of milk, fat and protein. Separate equations are used to predict herbage intake, depending on the cutting heights at which HA is expressed. The e-Cow <span class="hlt">model</span> is written in Visual Basic programming language within Microsoft Excel®. The <span class="hlt">model</span> predicts whole-lactation performance of dairy cows on a daily basis, and the main outputs are the daily and annual DM intake, milk <span class="hlt">yield</span> and changes in BCS and LW. In the e-Cow <span class="hlt">model</span>, neither herbage DM intake nor milk <span class="hlt">yield</span> or LW change are needed as inputs; instead, they are predicted by the e-Cow <span class="hlt">model</span>. The e-Cow <span class="hlt">model</span> was validated against experimental data for Holstein-Friesian cows with both North American (NA) and New Zealand (NZ) genetics grazing ryegrass-based pastures, with or without supplementary feeding and for three complete lactations, divided into weekly periods. The <span class="hlt">model</span> was able to predict animal performance with satisfactory accuracy, with concordance correlation coefficients of 0.81, 0.76 and 0.62 for herbage DM intake, milk <span class="hlt">yield</span> and LW change, respectively. Simulations performed with the <span class="hlt">model</span> showed that it is sensitive to genotype by feeding environment</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/29520284','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/29520284"><span>Closing the <span class="hlt">Yield</span> Gap of Sugar Beet in the Netherlands-A Joint Effort.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Hanse, Bram; Tijink, Frans G J; Maassen, Jurgen; van Swaaij, Noud</p> <p>2018-01-01</p> <p>The reform of the European Union's sugar regime caused potential decreasing beet prices. Therefore, the Speeding Up Sugar <span class="hlt">Yield</span> (SUSY) <span class="hlt">project</span> was initiated. At the start, a 3 × 15 target was formulated: in 2015 the national average sugar <span class="hlt">yield</span> in the Netherlands equals 15 t/ha (60% of the sugar beet potential) and the total variable costs 15 euro/t sugar beet, aspiring a saving on total variable costs and a strong increase in sugar <span class="hlt">yield</span>. Based on their average sugar <span class="hlt">yield</span> in 2000-2004, 26 pairs of "type top" (high <span class="hlt">yielding</span>) and "type average" (average <span class="hlt">yielding</span>) growers were selected from all sugar beet growing regions in the Netherlands. On the fields of those farmers, all measures of sugar beet cultivation were investigated, including cost calculation and recording phytopathological, agronomical and soil characteristics in 2006 and 2007. Although there was no significant difference in total variable costs, the "type top" growers <span class="hlt">yielded</span> significantly 20% more sugar in each year compared to the "type average" growers. Therefore, the most profitable strategy for the growers is maximizing sugar <span class="hlt">yield</span> and optimizing costs. The difference in sugar <span class="hlt">yield</span> between growers could be explained by pests and diseases (50%), weed control (30%), soil structure (25%) and sowing date (14%), all interacting with each other. The SUSY-<span class="hlt">project</span> revealed the effect of the grower's management on sugar <span class="hlt">yield</span>. As a follow up for the SUSY-<span class="hlt">project</span>, a growers' guide "Suikerbietsignalen" was published, Best Practice study groups of growers were formed and trainings and workshops were given and field days organized. Further, the benchmarking and feedback on the crop management recordings and the extension on variety choice, sowing performance, foliar fungi control and harvest losses were intensified. On the research part, a resistance breaking strain of the Beet Necrotic Yellow Vein Virus (BNYVV) and a new foliar fungus, Stemphylium beticola , were identified and options for control were</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/11699466','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/11699466"><span>Genetic correlations among body condition score, <span class="hlt">yield</span>, and fertility in first-parity cows estimated by random regression <span class="hlt">models</span>.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Veerkamp, R F; Koenen, E P; De Jong, G</p> <p>2001-10-01</p> <p>Twenty type classifiers scored body condition (BCS) of 91,738 first-parity cows from 601 sires and 5518 maternal grandsires. Fertility data during first lactation were extracted for 177,220 cows, of which 67,278 also had a BCS observation, and first-lactation 305-d milk, fat, and protein <span class="hlt">yields</span> were added for 180,631 cows. Heritabilities and genetic correlations were estimated using a sire-maternal grandsire <span class="hlt">model</span>. Heritability of BCS was 0.38. Heritabilities for fertility traits were low (0.01 to 0.07), but genetic standard deviations were substantial, 9 d for days to first service and calving interval, 0.25 for number of services, and 5% for first-service conception. Phenotypic correlations between fertility and <span class="hlt">yield</span> or BCS were small (-0.15 to 0.20). Genetic correlations between <span class="hlt">yield</span> and all fertility traits were unfavorable (0.37 to 0.74). Genetic correlations with BCS were between -0.4 and -0.6 for calving interval and days to first service. Random regression analysis (RR) showed that correlations changed with days in milk for BCS. Little agreement was found between variances and correlations from RR, and analysis including a single month (mo 1 to 10) of data for BCS, especially during early and late lactation. However, this was due to excluding data from the conventional analysis, rather than due to the polynomials used. RR and a conventional five-traits <span class="hlt">model</span> where BCS in mo 1, 4, 7, and 10 was treated as a separate traits (plus <span class="hlt">yield</span> or fertility) gave similar results. Thus a parsimonious random regression <span class="hlt">model</span> gave more realistic estimates for the (co)variances than a series of bivariate analysis on subsets of the data for BCS. A higher genetic merit for <span class="hlt">yield</span> has unfavorable effects on fertility, but the genetic correlation suggests that BCS (at some stages of lactation) might help to alleviate the unfavorable effect of selection for higher <span class="hlt">yield</span> on fertility.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/29052387','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/29052387"><span>[Climate change impacts on <span class="hlt">yield</span> of Cordyceps sinensis and research on <span class="hlt">yield</span> prediction <span class="hlt">model</span> of C. sinensis].</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Zhu, Shou-Dong; Huang, Lu-Qi; Guo, Lan-Ping; Ma, Xing-Tian; Hao, Qing-Xiu; Le, Zhi-Yong; Zhang, Xiao-Bo; Yang, Guang; Zhang, Yan; Chen, Mei-Lan</p> <p>2017-04-01</p> <p>Cordyceps sinensis is a Chinese unique precious herbal material, its genuine producing areas covering Naqu, Changdu in Qinghai Tibet Plateau, Yushu in Qinghai province and other regions. In recent 10 years, C. sinensis resources is decreasing as a result of the blindly and excessively perennial dug. How to rationally protect, develop and utilize of the valuable resources of C. sinensis has been referred to an important field of research on C. sinensis. The ecological environment and climate change trend of Qinghai Tibet plateau happens prior to other regions, which means that the distribution and evolution of C. sinensis are more obvious and intense than those of the other populations. Based on RS (remote sensing)/GIS(geographic information system) technology, this paper utilized the relationship between the snowline elevation, the average temperature, precipitation and sunshine hours in harvest period (April and may) of C. sinensis and the actual production of C. sinensis to establish a weighted geometric mean <span class="hlt">model</span>. The <span class="hlt">model</span>'s prediction accuracy can reach 82.16% at least in forecasting C. sinensis year <span class="hlt">yield</span> in Naqu area in every early June. This study can provide basic datum and information for supporting the C. sinensis industry healthful, sustainable development. Copyright© by the Chinese Pharmaceutical Association.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/1370678-priori-estimation-organic-reaction-yields','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/1370678-priori-estimation-organic-reaction-yields"><span>A Priori Estimation of Organic Reaction <span class="hlt">Yields</span></span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>Emami, Fateme S.; Vahid, Amir; Wylie, Elizabeth K.</p> <p>2015-07-21</p> <p>A thermodynamically guided calculation of free energies of substrate and product molecules allows for the estimation of the <span class="hlt">yields</span> of organic reactions. The non-ideality of the system and the solvent effects are taken into account through the activity coefficients calculated at the molecular level by perturbed-chain statistical associating fluid theory (PC-SAFT). The <span class="hlt">model</span> is iteratively trained using a diverse set of reactions with <span class="hlt">yields</span> that have been reported previously. This trained <span class="hlt">model</span> can then estimate a priori the <span class="hlt">yields</span> of reactions not included in the training set with an accuracy of ca. ±15 %. This ability has the potential tomore » translate into significant economic savings through the selection and then execution of only those reactions that can proceed in good <span class="hlt">yields</span>.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017EGUGA..1917052V','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017EGUGA..1917052V"><span>Investigating the Capacity of Hydrological <span class="hlt">Models</span> to <span class="hlt">Project</span> Impacts of Climate Change in the Context of Water Allocation</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Velez, Carlos; Maroy, Edith; Rocabado, Ivan; Pereira, Fernando</p> <p>2017-04-01</p> <p>. 40 years of records. This paper investigates the capacity of the three hydrological <span class="hlt">models</span> to <span class="hlt">project</span> the impacts of climate change scenarios. It is proposed a general testing framework which combine the use of the existing information through an adapted form of DSST with the approach proposed by Van Steenbergen and Willems, (2012) adapted to assess statistical properties of flows useful in the context of water allocation. To assess the <span class="hlt">model</span> we use robustness criteria based on a Log Nash-Sutcliffe, BIAS on cummulative volumes and relative changes based on Q50/Q90 estimated from the duration curve. The three conceptual rainfall-runoff <span class="hlt">models</span> <span class="hlt">yielded</span> different results per sub-catchments. A relation was found between robustness criteria and changes in mean rainfall and changes in mean potential evapotranspiration. Biases are greatly affected by changes in precipitation, especially when the climate scenarios involve changes in precipitation volume beyond the range used for calibration. Using the combine approach we were able to classify the <span class="hlt">modelling</span> tools per sub-catchments and create an ensemble of best <span class="hlt">models</span> to <span class="hlt">project</span> the impacts of climate variability for the catchments of 10 main rivers in Flanders. Thus, managers could understand better the usability of the <span class="hlt">modelling</span> tools and the credibility of its outputs for water allocation applications. References Refsgaard, J.C., Madsen, H., Andréassian, V., Arnbjerg-Nielsen, K., Davidson, T.A., Drews, M., Hamilton, D.P., Jeppesen, E., Kjellström, E., Olesen, J.E., Sonnenborg, T.O., Trolle, D., Willems, P., Christensen, J.H., 2014. A framework for testing the ability of <span class="hlt">models</span> to <span class="hlt">project</span> climate change and its impacts. Clim. Change. Van Steenbergen, N., Willems, P., 2012. Method for testing the accuracy of rainfall - runoff <span class="hlt">models</span> in predicting peak flow changes due to rainfall changes , in a climate changing context. J. Hydrol. 415, 425-434.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2014EGUGA..16.9347A','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2014EGUGA..16.9347A"><span>Inter-<span class="hlt">model</span> variability in hydrological extremes <span class="hlt">projections</span> for Amazonian sub-basins</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Andres Rodriguez, Daniel; Garofolo, Lucas; Lázaro de Siqueira Júnior, José; Samprogna Mohor, Guilherme; Tomasella, Javier</p> <p>2014-05-01</p> <p>Irreducible uncertainties due to knowledge's limitations, chaotic nature of climate system and human decision-making process drive uncertainties in Climate Change <span class="hlt">projections</span>. Such uncertainties affect the impact studies, mainly when associated to extreme events, and difficult the decision-making process aimed at mitigation and adaptation. However, these uncertainties allow the possibility to develop exploratory analyses on system's vulnerability to different sceneries. The use of different climate <span class="hlt">model</span>'s <span class="hlt">projections</span> allows to aboard uncertainties issues allowing the use of multiple runs to explore a wide range of potential impacts and its implications for potential vulnerabilities. Statistical approaches for analyses of extreme values are usually based on stationarity assumptions. However, nonstationarity is relevant at the time scales considered for extreme value analyses and could have great implications in dynamic complex systems, mainly under climate change transformations. Because this, it is required to consider the nonstationarity in the statistical distribution parameters. We carried out a study of the dispersion in hydrological extremes <span class="hlt">projections</span> using climate change <span class="hlt">projections</span> from several climate <span class="hlt">models</span> to feed the Distributed Hydrological <span class="hlt">Model</span> of the National Institute for Spatial Research, MHD-INPE, applied in Amazonian sub-basins. This <span class="hlt">model</span> is a large-scale hydrological <span class="hlt">model</span> that uses a Top<span class="hlt">Model</span> approach to solve runoff generation processes at the grid-cell scale. MHD-INPE <span class="hlt">model</span> was calibrated for 1970-1990 using observed meteorological data and comparing observed and simulated discharges by using several performance coeficients. Hydrological <span class="hlt">Model</span> integrations were performed for present historical time (1970-1990) and for future period (2010-2100). Because climate <span class="hlt">models</span> simulate the variability of the climate system in statistical terms rather than reproduce the historical behavior of climate variables, the performances of the <span class="hlt">model</span>'s runs</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.eia.gov/analysis/pdfpages/commercialmoduleindex.php','EIAPUBS'); return false;" href="https://www.eia.gov/analysis/pdfpages/commercialmoduleindex.php"><span>World Energy <span class="hlt">Projection</span> System Plus <span class="hlt">Model</span> Documentation: Commercial Module</span></a></p> <p><a target="_blank" href="http://www.eia.doe.gov/reports/">EIA Publications</a></p> <p></p> <p>2016-01-01</p> <p>The Commercial <span class="hlt">Model</span> of the World Energy <span class="hlt">Projection</span> System Plus (WEPS ) is an energy demand <span class="hlt">modeling</span> system of the world commercial end?use sector at a regional level. This report describes the version of the Commercial <span class="hlt">Model</span> that was used to produce the commercial sector <span class="hlt">projections</span> published in the International Energy Outlook 2016 (IEO2016). The Commercial <span class="hlt">Model</span> is one of 13 components of the WEPS system. The WEPS is a modular system, consisting of a number of separate energy <span class="hlt">models</span> that are communicate and work with each other through an integrated system <span class="hlt">model</span>. The <span class="hlt">model</span> components are each developed independently, but are designed with well?defined protocols for system communication and interactivity. The WEPS <span class="hlt">modeling</span> system uses a shared database (the “restart” file) that allows all the <span class="hlt">models</span> to communicate with each other when they are run in sequence over a number of iterations. The overall WEPS system uses an iterative solution technique that forces convergence of consumption and supply pressures to solve for an equilibrium price.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016ResPh...6..851Z','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016ResPh...6..851Z"><span><span class="hlt">Yield</span> surface evolution for columnar ice</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Zhou, Zhiwei; Ma, Wei; Zhang, Shujuan; Mu, Yanhu; Zhao, Shunpin; Li, Guoyu</p> <p></p> <p>A series of triaxial compression tests, which has capable of measuring the volumetric strain of the sample, were conducted on columnar ice. A new testing approach of probing the experimental <span class="hlt">yield</span> surface was performed from a single sample in order to investigate <span class="hlt">yield</span> and hardening behaviors of the columnar ice under complex stress states. Based on the characteristic of the volumetric strain, a new method of defined the multiaxial <span class="hlt">yield</span> strengths of the columnar ice is proposed. The experimental <span class="hlt">yield</span> surface remains elliptical shape in the stress space of effective stress versus mean stress. The effect of temperature, loading rate and loading path in the initial <span class="hlt">yield</span> surface and deformation properties of the columnar ice were also studied. Subsequent <span class="hlt">yield</span> surfaces of the columnar ice have been explored by using uniaxial and hydrostatic paths. The evolution of the subsequent <span class="hlt">yield</span> surface exhibits significant path-dependent characteristics. The multiaxial hardening law of the columnar ice was established experimentally. A phenomenological <span class="hlt">yield</span> criterion was presented for multiaxial <span class="hlt">yield</span> and hardening behaviors of the columnar ice. The comparisons between the theoretical and measured results indicate that this current <span class="hlt">model</span> is capable of giving a reasonable prediction for the multiaxial <span class="hlt">yield</span> and post-<span class="hlt">yield</span> properties of the columnar ice subjected to different temperature, loading rate and path conditions.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4871989','PMC'); return false;" href="https://www.pubmedcentral.nih.gov/articlerender.fcgi?tool=pmcentrez&artid=4871989"><span>Pallidostriatal <span class="hlt">Projections</span> Promote β Oscillations in a Dopamine-Depleted Biophysical Network <span class="hlt">Model</span></span></a></p> <p><a target="_blank" href="http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pmc">PubMed Central</a></p> <p>Corbit, Victoria L.; Whalen, Timothy C.; Zitelli, Kevin T.; Crilly, Stephanie Y.; Rubin, Jonathan E.</p> <p>2016-01-01</p> <p>In the basal ganglia, focused rhythmicity is an important feature of network activity at certain stages of motor processing. In disease, however, the basal ganglia develop amplified rhythmicity. Here, we demonstrate how the cellular architecture and network dynamics of an inhibitory loop in the basal ganglia <span class="hlt">yield</span> exaggerated synchrony and locking to β oscillations, specifically in the dopamine-depleted state. A key component of this loop is the pallidostriatal pathway, a well-characterized anatomical <span class="hlt">projection</span> whose function has long remained obscure. We present a synaptic characterization of this pathway in mice and incorporate these data into a computational <span class="hlt">model</span> that we use to investigate its influence over striatal activity under simulated healthy and dopamine-depleted conditions. Our <span class="hlt">model</span> predicts that the pallidostriatal pathway influences striatal output preferentially during periods of synchronized activity within GPe. We show that, under dopamine-depleted conditions, this effect becomes a key component of a positive feedback loop between the GPe and striatum that promotes synchronization and rhythmicity. Our results generate novel predictions about the role of the pallidostriatal pathway in shaping basal ganglia activity in health and disease. SIGNIFICANCE STATEMENT This work demonstrates that functional connections from the globus pallidus externa (GPe) to striatum are substantially stronger onto fast-spiking interneurons (FSIs) than onto medium spiny neurons. Our circuit <span class="hlt">model</span> suggests that when GPe spikes are synchronous, this pallidostriatal pathway causes synchronous FSI activity pauses, which allow a transient window of disinhibition for medium spiny neurons. In simulated dopamine-depletion, this GPe-FSI activity is necessary for the emergence of strong synchronization and the amplification and propagation of β oscillations, which are a hallmark of parkinsonian circuit dysfunction. These results suggest that GPe may play a central role in</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.fs.usda.gov/treesearch/pubs/1840','TREESEARCH'); return false;" href="https://www.fs.usda.gov/treesearch/pubs/1840"><span>Validation of the Unthinned Loblolly Pine Plantation <span class="hlt">Yield</span> <span class="hlt">Model</span>-USLYCOWG</span></a></p> <p><a target="_blank" href="http://www.fs.usda.gov/treesearch/">Treesearch</a></p> <p>V. Clark Baldwin; D.P. Feduccia</p> <p>1982-01-01</p> <p><span class="hlt">Yield</span> and stand structure predictions from an unthinned loblolly pine plantation <span class="hlt">yield</span> prediction system (USLYCOWG computer program) were compared with observations from 80 unthinned loblolly pine plots. Overall, the predicted estimates were reasonable when compared to observed values, but predictions based on input data at or near the system's limits may be in...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2013GMD.....6..389I','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2013GMD.....6..389I"><span>The Norwegian Earth System <span class="hlt">Model</span>, NorESM1-M - Part 2: Climate response and scenario <span class="hlt">projections</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Iversen, T.; Bentsen, M.; Bethke, I.; Debernard, J. B.; Kirkevåg, A.; Seland, Ø.; Drange, H.; Kristjansson, J. E.; Medhaug, I.; Sand, M.; Seierstad, I. A.</p> <p>2013-03-01</p> <p>NorESM is a generic name of the Norwegian earth system <span class="hlt">model</span>. The first version is named NorESM1, and has been applied with medium spatial resolution to provide results for CMIP5 (http://cmip-pcmdi.llnl.gov/cmip5/index.html) without (NorESM1-M) and with (NorESM1-ME) interactive carbon-cycling. Together with the accompanying paper by Bentsen et al. (2012), this paper documents that the core version NorESM1-M is a valuable global climate <span class="hlt">model</span> for research and for providing complementary results to the evaluation of possible anthropogenic climate change. NorESM1-M is based on the <span class="hlt">model</span> CCSM4 operated at NCAR, but the ocean <span class="hlt">model</span> is replaced by a modified version of MICOM and the atmospheric <span class="hlt">model</span> is extended with online calculations of aerosols, their direct effect and their indirect effect on warm clouds. <span class="hlt">Model</span> validation is presented in the companion paper (Bentsen et al., 2012). NorESM1-M is estimated to have equilibrium climate sensitivity of ca. 2.9 K and a transient climate response of ca. 1.4 K. This sensitivity is in the lower range amongst the <span class="hlt">models</span> contributing to CMIP5. Cloud feedbacks dampen the response, and a strong AMOC reduces the heat fraction available for increasing near-surface temperatures, for evaporation and for melting ice. The future <span class="hlt">projections</span> based on RCP scenarios <span class="hlt">yield</span> a global surface air temperature increase of almost one standard deviation lower than a 15-<span class="hlt">model</span> average. Summer sea-ice is <span class="hlt">projected</span> to decrease considerably by 2100 and disappear completely for RCP8.5. The AMOC is <span class="hlt">projected</span> to decrease by 12%, 15-17%, and 32% for the RCP2.6, 4.5, 6.0, and 8.5, respectively. Precipitation is <span class="hlt">projected</span> to increase in the tropics, decrease in the subtropics and in southern parts of the northern extra-tropics during summer, and otherwise increase in most of the extra-tropics. Changes in the atmospheric water cycle indicate that precipitation events over continents will become more intense and dry spells more frequent. Extra</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li><a href="#" onclick='return showDiv("page_23");'>23</a></li> <li class="active"><span>24</span></li> <li><a href="#" onclick='return showDiv("page_25");'>25</a></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_24 --> <div id="page_25" class="hiddenDiv"> <div class="row"> <div class="col-sm-12"> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li><a href="#" onclick='return showDiv("page_23");'>23</a></li> <li><a href="#" onclick='return showDiv("page_24");'>24</a></li> <li class="active"><span>25</span></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div> </div> <div class="row"> <div class="col-sm-12"> <ol class="result-class" start="481"> <li> <p><a target="_blank" onclick="trackOutboundLink('http://hdl.handle.net/2060/19780002595','NASA-TRS'); return false;" href="http://hdl.handle.net/2060/19780002595"><span>Planting data and wheat <span class="hlt">yield</span> <span class="hlt">models</span>. [Kansas, South Dakota, and U.S.S.R.</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Feyerherm, A. M. (Principal Investigator)</p> <p>1977-01-01</p> <p>The author has identified the following significant results. A variable date starter <span class="hlt">model</span> for spring wheat depending on temperature was more precise than a fixed date <span class="hlt">model</span>. The same conclusions for fall-planted wheat were not reached. If the largest and smallest of eight temperatures were used to estimate daily maximum and minimum temperatures; respectively, a 1-4 F bias would be introduced into these extremes. For Kansas, a reduction of 0.5 bushels/acre in the root-mean-square-error between <span class="hlt">model</span> and SRS <span class="hlt">yields</span> was achieved by a six fold increase (7 to 42) in the density of weather stations. An additional reduction of 0.3 b/A was achieved by incorporating losses due to rusts in the <span class="hlt">model</span>.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://ntrs.nasa.gov/search.jsp?R=19880039172&hterms=delegation&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D40%26Ntt%3Ddelegation','NASA-TRS'); return false;" href="https://ntrs.nasa.gov/search.jsp?R=19880039172&hterms=delegation&qs=Ntx%3Dmode%2Bmatchall%26Ntk%3DAll%26N%3D0%26No%3D40%26Ntt%3Ddelegation"><span><span class="hlt">Model</span> reductions using a <span class="hlt">projection</span> formulation</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>De Villemagne, Christian; Skelton, Robert E.</p> <p>1987-01-01</p> <p>A new methodology for <span class="hlt">model</span> reduction of MIMO systems exploits the notion of an oblique <span class="hlt">projection</span>. A reduced <span class="hlt">model</span> is uniquely defined by a projector whose range space and orthogonal to the null space are chosen among the ranges of generalized controllability and observability matrices. The reduced order <span class="hlt">models</span> match various combinations (chosen by the designer) of four types of parameters of the full order system associated with (1) low frequency response, (2) high frequency response, (3) low frequency power spectral density, and (4) high frequency power spectral density. Thus, the proposed method is a computationally simple substitute for many existing methods, has an extreme flexibility to embrace combinations of existing methods and offers some new features.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.epa.gov/newsreleases/settlement-yields-protection-deerfield-river-highway-project-runoff','PESTICIDES'); return false;" href="https://www.epa.gov/newsreleases/settlement-yields-protection-deerfield-river-highway-project-runoff"><span>Settlement <span class="hlt">Yields</span> Protection for Deerfield River from Highway <span class="hlt">Project</span> Runoff</span></a></p> <p><a target="_blank" href="http://www.epa.gov/pesticides/search.htm">EPA Pesticide Factsheets</a></p> <p></p> <p></p> <p>Both parties involved in a road and bridge construction <span class="hlt">project</span> in Deerfield, Mass. have agreed to pay a total penalty of $21,600 to resolve claims by EPA that they violated their construction permit...</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1360743-scenario-model-intercomparison-project-scenariomip-cmip6','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1360743-scenario-model-intercomparison-project-scenariomip-cmip6"><span>The Scenario <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (ScenarioMIP) for CMIP6</span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>O'Neill, Brian C.; Tebaldi, Claudia; van Vuuren, Detlef P.; ...</p> <p>2016-09-28</p> <p><span class="hlt">Projections</span> of future climate change play a fundamental role in improving understanding of the climate system as well as characterizing societal risks and response options. The Scenario <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (ScenarioMIP) is the primary activity within Phase 6 of the Coupled <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (CMIP6) that will provide multi-<span class="hlt">model</span> climate <span class="hlt">projections</span> based on alternative scenarios of future emissions and land use changes produced with integrated assessment <span class="hlt">models</span>. Here, we describe ScenarioMIP's objectives, experimental design, and its relation to other activities within CMIP6. The ScenarioMIP design is one component of a larger scenario process that aims to facilitate a wide rangemore » of integrated studies across the climate science, integrated assessment <span class="hlt">modeling</span>, and impacts, adaptation, and vulnerability communities, and will form an important part of the evidence base in the forthcoming Intergovernmental Panel on Climate Change (IPCC) assessments. Furthermore, it will provide the basis for investigating a number of targeted science and policy questions that are especially relevant to scenario-based analysis, including the role of specific forcings such as land use and aerosols, the effect of a peak and decline in forcing, the consequences of scenarios that limit warming to below 2°C, the relative contributions to uncertainty from scenarios, climate <span class="hlt">models</span>, and internal variability, and long-term climate system outcomes beyond the 21st century. In order to serve this wide range of scientific communities and address these questions, a design has been identified consisting of eight alternative 21st century scenarios plus one large initial condition ensemble and a set of long-term extensions, divided into two tiers defined by relative priority. Some of these scenarios will also provide a basis for variants planned to be run in other CMIP6-Endorsed MIPs to investigate questions related to specific forcings. Harmonized, spatially explicit</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/biblio/1340842-scenario-model-intercomparison-project-scenariomip-cmip6','SCIGOV-STC'); return false;" href="https://www.osti.gov/biblio/1340842-scenario-model-intercomparison-project-scenariomip-cmip6"><span>The Scenario <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (ScenarioMIP) for CMIP6</span></a></p> <p><a target="_blank" href="http://www.osti.gov/search">DOE Office of Scientific and Technical Information (OSTI.GOV)</a></p> <p>O'Neill, Brian C.; Tebaldi, Claudia; van Vuuren, Detlef P.</p> <p>2016-01-01</p> <p><span class="hlt">Projections</span> of future climate change play a fundamental role in improving understanding of the climate system as well as characterizing societal risks and response options. The Scenario <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (ScenarioMIP) is the primary activity within Phase 6 of the Coupled <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (CMIP6) that will provide multi-<span class="hlt">model</span> climate <span class="hlt">projections</span> based on alternative scenarios of future emissions and land use changes produced with integrated assessment <span class="hlt">models</span>. In this paper, we describe ScenarioMIP's objectives, experimental design, and its relation to other activities within CMIP6. The ScenarioMIP design is one component of a larger scenario process that aims to facilitate amore » wide range of integrated studies across the climate science, integrated assessment <span class="hlt">modeling</span>, and impacts, adaptation, and vulnerability communities, and will form an important part of the evidence base in the forthcoming Intergovernmental Panel on Climate Change (IPCC) assessments. At the same time, it will provide the basis for investigating a number of targeted science and policy questions that are especially relevant to scenario-based analysis, including the role of specific forcings such as land use and aerosols, the effect of a peak and decline in forcing, the consequences of scenarios that limit warming to below 2 °C, the relative contributions to uncertainty from scenarios, climate <span class="hlt">models</span>, and internal variability, and long-term climate system outcomes beyond the 21st century. To serve this wide range of scientific communities and address these questions, a design has been identified consisting of eight alternative 21st century scenarios plus one large initial condition ensemble and a set of long-term extensions, divided into two tiers defined by relative priority. Some of these scenarios will also provide a basis for variants planned to be run in other CMIP6-Endorsed MIPs to investigate questions related to specific forcings. Harmonized, spatially</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2016GMD.....9.3461O','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2016GMD.....9.3461O"><span>The Scenario <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (ScenarioMIP) for CMIP6</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>O'Neill, Brian C.; Tebaldi, Claudia; van Vuuren, Detlef P.; Eyring, Veronika; Friedlingstein, Pierre; Hurtt, George; Knutti, Reto; Kriegler, Elmar; Lamarque, Jean-Francois; Lowe, Jason; Meehl, Gerald A.; Moss, Richard; Riahi, Keywan; Sanderson, Benjamin M.</p> <p>2016-09-01</p> <p><span class="hlt">Projections</span> of future climate change play a fundamental role in improving understanding of the climate system as well as characterizing societal risks and response options. The Scenario <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (ScenarioMIP) is the primary activity within Phase 6 of the Coupled <span class="hlt">Model</span> Intercomparison <span class="hlt">Project</span> (CMIP6) that will provide multi-<span class="hlt">model</span> climate <span class="hlt">projections</span> based on alternative scenarios of future emissions and land use changes produced with integrated assessment <span class="hlt">models</span>. In this paper, we describe ScenarioMIP's objectives, experimental design, and its relation to other activities within CMIP6. The ScenarioMIP design is one component of a larger scenario process that aims to facilitate a wide range of integrated studies across the climate science, integrated assessment <span class="hlt">modeling</span>, and impacts, adaptation, and vulnerability communities, and will form an important part of the evidence base in the forthcoming Intergovernmental Panel on Climate Change (IPCC) assessments. At the same time, it will provide the basis for investigating a number of targeted science and policy questions that are especially relevant to scenario-based analysis, including the role of specific forcings such as land use and aerosols, the effect of a peak and decline in forcing, the consequences of scenarios that limit warming to below 2 °C, the relative contributions to uncertainty from scenarios, climate <span class="hlt">models</span>, and internal variability, and long-term climate system outcomes beyond the 21st century. To serve this wide range of scientific communities and address these questions, a design has been identified consisting of eight alternative 21st century scenarios plus one large initial condition ensemble and a set of long-term extensions, divided into two tiers defined by relative priority. Some of these scenarios will also provide a basis for variants planned to be run in other CMIP6-Endorsed MIPs to investigate questions related to specific forcings. Harmonized, spatially explicit</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.eia.gov/analysis/pdfpages/wepsresidentialmoduleindex.php','EIAPUBS'); return false;" href="https://www.eia.gov/analysis/pdfpages/wepsresidentialmoduleindex.php"><span>World Energy <span class="hlt">Projection</span> System Plus <span class="hlt">Model</span> Documentation: Residential Module</span></a></p> <p><a target="_blank" href="http://www.eia.doe.gov/reports/">EIA Publications</a></p> <p></p> <p>2016-01-01</p> <p>This report documents the objectives, analytical approach and development of the World Energy <span class="hlt">Projection</span> System Plus (WEPS ) Residential <span class="hlt">Model</span>. It also catalogues and describes critical assumptions, computational methodology, parameter estimation techniques, and <span class="hlt">model</span> source code.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.eia.gov/analysis/pdfpages/refinerymoduleindex.php','EIAPUBS'); return false;" href="https://www.eia.gov/analysis/pdfpages/refinerymoduleindex.php"><span>World Energy <span class="hlt">Projection</span> System Plus <span class="hlt">Model</span> Documentation: Refinery Module</span></a></p> <p><a target="_blank" href="http://www.eia.doe.gov/reports/">EIA Publications</a></p> <p></p> <p>2016-01-01</p> <p>This report documents the objectives, analytical approach and development of the World Energy <span class="hlt">Projection</span> System Plus (WEPS ) Refinery <span class="hlt">Model</span>. It also catalogues and describes critical assumptions, computational methodology, parameter estimation techniques, and <span class="hlt">model</span> source code.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.eia.gov/analysis/pdfpages/wepsmainmoduleindex.php','EIAPUBS'); return false;" href="https://www.eia.gov/analysis/pdfpages/wepsmainmoduleindex.php"><span>World Energy <span class="hlt">Projection</span> System Plus <span class="hlt">Model</span> Documentation: Main Module</span></a></p> <p><a target="_blank" href="http://www.eia.doe.gov/reports/">EIA Publications</a></p> <p></p> <p>2016-01-01</p> <p>This report documents the objectives, analytical approach and development of the World Energy <span class="hlt">Projection</span> System Plus (WEPS ) Main <span class="hlt">Model</span>. It also catalogues and describes critical assumptions, computational methodology, parameter estimation techniques, and <span class="hlt">model</span> source code.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.eia.gov/analysis/pdfpages/m082(2011)index.php','EIAPUBS'); return false;" href="https://www.eia.gov/analysis/pdfpages/m082(2011)index.php"><span>World Energy <span class="hlt">Projection</span> System Plus <span class="hlt">Model</span> Documentation: Coal Module</span></a></p> <p><a target="_blank" href="http://www.eia.doe.gov/reports/">EIA Publications</a></p> <p></p> <p>2011-01-01</p> <p>This report documents the objectives, analytical approach and development of the World Energy <span class="hlt">Projection</span> System Plus (WEPS ) Coal <span class="hlt">Model</span>. It also catalogues and describes critical assumptions, computational methodology, parameter estimation techniques, and <span class="hlt">model</span> source code.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2015AGUFMGC42A..05W','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2015AGUFMGC42A..05W"><span><span class="hlt">Projecting</span> Future Land Use Changes in West Africa Driven by Climate and Socioeconomic Factors: Uncertainties and Implications for Adaptation</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Wang, G.; Ahmed, K. F.; You, L.</p> <p>2015-12-01</p> <p>Land use changes constitute an important regional climate change forcing in West Africa, a region of strong land-atmosphere coupling. At the same time, climate change can be an important driver for land use, although its importance relative to the impact of socio-economic factors may vary significant from region to region. This study compares the contributions of climate change and socioeconomic development to potential future changes of agricultural land use in West Africa and examines various sources of uncertainty using a land use <span class="hlt">projection</span> <span class="hlt">model</span> (LandPro) that accounts for the impact of socioeconomic drivers on the demand side and the impact of climate-induced crop <span class="hlt">yield</span> changes on the supply side. Future crop <span class="hlt">yield</span> changes were simulated by a process-based crop <span class="hlt">model</span> driven with future climate <span class="hlt">projections</span> from a regional climate <span class="hlt">model</span>, and future changes of food demand is <span class="hlt">projected</span> using a <span class="hlt">model</span> for policy analysis of agricultural commodities and trade. The impact of human decision-making on land use was explicitly considered through multiple "what-if" scenarios to examine the range of uncertainties in <span class="hlt">projecting</span> future land use. Without agricultural intensification, the climate-induced decrease of crop <span class="hlt">yield</span> together with increase of food demand are found to cause a significant increase in agricultural land use at the expense of forest and grassland by the mid-century, and the resulting land use land cover changes are found to feed back to the regional climate in a way that exacerbates the negative impact of climate on crop <span class="hlt">yield</span>. Analysis of results from multiple decision-making scenarios suggests that human adaptation characterized by science-informed decision making to minimize land use could be very effective in many parts of the region.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2009EGUGA..11.4820D','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2009EGUGA..11.4820D"><span>Regional crop <span class="hlt">yield</span> forecasting: a probabilistic approach</span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>de Wit, A.; van Diepen, K.; Boogaard, H.</p> <p>2009-04-01</p> <p>Information on the outlook on <span class="hlt">yield</span> and production of crops over large regions is essential for government services dealing with import and export of food crops, for agencies with a role in food relief, for international organizations with a mandate in monitoring the world food production and trade, and for commodity traders. Process-based mechanistic crop <span class="hlt">models</span> are an important tool for providing such information, because they can integrate the effect of crop management, weather and soil on crop growth. When properly integrated in a <span class="hlt">yield</span> forecasting system, the aggregated <span class="hlt">model</span> output can be used to predict crop <span class="hlt">yield</span> and production at regional, national and continental scales. Nevertheless, given the scales at which these <span class="hlt">models</span> operate, the results are subject to large uncertainties due to poorly known weather conditions and crop management. Current <span class="hlt">yield</span> forecasting systems are generally deterministic in nature and provide no information about the uncertainty bounds on their output. To improve on this situation we present an ensemble-based approach where uncertainty bounds can be derived from the dispersion of results in the ensemble. The probabilistic information provided by this ensemble-based system can be used to quantify uncertainties (risk) on regional crop <span class="hlt">yield</span> forecasts and can therefore be an important support to quantitative risk analysis in a decision making process.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.osti.gov/pages/biblio/1349062-global-gridded-crop-model-intercomparison-data-modeling-protocols-phase-v1','SCIGOV-DOEP'); return false;" href="https://www.osti.gov/pages/biblio/1349062-global-gridded-crop-model-intercomparison-data-modeling-protocols-phase-v1"><span>The global gridded crop <span class="hlt">model</span> intercomparison: Data and <span class="hlt">modeling</span> protocols for Phase 1 (v1.0)</span></a></p> <p><a target="_blank" href="http://www.osti.gov/pages">DOE PAGES</a></p> <p>Elliott, J.; Müller, C.; Deryng, D.; ...</p> <p>2015-02-11</p> <p>We present protocols and input data for Phase 1 of the Global Gridded Crop <span class="hlt">Model</span> Intercomparison, a <span class="hlt">project</span> of the Agricultural <span class="hlt">Model</span> Intercomparison and Improvement <span class="hlt">Project</span> (AgMIP). The <span class="hlt">project</span> consist of global simulations of <span class="hlt">yields</span>, phenologies, and many land-surface fluxes using 12–15 <span class="hlt">modeling</span> groups for many crops, climate forcing data sets, and scenarios over the historical period from 1948 to 2012. The primary outcomes of the <span class="hlt">project</span> include (1) a detailed comparison of the major differences and similarities among global <span class="hlt">models</span> commonly used for large-scale climate impact assessment, (2) an evaluation of <span class="hlt">model</span> and ensemble hindcasting skill, (3) quantification ofmore » key uncertainties from climate input data, <span class="hlt">model</span> choice, and other sources, and (4) a multi-<span class="hlt">model</span> analysis of the agricultural impacts of large-scale climate extremes from the historical record.« less</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://ntrs.nasa.gov/search.jsp?R=20150011457&hterms=soil+carbon+climate&qs=N%3D0%26Ntk%3DAll%26Ntx%3Dmode%2Bmatchall%26Ntt%3Dsoil%2Bcarbon%2Bclimate','NASA-TRS'); return false;" href="https://ntrs.nasa.gov/search.jsp?R=20150011457&hterms=soil+carbon+climate&qs=N%3D0%26Ntk%3DAll%26Ntx%3Dmode%2Bmatchall%26Ntt%3Dsoil%2Bcarbon%2Bclimate"><span>The AgMIP Coordinated Climate-Crop <span class="hlt">Modeling</span> <span class="hlt">Project</span> (C3MP): Methods and Protocols</span></a></p> <p><a target="_blank" href="http://ntrs.nasa.gov/search.jsp">NASA Technical Reports Server (NTRS)</a></p> <p>Shukla, Sonali P.; Ruane, Alexander Clark</p> <p>2014-01-01</p> <p>Climate change is expected to alter a multitude of factors important to agricultural systems, including pests, diseases, weeds, extreme climate events, water resources, soil degradation, and socio-economic pressures. Changes to carbon dioxide concentration ([CO2]), temperature, and water (CTW) will be the primary drivers of change in crop growth and agricultural systems. Therefore, establishing the CTW-change sensitivity of crop <span class="hlt">yields</span> is an urgent research need and warrants diverse methods of investigation. Crop <span class="hlt">models</span> provide a biophysical, process-based tool to investigate crop responses across varying environmental conditions and farm management techniques, and have been applied in climate impact assessment by using a variety of methods (White et al., 2011, and references therein). However, there is a significant amount of divergence between various crop <span class="hlt">models</span>' responses to CTW changes (Rotter et al., 2011). While the application of a site-based crop <span class="hlt">model</span> is relatively simple, the coordination of such agricultural impact assessments on larger scales requires consistent and timely contributions from a large number of crop <span class="hlt">modelers</span>, each time a new global climate <span class="hlt">model</span> (GCM) scenario or downscaling technique is created. A coordinated, global effort to rapidly examine CTW sensitivity across multiple crops, crop <span class="hlt">models</span>, and sites is needed to aid <span class="hlt">model</span> development and enhance the assessment of climate impacts (Deser et al., 2012). To fulfill this need, the Coordinated Climate-Crop <span class="hlt">Modeling</span> <span class="hlt">Project</span> (C3MP) (Ruane et al., 2014) was initiated within the Agricultural <span class="hlt">Model</span> Intercomparison and Improvement <span class="hlt">Project</span> (AgMIP; Rosenzweig et al., 2013). The submitted results from C3MP Phase 1 (February 15, 2013-December 31, 2013) are currently being analyzed. This chapter serves to present and update the C3MP protocols, discuss the initial participation and general findings, comment on needed adjustments, and describe continued and future development. AgMIP aims to improve</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/27257967','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/27257967"><span>Random Forests for Global and Regional Crop <span class="hlt">Yield</span> Predictions.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Jeong, Jig Han; Resop, Jonathan P; Mueller, Nathaniel D; Fleisher, David H; Yun, Kyungdahm; Butler, Ethan E; Timlin, Dennis J; Shim, Kyo-Moon; Gerber, James S; Reddy, Vangimalla R; Kim, Soo-Hyung</p> <p>2016-01-01</p> <p>Accurate predictions of crop <span class="hlt">yield</span> are critical for developing effective agricultural and food policies at the regional and global scales. We evaluated a machine-learning method, Random Forests (RF), for its ability to predict crop <span class="hlt">yield</span> responses to climate and biophysical variables at global and regional scales in wheat, maize, and potato in comparison with multiple linear regressions (MLR) serving as a benchmark. We used crop <span class="hlt">yield</span> data from various sources and regions for <span class="hlt">model</span> training and testing: 1) gridded global wheat grain <span class="hlt">yield</span>, 2) maize grain <span class="hlt">yield</span> from US counties over thirty years, and 3) potato tuber and maize silage <span class="hlt">yield</span> from the northeastern seaboard region. RF was found highly capable of predicting crop <span class="hlt">yields</span> and outperformed MLR benchmarks in all performance statistics that were compared. For example, the root mean square errors (RMSE) ranged between 6 and 14% of the average observed <span class="hlt">yield</span> with RF <span class="hlt">models</span> in all test cases whereas these values ranged from 14% to 49% for MLR <span class="hlt">models</span>. Our results show that RF is an effective and versatile machine-learning method for crop <span class="hlt">yield</span> predictions at regional and global scales for its high accuracy and precision, ease of use, and utility in data analysis. RF may result in a loss of accuracy when predicting the extreme ends or responses beyond the boundaries of the training data.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://pubs.er.usgs.gov/publication/70033316','USGSPUBS'); return false;" href="https://pubs.er.usgs.gov/publication/70033316"><span>Effects of capillarity and microtopography on wetland specific <span class="hlt">yield</span></span></a></p> <p><a target="_blank" href="http://pubs.er.usgs.gov/pubs/index.jsp?view=adv">USGS Publications Warehouse</a></p> <p>Sumner, D.M.</p> <p>2007-01-01</p> <p>Hydrologic <span class="hlt">models</span> aid in describing water flows and levels in wetlands. Frequently, these <span class="hlt">models</span> use a specific <span class="hlt">yield</span> conceptualization to relate water flows to water level changes. Traditionally, a simple conceptualization of specific <span class="hlt">yield</span> is used, composed of two constant values for above- and below-surface water levels and neglecting the effects of soil capillarity and land surface microtopography. The effects of capiltarity and microtopography on specific <span class="hlt">yield</span> were evaluated at three wetland sites in the Florida Everglades. The effect of capillarity on specific <span class="hlt">yield</span> was incorporated based on the fillable pore space within a soil moisture profile at hydrostatic equilibrium with the water table. The effect of microtopography was based on areal averaging of topographically varying values of specific <span class="hlt">yield</span>. The results indicate that a more physically-based conceptualization of specific <span class="hlt">yield</span> incorporating capillary and microtopographic considerations can be substantially different from the traditional two-part conceptualization, and from simpler conceptualizations incorporating only capillarity or only microtopography. For the sites considered, traditional estimates of specific <span class="hlt">yield</span> could under- or overestimate the more physically based estimates by a factor of two or more. The results suggest that consideration of both capillarity and microtopography is important to the formulation of specific <span class="hlt">yield</span> in physically based hydrologic <span class="hlt">models</span> of wetlands. ?? 2007, The Society of Wetland Scientists.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.eia.gov/analysis/pdfpages/wepstransportationindex.php','EIAPUBS'); return false;" href="https://www.eia.gov/analysis/pdfpages/wepstransportationindex.php"><span>World Energy <span class="hlt">Projection</span> System Plus <span class="hlt">Model</span> Documentation: Transportation Module</span></a></p> <p><a target="_blank" href="http://www.eia.doe.gov/reports/">EIA Publications</a></p> <p></p> <p>2017-01-01</p> <p>This report documents the objectives, analytical approach and development of the World Energy <span class="hlt">Projection</span> System Plus (WEPS ) International Transportation <span class="hlt">model</span>. It also catalogues and describes critical assumptions, computational methodology, parameter estimation techniques, and <span class="hlt">model</span> source code.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.eia.gov/analysis/pdfpages/wepselectricitymoduleindex.php','EIAPUBS'); return false;" href="https://www.eia.gov/analysis/pdfpages/wepselectricitymoduleindex.php"><span>World Energy <span class="hlt">Projection</span> System Plus <span class="hlt">Model</span> Documentation: Electricity Module</span></a></p> <p><a target="_blank" href="http://www.eia.doe.gov/reports/">EIA Publications</a></p> <p></p> <p>2017-01-01</p> <p>This report documents the objectives, analytical approach and development of the World Energy <span class="hlt">Projection</span> System Plus (WEPS ) World Electricity <span class="hlt">Model</span>. It also catalogues and describes critical assumptions, computational methodology, parameter estimation techniques, and <span class="hlt">model</span> source code.</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('http://adsabs.harvard.edu/abs/2017AGUFMGC33D1110K','NASAADS'); return false;" href="http://adsabs.harvard.edu/abs/2017AGUFMGC33D1110K"><span>Evaluation of Precipitation Indices for Global Crop <span class="hlt">Modeling</span> and Definition of Drought Response Function to <span class="hlt">Yields</span></span></a></p> <p><a target="_blank" href="http://adsabs.harvard.edu/abstract_service.html">NASA Astrophysics Data System (ADS)</a></p> <p>Kaneko, D.</p> <p>2017-12-01</p> <p>Climate change initiates abnormal meteorological disasters. Drought causes climate instability, thus producing poor harvests because of low rates of photosynthesis and sterile pollination. This research evaluates drought indices regarding precipitation and includes this data in global geophysical crop <span class="hlt">models</span> that concern with evaporation, stomata opening, advection-effects from sea surface temperature anomalies, photosynthesis, carbon partitioning, crop <span class="hlt">yields</span>, and crop production. Standard precipitation index (SPI) is a useful tool because of related variable not used in the stomata <span class="hlt">model</span>. However, SPI is not an adequate tool for drought in irrigated fields. Contrary to expectations, the global comparisons of spatial characteristics between stomata opening/evapotranspiration and SPI for monitoring continental crop extremes produced serious defects and obvious differences between evapotranspiration and the small stomata-opening phenomena. The reason for this is that SPI does not include surface air temperature in its analysis. The Penman equation (Epen) describes potential evaporation better than SPI for recent hot droughts caused by climate change. However, the distribution of precipitation is a necessary condition for crop monitoring because it affirms the trend of the dry results computed by crop <span class="hlt">models</span>. Consequently, the author uses global precipitation data observed by microwave passive sensors on TRMM and GCOM-W satellites. This remote sensing data conveniently supplies spatial distributions of global and seasonal precipitation. The author has designed a <span class="hlt">model</span> to measure the effects of drought on crop <span class="hlt">yield</span> and the degree of stomata closure related to the photosynthesis rate. To determine <span class="hlt">yield</span> effects, the drought injury function is defined by integrating stomata closure during the two seasons from flowering to pollination. The stomata, defined by ratio between Epen and Eac, reflect the effects of drought and irrigation. Stomata-closure <span class="hlt">model</span> includes the</p> </li> <li> <p><a target="_blank" onclick="trackOutboundLink('https://www.ncbi.nlm.nih.gov/pubmed/29093514','PUBMED'); return false;" href="https://www.ncbi.nlm.nih.gov/pubmed/29093514"><span>Causes of variation among rice <span class="hlt">models</span> in <span class="hlt">yield</span> response to CO2 examined with Free-Air CO2 Enrichment and growth chamber experiments.</span></a></p> <p><a target="_blank" href="https://www.ncbi.nlm.nih.gov/entrez/query.fcgi?DB=pubmed">PubMed</a></p> <p>Hasegawa, Toshihiro; Li, Tao; Yin, Xinyou; Zhu, Yan; Boote, Kenneth; Baker, Jeffrey; Bregaglio, Simone; Buis, Samuel; Confalonieri, Roberto; Fugice, Job; Fumoto, Tamon; Gaydon, Donald; Kumar, Soora Naresh; Lafarge, Tanguy; Marcaida Iii, Manuel; Masutomi, Yuji; Nakagawa, Hiroshi; Oriol, Philippe; Ruget, Françoise; Singh, Upendra; Tang, Liang; Tao, Fulu; Wakatsuki, Hitomi; Wallach, Daniel; Wang, Yulong; Wilson, Lloyd Ted; Yang, Lianxin; Yang, Yubin; Yoshida, Hiroe; Zhang, Zhao; Zhu, Jianguo</p> <p>2017-11-01</p> <p>The CO 2 fertilization effect is a major source of uncertainty in crop <span class="hlt">models</span> for future <span class="hlt">yield</span> forecasts, but coordinated efforts to determine the mechanisms of this uncertainty have been lacking. Here, we studied causes of uncertainty among 16 crop <span class="hlt">models</span> in predicting rice <span class="hlt">yield</span> in response to elevated [CO 2 ] (E-[CO 2 ]) by comparison to free-air CO 2 enrichment (FACE) and chamber experiments. The <span class="hlt">model</span> ensemble reproduced the experimental results well. However, <span class="hlt">yield</span> prediction in response to E-[CO 2 ] varied significantly among the rice <span class="hlt">models</span>. The variation was not random: <span class="hlt">models</span> that overestimated at one experiment simulated greater <span class="hlt">yield</span> enhancements at the others. The variation was not associated with <span class="hlt">model</span> structure or magnitude of photosynthetic response to E-[CO 2 ] but was significantly associated with the predictions of leaf area. This suggests that <span class="hlt">modelled</span> secondary effects of E-[CO 2 ] on morphological development, primarily leaf area, are the sources of <span class="hlt">model</span> uncertainty. Rice morphological development is conservative to carbon acquisition. Uncertainty will be reduced by incorporating this conservative nature of the morphological response to E-[CO 2 ] into the <span class="hlt">models</span>. Nitrogen levels, particularly under limited situations, make the prediction more uncertain. Improving <span class="hlt">models</span> to account for [CO 2 ] × N interactions is necessary to better evaluate management practices under climate change.</p> </li> </ol> <div class="pull-right"> <ul class="pagination"> <li><a href="#" onclick='return showDiv("page_1");'>«</a></li> <li><a href="#" onclick='return showDiv("page_21");'>21</a></li> <li><a href="#" onclick='return showDiv("page_22");'>22</a></li> <li><a href="#" onclick='return showDiv("page_23");'>23</a></li> <li><a href="#" onclick='return showDiv("page_24");'>24</a></li> <li class="active"><span>25</span></li> <li><a href="#" onclick='return showDiv("page_25");'>»</a></li> </ul> </div> </div><!-- col-sm-12 --> </div><!-- row --> </div><!-- page_25 --> <div class="footer-extlink text-muted" style="margin-bottom:1rem; text-align:center;">Some links on this page may take you to non-federal websites. 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