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Assessing uncertainties in crop model simulations using daily bias-corrected Regional Circulation Model outputs

机译:使用每日偏差校正的区域流通模型输出评估作物模型模拟中的不确定性

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ABSTRACT: Outputs from the Florida State University/Center for Ocean-Atmospheric Prediction Studies (FSU/COAPS) regional spectral model were linked to the CERES-Maize dynamic crop model, and the sources of uncertainty in yield prediction at 3 sites in the southeastern USA were examined. Daily incoming solar radiation, Tmax and Tmin, and rainfall output data were obtained from 1987 to 2004 of retrospective forecasts (hindcasts) that contained 20 ensemble members. These raw hindcasts were bias-corrected on their cumulative probability functions by using the historical daily weather records prior to the 18 yr hindcasted period. Six combinations of the 4 meteorological variables from raw and bias-corrected hindcasts and climatological values were used as sets of weather inputs into the CERES-Maize crop model. Uncertainties related to these combinations of sets of weather inputs were analyzed. The bias-correction method improved values of monthly statistics of the ensemble compared to the raw hindcasts in relation to the observed data. The number and length of dry spells were also made more accurate with this correction. The main source of uncertainty in linking the FSU/COAPS climate model to the CERES-Maize crop model was the specific timing of the occurrence of dry spells during the cropping seasons. Plant growth stress caused by soil water deficit during crucial phenological states largely affects simulated yields. Operationally, the inability of FSU/COAPS to accurately predict the timing of the occurrence of dry spells makes its climate forecasts less useful for farmers wishing to optimize planting dates and crop varieties for crops with short crucial phenological phases, such as maize.
机译:摘要:佛罗里达州立大学/海洋大气预测研究中心(FSU / COAPS)区域光谱模型的输出与CERES-玉米动态作物模型以及美国东南部3个站点的产量预测不确定性来源相关联被检查。 1987年至2004年的每日预报太阳辐射,Tmax和Tmin以及降雨输出数据是包含20个合奏成员的回顾性预报(后预报)的。通过使用18年后预报期之前的历史每日天气记录,对这些原始后预报的累积概率函数进行了偏差校正。来自原始和经偏正校正后代的4个气象变量的六种组合以及气候值被用作CERES-玉米作物模型的天气输入集。分析了与这些天气输入集组合有关的不确定性。与原始后播相比,偏差校正方法相对于观测数据提高了合奏每月统计的值。通过此更正,干燥符咒的数量和长度也更加准确。将FSU / COAPS气候模式与CERES-玉米作物模型联系起来的不确定性的主要来源是在作物季节期间发生干spell的具体时间。在关键的物候状态下,由土壤缺水引起的植物生长胁迫在很大程度上影响模拟产量。在操作上,FSU / COAPS无法准确预测干旱季节的发生时间,因此其气候预测对希望优化关键播种期较短的作物(如玉米)的播种日期和作物品种的农民的用处不大。

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