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Potential predictability of crop yield using an ensemble climate forecast by a regional circulation model

机译:使用区域环流模式的整体气候预报,预测作物产量的潜力

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Global/Regional Circulation Models (GCM/RCM) predict the interannual climate variability better than the absolute values of meteorological variables. Statistical bias-correction methods increase the quality of daily model predictions of incoming solar radiation, maximum and minimum temperatures and rainfall frequency and amount. However, when bias-corrected forecasts/hindcasts are used by dynamic crop models, timing of dry-spell occurrences generate the largest uncertainty during the linking process. In this study, we used 20 ensemble members of an 18-year period provided by the Florida State University/Center for Ocean-Atmospheric Prediction Studies (FSU/COAPS) regional spectral model coupled to the National Center for Atmospheric Research Community Land Model (CLM2). The daily seasonal-climate hindcast was bias-corrected and used as input to the CERES-Maize model, thus producing 20 crop yield ensemble members. Using observed weather data for the same period, a time series of simulated crop yields was produced. Finally, principal component (PC) regression analysis was used to predict this time series using the crop yield ensemble members as predictors. Between 13.7 and 28.8% of the simulated corn yield interannual variability was explained using only one principal component (p<0.05), and estimated yields were in the correct tercile by margins of 16.7 to 38.2% beyond chance. Predictability of simulated corn yields using principal components was improved relative to the use of bias-corrected daily hindcasts. Bias-correcting all meteorological variables used by the crop model increased predictability skills compared with use of raw hindcasts, individual bias-correction of rainfall, and climatological values.
机译:全球/区域环流模型(GCM / RCM)预测年际气候变异性要好于气象变量的绝对值。统计偏差校正方法提高了入射太阳辐射,最高和最低温度以及降雨频率和数量的每日模型预测的质量。但是,当动态作物模型使用经过偏差校正的预测/后预报时,在链接过程中,干拼出现的时间会产生最大的不确定性。在这项研究中,我们使用了佛罗里达州立大学/海洋大气预测研究中心(FSU / COAPS)区域光谱模型与国家大气研究社区土地模型国家中心(CLM2)耦合提供的18年期间的20个整体成员)。每日季节性气候后预报经过偏差校正,并用作CERES-玉米模型的输入,因此产生了20个作物产量合奏成员。使用同期的观测天气数据,得出了模拟作物产量的时间序列。最后,将主成分(PC)回归分析用于预测该时间序列,其中使用作物产量合奏成员作为预测因子。仅使用一个主成分解释了模拟玉米产量的13.7%至28.8%的年际变化(p <0.05),估计产量在正确的范围内,超出了偶然的16.7%至38.2%。与使用偏差校正的每日后遗症相比,使用主成分的模拟玉米产量的可预测性得到了改善。与使用原始后预报,降雨的个别偏差校正和气候值相比,对作物模型使用的所有气象变量进行偏差校正可以提高可预测性。

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