首页> 外文期刊>Journal of Applied Meteorology and Climatology >Assessing Maize and Peanut Yield Simulations with Various Seasonal Climate Data in the Southeastern United States
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Assessing Maize and Peanut Yield Simulations with Various Seasonal Climate Data in the Southeastern United States

机译:利用美国东南部各种季节性气候数据评估玉米和花生的产量模拟

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摘要

A comprehensive evaluation of crop yield simulations with various seasonal climate data is performed to improve the current practice of crop yield projections. The El Nino-Southern Oscillation (ENSO)-based historical data are commonly used to predictthe upcoming season crop yields over the southeastern United States. In this study, eight different seasonal climate datasets are generated using the combinations of two global models, a regional model, and a statistical downscaling technique. One of theglobal models and the regional model are run with two different convective schemes. These datasets are linked to maize and peanut dynamic models to assess their impacts on crop yield simulations and are then compared with the ENSO-based approach. Improvement of crop yield simulations with the climate model data is varying, depending on the model configuration and the crop type. Although using the global climate model data directly provides no improvement, the dynamically and statistically downscaled data show increased skill in the crop yield simulations. A statistically downscaled operational seasonal climate model forecast shows statistically significant (at the 5% level) interannual predictability in the peanut yield simulation. Since the yield amount simulated by the dynamical crop model is highly sensitive to wet/dry spell sequences (water stress) during the growing season, fidelity in simulating the precipitation variability is essential.
机译:使用各种季节性气候数据对作物产量模拟进行了综合评估,以改善当前的作物产量预测方法。基于厄尔尼诺-南方涛动(ENSO)的历史数据通常用于预测美国东南部即将到来的本季作物单产。在这项研究中,使用两个全球模型,一个区域模型和一种统计缩减技术的组合,生成了八个不同的季节性气候数据集。全局模型和区域模型之一是通过两种不同的对流方案运行的。这些数据集链接到玉米和花生动态模型,以评估它们对作物产量模拟的影响,然后与基于ENSO的方法进行比较。气候模型数据对作物产量模拟的改进取决于模型配置和作物类型而有所不同。尽管直接使用全球气候模型数据无法带来任何改善,但是动态地和统计地按比例缩小的数据显示出增加了作物产量模拟的技能。统计上按比例缩减的季节性业务气候模型预测结果显示,花生产量模拟中的统计年际可预测性(在5%水平)。由于动态作物模型模拟的产量在生长期对湿/干法术序列(水分胁迫)高度敏感,因此在模拟降水变化方面的保真度至关重要。

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