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Bias correction to improve the skill of summer precipitation forecasts over the contiguous United States by the North American multi‐model ensemble system

机译:偏差校正,以通过北美多模式集合系统提高连续美国的夏季降水预报技能

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Improvements in skill of summer forecasted precipitation as produced by the North American multi‐model ensemble (NMME) system over the contiguous United States (CONUS) are examined by applying a new bias correction method. The uncorrected precipitation produced by NMME hindcasts exhibits good prediction skill in fall and winter, while the spring and summer forecasts are marked with extremely poor skill. We propose a new method to correct the forecasted precipitation distribution based on skillfully predicted 2‐m air temperature (T2m) forecasts to fully exploit the stronger co‐variability that exists between precipitation and T2m in nature. The occurrence of enhanced recycled precipitation over CONUS provides an ideal situation to hone precipitation forecast skills using the T2m forecasts. The proposed bias correction is shown to successfully reduce the root mean square error in precipitation hindcasts in summer and can easily be extended to real‐time forecasts, thus providing a framework to dynamically link precipitation with other predictors besides T2m. Process understanding of the observed T2m‐precipitation relation will offer a framework for diagnosing poor model skill. Improvements in skill of summer forecasted precipitation as produced by the North American multi‐model ensemble (NMME) system over the contiguous United States (CONUS) are examined by applying a new bias correction method. The uncorrected precipitation produced by NMME hindcasts exhibits good prediction skill in fall and winter, while the spring and summer forecasts are marked with extremely poor skill. We propose a new method to correct the forecasted precipitation distribution based on skillfully predicted 2‐m air temperature (T2m) forecasts to fully exploit the stronger co‐variability that exists between precipitation and T2m in nature. The occurrence of enhanced recycled precipitation over CONUS provides an ideal situation to hone precipitation forecast skills using the T2m forecasts. The proposed bias correction is shown to successfully reduce the root mean square error in precipitation hindcasts in summer and can easily be extended to real‐time forecasts, thus providing a framework to dynamically link precipitation with other predictors besides T2m. Process understanding of the observed T2m‐precipitation relation will offer a framework for diagnosing poor model skill.
机译:通过应用新的偏差校正方法,研究了北美多模式合奏(NMME)系统在连续美国(CONUS)上产生的夏季预报降水技术的提高。 NMME后hind产生的未经校正的降水在秋季和冬季显示出良好的预报技巧,而春季和夏季的预报则表现出极差的技巧。我们提出了一种新方法,该方法可基于熟练地预测的2 m气温(T2m)预测来校正预测的降水分布,以充分利用自然界中降水与T2m之间存在的更强协变量。 CONUS上增加的再循环降水的出现为使用T2m预报磨练降水预报技能提供了理想的条件。结果表明,所提出的偏差校正能够成功地减少夏季降水后预报中的均方根误差,并且可以很容易地扩展到实时预报,从而提供了将降水与T2m以外的其他预报因子动态链接的框架。对观察到的T2m-降水关系的过程理解将为诊断较差的模型技能提供一个框架。通过应用新的偏差校正方法,研究了北美多模式合奏(NMME)系统在连续美国(CONUS)上产生的夏季预报降水技术的提高。 NMME后hind产生的未经校正的降水在秋季和冬季显示出良好的预测能力,而春季和夏季的预测则具有极差的预测能力。我们提出了一种新方法,该方法可基于熟练预测的2 m气温(T2m)预测来校正预测的降水分布,从而充分利用自然界中降水与T2m之间存在的更强协方差。 CONUS上增加的再循环降水的出现为使用T2m预报磨练降水预报技能提供了理想的条件。结果表明,所提出的偏差校正能够成功地减少夏季降水后预报中的均方根误差,并且可以很容易地扩展到实时预报,从而提供了将降水与T2m以外的其他预报因子动态链接的框架。对观察到的T2m-降水关系的过程理解将为诊断较差的模型技能提供一个框架。

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