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A Unified Scheme of Stochastic Physics and Bias Correction in an Ensemble Model to Reduce Both Random and Systematic Errors

机译:整体模型中随机物理学和偏置校正的统一方案,以减少随机和系统误差

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This study experimented with a unified scheme of stochastic physics and bias correction within a regional ensemble model [Global and Regional Assimilation and Prediction System-Regional Ensemble Prediction System (GRAPES-REPS)]. It is intended to improve ensemble prediction skill by reducing both random and systematic errors at the same time. Three experiments were performed on top of GRAPES-REPS. The first experiment adds only the stochastic physics. The second experiment adds only the bias correction scheme. The third experiment adds both the stochastic physics and bias correction. The experimental period is one month from 1 to 31 July 2015 over the China domain. Using 850-hPa temperature as an example, the study reveals the following: 1) the stochastic physics can effectively increase the ensemble spread, while the bias correction cannot. Therefore, ensemble averaging of the stochastic physics runs can reduce more random error than the bias correction runs. 2) Bias correction can significantly reduce systematic error, while the stochastic physics cannot. As a result, the bias correction greatly improved the quality of ensemble mean forecasts but the stochastic physics did not. 3) The unified scheme can greatly reduce both random and systematic errors at the same time and performed the best of the three experiments. These results were further confirmed by verification of the ensemble mean, spread, and probabilistic forecasts of many other atmospheric fields for both upper air and the surface, including precipitation. Based on this study, we recommend that operational numerical weather prediction centers adopt this unified scheme approach in ensemble models to achieve the best forecasts.
机译:本研究在区域集合模型中试验了随机物理学和偏置校正的统一计划[全球和区域同化和预测系统 - 区域集合预测系统(葡萄批准)]。它旨在通过同时减少随机和系统误差来改善集合预测技能。在葡萄队的顶部进行三个实验。第一个实验仅增加了随机物理学。第二个实验仅增加了偏置校正方案。第三个实验增加了随机物理和偏置校正。实验期为2015年7月1日至31日的一个月。使用850-HPA温度作为示例,该研究显示下列如下:1)随机物理学可以有效地增加集合扩散,而偏置校正不能。因此,随机物理学的集合平均运行可以减少比偏置校正运行更大的随机误差。 2)偏置校正可以显着降低系统误差,而随机物理学不能。结果,偏差校正大大提高了集合平均预测的质量,但随机物理学没有。 3)统一方案可以同时大大减少随机和系统误差,并表现出三个实验中最好的。通过验证诸如上空气和表面的许多其他大气领域的集合,传播和概率预测,进一步证实了这些结果。基于这项研究,我们建议在集合模型中采用这种统一的计划方法来实现最佳预测。

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