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Adaptive Kalman Filtering for Postprocessing Ensemble Numerical Weather Predictions

机译:适应性Kalman过滤后处理集合数值天气预报

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摘要

Forecasts from numerical weather prediction models suffer from systematic and nonsystematic errors, which originate from various sources such as subgrid-scale variability affecting large scales. Statistical postprocessing techniques can partly remove such errors. Adaptive MOS techniques based on Kalman filters (here called AMOS), are used to sequentially postprocess the forecasts, by continuously updating the correction parameters as new ground observations become available. These techniques, originally proposed for deterministic forecasts, are valuable when long training datasets do not exist. Here, a new adaptive postprocessing technique for ensemble predictions (called AEMOS) is introduced. The proposed method implements a Kalman filtering approach that fully exploits the information content of the ensemble for updating the parameters of the postprocessing equation. A verification study for the region of Campania in southern Italy is performed. Two years (2014-15) of daily meteorological observations of 10-m wind speed and 2-m temperature from 18 ground-based automatic weather stations are used, comparing them with the corresponding COSMO-LEPS ensemble forecasts. It is shown that the proposed adaptive method outperforms the AMOS method, while it shows comparable results to the member-by-member batch postprocessing approach.
机译:来自数值天气预报模型的预测遭受系统和非系统错误,其源自各种来源,如诸如影响大尺度的子级别可变性等各种来源。统计后处理技术可以部分地消除此类误差。基于Kalman滤波器(此处称为AMOS)的自适应MOS技术用于通过连续更新校正参数随着新地面观察可用而持续更新校正参数来顺序后开发。这些技术最初提出用于确定性预测,当长期训练数据集不存在时是有价值的。这里,介绍了一种用于集合预测(称为AEMOS)的新的自适应后处理技术。所提出的方法实现了一种卡尔曼滤波方法,该方法完全利用集合的信息内容来更新后处理方程的参数。对意大利南部的坎帕尼亚地区进行了验证研究。使用了两年(2014-15)日常气象观测,使用10米的风速和来自18个地面自动气象站的2米温度,将它们与相应的Cosmo-LEPS合奏预测进行比较。结果表明,所提出的自适应方法优于AMOS方法,而其显示与成员构件批量后处理方法的可比结果。

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