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首页> 外文期刊>Journal of Advances in Modeling Earth Systems >Representation of Model Error in Convective‐Scale Data Assimilation: Additive Noise Based on Model Truncation Error
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Representation of Model Error in Convective‐Scale Data Assimilation: Additive Noise Based on Model Truncation Error

机译:对流尺度数据同化中模型误差的表示:基于模型截断误差的加性噪声

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To account for model error on multiple scales in convective‐scale data assimilation, we incorporate the small‐scale additive noise based on random samples of model truncation error and combine it with the large‐scale additive noise based on random samples from global climatological atmospheric background error covariance. A series of experiments have been executed in the framework of the operational Kilometre‐scale ENsemble Data Assimilation system of the Deutscher Wetterdienst for a 2‐week period with different types of synoptic forcing of convection (i.e., strong or weak forcing). It is shown that the combination of large‐ and small‐scale additive noise is better than the application of large‐scale noise only. The specific increase in the background ensemble spread during data assimilation enhances the quality of short‐term 6‐hr precipitation forecasts. The improvement is especially significant during the weak forcing period, since the small‐scale additive noise increases the small‐scale variability which may favor occurrence of convection. It is also shown that additional perturbation of vertical velocity can further advance the performance of combination.
机译:为了解决对流尺度数据同化中多尺度的模型误差,我们基于模型截断误差的随机样本合并了小规模的附加噪声,并将其与基于全球气候大气背景的随机样本的大规模附加噪声相结合误差协方差。在Deutscher Wetterdienst的Kilometre规模的Ensemble数据同化系统的操作框架下进行了一系列实验,为期2周,其中有不同类型的对流强迫(即强或弱强迫)。结果表明,大型和小型相加噪声的组合比仅大型噪声的应用要好。数据同化过程中背景集合传播的特定增加提高了短期6小时降水预报的质量。在弱强迫时期,这种改进尤为重要,因为小规模的加性噪声​​会增加小规模的可变性,这可能有利于对流的发生。还显示出垂直速度的附加扰动可以进一步提高组合的性能。

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