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On diagnosing observation-error statistics with local ensemble data assimilation

机译:诊断与本地合奏数据同化的观察误差统计

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Recent research has shown that the use of correlated observation errors in data assimilation can lead to improvements in analysis accuracy and forecast skill. As a result, there is increased interest in characterizing, understanding and making better use of correlated observation errors. A simple diagnostic for estimating observation-error statistics makes use of statistical averages of observation-minus-background and observation-minus-analysis residuals. This diagnostic is derived assuming that the analysis is calculated using a best linear unbiased estimator. In this work, we consider whether the diagnostic is still applicable when the analysis is calculated using ensemble assimilation schemes with domain localization. We show that the diagnostic equations no longer hold: the statistical averages of observation-minus-background and observation-minus-analysis residuals no longer result in an estimate of the observation-error covariance matrix. Nevertheless, we are able to show that, under certain circumstances, some elements of the observation-error covariance matrix can be recovered. Furthermore, we provide a method to determine which elements of the observation-error covariance matrix can be estimated correctly. In particular, the correct estimation of correlations is dependent on both the localization radius and the observation operator. We provide numerical examples that illustrate these mathematical results.
机译:最近的研究表明,数据同化中的相关观测误差的使用可能导致分析准确性和预测技能的改进。因此,对表征,理解和更好地利用相关观察误差的兴趣增加了兴趣。估计观察误差统计的简单诊断利用观察 - 减去背景和观察 - 减去分析残留的统计平均值。推导出该诊断假设使用最佳的线性无偏见估计器计算分析。在这项工作中,我们考虑使用具有域本地化的集合同化方案计算分析时诊断仍然适用。我们表明诊断方程不再保持:观察 - 减去背景和观察 - 减去分析残差的统计平均值不再导致观察误差协方差矩阵的估计。然而,我们能够表明,在某些情况下,可以恢复观察误差协方差矩阵的一些元素。此外,我们提供一种方法来确定可以正确估计观察误差协方差矩阵的哪些元素。特别地,正确估计相关性取决于定位半径和观察操作员。我们提供了说明这些数学结果的数字示例。

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