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Model Error Estimation Employing an Ensemble Data Assimilation Approach

机译:集成数据同化方法的模型误差估计

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摘要

A methodology for model error estimation is proposed and examined in this study. It provides estimates of the dynamical model state, the bias, and the empirical parameters by combining three approaches: 1) ensemble data assimilation, 2) state augmentation, and 3) parameter and model bias estimation. Uncertainties of these estimates are also determined, in terms of the analysis and forecast error covariances, employing the same methodology. The model error estimation approach is evaluated in application to Korteweg-de Vries-Burgers (KdVB) numerical model within the framework of maximum likelihood ensemble filter (MLEF). Experimental results indicate improved filter performance due to model error estimation. The innovation statistics also indicate that the estimated uncertainties are reliable. On the other hand, neglecting model errors—either in the form of an incorrect model parameter, or a model bias—has detrimental effects on data assimilation, in some cases resulting in filter divergence. Although the method is examined in a simplified model framework, the results are encouraging. It remains to be seen how the methodology performs in applications to more complex models.
机译:提出并研究了模型误差估计的方法。它通过组合以下三种方法来提供对动力学模型状态,偏差和经验参数的估计:1)集合数据同化,2)状态增强和3)参数和模型偏差估计。还使用相同的方法根据分析和预测误差协方差确定这些估计的不确定性。在最大似然集合滤波器(MLEF)的框架内,将模型误差估计方法评估为应用于Korteweg-de Vries-Burgers(KdVB)数值模型。实验结果表明,由于模型误差估计,滤波器性能得到了改善。创新统计数据还表明,估计的不确定性是可靠的。另一方面,忽略模型错误(以不正确的模型参数或模型偏差的形式)对数据同化有不利影响,在某些情况下会导致过滤器发散。尽管在简化的模型框架中检查了该方法,但结果令人鼓舞。该方法在如何应用到更复杂的模型中还有待观察。

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