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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Fitting model fields to observations by using singular value decomposition: An ensemble-based 4DVar approach
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Fitting model fields to observations by using singular value decomposition: An ensemble-based 4DVar approach

机译:通过使用奇异值分解将模型场拟合到观测值:基于整体的4DVar方法

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摘要

An ensemble-based four-dimensional variational data assimilation (4DVar) method is proposed to fit the model field to 4-D observations in an increment form in the analysis step of data assimilation. The fitting is similar to that in the 4DVar but the analysis increment is expressed by a linear combination of the leading singular vectors extracted from an ensemble of 4-D perturbation solutions, so the fitting is computationally very efficient and does not require any adjoint integration. In the cost function used for the fitting, the background error covariance matrix is constructed implicitly by the perturbation solutions (through their representative singular vectors) similarly to that in the ensemble Kalman filter, but the perturbation solutions are not updated by the analysis into the next assimilation cycle, so the analysis is simpler and more efficient than that in the ensemble Kalman filter. The potential merits of the method are demonstrated by three sets of observing system simulation experiments performed with a shallow-water equation model. The method is shown to be robust even when the model is imperfect and the observations are incomplete.
机译:提出了一种基于整体的四维变分数据同化(4DVar)方法,以使模型场在数据同化的分析步骤中以增量形式适合4-D观测。该拟合与4DVar中的拟合相似,但是分析增量由从4维扰动解的集合中提取的前导奇异矢量的线性组合表示,因此该拟合在计算上非常高效,并且不需要任何伴随积分。在用于拟合的成本函数中,背景误差协方差矩阵是由扰动解(通过它们的代表奇异矢量)隐含地构造的,类似于集合卡尔曼滤波器中的,但是通过分析,扰动解不会更新到下一个同化周期,因此比集成卡尔曼滤波器的分析更简单,更高效。通过使用浅水方程模型进行的三组观测系统仿真实验,证明了该方法的潜在优势。即使模型不完善且观察结果不完整,该方法也显示出鲁棒性。

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