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Optimal solution error quantification in variational data assimilation involving imperfect models

机译:包含不完善模型的变分数据同化中的最优解误差量化

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摘要

The problem of variational data assimilation for a nonlinear evolution model is formulated as an optimal control problem to find the initial condition. If the model is perfect,' the optimal solution (analysis) error rises because of the presence of the input data errors (background and observation errors). Then, this error is quantified by the covariance matrix, which can be approximated by the inverse Hessian of an auxiliary control problem. If the model is not perfect, the optimal solution error includes an additional component because of the presence of the model error. In this paper, we study the influence of the model error on the optimal solution error covariance, considering strong and weak constraint data assimilation approaches. For the latter, an additional equation describing the model error dynamics is involved. Numerical experiments for the 1D Burgers equation illustrate the presented theory. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:将非线性演化模型的变分数据同化问题公式化为寻找初始条件的最优控制问题。如果模型是完美的,则由于存在输入数据误差(背景误差和观察误差),因此最优解(分析)误差会上升。然后,通过协方差矩阵对该误差进行量化,该协方差矩阵可以通过辅助控制问题的逆黑森州近似。如果模型不是完美的,则由于模型误差的存在,最优解误差会包括一个额外的分量。在本文中,我们考虑了强约束条件和弱约束条件的数据同化方法,研究了模型误差对最优解误差协方差的影响。对于后者,涉及描述模型误差动态的附加方程。一维Burgers方程的数值实验说明了所提出的理论。版权所有(c)2016 John Wiley&Sons,Ltd.

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