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ON ASYMPTOTIC DISTRIBUTIONS OF ANALYSIS CHARACTERISTICS FOR THE LINEAR DATA ASSIMILATION PROBLEM

机译:线性数据同化问题分析特征的渐近分布

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摘要

A commonly investigated linear data assimilation problem as a correction of the numerical model output is defined. This problem means that a numerical model state vector is corrected by observations through a system of linear equations. This paper shows that the asymptotic behavior of the characteristics of objective analyses produced by data assimilation under various conditions exists. In particular, the existence of a stationary regime for this problem is demonstrated, and a special case is discussed when the norm of the Kalman gain matrix approaches zero. For this case the limit theorem for the characteristics of the analysis state vector is proved under certain conditions. Another limit theorem asserts that the model variables after assimilation approach a diffusion stochastic process and the parameters of this process are determined. As a corollary, a new method to determine the gain matrix and the confidence intervals for the analysis state is derived. This led to a new approach on how to realize the data assimilation problem. A few numerical experiments are performed to illustrate the usefulness and feasibility of those theorems.
机译:定义了通常研究的线性数据同化问题,作为对数值模型输出的校正。这个问题意味着通过对线性方程组的观测可以校正数值模型状态向量。本文表明,在各种条件下,存在由数据同化产生的客观分析特征的渐近行为。特别是,证明了针对该问题的平稳状态的存在,并讨论了当卡尔曼增益矩阵的范数接近零时的一种特殊情况。对于这种情况,在某些条件下证明了分析状态向量的特征极限定理。另一个极限定理断言,同化后的模型变量接近扩散随机过程,并且确定了该过程的参数。因此,推导了一种确定分析状态的增益矩阵和置信区间的新方法。这导致了关于如何实现数据同化问题的新方法。进行了一些数值实验,以说明这些定理的实用性和可行性。

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  • 来源
    《Journal of Mathematical Sciences》 |2016年第3期|245-256|共12页
  • 作者单位

    Shirshov Institute of Oceanology, RAS, Moscow, Russia,Federal University of Bahia, Salvador, BA, Brazil;

    Keldysh Institute of Applied Mathematics, RAS, Moscow, Russia;

    Dorodnicyn Computing Centre, FRC CSC RAS, Moscow, Russia;

    Federal University of Bahia, Salvador, BA, Brazil;

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  • 正文语种 eng
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