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Ab-initio Functional Decomposition of Kalman Filter: A Feasibility Analysis on Constrained Least Squares Problems

机译:卡尔曼滤波器的AB-INITIO功能分解:对约束最小二乘问题的可行性分析

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摘要

The standard formulation of Kalman Filter (KF) becomes computationally intractable for solving large scale state space estimation problems as in ocean/weather forecasting due to matrix storage and inversion requirements. We introduce an innovative mathematical/numerical formulation of KF using Domain Decomposition (DD) approach. The proposed DD approach partitions ab-initio the whole KF computational method giving rise to local KF methods that can be solved independently. We present its feasibility analysis using the constrained least square model underlying variational Data Dssimilation problems. Results confirm that the accuracy of solutions of local KF methods are not impaired by DD approach.
机译:卡尔曼滤波器(KF)的标准制剂变得在计算上难以解决由于矩阵存储和反转要求导致的海洋/天气预报中的大规模状态空间估计问题。 我们使用域分解(DD)方法介绍KF的创新数学/数值配方。 所提出的DD方法分区AB-Initio整个KF计算方法产生了可以独立解决的本地KF方法。 我们使用受约束的最小二乘模型潜在的变分数据Dssimilation问题的可行性分析。 结果证实,DD方法不损害本地KF方法解决方案的准确性。

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