$J$-o'/> Kalman Filter Sensitivity Evaluation With Orthogonal and J-Orthogonal Transformations
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Kalman Filter Sensitivity Evaluation With Orthogonal and J-Orthogonal Transformations

机译:正交和J正交变换的Kalman滤波器灵敏度评估

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摘要

This technical note addresses the array square-root Kalman filtering/smoothing algorithms with the conventional orthogonal and $J$-orthogonal transformations. In the adaptive filtering context, $J$ -orthogonal matrices arise in computation of the square-root of the covariance (or smoothed covariance) by solving an equation of the form $CC^{T}=DD^{T}-BB^{T}$. The latter implies an application of the QR decomposition with $J$-orthogonal transformations in each iteration step. In this paper, we extend functionality of array square-root Kalman filtering schemes and develop an elegant and simple method for computation of the derivatives of the filter variables to unknown system parameters required in a variety of applications. For instance, our result can be implemented for an efficient sensitivity analysis, and in gradient-search optimization algorithms for the maximum likelihood estimation of unknown system parameters. It also replaces the standard approach based on direct differentiation of the conventional Kalman filtering equations (with their inherent numerical instability) and, hence, improves the robustness of computations against roundoff errors.
机译:本技术说明介绍了使用常规正交变换和 $ J $ -正交变换的数组平方根卡尔曼滤波/平滑算法。在自适应过滤上下文中,在计算协方差的平方根(或平滑)时,会出现 $ J $ -正交矩阵协方差),其形式为 $ CC ^ {T} = DD ^ {T} -BB ^ {T} $ 公式>。后者意味着在每个迭代步骤中使用 $ J $ -正交变换的QR分解的应用。在本文中,我们扩展了阵列平方根卡尔曼滤波方案的功能,并开发了一种优雅而简单的方法,用于将滤波器变量的导数计算为各种应用所需的未知系统参数。例如,我们的结果可以用于有效的灵敏度分析,并可以在梯度搜索优化算法中用于未知系统参数的最大似然估计。它还取代了基于传统卡尔曼滤波方程式直接微分的标准方法(具有固有的数值不稳定性),因此提高了针对舍入误差的计算的鲁棒性。

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