基于块对角占优矩阵近似逆的广义无逆卡尔曼滤波

K. Babu, K. Detroja
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引用次数: 1

摘要

为了降低卡尔曼滤波器的计算复杂度,在2010年提出了逆自由卡尔曼滤波器(IFKF)。IFKF是复杂性和准确性之间的权衡。鉴于创新协方差矩阵结构在很大程度上取决于观测矩阵的结构,本文提出了一种广义无逆卡尔曼滤波器(GIFKF)。提议的GIFKF是IFKF的概括,适用于存在冗余测量或具有强相关性的测量的情况。虽然不经常遇到,但冗余度量的情况仍然有相当多的应用程序。在这种情况下,我们注意到创新协方差矩阵的对角优势假设可能不再合理,并可能导致IFKF的性能不佳。本文提出的GIFKF将对角优势假设替换为块对角优势假设,解决了这一问题,与IFKF相比,提高了准确性和适用性。仿真结果验证了该方法在冗余测量情况下的准确性和块对角优势假设的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized Inverse-Free Kalman filter using Approximate Inverse of Block Diagonally Dominant Matrices
To reduce the computational complexity of the Kalman filter an inverse free Kalman filter (IFKF) was proposed recently in [1]. The IFKF is a trade-off between complexity and accuracy. Motivated by the observation that the innovation covariance matrix structure largely depends on the structure of the observation matrix, in this manuscript, we propose a generalized inverse-free Kalman filter (GIFKF). The proposed GIFKF is a generalization of the IFKF to cases where there are redundant measurements or measurements with strong correlations. Though not encountered often, the case of redundant measurements still has a considerable number of applications. In such cases, we note that the assumption of diagonal dominance on the innovation covariance matrix may no longer be reasonable and could result in poor performance of IFKF. The GIFKF proposed in this paper alleviates this problem by replacing the diagonal dominance assumption with block diagonal dominance, which improves the accuracy and applicability compared to the IFKF. The accuracy of the proposed method and the conformity of the assumption of block diagonal dominance in the case of redundant measurements is established through simulation results.
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