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Stochastic Detectability and Mean Bounded Error Covariance of the Recursive Kalman Filter with Markov Jump Parameters

机译:具有马尔可夫跳参数的递归卡尔曼滤波器的随机可检测性和均值有界误差协方差

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摘要

In this article, we study the error covariance of the recursive Kalman filter when the parameters of the filter are driven by a Markov chain taking values in a countably infinite set. We do not assume ergodicity nor require the existence of limiting probabilities for the Markov chain. The error covariance matrix of the filter depends on the Markov state realizations, and hence forms a stochastic process. We show in a rather direct and comprehensive manner that this error covariance process is mean bounded under the standard stochastic detectability concept. Illustrative examples are included.
机译:在本文中,我们研究当马尔可夫链驱动滤波器参数时,递归卡尔曼滤波器的误差协方差。我们不假定遍历性,也不要求存在马尔可夫链的极限概率。滤波器的误差协方差矩阵取决于马尔可夫状态的实现,因此形成了随机过程。我们以一种相当直接和全面的方式表明,该误差协方差过程是在标准随机可检测性概念下的均值范围。包括说明性示例。

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