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Analysis of the Kalman filter based estimation algorithm: an orthogonal decomposition approach

机译:基于卡尔曼滤波器的估计算法分析:正交分解方法

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In this paper we shall provide new analysis on some fundamental properties of the Kalman filter based parameter estimation algorithms using an orthogonal decomposition approach based on the excited subspace. A theoretical analytical framework is established based on the decomposition of the covariance matrix, which appears to be very useful and effective in the analysis of a parameter estimation algorithm with the existence of an unexcited subspace. The sufficient and necessary condition for the boundedness of the covariance matrix in the Kalman filter is established. The idea of directional tracking is proposed to develop a new class of algorithms to overcome the windup problem. Based on the orthogonal decomposition approach two kinds of directional tracking algorithms are proposed. These algorithms utilize a time-varying covariance matrix and can keep stable even in the case of unsufficient and/or unbounded excitation.
机译:在本文中,我们将基于基于激发子空间的正交分解方法,对基于卡尔曼滤波器的参数估计算法的一些基本性质进行新的分析。基于协方差矩阵的分解,建立了一个理论分析框架,这在存在未激发子空间的情况下对参数估计算法的分析似乎非常有用和有效。建立了卡尔曼滤波器中协方差矩阵有界性的充要条件。提出了定向跟踪的思想,以开发一类新的算法来克服缠绕问题。基于正交分解方法,提出了两种定向跟踪算法。这些算法利用时变协方差矩阵,即使在激励不足和/或无界的情况下也可以保持稳定。

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