使用子空间算法识别线性重复过程

A. Janczak, D. Kujawa
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引用次数: 2

摘要

提出了一种基于子空间算法的线性重复过程辨识新方法。线性重复过程的顺序、未知过程矩阵和噪声协方差矩阵是根据实际通过输入和前一次通过输出以及实际通过输出的序列来确定的。识别过程可以从第一次通过的数据和边界条件开始连续重新开始。因此,所提出的方法不仅对时不变线性重复过程非常有用,而且对具有动态变化的过程也非常有用。仿真实例证明了该方法的渐近收敛性和有效性。
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Identification of linear repetitive processes using subspace algorithms
A new approach to the identification of linear repetitive processes based on subspace algorithms is presented. The order of a linear repetitive process, the unknown process matrices, and the noise covariance matrices are determined based on sequences of the actual pass input and the previous pass output, and the actual pass output. The identification procedure can be restarted consecutively starting from the first pass data and boundary conditions. Therefore, the proposed approach can be very useful not only for time invariant linear repetitive processes but also for processes with dynamics that changes rapidly from pass to pass. Simulation example is provided to demonstrate the asymptotic convergence of parameter estimates and the effectiveness of the proposed approach.
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