Closed-loop identification using canonical correlation analysis

C. T. Chou, M. Verhaegen
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引用次数: 20

Abstract

We consider the identification of linear state space innovations model from closed-loop data. We suggest to use the subspace closed-loop identification algorithm of [3] to obtain an initial estimate of the deterministic part of the system and then plug this estimate into the second stage of the 2CCA algorithm of Peternell et. al. [9]. The main result of this paper is to show that given closed-loop data and consistent estimates of a number of Markov parameters of the deterministic part of the system, the second stage of the 2CCA algorithm delivers consistent estimates of the system matrices of the innovations model.
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应用典型相关分析进行闭环辨识
研究了基于闭环数据的线性状态空间创新模型的辨识问题。我们建议使用[3]的子空间闭环辨识算法来获得系统确定性部分的初始估计,然后将该估计代入Peternell等人[9]的2CCA算法的第二阶段。本文的主要结果是表明,给定闭环数据和系统确定性部分的一些马尔可夫参数的一致估计,2CCA算法的第二阶段提供了创新模型的系统矩阵的一致估计。
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