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Data filtering based least squares algorithms for multivariable CARAR-like systems

机译:多变量类CARAR系统基于数据过滤的最小二乘算法

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摘要

This paper focuses on the identification problem of multivariable controlled autoregressive autoregressive (CARAR-like) systems. The corresponding identification model contains a parameter vector and a parameter matrix, and thus the conventional least squares methods cannot be applied to directly estimate the parameters of the systems. By using the hierarchical identification principle, this paper presents a hierarchical generalized least squares algorithm and a filtering based hierarchical least squares algorithm for the multivariable CARAR-like systems. The simulation results show that the two hierarchical least squares algorithms are effective.
机译:本文着重研究多变量受控自回归自回归(CARAR-like)系统的识别问题。相应的识别模型包含一个参数向量和一个参数矩阵,因此传统的最小二乘法不能直接用于估计系统参数。利用层次识别原理,提出了一种针对类CARAR系统的广义广义最小二乘算法和基于滤波的最小二乘算法。仿真结果表明,两种分层最小二乘算法是有效的。

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