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Least Squares-Based Iterative Identification Methods for Linear-in-Parameters Systems Using the Decomposition Technique

机译:使用分解技术的参数线性系统的最小二乘迭代识别方法

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摘要

By extending the least squares-based iterative (LSI) method, this paper presents a decomposition-based LSI (D-LSI) algorithm for identifying linear-in-parameters systems and an interval-varying D-LSI algorithm for handling the identification problems of missing-data systems. The basic idea is to apply the hierarchical identification principle to decompose the original system into two fictitious sub-systems and then to derive new iterative algorithms to estimate the parameters of each sub-system. Compared with the LSI algorithm and the interval-varying LSI algorithm, the decomposition-based iterative algorithms have less computational load. The numerical simulation results demonstrate that the proposed algorithms work quite well.
机译:通过扩展基于最小二乘的迭代(LSI)方法,本文提出了一种用于识别参数线性系统的基于分解的LSI(D-LSI)算法和一种用于处理参数识别问题的区间变化D-LSI算法。数据丢失系统。基本思想是应用层次识别原理将原始系统分解为两个虚拟子系统,然后派生新的迭代算法以估计每个子系统的参数。与LSI算法和区间变化LSI算法相比,基于分解的迭代算法计算量较小。数值仿真结果表明,所提出的算法工作良好。

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