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Hierarchical Least Squares Identification for Linear SISO Systems With Dual-Rate Sampled-Data

机译:具有双速率采样数据的线性SISO系统的分层最小二乘辨识

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摘要

This technical note studies identification problems for dual-rate sampled-data linear systems with noises. A hierarchical least squares (HLS) identification algorithm is presented to estimate the parameters of the dual-rate ARMAX models. The basic idea is to decompose the identification model of a dual-rate system into several sub-identification models with smaller dimensions and fewer parameters. The proposed algorithm is more computationally efficient than the recursive least squares (RLS) algorithm since the RLS algorithm requires computing the covariance matrix of large sizes, while the HLS algorithm deals with the covariance matrix of small sizes. Compared with our previous work, a detailed study of the HLS algorithm is conducted in this technical note. The performance analysis and simulation results confirm that the estimation accuracy of the proposed algorithm are close to that of the RLS algorithm, but the proposed algorithm retains much less computational burden.
机译:本技术说明研究具有噪声的双速率采样数据线性系统的识别问题。提出了一种层次最小二乘(HLS)识别算法来估计双速率ARMAX模型的参数。基本思想是将双速率系统的识别模型分解为具有较小尺寸和较少参数的几个子识别模型。由于RLS算法需要计算大尺寸的协方差矩阵,而HLS算法处理小尺寸的协方差矩阵,因此所提出的算法比递归最小二乘(RLS)算法具有更高的计算效率。与我们以前的工作相比,本技术说明中对HLS算法进行了详细研究。性能分析和仿真结果表明,该算法的估计精度与RLS算法相近,但算法计算量较小。

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