用递归高斯-赛德尔算法识别维纳系统

M. Hatun
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引用次数: 0

摘要

本文介绍了递归高斯-赛德尔(RGS)算法,该算法通过一步式高斯-赛德尔迭代实现,用于识别维纳输出误差系统。与流行的递归最小二乘法(RLS)相比,RGS 算法的处理强度更低,因为它是在采样间隔内采用一步高斯-赛德尔迭代法实现的。用于实施 RGS 算法的数据向量中的无噪声输出样本是通过辅助模型估算出来的。此外,还进行了随机收敛分析,结果表明,即使测量噪声是彩色的,所提出的基于辅助模型的 RGS 算法也能给出无偏的参数估计。最后,通过计算机模拟验证了 RGS 算法的有效性,并与等效的 RLS 算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Wiener Systems with Recursive Gauss-Seidel Algorithm
The Recursive Gauss-Seidel (RGS) algorithm is presented that is implemented in a one-step Gauss-Seidel iteration for the identification of Wiener output error systems. The RGS algorithm has lower processing intensity than the popular Recursive Least Squares (RLS) algorithm due to its implementation using one-step Gauss-Seidel iteration in a sampling interval. The noise-free output samples in the data vector used for implementation of the RGS algorithm are estimated using an auxiliary model. Also, a stochastic convergence analysis is presented, and it is shown that the presented auxiliary model-based RGS algorithm gives unbiased parameter estimates even if the measurement noise is coloured. Finally, the effectiveness of the RGS algorithm is verified and compared with the equivalent RLS algorithm by computer simulations.
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