Estimation of Kautz Poles in Wiener-Volterra Models Using Levenberg-Marquardt Algorithm

Higor de Souza Serafin, E. Oroski, A. Lazzaretti
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Abstract

This work approaches the problem of estimating the Kautz optimal poles in kernel expansion in Wiener-Volterra models. The analytical solution for the suboptimal case is already established in the literature. However, the solution for the two parameters that compose the poles is still open. In this paper, an optimization strategy using the Levenberg-Marquardt is presented. This algorithm is used to find kernel expansion parameters, with the same base for all dimensions. The construction of bases using digital filter is considered. To validate the implemented algorithm, data collected from the excitation of an electrically coupled drive system was used to analyze the impact of the search space thresholds and the behavior of Levenberg-Marquardt’s parameters. It was also analyzed the impact on the model accuracy, as the number of functions in the base is increased. As a result, the models determined have achieved better results than the works found in the literature.
利用Levenberg-Marquardt算法估计Wiener-Volterra模型中的Kautz极点
本文研究了Wiener-Volterra模型核展开中Kautz最优极点的估计问题。次优情况的解析解已经在文献中建立。然而,对于构成两极的两个参数的解决方案仍然是开放的。本文提出了一种基于Levenberg-Marquardt的优化策略。该算法用于寻找核展开参数,对所有维度具有相同的基数。考虑了用数字滤波器构造基的方法。为了验证所实现的算法,利用电耦合驱动系统的激励数据分析了搜索空间阈值和Levenberg-Marquardt参数行为的影响。分析了随着库中函数数量的增加对模型精度的影响。因此,所确定的模型比文献中发现的作品取得了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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