Nonparametric volterra kernel estimation using regularization

Georgios Birpoutsoukis, J. Schoukens
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引用次数: 12

Abstract

Modeling of nonlinear dynamic systems constitutes one of the most challenging topics in the field of system identifi- cation. One way to describe the nonlinear behavior of a process is by use of the nonparametric Volterra Series representation. The drawback of this method lies in the fact that the number of parameters to be estimated increases fast with the number of lags considered for the description of the several impulse responses. The result is that the estimated parameters admit a very large variance leading to a very uncertain description of the nonlinear system. In this paper, inspired from the regularization techniques that have been applied to one-dimensional (1-D) impulse responses for a linear time invariant (LTI) system, we present a method to estimate efficiently finite Volterra kernels. The latter is achieved by constraining the estimated parameters appropriately during the identification step in a way that prior knowledge about the to-be-estimated kernels is reflected on the resulting model. The enormous benefit for the identification of Volterra kernels due to the regularization is illustrated with a numerical example.
基于正则化的非参数volterra核估计
非线性动态系统的建模是系统辨识领域中最具挑战性的课题之一。描述过程的非线性行为的一种方法是使用非参数Volterra级数表示。这种方法的缺点在于,要估计的参数数量随着描述几个脉冲响应所考虑的滞后数量的增加而迅速增加。结果是估计的参数有很大的方差,导致对非线性系统的描述非常不确定。在本文中,从正则化技术的启发,已应用于一维(1-D)脉冲响应的线性时不变(LTI)系统,我们提出了一种方法来估计有效的有限Volterra核。后者是通过在识别步骤中适当地约束估计的参数来实现的,以一种关于待估计核的先验知识反映在结果模型上的方式。通过数值算例说明了正则化对Volterra核识别的巨大好处。
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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