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Wavelet basis expansion-based Volterra kernel function identification through multilevel excitations

机译:基于小波基展开的多级激励Volterra核函数识别

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摘要

Volterra series is a powerful mathematical tool for nonlinear system analysis, which extends the convolution integral for linear system to nonlinear system. There is a wide range of nonlinear engineering systems and structures which can be modeled as Volterra series. One question involved in modeling a functional relationship between the input and output of a system using Volterra series is to identify the Volterra kernel functions. In this article, a wavelet balance method-based approach is proposed to identify the Volterra kernel functions from observations of the inand outgoing signals. The basic routine of the approach is that, from the system outputs under multilevel excitations, the Volterra series outputs of different orders are first estimated with the wavelet balance method, and then the Volterra kernel functions of different orders are separately estimated through their corresponding Volterra series outputs by expanding them with fourorder B-spline wavelet on the interval. The simulation studies verify the effectiveness of the proposedVolterra kernel identification method.
机译:Volterra级数是用于非线性系统分析的强大数学工具,它将线性系统的卷积积分扩展到非线性系统。可以将许多非线性工程系统和结构建模为Volterra级数。使用Volterra级数对系统的输入和输出之间的功能关系进行建模所涉及的一个问题是识别Volterra内核函数。在本文中,提出了一种基于小波平衡方法的方法,该方法可通过观察传入和传出信号来识别Volterra内核函数。该方法的基本例程是,从多级激励下的系统输出中,首先使用小波平衡法估算不同阶数的Volterra级数输出,然后通过其对应的Volterra级数分别估算不同阶数的Volterra核函数。通过在间隔上用四阶B样条小波扩展它们来输出。仿真研究验证了所提出的Volterra核识别方法的有效性。

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