一种用于非线性动力系统辨识的gbf -小波维纳模型

M. Salimifard, A. Safavi, M. Shaheed
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引用次数: 0

摘要

由于函数的正交表示是最理想和最有效的逼近格式之一,本文提出了两类正交基函数的适当组合用于非线性动力系统辨识。为此,研究了非线性维纳模型,该模型由一个线性时不变子系统和一个非线性静态函数组成。为了描述线性部分,使用了广义正交基函数。这些标准正交基包括我们熟悉的Laguerre、FIR、双参数Kautz和Hambo基作为特例。非线性静态部分基于紧支撑的正交小波逼近。通过这两部分的适当结合,得到了参数线性模型。因此,将参数估计简化为一个普通的最小二乘问题。最后给出了模拟发酵过程和实际单链柔性机械臂系统的非线性动态算例,验证了该算法的有效性和令人满意的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A GOBF-wavelet wiener model for identification of nonlinear dynamic systems
Since orthogonal representations of functions are among the most desirable and efficient approximation schemes, this paper proposes an appropriate combination of two classes of orthonormal basis functions for nonlinear dynamic system identification. For this purpose, the nonlinear Wiener model is studied which consists of a linear time invariant (LTI) subsystem followed by a nonlinear static function. To describe the linear part, Generalized Orthonormal Basis Functions (GOBFs) are invoked. These orthonormal bases include the familiar Laguerre, FIR, two-parameter Kautz and Hambo bases as special cases. The nonlinear static part is approximated based on orthogonal wavelets with compact support. By appropriate combination of these two parts, a linear-in-the-parameter model is obtained. Therefore, parameter estimation is simplified to an ordinary least squares problem. Two nonlinear dynamic case studies, a simulated fermentation process and a real singlelink flexible manipulator system, are also provided which demonstrate the effectiveness of the proposed algorithm with satisfactory performance.
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