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Kautz basis expansion-based Hammerstein system identification through separable least squares method

机译:基于Kautz基展开的Hammerstein系统的可分离最小二乘法辨识

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This paper proposes a novel Hammerstein system identification method based on the Kautz basis expansion and the separable least squares method. In this method, to reduce the parameters to be identified, the impulse response function (IRF) of the linear subsystem is expanded by orthogonal Kautz functions, the pole parameters among which should be optimized. In addition, to improve the condition number of matrix during the identification process, the separable least squares optimization method is adopted to estimate the linear and nonlinear parameters. The separable least squares approach can simultaneously estimate the linear and nonlinear parameters in a least squares framework. Furthermore, based on the best linear approximation, an effective method for the choice of initial values of pole parameters is presented, and based on the back propagation through-time technique and the Levenberg-Marquardt algorithm, an optimization algorithm for pole and nonlinear parameters is presented in this paper. The simulation studies verify the effectiveness of the proposed Hammerstein system identification method. (C) 2018 Elsevier Ltd. All rights reserved.
机译:提出了一种基于Kautz基展开和可分离最小二乘法的Hammerstein系统辨识方法。在这种方法中,为了减少待识别的参数,通过正交Kautz函数扩展线性子系统的脉冲响应函数(IRF),应在其中优化极点参数。另外,为了提高识别过程中矩阵的条件数,采用可分离的最小二乘优化法估计线性和非线性参数。可分离的最小二乘法可以同时估计最小二乘法框架中的线性和非线性参数。此外,基于最佳线性逼近,提出了一种有效的极点参数初始值选择方法,并基于反向传播时间技术和Levenberg-Marquardt算法,给出了极点和非线性参数的优化算法。在本文中提出。仿真研究验证了提出的Hammerstein系统识别方法的有效性。 (C)2018 Elsevier Ltd.保留所有权利。

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