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Yanning CAI,Hongqiao WANG,Xuemei YE,Qinggang FAN.[en_title][J].Control Theory and Technology,2013,11(4):651~655.[Copy]
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YanningCAI,HongqiaoWANG,XuemeiYE,QinggangFAN
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(Xi’an Research Institute of Hi-Tech)
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Received:March 01, 2011Revised:June 29, 2012
基金项目:This work was supported by the National Natural Science Foundation for Young Scientists of China (Nos. 61202332, 60904083) and the China Postdoctoral Science Foundation (No. 2012M521905).
A multiple-kernel LSSVR method for separable nonlinear system identification
Yanning CAI,Hongqiao WANG,Xuemei YE,Qinggang FAN
(Xi’an Research Institute of Hi-Tech)
Abstract:
In some nonlinear dynamic systems, the state variables function usually can be separated from the control variables function, which brings much trouble to the identification of such systems. To well solve this problem, an improved least squares support vector regression (LSSVR) model with multiple-kernel is proposed and the model is applied to the nonlinear separable system identification. This method utilizes the excellent nonlinear mapping ability of Morlet wavelet kernel function and combines the state and control variables information into a kernel matrix. Using the composite wavelet kernel, the LSSVR includes two nonlinear functions, whose variables are the state variables and the control ones respectively, in this way, the regression function can gain better nonlinear mapping ability, and it can simulate almost any curve in quadratic continuous integral space. Then, they are used to identify the two functions in the separable nonlinear dynamic system. Simulation results show that the multiple-kernel LSSVR method can greatly improve the identification accuracy than the single kernel method, and the Morlet wavelet kernel is more efficient than the other kernels.
Key words:  Least squares support vector regression  Multiple-kernel learning  Composite kernel  Wavelet kernel  System identification