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最小二乘小波支持向量机在非线性系统辨识中的应用
引用本文:崔万照,朱长纯,保文星,刘君华.最小二乘小波支持向量机在非线性系统辨识中的应用[J].西安交通大学学报,2004,38(6):562-565,586.
作者姓名:崔万照  朱长纯  保文星  刘君华
作者单位:西安交通大学电子与信息工程学院,710049,西安
基金项目:国家自然科学基金资助项目(60176020,60276037,50077016),教育部高等学校博士学科点专项科研基金资助项目(20020698014).
摘    要:基于小波分解和支持向量核函数的条件,提出了一种多维允许支持向量小波核函数.该核函数不仅是近似正交的,而且适用于信号的局部分析、信噪分离和突变信号的检测,从而提高了支持向量机的泛化能力.基于小波核函数和正则化理论提出了最小二乘小波支持向量机(LS WSVM)并将LS WSVM用于非线性系统的辨识,提高了辨识效果,减少了计算量.仿真结果表明:LS WSVM在同等条件下比传统支持向量机的辨识精度提高约13 1%,因而更适合于工程应用.

关 键 词:小波核函数  最小二乘小波支持向量机  非线性系统辨识
文章编号:0253-987X(2004)06-0562-04

Least Squares Wavelet Support Vector Machines and Its Application to Nonlinear System Identification
Cui Wanzhao,Zhu Changchun,Bao Wenxing,Liu Junhua.Least Squares Wavelet Support Vector Machines and Its Application to Nonlinear System Identification[J].Journal of Xi'an Jiaotong University,2004,38(6):562-565,586.
Authors:Cui Wanzhao  Zhu Changchun  Bao Wenxing  Liu Junhua
Abstract:Based on the wavelet decomposition and conditions of the support vector kernel function, a novel multi-dimension admissible support vector wavelet kernel function is presented, which is not only approximately orthonormal, but also is especially suitable for local signal analysis, signal-noise separation and detection of jumping signals, thus enhances the generalization ability of the support vector machine (SVM). According to the wavelet kernel function and the regularization theory, a least square wavelet support vector machine (LS-WSVM) is proposed to greatly simplify the solving process of WSVM. The LS-WSVM is then applied to the nonlinear system identification to test the validity of the wavelet kernel function, and it is demonstrated that the modeling ability is improved and computation burden is alleviated. Computer simulations show that the identification accuracy of the LS-WSVM is higher than the traditional SVM about 13.1% under the same conditions, and it is more adaptive to engineering applications.
Keywords:wavelet kernel function  least squares wavelet support vector machine  nonlinear system identification
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