张元林, 郑南宁, 贾新春. 基于支持向量回归的非线性系统辨识[J]. 信息与控制, 2003, 32(5): 471-474.
引用本文: 张元林, 郑南宁, 贾新春. 基于支持向量回归的非线性系统辨识[J]. 信息与控制, 2003, 32(5): 471-474.
ZHANG Yuan-lin, ZHENG Nan-ning, JIA Xin-chun. APPLICATION OF SUPPORT VECTOR REGRESSION TO NONLINEAR SYSTEM IDENTIFICATION[J]. INFORMATION AND CONTROL, 2003, 32(5): 471-474.
Citation: ZHANG Yuan-lin, ZHENG Nan-ning, JIA Xin-chun. APPLICATION OF SUPPORT VECTOR REGRESSION TO NONLINEAR SYSTEM IDENTIFICATION[J]. INFORMATION AND CONTROL, 2003, 32(5): 471-474.

基于支持向量回归的非线性系统辨识

APPLICATION OF SUPPORT VECTOR REGRESSION TO NONLINEAR SYSTEM IDENTIFICATION

  • 摘要: 本文将支持向量回归方法应用于非线性系统辨识问题.基于高斯支持向量回归及 不敏感损失函数的基本思想,本文提出一个非线性系统辨识的新算法,并将其与用于系统辨识的径向基函数神经网络进行了比较.模拟实验表明,支持向量回归方法可以成为非线性系统辨识的有力工具.

     

    Abstract: This paper applies Support Vector Regression(SVR) to nonlinear system identification problem. Using the basic idea of Gaussian SVR and -insensitive loss function, we propose a new algorithm for nonlinear system identification and compare the Gaussian SVR with the radial basis function(RBF) network for system identification. The performance of the SVR is illustrated by a simulation example involving a benchmark nonlinear system.

     

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