支持向量机在非线性系统辨识中的应用

Haina Rong, Gexiang Zhang, Cuifang Zhang
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引用次数: 7

摘要

选择核函数来逼近一个函数是支持向量机研究的一个关键问题。不同的核函数形成不同的支持向量机模型,具有不同的性能。本文在讨论了基于支持向量机的非线性系统辨识方法的基础上,给出了系统辨识核函数的选择准则,并讨论了参数的影响。在实验中,使用几个核函数形成不同的SVM模型,分别用于识别典型的非线性系统。为了分析某一参数对支持向量机的影响,采用大量参数进行系统辨识实验。大量实验结果表明,径向基核函数是支持向量机识别非线性系统的良好选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of support vector machines to nonlinear system identification
It is a key research issue for support vector machines (SVMs) to choose kernel function for approximating a function. Different kernel function forms different SVM model that has distinct performances. In this paper, after the nonlinear system identification method using SVM is discussed, the criterion of choosing kernel function for system identification is given, and the effect of parameters are discussed. In the experiment, several kernel functions are used to form different SVM models that are used to identify a typically nonlinear system, respectively. To analyze the effect of a parameter on SVM, plenty of parameters are employed to make the system identification experiment. A large number of experimental results show that radial basis kernel function is a good choice for identifying a nonlinear system using SVM.
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