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A Multiple Model Approach to Modeling Based on Fuzzy Support Vector Machines 被引量:2

A Multiple Model Approach to Modeling Based on Fuzzy Support Vector Machines
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摘要 A new multiple models(MM) approach was proposed to model complex industrial process by using Fuzzy Support Vector Machines(F -SVMs). By applying the proposed approach to a pH neutralization titration experiment, F -SVMs MM not only provides satisfactory approximation and generalization property, but also achieves superior performance to USOCPN multiple modeling method and single modeling method based on standard SVMs. A new multiple models(MM) approach was proposed to model complex industrial process by using Fuzzy Support Vector Machines(F -SVMs). By applying the proposed approach to a pH neutralization titration experiment, F -SVMs MM not only provides satisfactory approximation and generalization property, but also achieves superior performance to USOCPN multiple modeling method and single modeling method based on standard SVMs.
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2003年第2期137-141,共5页 上海交通大学学报(英文版)
基金 National High Technology Research andDevelopment Program of China( Project 863 G2 0 0 1AA413 13 0
关键词 fuzzy support vector machines(FSVMs) fuzzy support vector classifier(FSVC) fuzzy support vector regression(FSVR) multiple model MODELING 建模方法 模糊控制矢量机械 模糊控制分级器 多路模型
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