FasBack: Matching-error based learning for automatic generation of fuzzy logic systems

被引:0
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作者
Izquierdo, JMC
Dimitriadis, YA
Coronado, JL
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TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Recently, a lot of research work has been reported with respect to the relation between neural and fuzzy systems. Looking for a synergistic relation of these technologies, an important property of NN-based systems is their learning capacity, that permits to embed self-organization in fuzzy logic systems In this paper, a new neuro-fuzzy system, called FasBack, is proposed, that combines learning based on prediction error minimization and patten matching. FasBack adds error-based learning to a previously proposed model, called FasArt, that extenden and formalized neural networks models of the ART family, as fuzzy logic systems. Experimental results are presented in nonlinear systems identification problems, typically used in the literature.
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页码:1561 / 1566
页数:6
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