지능적인 뉴로-퍼지 시스템의 설계 및 구현

The Design and Implementation of An Intelligent Neuro-Fuzzy System(INFS)

  • 조영임 (고려대학교 전기과학과) ;
  • 황종선 (고려대학교 전기과학과) ;
  • 손진곤 (한국방송통신대학교 전자계산학과)
  • 발행 : 1994.05.01

초록

The Max-Min CRI method , a traditional inference method , has three problems: subjective formulation of membership functions, error-prone weighting strategy, and inefficient compositional rule of inference. Because of these problems, there is an insurmountable error region between desired output and inferred output. To overcome these problems, we propose an Intelligent Neuro-Fuzzy System (INFS) based on fuzzy thoery and self-organizing functions of neural networks. INFS makes use of neural networks(Error Back Propagation) to solve the first problem, and NCRI(New Max-Min CRI) method for the second. With a proposed similarity measure, NCRI method is an improved method compared to the traditional Max-Min CRI method. For the last problem, we propose a new defuzzification method which combines only the appropriate rules produced by the rule selection level. Applying INFS to a D.C. series motor, we can conclude that the error region is reduced and NCRI method performs better than Max-Min CRI method.

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