A Study on an Adaptive Membership Function for Fuzzy Inference System

  • Bang, Eun-Oh (Dept. of Electronic & Commucation. Eng., Korea Maritime University) ;
  • Chae, Myong-Gi (Dept. of Electronic & Commucation. Eng., Korea Maritime University) ;
  • Lee, Snag-Bae (Dept. of Electronic & Commucation. Eng., Korea Maritime University) ;
  • Tack, Han-Ho (Dept. of Electronic Eng., Chin-Ju National University) ;
  • Kim, Il (Dept. of Computer Science, Dong-Pusan College)
  • Published : 1998.10.01

Abstract

In this paper, a new adaptive fuzzy inference method using neural network based fuzzy reasoning is proposed to make a fuzzy logic control system more adaptive and more effective. In most cases, the design of a fuzzy inference system rely on the method in which an expert or a skilled human operator would operate in that special domain. However, if he has not expert knowledge for any nonlinear environment, it is difficult to control in order to optimize. Thus, using the proposed adaptive structure for the fuzzy reasoning system can controled more adaptive and more effective in nonlinear environment for changing input membership functions and output membership functions. The proposed fuzzy inference algorithm is called adaptive neuro-fuzzy control(ANFC). ANFC can adapt a proper membership function for nonlinear plant, based upon a minimum number of rules and an initial approximate membership function. Nonlinear function approximation and rotary inverted pendulum control system ar employed to demonstrate the viability of the proposed ANFC.

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