The Study on Inconsistent Rule Based Fuzzy Logic Control using Neural Network

  • Cho, Jae-Soo (Department of Electrical Engineering Korea Advanced Insititute of Science & Technology (KAIST)) ;
  • Park, Dong-Jo (Department of Electrical Engineering Korea Advanced Insititute of Science & Technology (KAIST)) ;
  • Z. Bien (Department of Electrical Engineering Korea Advanced Insititute of Science & Technology (KAIST))
  • Published : 1997.11.01

Abstract

In this paper is studied a method of fuzzy logic control based on possibly inconsistent if-then rules representing uncertain knowledge or imprecise data. In most cases of practical applications adopting fuzzy if-then rule bases, inconsistent rules have been considered as ill-defined rules and, thus, not allowed to be in the same rule base. Note, however, that, in representing uncertain knowledge by using fuzzy if-then rules, the knowledge sometimes can not be represented in literally consistent if-then rules. In this regard, when it is hard to obtain consistent rule base, we propose the weighted rule base fuzzy logic control depending on output performance using neural network and we will derive the weight update algorithm. Computer simulations show the proposed method has good performance to deal with the inconsistent rule base fuzzy logic control. And we discuss the real application problems.

Keywords