Automatic generation of membership function and fuzzy rule using inductive reasoning

This paper discusses the automatic generation of membership function and fuzzy rule. The generation of them are accomplished by utilizing the essential characteristic of the inductive reasoning which derives a general consensus from the particular. The induction is performed by the entropy minimization principle which clusters most optimally the parameters corresponding to the output classes. The rule derivation also provide the average probability of each step of rule, which is no other than the rule weight. The generation scheme is illustrated for practical use.<<ETX>>

[1]  C. Kim,et al.  A structure of fuzzy decision-making system for power system protection , 1993, [Proceedings 1993] Second IEEE International Conference on Fuzzy Systems.

[2]  E. Cox Adaptive fuzzy systems , 1993, IEEE Spectrum.

[3]  C. J. Kim,et al.  Classification of Faults and Switching Events by Inductive Reasoning and Expert System Methodology , 1989, IEEE Power Engineering Review.

[4]  E. Cox,et al.  Fuzzy fundamentals , 1992, IEEE Spectrum.

[5]  B. Don Russell,et al.  An intelligent decision-making system for detecting high-impedance faults , 1989 .