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Development of a New Max-Min Compositional Rule of Inference in Control Systems

  • Cho, Young-Im (Dept. of Computer Science, Pyongtaek University)
  • Published : 2004.10.01

Abstract

Generally, Max-Min CRI (Compositional Rule of Inference ) method by Zadeh and Mamdani is used in the conventional fuzzy inference. However, owing to the problems of Max-Min CRI method, the inference often results in significant error regions specifying the difference between the desired outputs and the inferred outputs. In this paper, I propose a New Max-Min CRI method which can solve some problems of the conventional Max-Min CRI method. And then this method is simulated in a D.C.series motor, which is a bench marking system in control systems, and showed that the new method performs better than the other fuzzy inference methods.

Keywords

References

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