Design of the Optimal Fuzzy Prediction Systems using RCGKA

RCGKA를 이용한 최적 퍼지 예측 시스템 설계

  • 방영근 (강원대학교 대학원 전기전자공학과) ;
  • 심재선 (강원대학교 전기제어공학부) ;
  • 이철희 (강원대학교 전기전자공학부)
  • Published : 2009.08.31

Abstract

In the case of traditional binary encoding technique, it takes long time to converge the optimal solutions and brings about complexity of the systems due to encoding and decoding procedures. However, the ROGAs (real-coded genetic algorithms) do not require these procedures, and the k-means clustering algorithm can avoid global searching space. Thus, this paper proposes a new approach by using their advantages. The proposed method constructs the multiple predictors using the optimal differences that can reveal the patterns better and properties concealed in non-stationary time series where the k-means clustering algorithm is used for data classification to each predictor, then selects the best predictor. After selecting the best predictor, the cluster centers of the predictor are tuned finely via RCGKA in secondary tuning procedure. Therefore, performance of the predictor can be more enhanced. Finally, we verifies the prediction performance of the proposed system via simulating typical time series examples.

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