A learning algorithm of fuzzy neural networks with extended fuzzy weights

확장된 퍼지 가중치를 갖는 퍼지 신경망 학습알고리즘

  • 손영수 (한려산업대학교 전자계산학과) ;
  • 나영남 (조선대학교 대학원 전산통계학과) ;
  • 배상현 (조선대학교 자연과학대학 전산통계학과)
  • Published : 1997.06.01

Abstract

In this paper, first we propose an architecture of fuzzy neural networks with triangular fuzzy weights. The proposed fuzzy neural network can handle fuzzy input vectors. In both cases, outputs from the fuzzy network are fuzzy vectors. The input-output relation of each unit of the fuzzy neural network is defined by the extention principle of Zadeh. Also we define a cost function for the level sets(i. e., $\alpha$-cuts)of fuzzy outputs and fuzzy targets. Then we derive a learning algorithm from the cost function for adjusting three parameters of each triangular fuzzy weight. Finally, we illustrate our a, pp.oach by computer simulation examples.

Keywords

References

  1. Introduction to Interval Computations G. Alefeld;J. Herzberger
  2. Fuzzy Sets and Systems v.66 Fuzzy neural networks: a survey J.J. Buckley;Y. Hayashi
  3. J. Intelligent Systems v.8 Fuzzy neural network with fuzzy signals and wights, Internat. Y. Hayashi;J.J. Buckley;E. Czogala
  4. Proc FUZZ-IEEE '92 An architecture of neural network for input vectors of fuzzy numbers. H. Ishibuchi;R. Fujioka;H. Tanaka
  5. IEEE Trans. Fuzzy Systems v.1 no.2 Neural networks that learn from fuzzy ifthen rules H. Ishibuchi;R. Fujioka;H. Tanaka
  6. Proc. ICNN '93 Fuzzy neural networks with fuzzy weights and fuzzy biases H. Ishibu;H. Okada;H. Tanaka
  7. J. Approx. Reason. v.10 no.1 Interpolation of fuzzy if-then rules by neural networks H. Ishibuchi;H. Okada;H. Tanaka
  8. Parallel Distributed Processing v.1 D.E. Rumelhart;J.L. McClelland;the PDP Research Group
  9. Inform. Sci. v.8;9 The concept of a linguistic variable and its application to approximate reason.ng: Parts 1-3 L.A. Zadeh