학습 성능의 개선을 위한 복합형 신경회로망의 구현과 이의 시각 추적 제어에의 적용

Implementation of Hybrid Neural Network for Improving Learning ability and Its Application to Visual Tracking Control

  • 김경민 (고려대학교 전기공학과) ;
  • 박중조 (고려대학교 전기공학과) ;
  • 박귀태 (고려대학교 전기공학과, 서울대학교 ERCACI 연구위원)
  • 발행 : 1995.12.01

초록

In this paper, a hybrid neural network is proposed to improve the learning ability of a neural network. The union of the characteristics of a Self-Organizing Neural Network model and of multi-layer perceptron model using the backpropagation learning method gives us the advantage of reduction of the learning error and the learning time. In learning process, the proposed hybrid neural network reduces the number of nodes in hidden layers to reduce the calculation time. And this proposed neural network uses the fuzzy feedback values, when it updates the responding region of each node in the hidden layer. To show the effectiveness of this proposed hybrid neural network, the boolean function(XOR, 3Bit Parity) and the solution of inverse kinematics are used. Finally, this proposed hybrid neural network is applied to the visual tracking control of a PUMA560 robot, and the result data is presented.

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