A Design of Parallel Module Neural Network for Robot Manipulators having a fast Learning Speed

빠른 학습 속도를 갖는 로보트 매니퓰레이터의 병렬 모듈 신경제어기 설계

  • 김정도 (삼척산업대학교 제어계측공학과) ;
  • 이택종 (성균관대학교 전자공학과)
  • Published : 1995.09.01

Abstract

It is not yet possible to solve the optimal number of neurons in hidden layer at neural networks. However, it has been proposed and proved by experiments that there is a limit in increasing the number of neuron in hidden layer, because too much incrememt will cause instability,local minima and large error. This paper proposes a module neural controller with pattern recognition ability to solve the above trade-off problems and to obtain fast learning convergence speed. The proposed neural controller is composed of several module having Multi-layer Perrceptron(MLP). Each module have the less neurons in hidden layer, because it learns only input patterns having a similar learning directions. Experiments with six joint robot manipulator have shown the effectiveness and the feasibility of the proposed the parallel module neural controller with pattern recognition perceptron.

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