Identification of Nonlinear Systems based on Dynamic Recurrent Neural Networks

동적 귀환 신경망에 의한 비선형 시스템의 동정

  • 이상환 (로보스틱 및 지능정보시스템 연구실 중앙대학교 공과대학 제어계측공학과) ;
  • 김대준 (로보틱tm 및 지능정보시스템 연구실 중앙대학교 공과대학 제어계측공학과) ;
  • 심귀보 (로보틱스 및 지능정보시스템 연구실 중앙대학교 공과대학 제어계측공학과)
  • Published : 1997.10.01

Abstract

Recently, dynamic recurrent neural networks(DRNN) for identification of nonlinear dynamic systems have been researched extensively. In general, dynamic backpropagation was used to adjust the weights of neural networks. But, this method requires many complex calculations and has the possibility of falling into a local minimum. So, we propose a new approach to identify nonlinear dynamic systems using DRNN. In order to adjust the weights of neurons, we use evolution strategies, which is a method used to solve an optimal problem having many local minimums. DRNN trained by evolution strategies with mutation as the main operator can act as a plant emulator. And the fitness function of evolution strategies is based on the difference of the plant's outputs and DRNN's outputs. Thus, this new approach at identifying nonlinear dynamic system, when applied to the simulation of a two-link robot manipulator, demonstrates the performance and efficiency of this proposed approach.

Keywords