Design of a Pole-Balancing Controller Using Neural Networks

신경회로망을 이용한 역추균형 재어기 설계

  • 김유석 (서울대 대학원 제어계측공학과) ;
  • 이장규 (서울대 공대 제어계측공학과)
  • Published : 1991.02.01

Abstract

Most common applications of neural networks to control problems are the automatic motor controls using the artificial perceptual function. These control mechanisms are similar to those of the intelligent and pattern recognition control of an adaptive method frequently performed by the animate nature. In this paper, the pole-balancing problem is selected as the control object and an actual cart-pole controller is implemented by a computer interfacing and demonstrated as motor control using the reinforcement learning rule. In the experiment, given a change of the main parameters of cart-pole dynamics, a comparison is made between the LQR scheme and neural network method. The neural network method exhibits a more effecftive control action in a real situation having a large uncertainty than the LQR scheme.

Keywords