Fuzzy Inference-based Reinforcement Learning of Dynamic Recurrent Neural Networks

  • Jun, Hyo-Byung (Robotics and Intelligent Information System Lab.) ;
  • Sim, Kwee-Bo (Robotics and Intellignet Information System Lab.)
  • 발행 : 1997.12.01

초록

This paper presents a fuzzy inference-based reinforcement learning algorithm of dynamci recurrent neural networks, which is very similar to the psychological learning method of higher animals. By useing the fuzzy inference technique the linguistic and concetional expressions have an effect on the controller's action indirectly, which is shown in human's behavior. The intervlas of fuzzy membership functions are found optimally by genetic algorithms. And using recurrent neural networks composed of dynamic neurons as action-generation networks, past state as well as current state is considered to make an action in dynamical environment. We show the validity of the proposed learning algorithm by applying it to the inverted pendulum control problem.

키워드

참고문헌

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