Knowledge Acquistion using Neural Network and Simulator

  • Kim, Ki-Tae (School of Digital Economy & Trade, Youngsan Univ) ;
  • Sim, Eok-su (Department of Industrial Engineering, Seoul National University) ;
  • Cheng Xuan (School of Management, University of Science and Technology, Beijing. Beijin 100083, P.R. China) ;
  • Park, Jin-Woo (Dept. of Industrial Engineering Seoul National University)
  • 발행 : 2001.01.01

초록

There are so many researches about the search method for the most compatible dispatching rule to a manufacturing system state. Most of researches select the dispatching rule using simulation results. This paper touches upon two research topics: the clustering method for manufacturing system states using simulation, and the search method for the most compatible dispatching rule to a manufacturing system state. The manufacturing system state variables are given to ART II neural network as input. The ART II neural network is trained to cluster the system state. After being trained, the ART II neural network classifies any system state as one state of some clustered states. The simulation results using clustered system state information and those of various dispatching rules are compared and the most compatible dispatching rule to the system state is defined. Finally there are made two knowledge bases. The simulation experiments are given to compare the proposed methods with other scheduling methods. The result shows the superiority of the proposed knowledge base.

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