FUZZY INFERENCE SYSTEMS OPTIMIZATION BY REINFORCEMENT LEARNING

  • Mohamed BOUMEHRAZ Université de Biskra
  • Kamel BENMAHAMMED Université de Sétif.
  • ML HADJILI Université Catholique de Louvain
  • V WERTZ Université Catholique de Louvain

Résumé

Fuzzy rules for control can be effectively tuned via reinforcement learning. Reinforcement learning is a weak learning
method wich only requires information on the succes or failure of the control application. In this paper a reinforcement
learning method is used to tune on line the conclusion part of fuzzy inference system rules. The fuzzy rules are tuned in
order to maximize the return function . To illustrate its effectivness, the learning method is applied to the well known
Cart-Pole balancing system problem. The results obtained show significant improvements of the speed of learning.

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Comment citer
BOUMEHRAZ, Mohamed et al. FUZZY INFERENCE SYSTEMS OPTIMIZATION BY REINFORCEMENT LEARNING. Courrier du Savoir, [S.l.], v. 1, avr. 2014. ISSN 1112-3338. Disponible à l'adresse : >https://revues.univ-biskra.dz/index.php/cds/article/view/186>. Date de consultation : 19 avr. 2024
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