LEARNING
Reinforcement learning method for generating fuzzy controller
Toshio Fukuda, Yasuhisa Hasegawa, Koji Shimojima, F. Saito
- Year
- 2002
- Citations
- 19
Abstract
In this paper, we propose a new reinforcement learning algorithm for generating a fuzzy controller. The algorithm generates a range of continuous real-valued actions, and reinforcement signal is self-scaled. This prevents the weights from overshooting when the system gets a very large reinforcement value. The proposed method is applied to the problem of controlling the brachiation robot, which moves dynamically from branch to branch like a gibbon swinging its body in ii pendulum fashion(Fig.1).
Keywords
Reinforcement learningComputer scienceFuzzy logicArtificial intelligenceController (irrigation)Fuzzy control systemControl engineeringMachine learningEngineering
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