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Self-learning fuzzy logic controllers for pursuit-evasion differential games

Robotics and Autonomous Systems(2011)

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Abstract
This paper addresses the problem of tuning the input and the output parameters of a fuzzy logic controller. The system learns autonomously without supervision or a priori training data. Two novel techniques are proposed. The first technique combines Q( λ )-learning with function approximation (fuzzy inference system) to tune the parameters of a fuzzy logic controller operating in continuous state and action spaces. The second technique combines Q( λ )-learning with genetic algorithms to tune the parameters of a fuzzy logic controller in the discrete state and action spaces. The proposed techniques are applied to different pursuit–evasion differential games. The proposed techniques are compared with the classical control strategy, Q( λ )-learning only, reward-based genetic algorithms learning, and with the technique proposed by Dai et al. (2005)  [19] in which a neural network is used as a function approximation for Q-learning. Computer simulations show the usefulness of the proposed techniques.
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Key words
q( λ )-learning,reinforcement learning,genetic algorithm,continuous state,fuzzy logic controller,fuzzy control,genetic algorithms,pursuit-evasion differential game,novel technique,action space,function approximation,fuzzy logic controller operating,fuzzy inference system,proposed technique,differential game,discrete state,computer simulation,neural network
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