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Neural reinforcement learning for an obstacle avoidance behavior

Claude Touzet

发表年份
1996
引用次数
3

摘要

Reinforcement learning (RL) offers a set of various algorithms for in-situation behavior synthesis for robots. The Q-learning technique is certainly the most used of the RL methods. Multilayer perceptron implementations of the Q-learning have been proposed, due to the interest of the restricted memory need and the generalization capability. Self-organizing map implementation of the Q-learning followed. We propose to study the use and discuss the interest of this implementation comparing to a multilayer perceptron implementation or more classical ones. Experiments are performed in the real world with the miniature robot Khepera. (3 pages)

关键词

Reinforcement learningComputer scienceGeneralizationObstacle avoidanceArtificial intelligencePerceptronRobotSet (abstract data type)ImplementationArtificial neural network

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