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Q-RAN: A Constructive Reinforcement Learning Approach for Robot Behavior Learning

Jun Li, Achim J. Lilienthal, Tomás Martinez-Marín, Tom Duckett

发表年份
2006
引用次数
11

摘要

This paper presents a learning system that uses Q-learning with a resource allocating network (RAN) for behavior learning in mobile robotics. The RAN is used as a function approximator, and Q-learning is used to learn the control policy in 'off-policy' fashion that enables learning to be bootstrapped by a prior knowledge controller, thus speeding up the reinforcement learning. Our approach is verified on a PeopleBot robot executing a visual servoing based docking behavior in which the robot is required to reach a goal pose. Further experiments show that the RAN network can also be used for supervised learning prior to reinforcement learning in a layered architecture, thus further improving the performance of the docking behavior

关键词

Reinforcement learningComputer scienceRobot learningArtificial intelligenceMobile robotLearning classifier systemRobotQ-learningMachine learningUnsupervised learning

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