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Biologically Inspired Complete Coverage Path Planning Algorithm Based on Q-Learning

Xiangquan Tan, Linhui Han, Hao Gong, Qingwen Wu

发表年份
2023
引用次数
30
访问权限
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摘要

Complete coverage path planning requires that the mobile robot traverse all reachable positions in the environmental map. Aiming at the problems of local optimal path and high path coverage ratio in the complete coverage path planning of the traditional biologically inspired neural network algorithm, a complete coverage path planning algorithm based on Q-learning is proposed. The global environment information is introduced by the reinforcement learning method in the proposed algorithm. In addition, the Q-learning method is used for path planning at the positions where the accessible path points are changed, which optimizes the path planning strategy of the original algorithm near these obstacles. Simulation results show that the algorithm can automatically generate an orderly path in the environmental map, and achieve 100% coverage with a lower path repetition ratio.

关键词

Motion planningAny-angle path planningPath (computing)TraverseComputer scienceAlgorithmReinforcement learningFast pathQ-learningPath length

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