Coverage path planning for mobile robot based on genetic algorithm

Zhongmin Wang, Zhu Bo
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引用次数: 16

Abstract

Environment modeling for mobile robot is built up by using Boustrophedon cell decomposition method, and each sub-region is set numbers and basis point based on the characteristics of modeling, and connectivity relations among all sub-regions are established. All sub-regions are encoded by genetic algorithm (GA), and information of basis points between the sub-regions and sub-regions inside are set up and also achieved by GA, the optimal coverage sequences are obtained with GA, and in each sub-region a partial coverage is realized in the form of reciprocating movement, then problem of complete coverage for mobile robot is changed into a traveling salesman problem (TSP). Finally, the relationships between parameters of GA and search abilities are deeply studied, then the best parameters of GA are obtained. Simulation results show the effectiveness of GA for mobile robot's coverage path planning.
基于遗传算法的移动机器人覆盖路径规划
采用Boustrophedon细胞分解法建立移动机器人的环境建模,根据建模的特点为每个子区域设置编号和基点,建立子区域之间的连通性关系。采用遗传算法对所有子区域进行编码,建立子区域与子区域之间的基点信息,并通过遗传算法实现,得到最优覆盖序列,在每个子区域内以往复运动的形式实现部分覆盖,将移动机器人的完全覆盖问题转化为旅行商问题(TSP)。最后,深入研究了遗传算法参数与搜索能力之间的关系,得到了遗传算法的最佳参数。仿真结果表明了遗传算法对移动机器人覆盖路径规划的有效性。
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