A Motion Planning of Swarm Robots Using Genetic Algorithm

Chien-Chou Lin, Po-Yuan Hsiao, Kun-Cheng Chen
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引用次数: 13

Abstract

In this paper, a potential-based genetic algorithm is proposed for formation control of robot swarm. The proposed algorithm consists of a global path planner and a motion planner. The global path planning algorithm searches a path, which the center of robot swarm should follow, within a Voronoi diagram of the free space. The motion planning is a genetic algorithm based on artificial potential models. The potential functions are used as a repulsion to keep robots away from obstacles and as an attraction/repulsion to keep robot swarm within a certain distance. With Voronoi diagram and potential models, the algorithm plans safe paths efficiently and the formation of robot swarm is also maintained.
基于遗传算法的群体机器人运动规划
本文提出了一种基于势的遗传算法用于机器人群体的编队控制。该算法由全局路径规划器和运动规划器组成。全局路径规划算法在自由空间的Voronoi图中搜索机器人群中心应该遵循的路径。运动规划是一种基于人工势模型的遗传算法。势函数作为斥力使机器人远离障碍物,作为吸引/斥力使机器人群保持在一定距离内。该算法利用Voronoi图和势模型,有效地规划了安全路径,并保持了机器人群体的形成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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