基于遗传算法的水下群机器人路径规划

Marck P. Vicmudo, E. Dadios, R. R. Vicerra
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引用次数: 11

摘要

路径规划是构建自主群机器人最令人兴奋的挑战之一。它包括找到从机器人原点到目标目的地的路线。当环境中添加了一些障碍时,它变得更加困难。本文由多个障碍物组成:机器人和它们可能的路径。提出了一种基于遗传算法的水下群机器人路径规划方法。群体机器人将确定预定目标的位置,并通过遗传算法生成每个机器人到达目标的最短路径,而不会相互碰撞。随机生成机器人可能路径的xyz坐标,并将其编码到染色体中,利用三维平面的欧几里得距离公式将其位移之和定义其适应度。仿真结果表明,该算法能够为群机器人规划安全的无碰撞路径。结果表明,在种群数量较多的情况下,可以得到最优路径。本文第二节对遗传算法的实现进行了计算机仿真,并对实现过程进行了说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Path planning of underwater swarm robots using genetic algorithm
Path planning is one of the most exciting challenges in building autonomous swarm robots. It consists on finding a route from the origin of the robot to its target destination. It becomes more difficult when some obstacles are added to the environment. This paper consists of multiple obstacles: the robots and their possible path. This paper will present the path planning of underwater swarm robot based on genetic algorithm. Swarm robots will determine the position of pre-defined object and genetic algorithm generates shortest path for each robot to reach the object without collision to one another. The xyz coordinates of possible path of robot are randomly generated and they are encoded into chromosome and their fitness is defined by the summation of their displacement using Euclidian distance formula for 3-dimensional plane. The simulation results demonstrated that proposed algorithm is able to plan safe collision free paths for swarm robots. It also shown that using more population, the optimum path will be obtained. The implementation of genetic algorithm is done using computer simulation and explains the process in section two of this paper.
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