PSO-AG:多机器人路径规划与避障算法

Ghaith Bilbeisi, Nailah Al-Madi, F. Awad
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引用次数: 7

摘要

机器人路径规划是最具挑战性的任务之一,因为它涉及多个参数和不同的约束条件。在环境中移动的机器人面临着许多挑战,比如避开障碍物。路径规划的目的是引导机器人通过无碰撞的路径到达目标。在线路径规划允许机器人在他们没有先验知识的环境中移动,并且应该在移动时发现。本文介绍了一种结合粒子群算法和Agoraphilic算法优点的在线多机器人路径规划算法PSO-AG。在PSO-AG中,粒子群优化作为移动路径规划器,决定机器人到达目标的下一个点,Agoraphilic作为移动控制器,引导机器人向目标移动,同时避开路径上的障碍物。通过仿真对PSO-AG在不同场景下的性能进行了评估;包括不同大小的机器人群和不同等级的环境难度;从无障碍到部分受阻的环境。实验结果表明,PSO-AG算法具有良好的可扩展性和目标达标率。
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PSO-AG: A Multi-Robot Path Planning and obstacle avoidance algorithm
Robot path planning is one of the most challenging tasks as it involves several parameters and different constraints. Robots moving in an environment face many challenges such as avoiding obstacles. Path planning aims at directing the robot to reach a target via a collision-free path. Online Path Planning allows robots to move in an environment they do not have prior knowledge about and ought to discover while moving. This paper introduces, PSO-AG, an online multi robot path planning algorithm that combines the benefits of particle swarm optimization and Agoraphilic algorithms. In PSO-AG, particle swarm optimization works as the moving path planner that decides the next point for the robots to reach the target, and Agoraphilic works as the moving controller that steers the robots towards the target while avoiding obstacles along the path. Simulation was used to evaluate the performance of PSO-AG in different scenarios; including different sizes of robots swarms and different levels of environment difficulty; ranging from obstacle-free to partially obstructed environment. Experiments showed promising results of PSO-AG's scalability and target reaching rate.
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