An improved particle swarm optimization for multi-robot path planning

P. K. Das, B. Sahoo, H. Behera, S. Vashisht
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引用次数: 16

Abstract

This paper proposes a new methodology to optimize trajectory of the path for multi-robots using Improved particle swarm optimization Algorithm (IPSO) in clutter Environment. IPSO technique is incorporated into the multi-robot system in a dynamic framework, which will provide robust performance, self-deterministic cooperation, and coping with an inhospitable environment. The robots on the team make independent decisions, coordinate, and cooperate with each other to accomplish a common goal using the developed IPSO. A path planning scheme has been developed using IPSO to optimally obtain the succeeding positions of the robots from the existing position in the proposed environment. Finally, the analytical and experimental result of the multi-robot path planning were compared with those obtained by IPSO, PSO and DE (Differential Evolution) in a similar environment. The simulation and the Khepera environment result show outperforms of IPSO as compared to PSO and DE with respect to the average total trajectory path deviation and average uncovered trajectory target distance.
基于改进粒子群算法的多机器人路径规划
提出了一种基于改进粒子群算法(IPSO)的杂波环境下多机器人路径轨迹优化方法。将IPSO技术应用于动态框架的多机器人系统中,可以提供鲁棒性、自确定性合作和应对恶劣环境的能力。团队中的机器人使用开发的IPSO进行独立决策,相互协调和合作,以完成共同的目标。在此基础上,提出了一种基于IPSO的路径规划方案,以最优地获得机器人在给定环境中的后续位置。最后,将多机器人路径规划的分析和实验结果与相似环境下IPSO、PSO和差分进化算法的路径规划结果进行了比较。仿真和Khepera环境结果表明,IPSO算法在平均总弹道偏差和平均未覆盖弹道目标距离方面优于PSO算法和DE算法。
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