Multi-robot path planning using an improved self-adaptive particle swarm optimization

Path planning is of great significance in motion planning and cooperative navigation of multiple robots. Nevertheless, because of its high complexity and nondeterministic polynomial time hard nature, efficiently tackling with the issue of multi-robot path planning remains greatly challenging. To thi...

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Main Authors: Biwei Tang, Kui Xiang, Muye Pang, Zhu Zhanxia
Format: Article
Language:English
Published: SAGE Publishing 2020-09-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.1177/1729881420936154
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spelling doaj-37300c886b714922b7bc244363e31c8f2020-11-25T03:40:06ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142020-09-011710.1177/1729881420936154Multi-robot path planning using an improved self-adaptive particle swarm optimizationBiwei Tang0Kui Xiang1Muye Pang2Zhu Zhanxia3 School of Automation, , Wuhan, Hubei, China School of Automation, , Wuhan, Hubei, China School of Automation, , Wuhan, Hubei, China National Key Laboratory of Aerospace and Flight Dynamics, School of Astronautics, , Xi’an, Shaanxi, ChinaPath planning is of great significance in motion planning and cooperative navigation of multiple robots. Nevertheless, because of its high complexity and nondeterministic polynomial time hard nature, efficiently tackling with the issue of multi-robot path planning remains greatly challenging. To this end, enhancing a coevolution mechanism and an improved particle swarm optimization (PSO) algorithm, this article presents a coevolution-based particle swarm optimization method to cope with the multi-robot path planning issue. Attempting to well adjust the global and local search abilities and address the stagnation issue of particle swarm optimization, the proposed particle swarm optimization enhances a widely used standard particle swarm optimization algorithm with the evolutionary game theory, in which a novel self-adaptive strategy is proposed to update the three main control parameters of particles. Since the convergence of particle swarm optimization significantly influences its optimization efficiency, the convergence of the proposed particle swarm optimization is analytically investigated and a parameter selection rule, sufficiently guaranteeing the convergence of this particle swarm optimization, is provided in this article. The performance of the proposed planning method is verified through different scenarios both in single-robot and in multi-robot path planning problems. The numerical simulation results reveal that, compared to its contenders, the proposed method is highly promising with respect to the path optimality. Also, the computation time of the proposed method is comparable with those of its peers.https://doi.org/10.1177/1729881420936154
collection DOAJ
language English
format Article
sources DOAJ
author Biwei Tang
Kui Xiang
Muye Pang
Zhu Zhanxia
spellingShingle Biwei Tang
Kui Xiang
Muye Pang
Zhu Zhanxia
Multi-robot path planning using an improved self-adaptive particle swarm optimization
International Journal of Advanced Robotic Systems
author_facet Biwei Tang
Kui Xiang
Muye Pang
Zhu Zhanxia
author_sort Biwei Tang
title Multi-robot path planning using an improved self-adaptive particle swarm optimization
title_short Multi-robot path planning using an improved self-adaptive particle swarm optimization
title_full Multi-robot path planning using an improved self-adaptive particle swarm optimization
title_fullStr Multi-robot path planning using an improved self-adaptive particle swarm optimization
title_full_unstemmed Multi-robot path planning using an improved self-adaptive particle swarm optimization
title_sort multi-robot path planning using an improved self-adaptive particle swarm optimization
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2020-09-01
description Path planning is of great significance in motion planning and cooperative navigation of multiple robots. Nevertheless, because of its high complexity and nondeterministic polynomial time hard nature, efficiently tackling with the issue of multi-robot path planning remains greatly challenging. To this end, enhancing a coevolution mechanism and an improved particle swarm optimization (PSO) algorithm, this article presents a coevolution-based particle swarm optimization method to cope with the multi-robot path planning issue. Attempting to well adjust the global and local search abilities and address the stagnation issue of particle swarm optimization, the proposed particle swarm optimization enhances a widely used standard particle swarm optimization algorithm with the evolutionary game theory, in which a novel self-adaptive strategy is proposed to update the three main control parameters of particles. Since the convergence of particle swarm optimization significantly influences its optimization efficiency, the convergence of the proposed particle swarm optimization is analytically investigated and a parameter selection rule, sufficiently guaranteeing the convergence of this particle swarm optimization, is provided in this article. The performance of the proposed planning method is verified through different scenarios both in single-robot and in multi-robot path planning problems. The numerical simulation results reveal that, compared to its contenders, the proposed method is highly promising with respect to the path optimality. Also, the computation time of the proposed method is comparable with those of its peers.
url https://doi.org/10.1177/1729881420936154
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AT kuixiang multirobotpathplanningusinganimprovedselfadaptiveparticleswarmoptimization
AT muyepang multirobotpathplanningusinganimprovedselfadaptiveparticleswarmoptimization
AT zhuzhanxia multirobotpathplanningusinganimprovedselfadaptiveparticleswarmoptimization
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