A convergence-guaranteed particle swarm optimization method for mobile robot global path planning

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51 Scopus citations

Abstract

Purpose - Aiming at obtaining a high-quality global path for a mobile robot which works in complex environments, a modified particle swarm optimization (PSO) algorithm, named random-disturbance self-adaptive particle swarm optimization (RDSAPSO), is proposed in this paper. Design/methodology/approach - A perturbed global updating mechanism is introduced to the global best position to avoid stagnation in RDSAPSO. Moreover, a new self-adaptive strategy is proposed to fine-tune the three control parameters in RDSAPSO to dynamically adjust the exploration and exploitation capabilities of RDSAPSO. Because the convergence of PSO is paramount and influences the quality of the generated path, this paper also analytically investigates the convergence of RDSAPSO and provides a convergence-guaranteed parameter selection principle for RDSAPSO. Finally, a RDSAPSO-based global path planning (GPP) method is developed, in which the feasibility-based rule is applied to handle the constraint of the problem. Findings - In an attempt to validate the proposed method, it is compared against six state-of-the-art evolutionary methods under three different numerical simulations. The simulation results confirm that the proposed method is highly competitive in terms of the path optimality. Moreover, the computation time of the proposed method is comparable with those of the other compared methods. Originality/value - Therefore, the proposed method can be considered as a vital alternative in the field of GPP.

Original languageEnglish
Pages (from-to)114-129
Number of pages16
JournalAssembly Automation
Volume37
Issue number1
DOIs
StatePublished - 2017

Keywords

  • Convergence of particle swarm optimization
  • Feasibility-based rule
  • Global path planning
  • Mobile robot
  • Particle swarm optimization

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