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Multi-objective Particle Swarm Optimization for Robot Path Planning in Environment with Danger Sources

Dunwei Gong, Jianhua Zhang

Year
2011
Citations
81

Abstract

Aiming at robot path planning in an environment with danger sources, a global path planning approach based on multi-objective particle swarm optimization is presented in this paper. First, based on the environment map of a mobile robot described with a series of horizontal and vertical lines, an optimization model of the above problem including two indices, i.e. the length and the danger degree of a path, is established. Then, an improved multi-objective particle swarm optimization algorithm of solving the above model is developed. In this algorithm, a self-adaptive mutation operation based on the degree of a path blocked by obstacles is designed to improve the feasibility of a new path. To improve the performance of our algorithm in exploration, another archive is adopted to save infeasible solutions besides a feasible solutions archive, and the global leader of particles is selected from either the feasible solutions archive or the infeasible one. Moreover, a constrained Pareto domination based on the degree of a path blocked by obstacles is employed to update local leaders of a particle and the two archives. Finally, simulation results confirm the effectiveness of our algorithm.

Keywords

Particle swarm optimizationComputer scienceMotion planningPath (computing)RobotParticle (ecology)Mathematical optimizationArtificial intelligenceAlgorithmMathematics

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