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Path Planning of Mobile Robots Based on a Multi-Population Migration Genetic Algorithm

Kun Hao, Jiale Zhao, Kaicheng Yu, Cheng Li, Chuanqi Wang

2020Sensors74 citationsDOIOpen Access PDF

Abstract

In the field of robot path planning, aiming at the problems of the standard genetic algorithm, such as premature maturity, low convergence path quality, poor population diversity, and difficulty in breaking the local optimal solution, this paper proposes a multi-population migration genetic algorithm. The multi-population migration genetic algorithm randomly divides a large population into several small with an identical population number. The migration mechanism among the populations is used to replace the screening mechanism of the selection operator. Operations such as the crossover operator and the mutation operator also are improved. Simulation results show that the multi-population migration genetic algorithm (MPMGA) is not only suitable for simulation maps of various scales and various obstacle distributions, but also has superior performance and effectively solves the problems of the standard genetic algorithm.

Topics & Concepts

CrossoverGenetic algorithmPopulationPremature convergenceComputer scienceGenetic operatorMathematical optimizationPath (computing)Operator (biology)MutationCultural algorithmMotion planningConvergence (economics)Population-based incremental learningObstacleRobotAlgorithmArtificial intelligenceMathematicsMachine learningGeographyBiologyComputer networkEconomic growthArchaeologySociologyEconomicsGeneTranscription factorRepressorBiochemistryDemographyRobotic Path Planning AlgorithmsRobotics and Sensor-Based LocalizationControl and Dynamics of Mobile Robots
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