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Particle swarm optimization algorithm for the optimization of rescue task allocation with uncertain time constraints

Na Geng, Zhiting Chen, Quang Anh Nguyen, Dunwei Gong

2021Complex & Intelligent Systems80 citationsDOIOpen Access PDF

Abstract

Abstract This paper focuses on the problem of robot rescue task allocation, in which multiple robots and a global optimal algorithm are employed to plan the rescue task allocation. Accordingly, a modified particle swarm optimization (PSO) algorithm, referred to as task allocation PSO (TAPSO), is proposed. Candidate assignment solutions are represented as particles and evolved using an evolutionary process. The proposed TAPSO method is characterized by a flexible assignment decoding scheme to avoid the generation of unfeasible assignments. The maximum number of successful tasks (survivors) is considered as the fitness evaluation criterion under a scenario where the survivors’ survival time is uncertain. To improve the solution, a global best solution update strategy, which updates the global best solution depends on different phases so as to balance the exploration and exploitation, is proposed. TAPSO is tested on different scenarios and compared with other counterpart algorithms to verify its efficiency.

Topics & Concepts

Particle swarm optimizationTask (project management)Mathematical optimizationComputational intelligenceComputer scienceSwarm intelligenceScheme (mathematics)Process (computing)Multi-swarm optimizationRobotAlgorithmArtificial intelligenceMathematicsEngineeringOperating systemSystems engineeringMathematical analysisRobotic Path Planning AlgorithmsOptimization and Search ProblemsDistributed Control Multi-Agent Systems
Particle swarm optimization algorithm for the optimization of rescue task allocation with uncertain time constraints | Litcius