Literature DB >> 27588254

Performance impact of mutation operators of a subpopulation-based genetic algorithm for multi-robot task allocation problems.

Chun Liu1, Andreas Kroll2.   

Abstract

Multi-robot task allocation determines the task sequence and distribution for a group of robots in multi-robot systems, which is one of constrained combinatorial optimization problems and more complex in case of cooperative tasks because they introduce additional spatial and temporal constraints. To solve multi-robot task allocation problems with cooperative tasks efficiently, a subpopulation-based genetic algorithm, a crossover-free genetic algorithm employing mutation operators and elitism selection in each subpopulation, is developed in this paper. Moreover, the impact of mutation operators (swap, insertion, inversion, displacement, and their various combinations) is analyzed when solving several industrial plant inspection problems. The experimental results show that: (1) the proposed genetic algorithm can obtain better solutions than the tested binary tournament genetic algorithm with partially mapped crossover; (2) inversion mutation performs better than other tested mutation operators when solving problems without cooperative tasks, and the swap-inversion combination performs better than other tested mutation operators/combinations when solving problems with cooperative tasks. As it is difficult to produce all desired effects with a single mutation operator, using multiple mutation operators (including both inversion and swap) is suggested when solving similar combinatorial optimization problems.

Entities:  

Keywords:  Constrained combinatorial optimization; Genetic algorithms; Multi-robot task allocation; Mutation operators; Subpopulation

Year:  2016        PMID: 27588254      PMCID: PMC4990531          DOI: 10.1186/s40064-016-3027-2

Source DB:  PubMed          Journal:  Springerplus        ISSN: 2193-1801


  2 in total

1.  Self-adaptation of mutation operator and probability for permutation representations in genetic algorithms.

Authors:  Martin Serpell; James E Smith
Journal:  Evol Comput       Date:  2010       Impact factor: 3.277

2.  Crossover versus mutation: a comparative analysis of the evolutionary strategy of genetic algorithms applied to combinatorial optimization problems.

Authors:  E Osaba; R Carballedo; F Diaz; E Onieva; I de la Iglesia; A Perallos
Journal:  ScientificWorldJournal       Date:  2014-08-04
  2 in total

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