A multi-start opposition-based particle swarm optimization algorithm with adaptive velocity for bound constrained global optimization

In this paper we present a multi-start particle swarm optimization algorithm for the global optimization of a function subject to bound constraints. The procedure consists of three main steps. In the initialization phase, an opposition learning strategy is performed to improve the search efficiency....

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Bibliographic Details
Published inJournal of global optimization Vol. 55; no. 1; pp. 165 - 188
Main Author Kaucic, Massimiliano
Format Journal Article
LanguageEnglish
Published Boston Springer US 01.01.2013
Springer
Springer Nature B.V
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Summary:In this paper we present a multi-start particle swarm optimization algorithm for the global optimization of a function subject to bound constraints. The procedure consists of three main steps. In the initialization phase, an opposition learning strategy is performed to improve the search efficiency. Then a variant of the adaptive velocity based on the differential operator enhances the optimization ability of the particles. Finally, a re-initialization strategy based on two diversity measures for the swarm is act in order to avoid premature convergence and stagnation. The strategy uses the super-opposition paradigm to re-initialize particles in the swarm. The algorithm has been evaluated on a set of 100 global optimization test problems. Comparisons with other global optimization methods show the robustness and effectiveness of the proposed algorithm.
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ISSN:0925-5001
1573-2916
DOI:10.1007/s10898-012-9913-4