Evolutionary algorithms with dynamic population size and local exploration for multiobjective optimization

Evolutionary algorithms have been recognized to be well suited for multiobjective optimization. These methods, however, need to "guess" for an optimal constant population size in order to discover the usually sophisticated tradeoff surface. This paper addresses the issue by presenting a no...

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Veröffentlicht in:IEEE transactions on evolutionary computation 2001-12, Vol.5 (6), p.565-588
Hauptverfasser: Tan, K.C., Lee, T.H., Khor, E.F.
Format: Artikel
Sprache:eng
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Zusammenfassung:Evolutionary algorithms have been recognized to be well suited for multiobjective optimization. These methods, however, need to "guess" for an optimal constant population size in order to discover the usually sophisticated tradeoff surface. This paper addresses the issue by presenting a novel incrementing multiobjective evolutionary algorithm (IMOEA) with dynamic population size that is computed adaptively according to the online discovered tradeoff surface and its desired population distribution density. It incorporates the method of fuzzy boundary local perturbation with interactive local fine tuning for broader neighborhood exploration. This achieves better convergence as well as discovering any gaps or missing tradeoff regions at each generation. Other advanced features include a proposed preserved strategy to ensure better stability and diversity of the Pareto front and a convergence representation based on the concept of online population domination to provide useful information. Extensive simulations are performed on two benchmark and one practical engineering design problems.
ISSN:1089-778X
1941-0026
DOI:10.1109/4235.974840