Constrained multiobjective biogeography optimization algorithm

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Authors

Mo, Hongwei
Xu, Zhidan
Xu, Lifang
Wu, Zhou
Ma, Haiping

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Publisher

Hindawi Publishing Corporation

Abstract

Multiobjective optimization involves minimizing or maximizing multiple objective functions subject to a set of constraints. In this study, a novel constrained multiobjective biogeography optimization algorithm (CMBOA) is proposed. It is the first biogeography optimization algorithm for constrained multiobjective optimization. In CMBOA, a disturbance migration operator is designed to generate diverse feasible individuals in order to promote the diversity of individuals on Pareto front. Infeasible individuals nearby feasible region are evolved to feasibility by recombining with their nearest nondominated feasible individuals. The convergence of CMBOA is proved by using probability theory. The performance of CMBOA is evaluated on a set of 6 benchmark problems and experimental results show that the CMBOA performs better than or similar to the classical NSGA-II and IS-MOEA.

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Keywords

Constraints, Constrained multiobjective biogeography optimization algorithm (CMBOA), Biogeography optimization algorithm, Constrained multiobjective optimization problems (CMOPs), Evolutionary algorithms (EAs)

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Citation

Mo, H, Xu, Z, Xu, L, Wu, Z & Ma, H 2014, 'Constrained multiobjective biogeography optimization algorithm', The Scientific World Journal, vol. 2014, art. 232714, pp. 1-12.