A multiobjective immune algorithm based on a multiple-affinity model |
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Authors: | Zhi-Hua Hu |
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Affiliation: | Logistics Research Center, Shanghai Maritime University, Shanghai 200135, China |
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Abstract: | This paper presents a new multiobjective immune algorithm based on a multiple-affinity model inspired by immune system (MAM-MOIA). The multiple-affinity model builds the relationship model among main entities and concepts in multiobjective problems (MOPs) and multiobjective evolutionary algorithms (MOEAs), including feasible solution, variable space, objective space, Pareto-optimal set, ranking and crowding distance. In the model, immune operators including clonal proliferation, hypermutation and immune suppression are designed to proliferate superior antibodies and suppress the inferiors. MAM-MOIA is compared with NSGA-II, SPEA2 and NNIA in solving the ZDT and DTLZ standard test problems. The experimental study based on three performance metrics including coverage of two sets, convergence and spacing proves that MAM-MOIA is effective for solving MOPs. |
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Keywords: | Multiobjective optimization Multiobjective immune algorithm Multiobjective evolutionary algorithm Crowding distance Multiple-affinity model |
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