Weight Vector Definition for MOEA/D-Based Algorithms Using Augmented Covering Arrays for Many-Objective Optimization

Author:

Cobos Carlos1ORCID,Ordoñez Cristian2ORCID,Torres-Jimenez Jose3,Ordoñez Hugo1,Mendoza Martha1

Affiliation:

1. Information Technology Research Group (GTI), Universidad del Cauca, Popayán 190001, Colombia

2. Intelligent Management Systems, Fundación Universitaria de Popayán, Popayán 190001, Colombia

3. CINVESTAV Tamaulipas, Ciudad Victoria 87130, Mexico

Abstract

Many-objective optimization problems are today ever more common. The decomposition-based approach stands out among the evolutionary algorithms used for their solution, with MOEA/D and its variations playing significant roles. MOEA/D variations seek to improve weight vector definition, improve the dynamic adjustment of weight vectors during the evolution process, improve the evolutionary operators, use alternative decomposition methods, and hybridize with other metaheuristics, among others. Although an essential topic for the success of MOEA/D depends on how well the weight vectors are defined when decomposing the problem, not as much research has been performed on this topic as on the others. This paper proposes using a new mathematical object called augmented covering arrays (ACAs) that enable a better sampling of interactions of M objectives using the least number of weight vectors based on an interaction level (strength), defined a priori by the user. The proposed method obtains better results, measured in inverted generational distance, using small to medium populations (up to 850 solutions) of 30 to 100 objectives over DTLZ and WFG problems against the traditional weight vector definition used by MOEA/D-DE and results obtained by NSGA-III. Other MOEA/D variations can include the proposed approach and thus improve their results.

Funder

Universidad del Cauca

Fundación Universitaria de Popayán

CONAHCYT

Publisher

MDPI AG

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