Multi-objective optimization approach based on Minimum Population Search algorithm

Autores/as

  • Darian Reyes Fernández de Bulnes Instituto Tecnológico de Tijuana, Mexico
  • Antonio Bolufé Röhler University of Prince Edward Island, Canada
  • Dania Tamayo Vera Thinking Big Inc., Canada

Palabras clave:

Evolutionary Algorithm, Minimum Population Search, Thresheld Convergence, Multi-objective Optimization

Resumen

Minimum Population Search is a recently developed metaheuristic for optimization of mono- objective continuous problems, which has proven to be a very effective optimizing large scale and multi-modal problems. One of its key characteristic is the ability to perform an efficient exploration of large dimensional spaces. We assume that this feature may prove useful when optimizing multi objective problems, thus this paper presents a study of how it can be adapted to a multi-objective approach. We performed experiments and comparisons with five multi-objective selection processes and we test the effectiveness of Thresheld Convergence on this class of problems. Following this analysis we suggest a Multi-objective variant of the algorithm. The proposed algorithm is compared with multi-objective evolutionary algorithms IBEA, NSGA2 and SPEA2 on several well-known test problems. Subsequently, we present two hybrid approaches with the IBEA and NSGA-II, these hybrids allow to further improve the achieved result.

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Publicado

2019-11-10

Cómo citar

Reyes Fernández de Bulnes , D., Bolufé Röhler, A., & Tamayo Vera, D. (2019). Multi-objective optimization approach based on Minimum Population Search algorithm. GECONTEC: Revista Internacional De Gestión Del Conocimiento Y La Tecnología, 7(2), 1–19. Recuperado a partir de https://gecontec.org/index.php/unesco/article/view/134

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