Bolufé-Röhler, Antonio, et al. “Multi-Objective Optimization Approach Based on Minimum Population Search Algorithm”. GECONTEC: Revista Internacional de Gestión del Conocimiento Y la Tecnología, vol. 7, no. 2, 2019, pp. 1-19, https://scholar2.islandarchives.ca/islandora/object/ir%3A24790.

Genre

  • Journal Article
Contributors
Author: Bolufé-Röhler, Antonio
Author: Tamayo-Vera, Dania
Author: Reyes-Fernández-de-Bulnes, Darian
Date Issued
2019
Abstract

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 results.

Language

  • English
Page range
1-19
Host Title
GECONTEC: Revista Internacional de Gestión del Conocimiento y la Tecnología
Volume
7
Issue
2
ISSN
2255-5684