2017
DOI: 10.1016/j.knosys.2017.07.018
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Optimization of problems with multiple objectives using the multi-verse optimization algorithm

Abstract: This work proposes the multi-objective version of the recently proposed Multi-Verse Optimizer (MVO) called Multi-Objective Multi-Verse Optimizer (MOMVO). The same concepts of MVO are used for converging towards the best solutions in a multi-objective search space. For maintaining and improving the coverage of Pareto optimal solutions obtained, however, an archive with an updating mechanism is employed. To test the performance of MOMVO, 80 case studies are employed including 49 unconstrained multi-objective tes… Show more

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Cited by 265 publications
(93 citation statements)
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“…Many recent studies have used this algorithm in order to solve various problems in different applications. Due to the wide range of applications and their needs, other variants of MVO such as Binary Multi-verse optimizer [41] and Multi-Objective Multi-Verse Optimizer (MOMVO) [42] have been presented. This metaheuristic algorithm inspired by famous theory called Multi-Verse theory.…”
Section: Multi-verse Optimizer (Mvo)mentioning
confidence: 99%
“…Many recent studies have used this algorithm in order to solve various problems in different applications. Due to the wide range of applications and their needs, other variants of MVO such as Binary Multi-verse optimizer [41] and Multi-Objective Multi-Verse Optimizer (MOMVO) [42] have been presented. This metaheuristic algorithm inspired by famous theory called Multi-Verse theory.…”
Section: Multi-verse Optimizer (Mvo)mentioning
confidence: 99%
“…The Multi-Verse Optimizer (MVO) [35] is a novel heuristic algorithm proposed by Professor Mirjalili in 2015, which divides the search process into two aspects: exploration and development. There is always high possibility of moving objects from a universe with high inflation rate to a universe with low inflation rate.…”
Section: The Proposed Imomvo Algorithmmentioning
confidence: 99%
“…There are many ways to solve multi-objective optimization problems. The most common approach is to transform the model into a single-objective problem [22][23][24]. In our model, the objective function TN has a completely different structure from that of TP and TS, making it difficult to find a combinatory solution.…”
Section: Hybrid Pso-ga Based On Directed Elite Searchmentioning
confidence: 99%