Publication: EMoSOA: A new evolutionary multi-objective seagull optimization algorithm for global optimization
Date
Authors
Yıldız, Ali Rıza
Authors
Dhiman, G.
Singh, KK.
Slowik, A.
Chang, V.
Kaur, A.
Garg, M.
Advisor
Language
Type
Publisher:
Springer
Journal Title
Journal ISSN
Volume Title
Abstract
This study introduces the evolutionary multi-objective version of seagull optimization algorithm (SOA), entitled Evolutionary Multi-objective Seagull Optimization Algorithm (EMoSOA). In this algorithm, a dynamic archive concept, grid mechanism, leader selection, and genetic operators are employed with the capability to cache the solutions from the non-dominatedPareto. The roulette-wheel method is employed to find the appropriate archived solutions. The proposed algorithm is tested and compared with state-of-the-art metaheuristic algorithms over twenty-four standard benchmark test functions. Four real-world engineering design problems are validated using proposedEMoSOAalgorithm to determine its adequacy. The findings of empirical research indicate that the proposed algorithm is better than other algorithms. It also takes into account those optimal solutions from theParetowhich shows high convergence.
Description
Source:
Keywords:
Keywords
Seagull optimization algorithm, Multi-objective optimization, Evolutionary, Pareto, Engineering design problems, Convergence, Diversity, Spotted hyena optimizer, Computational intelligence, Design optimization, Placement, Model, Cost, Benchmarking, Global optimization, Multiobjective optimization, Empirical research, Engineering design problems, Evolutionary multi-objectives, Genetic operators, Meta heuristic algorithm, Optimal solutions, Optimization algorithms, State of the art, Computer science
Citation
Dhiman, G. vd. (2020). "EMoSOA: A new evolutionary multi-objective seagull optimization algorithm for global optimization." International Journal of Machine Learning and Cybernetics, 12(2), 571-596.