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Galactic Swarm Optimization: A new global optimization metaheuristic inspired by galactic motion
Affiliation:1. University of El-Oued, Department of Electrical Engineering, El-Oued, Algeria;2. Faculty of Energy Systems and Nuclear Science, University of Ontario Institute of Technology, UOIT, ON, Canada;3. Department of Electrical Engineering, University of Biskra, Biskra, Algeria;1. Malaviya National Institute of Technology, Jaipur, India;2. National Institute of Technology, Surathkal, India;3. Indian Institute of Technology Delhi, New Delhi, India;1. School of Medical Information and Engineering, Guangdong Pharmaceutical University, Guangzhou 510006, PR China;2. School of Computer Science & Engineering, South China University of Technology, Guangzhou 510006, PR China;3. Department of Mathematics & Statistics, Georgia State University, Atlanta, USA;4. Basic Medical College, Guangzhou University of Chinese Medicine, Guangzhou 510006, PR China
Abstract:This paper proposes a new global optimization metaheuristic called Galactic Swarm Optimization (GSO) inspired by the motion of stars, galaxies and superclusters of galaxies under the influence of gravity. GSO employs multiple cycles of exploration and exploitation phases to strike an optimal trade-off between exploration of new solutions and exploitation of existing solutions. In the explorative phase different subpopulations independently explore the search space and in the exploitative phase the best solutions of different subpopulations are considered as a superswarm and moved towards the best solutions found by the superswarm. In this paper subpopulations as well as the superswarm are updated using the PSO algorithm. However, the GSO approach is quite general and any population based optimization algorithm can be used instead of the PSO algorithm. Statistical test results indicate that the GSO algorithm proposed in this paper significantly outperforms 4 state-of-the-art PSO algorithms and 4 multiswarm PSO algorithms on an overwhelming majority of 15 benchmark optimization problems over 50 independent trials and up to 50 dimensions. Extensive simulation results show that the GSO algorithm proposed in this paper converges faster to a significantly more accurate solution on a wide variety of high dimensional and multimodal benchmark optimization problems.
Keywords:Global optimization  Galactic Swarm Optimization  Metaheuristics  Benchmark functions  Stochastic optimization
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