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hybrid psos algorithm for continuous optimization
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نویسنده
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jafarian a. ,farnad b.
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منبع
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international journal of industrial mathematics - 2019 - دوره : 11 - شماره : 2 - صفحه:143 -156
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چکیده
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Particle swarm optimization (pso) is one of the practical metaheuristic algorithms which is applied for numerical global optimization. it benets from the nature inspired swarm intelligence, but it suers from a local optima problem. recently, another nature inspired metaheuristic called symbiotic organisms search (sos) is proposed, which doesn't have any parameters to set at start. in this paper, the pso and sos algorithms are combined to produce a new hybrid metaheuristic algorithm for the global optimization problem, called psos. in this algorithm, a minimum number of the parameters are applied which prevent the trapping in local solutions and increase the success rate, and also the sos interaction phases are modied. the proposed algorithm consists of the pso and the sos phases. the pso phase gets the experiences for each appropriate solution and checks the neighbors for a better solution, and the sos phase benets from the gained experiences and performs symbiotic interaction update phases. extensive experimental results showed that the psos outperforms both the pso and sos algorithms in terms of the convergence and success rates.
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کلیدواژه
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pso ,sos ,meta-heuristic optimization ,hybrid algorithm
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آدرس
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islamic azad university, urmia branch, young researchers and elite club, iran, islamic azad university, urmia branch, department of computer engineering, iran
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Authors
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