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a hybrid meta-heuristic algorithm for high performance computing
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نویسنده
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mahdipour elham ,ghasemzadeh mohammad
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منبع
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مهندسي برق دانشگاه تبريز - 2021 - دوره : 51 - شماره : 1 - صفحه:97 -107
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چکیده
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Regarding optimization problems, there is a high demand for highperformance algorithms that can process the problem solutionspace efficiently and find the best ones quite quickly. an approach to get this target is based on using swarm intelligence algorithms; these algorithms apply a population of simple agents to communicate locally with one another and with their surroundings. in this paper, we propose a novel approach based on combining the characteristics of the two algorithms: cat swarm optimization (cso) and the shuffled frog leaping algorithm (sfla). the experimental results show the convergence ratio of our hybrid sflacso algorithm is seven times higher than that of cso and five times higher than the convergence ratio of the standard sfla algorithm. the obtained results also revealed that the hybrid method speeds up the convergence significantly, and reduces the error rate. we compared the proposed hybrid algorithm against the famous relevant algorithms pso, aco, abc, ga, and sa; the results are valuable and promising.
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کلیدواژه
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cat swarm optimization ,convergence rate ,shuffled frog leaping algorithm ,swarm intelligence
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آدرس
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yazd university, computer engineering department, iran, yazd university, computer engineering department, iran
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پست الکترونیکی
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m.ghasemzadeh@yazd.ac.ir
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A Hybrid Meta-Heuristic Algorithm for High Performance Computing
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Authors
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Mahdipour E. ,Ghasemzadeh M.
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Abstract
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Regarding optimization problems, there is a high demand for highperformance algorithms that can process the problem solutionspace efficiently and find the best ones quite quickly. An approach to get this target is based on using swarm intelligence algorithms; these algorithms apply a population of simple agents to communicate locally with one another and with their surroundings. In this paper, we propose a novel approach based on combining the characteristics of the two algorithms: Cat Swarm Optimization (CSO) and the Shuffled Frog Leaping Algorithm (SFLA). The experimental results show the convergence ratio of our hybrid SFLACSO algorithm is seven times higher than that of CSO and five times higher than the convergence ratio of the standard SFLA algorithm. The obtained results also revealed that the hybrid method speeds up the convergence significantly, and reduces the error rate. We compared the proposed hybrid algorithm against the famous relevant algorithms PSO, ACO, ABC, GA, and SA; the results are valuable and promising.
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Keywords
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Cat swarm optimization ,Convergence rate ,Shuffled frog leaping algorithm ,Swarm Intelligence
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