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Wild Gibbon Optimization Algorithm
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作者 Jia Guo JinWang +5 位作者 Ke Yan Qiankun Zuo Ruiheng Li Zhou He Dong Wang yuji sato 《Computers, Materials & Continua》 SCIE EI 2024年第7期1203-1233,共31页
Complex optimization problems hold broad significance across numerous fields and applications.However,as the dimensionality of such problems increases,issues like the curse of dimensionality and local optima trapping ... Complex optimization problems hold broad significance across numerous fields and applications.However,as the dimensionality of such problems increases,issues like the curse of dimensionality and local optima trapping also arise.To address these challenges,this paper proposes a novel Wild Gibbon Optimization Algorithm(WGOA)based on an analysis of wild gibbon population behavior.WGOAcomprises two strategies:community search and community competition.The community search strategy facilitates information exchange between two gibbon families,generating multiple candidate solutions to enhance algorithm diversity.Meanwhile,the community competition strategy reselects leaders for the population after each iteration,thus enhancing algorithm precision.To assess the algorithm’s performance,CEC2017 and CEC2022 are chosen as test functions.In the CEC2017 test suite,WGOA secures first place in 10 functions.In the CEC2022 benchmark functions,WGOA obtained the first rank in 5 functions.The ultimate experimental findings demonstrate that theWildGibbonOptimization Algorithm outperforms others in tested functions.This underscores the strong robustness and stability of the gibbonalgorithm in tackling complex single-objective optimization problems. 展开更多
关键词 Complex optimization wild gibbon optimization algorithm community search community competition
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Parallelization and sustainability of distributed genetic algorithms on many-core processors
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作者 yuji sato Mikiko sato 《International Journal of Intelligent Computing and Cybernetics》 EI 2014年第1期2-23,共22页
Purpose–The purpose of this paper is to propose a fault-tolerant technology for increasing the durability of application programs when evolutionary computation is performed by fast parallel processing on many-core pr... Purpose–The purpose of this paper is to propose a fault-tolerant technology for increasing the durability of application programs when evolutionary computation is performed by fast parallel processing on many-core processors such as graphics processing units(GPUs)and multi-core processors(MCPs).Design/methodology/approach–For distributed genetic algorithm(GA)models,the paper proposes a method where an island’s ID number is added to the header of data transferred by this island for use in fault detection.Findings–The paper has shown that the processing time of the proposed idea is practically negligible in applications and also shown that an optimal solution can be obtained even with a single stuck-at fault or a transient fault,and that increasing the number of parallel threads makes the system less susceptible to faults.Originality/value–The study described in this paper is a new approach to increase the sustainability of application program using distributed GA on GPUs and MCPs. 展开更多
关键词 Evolutionary computation Genetic algorithms Fault identification Many-core processors PARALLELIZATION
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