加强基于King’s Club分布函数的优化算法的性能逼近优化

IF 0.3 Q4 COMPUTER SCIENCE, THEORY & METHODS Computer Science-AGH Pub Date : 2021-09-16 DOI:10.53070/bbd.990245
Mehmet Akpamukçu, Abdullah Ateş
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引用次数: 1

摘要

在本研究中,采用优化到优化的方法对分布函数的参数进行调整,以提高基于分布函数的帝王蝶优化算法(MBO)的性能。为此,研究了对随机算法流有很大影响的随机数生成过程,并确定了分布函数对这些过程的影响。然后,确定了参数选择在分布函数运算中的重要性。已经看到,通过适当的参数选择,分布函数将更加有效。在这一点上,可以在主目标算法中的随机数生成中使用的分布函数试图通过上部辅助优化算法以适当的参数来确定。总之;通过从优化到优化的方法,试图提高目标算法的性能,并与文献中最常用的基准函数的测试结果进行了比较,给出了具体的结果。
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Optimizasyonun Optimizasyonu Yaklaşımıyla Dağılım Fonksiyonu Tabanlı Kral Kelebeği Optimizasyon Algoritmasının Performansının Artırılması
In this study, the parameters of the distribution functions were adjusted with the optimization to optimization approach to improve the performance of the distribution function-based monarch butterfly optimization algorithm (MBO). For this, the random number generation processes, which greatly affect the flow of stochastic algorithms, were examined and the effect of distribution functions on these processes was determined. Then, the importance of parameter selection in the operation of distribution functions has been determined. It has been seen that the distribution function will be more effective with appropriate parameter selections. At this point, the distribution functions that can be used in the random number generation in the main target algorithm were tried to be determined with appropriate parameters with an upper auxiliary optimization algorithm. In conclusion; with the approach of optimization to optimization, the performance of the target algorithm has been tried to be increased and concrete results are presented in comparison with the tests made on the most used benchmark functions in the literature.
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来源期刊
Computer Science-AGH
Computer Science-AGH COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.40
自引率
0.00%
发文量
18
审稿时长
20 weeks
期刊最新文献
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