Opposition-based learning multi-verse optimizer with disruption operator for optimization problems

被引:0
作者
Mohammad Shehab
Laith Abualigah
机构
[1] Amman Arab University,Faculty of Computer Sciences and Informatics
[2] Al-Ahliyya Amman University,Hourani Center for Applied Scientific Research
[3] Middle East University,Faculty of Information Technology
来源
Soft Computing | 2022年 / 26卷
关键词
Multi-verse optimizer; Opposition-based learning; Disruption operator; CEC2015 and CEC2017 benchmark functions problems; CEC2011 real-world problems;
D O I
暂无
中图分类号
学科分类号
摘要
Multi-verse optimizer (MVO) algorithm is one of the recent metaheuristic algorithms used to solve various problems in different fields. However, MVO suffers from a lack of diversity which may trapping of local minima, and premature convergence. This paper introduces two steps of improving the basic MVO algorithm. The first step is using opposition-based learning (OBL) in MVO, called OMVO. The OBL aids to speed up the searching and improving the learning technique for selecting a better generation of candidate solutions of basic MVO. The second stage, called OMVOD, combines the disturbance operator (DO) and OMVO to improve the consistency of the chosen solution by providing a chance to solve the given problem with a high fitness value and increase diversity. To test the performance of the proposed models, fifteen CEC 2015 benchmark functions problems, thirty CEC 2017 benchmark functions problems and seven CEC 2011 real-world problems were used in both phases of the enhancement. The second step, known as OMVOD, incorporates the disruption operator (DO) and OMVO to improve the accuracy of the chosen solution by giving a chance to solve the given problem with a high fitness value while also increasing variety. Fifteen CEC 2015 benchmark functions problems, thirty CEC 2017 benchmark functions problems and seven CEC 2011 real-world problems were used in both phases of the upgrade to assess the accuracy of the proposed models.
引用
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页码:11669 / 11693
页数:24
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