医学文献 >>
  • 检索发现
  • 增强检索
知识库 >>
  • 临床诊疗知识库
  • 中医药知识库
评价分析 >>
  • 机构
  • 作者
默认
×
热搜词:
换一批
论文 期刊
取消
高级检索

检索历史 清除

Hybrid Modified Chimp Optimization Algorithm and Reinforcement Learning for Global Numeric Optimization

摘要Chimp Optimization Algorithm(ChOA)is one of the most efficient recent optimization algorithms,which proved its abil-ity to deal with different problems in various do-mains.However,ChOA suffers from the weakness of the local search technique which leads to a loss of diversity,getting stuck in a local minimum,and procuring premature convergence.In response to these defects,this paper proposes an improved ChOA algorithm based on using Opposition-based learning(OBL)to enhance the choice of better solutions,written as OChOA.Then,utilizing Reinforcement Learning(RL)to improve the local research technique of OChOA,called RLOChOA.This way effectively avoids the algorithm falling into local optimum.The performance of the proposed RLOChOA algorithm is evaluated using the Friedman rank test on a set of CEC 2015 and CEC 2017 benchmark functions problems and a set of CEC 2011 real-world problems.Numerical results and statistical experiments show that RLOChOA provides better solution quality,convergence accuracy and stability compared with other state-of-the-art algorithms.

更多
广告
作者 Mohammad Sh.Daoud [1] Mohammad Shehab [2] Laith Abualigah [3] Cuong-Le Thanh [3] 学术成果认领
作者单位 College of Engineering,Al Ain University,112612 Abu Dhabi,United Arab Emirates [1] College of Computer Sciences and Informatics,Amman Arab University,Amman 11953,Jordan [2] Center for Engineering Application Technology Solutions,Ho Chi Minh City Open University,Ho Chi Minh City 700000,Vietnam [3]
栏目名称
DOI 10.1007/s42235-023-00394-2
发布时间 2023-12-22(万方平台首次上网日期,不代表论文的发表时间)
提交
  • 浏览1
  • 下载0
仿生工程学报(英文版)

仿生工程学报(英文版)

2023年20卷6期

2896-2915页

SCIMEDLINEISTICCSCD

加载中!

相似文献

  • 中文期刊
  • 外文期刊
  • 学位论文
  • 会议论文

加载中!

加载中!

加载中!

加载中!

法律状态公告日 法律状态 法律状态信息

特别提示:本网站仅提供医学学术资源服务,不销售任何药品和器械,有关药品和器械的销售信息,请查阅其他网站。

  • 客服热线:4000-115-888 转3 (周一至周五:8:00至17:00)

  • |
  • 客服邮箱:yiyao@wanfangdata.com.cn

  • 违法和不良信息举报电话:4000-115-888,举报邮箱:problem@wanfangdata.com.cn,举报专区

官方微信
万方医学小程序
new医文AI 翻译 充值 订阅 收藏 移动端

官方微信

万方医学小程序

使用
帮助
Alternate Text
调查问卷