Reinforcement learning driven moth-flame optimisation algorithm for solving numerical optimisation problems

IF 2.5 Q2 ENGINEERING, INDUSTRIAL IET Collaborative Intelligent Manufacturing Pub Date : 2024-05-28 DOI:10.1049/cim2.12101
Fuqing Zhao, Yuqing Du, Qiaoyun Wang
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Abstract

Moth-flame optimisation (MFO) algorithm has received a lot of attention recently, due to its simple structure and easy coding. Researchers have demonstrated that the original MFO algorithm suffers from the drawbacks of insufficient variety, slow convergence speed, and readily sliding into local optimum, which are brought about by the imbalance between local and global search. Reinforcement learning driven moth-flame optimisation (RLMFO) algorithm is designed to correct these issues. Opposition learning is employed to broaden the variety of the initial population. Reinforcement learning is introduced to direct the local and global search process of the algorithm. A strategy pool containing Gaussian mutation (GM), Cauchy mutation (CM), Lévy mutation (LM), and elite strategy (ES) is created to hold strategies with various functions. RLMFO is verified on the benchmark test suite in CEC 2017. RLMFO performs better than cutting-edge algorithms according to experimental findings.

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用于解决数值优化问题的强化学习驱动蛾焰优化算法
飞蛾扑火优化算法(MFO)因其结构简单、易于编码等特点,近年来受到广泛关注。研究人员已经证明,原有的 MFO 算法存在着多样性不足、收敛速度慢、容易滑入局部最优等缺点,而这些缺点都是由局部搜索和全局搜索之间的不平衡造成的。强化学习驱动的蛾焰优化(RLMFO)算法就是为了纠正这些问题而设计的。对立学习被用来扩大初始种群的种类。引入强化学习来指导算法的局部和全局搜索过程。创建了一个包含高斯突变(GM)、考奇突变(CM)、莱维突变(LM)和精英策略(ES)的策略池,以容纳具有各种功能的策略。RLMFO 在 CEC 2017 的基准测试套件上进行了验证。实验结果表明,RLMFO 的性能优于前沿算法。
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来源期刊
IET Collaborative Intelligent Manufacturing
IET Collaborative Intelligent Manufacturing Engineering-Industrial and Manufacturing Engineering
CiteScore
9.10
自引率
2.40%
发文量
25
审稿时长
20 weeks
期刊介绍: IET Collaborative Intelligent Manufacturing is a Gold Open Access journal that focuses on the development of efficient and adaptive production and distribution systems. It aims to meet the ever-changing market demands by publishing original research on methodologies and techniques for the application of intelligence, data science, and emerging information and communication technologies in various aspects of manufacturing, such as design, modeling, simulation, planning, and optimization of products, processes, production, and assembly. The journal is indexed in COMPENDEX (Elsevier), Directory of Open Access Journals (DOAJ), Emerging Sources Citation Index (Clarivate Analytics), INSPEC (IET), SCOPUS (Elsevier) and Web of Science (Clarivate Analytics).
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