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题名

MSAO: A multi-strategy boosted snow ablation optimizer for global optimization and real-world engineering applications

作者
通讯作者Xiao,Yaning
发表日期
2024-08-01
DOI
发表期刊
ISSN
1474-0346
卷号61
摘要
Snow Ablation Optimizer (SAO) is a cutting-edge nature-inspired meta-heuristic technique that mimics the sublimation and melting processes of snow in its quest for optimal solution to complex problems. While SAO has demonstrated competitive performance in comparison to classical algorithms in early research, it still exhibits certain limitations including low convergence accuracy, a lack of population diversity, and premature convergence, particularly when addressing high-dimensional intricate challenges. To mitigate the above-mentioned adverse factors, this paper introduces a novel variant of SAO with featuring four enhancement strategies collectively referred as MSAO. Firstly, the good point set initialization strategy is employed to generate a uniformly distributed high-quality population, which facilitates the algorithm to enter the appropriate search domain rapidly. Secondly, the greedy selection method is adopted to reserve better candidate solutions for the next iteration, thus striking a robust exploration–exploitation balance. Then, the Differential Evolution (DE) scheme is introduced to expand the search range and enhance the exploitation capability of the algorithm for higher convergence accuracy. Finally, to reduce the risk of falling into local optima, a Dynamic Lens Opposition-Based Learning (DLOBL) strategy is developed to operate on the current optimal solution dimension by dimension. With the blessing of these strategies, the optimization performance of MSAO is comprehensively improved. To comprehensively evaluate the optimization performance of MSAO, a series of numerical optimization experiments are conducted using the IEEE CEC2017 & CEC2022 test sets. In the IEEE CEC2017 experiments, the optimal crossover probability CR=0.8 is determined and the effectiveness of each improvement strategy is ablatively verified. MSAO is compared with the basic SAO, various state-of-the-art optimizers, and CEC2017 champion algorithms in terms of solution accuracy, convergence speed, robustness, and scalability. In the IEEE CEC2022 experiments, MSAO is compared with some recently developed improved algorithms to further validate its superiority. The results demonstrate that MSAO has excellent overall optimization performance, with the smallest Friedman mean rankings of 1.66 and 1.25 on both test suites, respectively. In the majority of test cases, MSAO can provide more accurate and reliable solutions than other competitors. Furthermore, six realistic constrained engineering design challenges and one photovoltaic model parameter estimation issue are employed to demonstrate the practicality of MSAO. Our findings suggest that MSAO has excellent optimization capacity and broad application potential.
关键词
相关链接[Scopus记录]
收录类别
SCI ; EI
语种
英语
学校署名
第一 ; 通讯
EI入藏号
20241215770046
EI主题词
Ablation ; Biomimetics ; Evolutionary algorithms ; Geometry ; Heuristic methods ; Iterative methods ; Optimal systems ; Snow
EI分类号
Precipitation:443.3 ; Biotechnology:461.8 ; Biology:461.9 ; Heat Transfer:641.2 ; Mathematics:921 ; Optimization Techniques:921.5 ; Numerical Methods:921.6 ; Systems Science:961
ESI学科分类
ENGINEERING
Scopus记录号
2-s2.0-85187798066
来源库
Scopus
引用统计
被引频次[WOS]:9
成果类型期刊论文
条目标识符http://sustech.caswiz.com/handle/2SGJ60CL/741050
专题工学院_系统设计与智能制造学院
作者单位
1.Center for Control Science and Technology,Southern University of Science and Technology,Shenzhen,518055,China
2.College of Mechanical and Electrical Engineering,Northeast Forestry University,Harbin,150040,China
3.Department of Computer and Information Science,Linköping University,Linköping,58183,Sweden
4.Faculty of Science,Fayoum University,Faiyum,63514,Egypt
5.Applied Science Research Center,Applied Science Private University,Amman,11931,Jordan
6.Faculty of Engineering,Helwan University,Egypt
7.MEU Research Unit,Middle East University,Amman,11831,Jordan
第一作者单位系统设计与智能制造学院
通讯作者单位系统设计与智能制造学院
第一作者的第一单位系统设计与智能制造学院
推荐引用方式
GB/T 7714
Xiao,Yaning,Cui,Hao,Hussien,Abdelazim G.,et al. MSAO: A multi-strategy boosted snow ablation optimizer for global optimization and real-world engineering applications[J]. Advanced Engineering Informatics,2024,61.
APA
Xiao,Yaning,Cui,Hao,Hussien,Abdelazim G.,&Hashim,Fatma A..(2024).MSAO: A multi-strategy boosted snow ablation optimizer for global optimization and real-world engineering applications.Advanced Engineering Informatics,61.
MLA
Xiao,Yaning,et al."MSAO: A multi-strategy boosted snow ablation optimizer for global optimization and real-world engineering applications".Advanced Engineering Informatics 61(2024).
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