SHS: 蝎子狩猎战略群算法

Abhilash Singh, Seyed Muhammad Hossein Mousavi, Kumar Gaurav
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引用次数: 0

摘要

我们介绍了蝎子狩猎策略(SHS),这是一种基于种群、受自然启发的新型优化算法。该算法从蝎子的狩猎策略中汲取灵感,蝎子利用阿尔法和贝塔振动算子识别、定位和捕获猎物。这些算子控制着 SHS 算法的开发和探索能力。为了制定优化方法,我们对这些动态事件和行为进行了数学模拟。我们采用 20 个基准函数(包括 10 个传统函数和 10 个 CEC2020 函数),通过定性和定量分析评估了 SHS 算法的有效性。通过与 12 种最先进的元启发式算法进行比较分析,我们证明了所提出的 SHS 算法能产生非常有前途的结果。通过Wilcoxon秩和检验获得的具有统计学意义的结果进一步支持了这些发现。此外,根据弗里德曼检验得出的平均排名,SHS 的排名与其他算法相比处于前列。除了理论验证之外,我们还将 SHS 算法应用于六个不同的现实世界优化任务,展示了它的实际效用。这些应用说明了该算法在应对复杂优化挑战方面的潜力。总之,这项工作不仅介绍了创新的 SHS 算法,还通过严格的基准测试和现实世界的问题解决场景证实了该算法的有效性和多功能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SHS: Scorpion Hunting Strategy Swarm Algorithm
We introduced the Scorpion Hunting Strategy (SHS), a novel population-based, nature-inspired optimisation algorithm. This algorithm draws inspiration from the hunting strategy of scorpions, which identify, locate, and capture their prey using the alpha and beta vibration operators. These operators control the SHS algorithm's exploitation and exploration abilities. To formulate an optimisation method, we mathematically simulate these dynamic events and behaviors. We evaluate the effectiveness of the SHS algorithm by employing 20 benchmark functions (including 10 conventional and 10 CEC2020 functions), using both qualitative and quantitative analyses. Through a comparative analysis with 12 state-of-the-art meta-heuristic algorithms, we demonstrate that the proposed SHS algorithm yields exceptionally promising results. These findings are further supported by statistically significant results obtained through the Wilcoxon rank sum test. Additionally, the ranking of SHS, as determined by the average rank derived from the Friedman test, positions it at the forefront when compared to other algorithms. Going beyond theoretical validation, we showcase the practical utility of the SHS algorithm by applying it to six distinct real-world optimisation tasks. These applications illustrate the algorithm's potential in addressing complex optimisation challenges. In summary, this work not only introduces the innovative SHS algorithm but also substantiates its effectiveness and versatility through rigorous benchmarking and real-world problem-solving scenarios.
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