Li Yier, Li Lei, Lian Zhengpu, Zhou Kang, Dai Yuchen
College of Engineering, Zhejiang Normal University, Jinhua, 321000, China.
National Engineering Research Center of System Technology for High-Speed Railway and Urban Rail Transit, Beijing, 100081, China.
Sci Rep. 2025 Jan 22;15(1):2881. doi: 10.1038/s41598-025-85751-3.
The Walrus Optimization (WO) algorithm, as an emerging metaheuristic algorithm, has shown excellent performance in problem-solving, however it still faces issues such as slow convergence and susceptibility to getting trapped in local optima. To this end, the study proposes a novel WO enhanced by quasi-oppositional-based learning and chaotic local search mechanisms, called QOCWO. The study aims to prevent premature convergence to local optima and enhance the diversity of the population by integrating the quasi-oppositional-based learning mechanism into the original Walrus Optimization (WO) algorithm, thereby improving the global search capability and expanding the search range. Additionally, the chaotic local search mechanism is introduced to accelerate the convergence speed of WO. To test the capabilities, the QOCWO algorithm is applied to the 23 standard functions and compared with seven other algorithms. Furthermore, the Wilcoxon rank-sum test is utilized to evaluate the significance of the results, which demonstrates the superior performance of the proposed algorithm. To assess the practicality in solving real-world problems, the QOCWO is applied to two engineering design issues, and the results indicated that QOCWO achieved lower costs compared to other algorithms.
海象优化(WO)算法作为一种新兴的元启发式算法,在解决问题方面表现出了优异的性能,然而它仍然面临收敛速度慢和易陷入局部最优等问题。为此,该研究提出了一种通过基于准对立学习和混沌局部搜索机制增强的新型WO算法,称为QOCWO。该研究旨在通过将基于准对立学习机制集成到原始海象优化(WO)算法中,防止过早收敛到局部最优并增强种群的多样性,从而提高全局搜索能力并扩大搜索范围。此外,引入混沌局部搜索机制以加快WO的收敛速度。为了测试这些能力,将QOCWO算法应用于23个标准函数,并与其他七种算法进行比较。此外,利用威尔科克森秩和检验来评估结果的显著性,这证明了所提出算法的优越性能。为了评估在解决实际问题中的实用性,将QOCWO应用于两个工程设计问题,结果表明与其他算法相比,QOCWO实现了更低的成本。