You Guoping, Lu Zengtong, Qiu Zhipeng, Cheng Hao
School of Information Engineering, Jiangxi Science and Technology Normal University, Nanchang 330000, China.
Ruijie Networks Co., Ltd., Fuzhou 350000, China.
Biomimetics (Basel). 2024 Nov 28;9(12):727. doi: 10.3390/biomimetics9120727.
Beluga whale optimization (BWO) is a swarm-based metaheuristic algorithm inspired by the group behavior of beluga whales. BWO suffers from drawbacks such as an insufficient exploration capability and the tendency to fall into local optima. To address these shortcomings, this paper proposes augmented multi-strategy beluga optimization (AMBWO). The adaptive population learning strategy is proposed to improve the global exploration capability of BWO. The introduction of the roulette equilibrium selection strategy allows BWO to have more reference points to choose among during the exploitation phase, which enhances the flexibility of the algorithm. In addition, the adaptive avoidance strategy improves the algorithm's ability to escape from local optima and enriches the population quality. In order to validate the performance of the proposed AMBWO, extensive evaluation comparisons with other state-of-the-art improved algorithms were conducted on the CEC2017 and CEC2022 test sets. Statistical tests, convergence analysis, and stability analysis show that the AMBWO exhibits a superior overall performance. Finally, the applicability and superiority of the AMBWO was further verified by several engineering optimization problems.
白鲸优化算法(BWO)是一种受白鲸群体行为启发的基于群体的元启发式算法。BWO存在诸如探索能力不足和容易陷入局部最优等缺点。为了解决这些缺点,本文提出了增强多策略白鲸优化算法(AMBWO)。提出了自适应种群学习策略以提高BWO的全局探索能力。轮盘均衡选择策略的引入使BWO在开发阶段有更多参考点可供选择,增强了算法的灵活性。此外,自适应回避策略提高了算法逃离局部最优的能力并丰富了种群质量。为了验证所提出的AMBWO的性能,在CEC2017和CEC2022测试集上与其他先进的改进算法进行了广泛的评估比较。统计测试、收敛分析和稳定性分析表明,AMBWO展现出卓越的整体性能。最后,通过几个工程优化问题进一步验证了AMBWO的适用性和优越性。