Kan Honglin, Xiao Yaping, Gao Zhiliang, Zhang Xuan
School of Artificial Intelligence, Anhui Polytechnic University, Wuhu 241000, China.
Biomimetics (Basel). 2025 Sep 15;10(9):620. doi: 10.3390/biomimetics10090620.
The Aquila Optimizer (AO) is a novel and efficient optimization algorithm inspired by the hunting and searching behavior of Aquila. However, the AO faces limitations when tackling high-dimensional and complex optimization problems due to insufficient search capabilities and a tendency to prematurely converge to local optima, which restricts its overall performance. To address these challenges, this study proposes the Multi-Strategy Aquila Optimizer (MSAO) by integrating multiple enhancement techniques. Firstly, the MSAO introduces a random sub-dimension update mechanism, significantly enhancing its exploration capacity in high-dimensional spaces. Secondly, it incorporates memory strategy and dream-sharing strategy from the Dream Optimization Algorithm (DOA), thereby achieving a balance between global exploration and local exploitation. Additionally, the MSAO employs adaptive parameter and dynamic opposition-based learning to further refine the AO's original update rules, making them more suitable for a multi-strategy collaborative framework. In the experiment, the MSAO outperform eight state-of-the-art algorithms, including CEC-winning and enhanced AO variants, achieving the best optimization results on 55%, 69%, 69%, and 72% of the benchmark functions, respectively, which demonstrates its outstanding performance. Furthermore, ablation experiments validate the independent contributions of each proposed strategy, and the application of MSAO to five engineering problems confirms its strong practical value and potential for broader adoption.
天鹰座优化器(AO)是一种受天鹰座捕猎和搜索行为启发的新颖且高效的优化算法。然而,由于搜索能力不足以及倾向于过早收敛到局部最优解,AO在处理高维和复杂优化问题时面临局限性,这限制了其整体性能。为应对这些挑战,本研究通过整合多种增强技术提出了多策略天鹰座优化器(MSAO)。首先,MSAO引入了随机子维度更新机制,显著增强了其在高维空间中的探索能力。其次,它融合了来自梦境优化算法(DOA)的记忆策略和梦境共享策略,从而在全局探索和局部利用之间实现平衡。此外,MSAO采用自适应参数和基于动态反向学习的方法进一步优化AO的原始更新规则,使其更适用于多策略协作框架。在实验中,MSAO优于包括CEC获奖算法和增强型AO变体在内的八种先进算法,分别在55%、69%、69%和72%的基准函数上取得了最佳优化结果,这证明了其卓越性能。此外,消融实验验证了每个提出策略的独立贡献,并且MSAO在五个工程问题上的应用证实了其强大的实用价值和更广泛应用的潜力。