Wang Yufei, Zhang Yujun, Yan Yuxin, Zhao Juan, Gao Zhengming
School of Electronics and Information Engineering, Jingchu University of Technology, Jingmen 448000, China.
Academy of Arts, Jingchu University of Technology, Jingmen 448000, China.
Math Biosci Eng. 2023 Feb 1;20(4):6422-6467. doi: 10.3934/mbe.2023278.
The aquila optimization algorithm (AO) is an efficient swarm intelligence algorithm proposed recently. However, considering that AO has better performance and slower late convergence speed in the optimization process. For solving this effect of AO and improving its performance, this paper proposes an enhanced aquila optimization algorithm with a velocity-aided global search mechanism and adaptive opposition-based learning (VAIAO) which is based on AO and simplified Aquila optimization algorithm (IAO). In VAIAO, the velocity and acceleration terms are set and included in the update formula. Furthermore, an adaptive opposition-based learning strategy is introduced to improve local optima. To verify the performance of the proposed VAIAO, 27 classical benchmark functions, the Wilcoxon statistical sign-rank experiment, the Friedman test and five engineering optimization problems are tested. The results of the experiment show that the proposed VAIAO has better performance than AO, IAO and other comparison algorithms. This also means the introduction of these two strategies enhances the global exploration ability and convergence speed of the algorithm.
鹰优化算法(AO)是最近提出的一种高效群体智能算法。然而,考虑到AO在优化过程中具有较好的性能但后期收敛速度较慢。为了解决AO的这种影响并提高其性能,本文提出了一种基于AO和简化鹰优化算法(IAO)的具有速度辅助全局搜索机制和自适应反向学习的增强型鹰优化算法(VAIAO)。在VAIAO中,设置了速度和加速度项并将其包含在更新公式中。此外,引入了一种自适应反向学习策略来改善局部最优。为了验证所提出的VAIAO的性能,对27个经典基准函数、威尔科克森统计符号秩实验、弗里德曼检验和五个工程优化问题进行了测试。实验结果表明,所提出的VAIAO比AO、IAO和其他比较算法具有更好的性能。这也意味着这两种策略的引入增强了算法的全局探索能力和收敛速度。