• 中国计算机学会会刊
  • 中国科技核心期刊
  • 中文核心期刊

计算机工程与科学 ›› 2026, Vol. 48 ›› Issue (5): 936-950.doi: 10.3969/j.issn.1007-130X.2026.05.017

• 人工智能与数据挖掘 • 上一篇    

融合随机反向学习与变异教与学策略的改进天鹰优化算法

宋一佳,张小庆,孙民民,张莉,李娜,曾竣哲


  

  1. (武汉轻工大学数学与计算机学院,湖北 武汉 430048)

  • 收稿日期:2024-10-18 修回日期:2025-02-27 出版日期:2026-05-25 发布日期:2026-05-21
  • 基金资助:
    湖北省教育厅科技项目(B2020063);武汉市自然科学基金探索计划(2024040801020332)


An improved aquila optimization algorithm integrating stochastic opposition-based learning and a mutated teaching-learning-based optimization strategy

SONG Yijia,ZHANG Xiaoqing,SUN Minmin,ZHANG Li,LI Na,ZENG Junzhe   

  1. (School of Mathematics & Computer Science,Wuhan Polytechnic University,Wuhan 430048,China)
  • Received:2024-10-18 Revised:2025-02-27 Online:2026-05-25 Published:2026-05-21

摘要: 针对标准天鹰优化算法存在的收敛速度慢和易陷入局部最优的不足,提出融合随机反向学习与变异教与学策略的改进天鹰优化TAO算法。首先,在初期引入扩大搜索策略丰富初始空间搜索多样性,并通过差分变异提升寻优质量;其次,采用随机反向学习策略增加精英个体数量,提升算法搜索质量。进一步,通过t-分布变异扰动个体位置更新,提升搜索空间多样性;同时融合教与学策略,利用教学相长策略加快算法收敛速度。通过选取CEC2005基准测试函数集中具有不同特征(单峰、多峰和固定维度多峰)的23个函数进行仿真实验。结果表明,相比AO算法和几种启发式智能优化算法,TAO算法在寻优精度、收敛性和稳定性方面表现更优。Wilcoxon秩和检验结果也证实TAO算法的搜索性能与选取的对比算法相比具有显著性差异,且优于对比算法。最后,引入3个工程设计优化案例进一步验证了TAO算法解决实际问题的可行性。

关键词: 天鹰优化算法, 随机反向学习, t-分布, 差分变异, 教与学策略

Abstract: To address the shortcomings of slow convergence speed and susceptibility to local optima in the standard aquila optimization (AO) algorithm, an improved aquila optimization algorithm, TAO algorithm, is proposed by integrating stochastic opposition-based learning and a mutated teaching- learning-based optimization (TLBO) strategy. Firstly, an expanded search strategy is introduced in the initial phase to enhance the diversity of initial space exploration, and differential mutation is employed to improve the quality of optimization. Secondly, a stochastic opposition-based learning strategy is adopted to increase the number of elite individuals, thereby enhancing the algorithm’s search quality. Furthermore, individual positions are updated through t-distribution mutation perturbations to boost the diversity of the search space. Meanwhile, the TLBO strategy is integrated, leveraging the teaching-learning synergy strategy to accelerate the algorithm’s convergence speed. Then, simulation experiments were carried out on 23 functions with diverse characteristics (unimodal, multimodal, and fixed-dimension multimodal) selected from the CEC 2005 benchmark test suite. The results demonstrate that, compared to AO algorithm and several other heuristic intelligent optimization algorithms, TAO algorithm exhibits superior performance in terms of optimization accuracy, convergence, and stability. The Wilcoxon rank-sum test results further verify that the search performance of TAO is significantly different from that of the comparative algorithms, and TAO outperforms the comparison algorithms. Finally, three engineering design optimization cases are introduced to further validate the feasibility of TAO algorithm in solv- ing practical problems.

Key words: aquila optimizer, random opposite-based learning, t-distribution, differential variation, teaching-learning strategy