A Reinforced Whale Optimization Algorithm for Solving Mathematical Optimization Problems.

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY Biomimetics Pub Date : 2024-09-22 DOI:10.3390/biomimetics9090576
Yunpeng Ma, Xiaolu Wang, Wanting Meng
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Abstract

The whale optimization algorithm has several advantages, such as simple operation, few control parameters, and a strong ability to jump out of the local optimum, and has been used to solve various practical optimization problems. In order to improve its convergence speed and solution quality, a reinforced whale optimization algorithm (RWOA) was designed. Firstly, an opposition-based learning strategy is used to generate other optima based on the best optimal solution found during the algorithm's iteration, which can increase the diversity of the optimal solution and accelerate the convergence speed. Secondly, a dynamic adaptive coefficient is introduced in the two stages of prey and bubble net, which can balance exploration and exploitation. Finally, a kind of individual information-reinforced mechanism is utilized during the encircling prey stage to improve the solution quality. The performance of the RWOA is validated using 23 benchmark test functions, 29 CEC-2017 test functions, and 12 CEC-2022 test functions. Experiment results demonstrate that the RWOA exhibits better convergence accuracy and algorithm stability than the WOA on 20 benchmark test functions, 21 CEC-2017 test functions, and 8 CEC-2022 test functions, separately. Wilcoxon's rank sum test shows that there are significant statistical differences between the RWOA and other algorithms.

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解决数学优化问题的强化鲸鱼优化算法。
鲸鱼优化算法具有操作简单、控制参数少、跳出局部最优能力强等优点,已被用于解决各种实际优化问题。为了提高其收敛速度和求解质量,设计了一种强化鲸鱼优化算法(RWOA)。首先,采用基于对立的学习策略,在算法迭代过程中发现的最优解的基础上生成其他最优解,这样可以增加最优解的多样性,加快收敛速度。其次,在猎物和气泡网两个阶段引入动态自适应系数,可以平衡探索和利用。最后,在包围猎物阶段利用一种个体信息强化机制来提高解的质量。使用 23 个基准测试函数、29 个 CEC-2017 测试函数和 12 个 CEC-2022 测试函数验证了 RWOA 的性能。实验结果表明,在 20 个基准测试函数、21 个 CEC-2017 测试函数和 8 个 CEC-2022 测试函数上,RWOA 分别比 WOA 表现出更好的收敛精度和算法稳定性。Wilcoxon 秩和检验表明,RWOA 与其他算法之间存在显著的统计差异。
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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
期刊最新文献
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