College of Mining, Liaoning Technical University, Fuxin, Liaoning, China.
College of Science, Liaoning Technical University, Fuxin, Liaoning, China.
PLoS One. 2023 Aug 11;18(8):e0290117. doi: 10.1371/journal.pone.0290117. eCollection 2023.
This paper proposes a novel hybrid algorithm, named Multi-Strategy Hybrid Harris Hawks Tunicate Swarm Optimization Algorithm (MSHHOTSA). The primary objective of MSHHOTSA is to address the limitations of the tunicate swarm algorithm, which include slow optimization speed, low accuracy, and premature convergence when dealing with complex problems. Firstly, inspired by the idea of the neighborhood and thermal distribution map, the hyperbolic tangent domain is introduced to modify the position of new tunicate individuals, which can not only effectively enhance the convergence performance of the algorithm but also ensure that the data generated between the unknown parameters and the old parameters have a similar distribution. Secondly, the nonlinear convergence factor is constructed to replace the original random factor c1 to coordinate the algorithm's local exploitation and global exploration performance, which effectively improves the ability of the algorithm to escape extreme values and fast convergence. Finally, the swarm update mechanism of the HHO algorithm is introduced into the position update of the TSA algorithm, which further balances the local exploitation and global exploration performance of the MSHHOTSA. The proposed algorithm was evaluated on eight standard benchmark functions, CEC2019 benchmark functions, four engineering design problems, and a PID parameter optimization problem. It was compared with seven recently proposed metaheuristic algorithms, including HHO and TSA. The results were analyzed and discussed using statistical indicators such as mean, standard deviation, Wilcoxon's rank sum test, and average running time. Experimental results demonstrate that the improved algorithm (MSHHOTSA) exhibits higher local convergence, global exploration, robustness, and universality than BOA, GWO, MVO, HHO, TSA, ASO, and WOA algorithms under the same experimental conditions.
本文提出了一种新的混合算法,名为多策略混合蜜獾海鸥藤壶群优化算法(MSHHOTSA)。MSHHOTSA 的主要目标是解决藤壶群算法的局限性,包括在处理复杂问题时优化速度慢、精度低和过早收敛。首先,受邻域和热分布图的启发,引入双曲正切域来修改新藤壶个体的位置,这不仅可以有效地增强算法的收敛性能,而且可以确保未知参数和旧参数之间生成的数据具有相似的分布。其次,构建了非线性收敛因子来代替原始随机因子 c1,以协调算法的局部开发和全局探索性能,这有效地提高了算法跳出极值和快速收敛的能力。最后,将 HHO 算法的群体更新机制引入到 TSA 算法的位置更新中,进一步平衡了 MSHHOTSA 的局部开发和全局探索性能。该算法在八个标准基准函数、CEC2019 基准函数、四个工程设计问题和一个 PID 参数优化问题上进行了评估,并与最近提出的七种元启发式算法(包括 HHO 和 TSA)进行了比较。使用平均值、标准差、Wilcoxon 秩和检验和平均运行时间等统计指标对结果进行了分析和讨论。实验结果表明,在相同的实验条件下,改进后的算法(MSHHOTSA)在局部收敛、全局探索、鲁棒性和通用性方面均优于 BOA、GWO、MVO、HHO、TSA、ASO 和 WOA 算法。