具有莱维飞行和 Gbest 指导策略的 Salp 蜂群集成自适应矮獴优化器

IF 4.9 3区 计算机科学 Q1 ENGINEERING, MULTIDISCIPLINARY
Gang Hu, Yuxuan Guo, Guanglei Sheng
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引用次数: 0

摘要

针对矮獴优化算法(DMO)存在的探索能力不足、收敛速度慢等缺点,本文提出了一种多策略增强型 DMO,简称 GLSDMO。首先,我们提出了一个改进的求解搜索方程,利用不同参数的 Gbest 引导策略来实现探索和开发(EE)之间的权衡。其次,我们引入了莱维飞行来增加种群分布的多样性,避免算法陷入局部最优。此外,针对 DMO 收敛效率低的问题,本研究使用强非线性收敛因子 Sigmaid 函数作为 Mongoose 在集体活动时的移动步长参数,并将 salp 蜂群领导者策略与 Mongoose 合作优化相结合,提高了代理的搜索效率,加速了算法向全局最优解(Gbest)的收敛。随后,在 CEC2017 和 CEC2019 上验证了 GLSDMO 的优越性,并详细分析了 GLSDMO 的优化效果。结果表明,在大多数测试函数上,GLSDMO 在求解质量、鲁棒性和全局收敛率方面明显优于对比算法。最后,在三个经典工程实例和一个桁架拓扑优化实例中验证了 GLSDMO 的优化性能。仿真结果表明,GLSDMO 在这些实际工程问题上实现了最优成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Salp Swarm Incorporated Adaptive Dwarf Mongoose Optimizer with Lévy Flight and Gbest-Guided Strategy

Salp Swarm Incorporated Adaptive Dwarf Mongoose Optimizer with Lévy Flight and Gbest-Guided Strategy

In response to the shortcomings of Dwarf Mongoose Optimization (DMO) algorithm, such as insufficient exploitation capability and slow convergence speed, this paper proposes a multi-strategy enhanced DMO, referred to as GLSDMO. Firstly, we propose an improved solution search equation that utilizes the Gbest-guided strategy with different parameters to achieve a trade-off between exploration and exploitation (EE). Secondly, the Lévy flight is introduced to increase the diversity of population distribution and avoid the algorithm getting stuck in a local optimum. In addition, in order to address the problem of low convergence efficiency of DMO, this study uses the strong nonlinear convergence factor Sigmaid function as the moving step size parameter of the mongoose during collective activities, and combines the strategy of the salp swarm leader with the mongoose for cooperative optimization, which enhances the search efficiency of agents and accelerating the convergence of the algorithm to the global optimal solution (Gbest). Subsequently, the superiority of GLSDMO is verified on CEC2017 and CEC2019, and the optimization effect of GLSDMO is analyzed in detail. The results show that GLSDMO is significantly superior to the compared algorithms in solution quality, robustness and global convergence rate on most test functions. Finally, the optimization performance of GLSDMO is verified on three classic engineering examples and one truss topology optimization example. The simulation results show that GLSDMO achieves optimal costs on these real-world engineering problems.

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来源期刊
Journal of Bionic Engineering
Journal of Bionic Engineering 工程技术-材料科学:生物材料
CiteScore
7.10
自引率
10.00%
发文量
162
审稿时长
10.0 months
期刊介绍: The Journal of Bionic Engineering (JBE) is a peer-reviewed journal that publishes original research papers and reviews that apply the knowledge learned from nature and biological systems to solve concrete engineering problems. The topics that JBE covers include but are not limited to: Mechanisms, kinematical mechanics and control of animal locomotion, development of mobile robots with walking (running and crawling), swimming or flying abilities inspired by animal locomotion. Structures, morphologies, composition and physical properties of natural and biomaterials; fabrication of new materials mimicking the properties and functions of natural and biomaterials. Biomedical materials, artificial organs and tissue engineering for medical applications; rehabilitation equipment and devices. Development of bioinspired computation methods and artificial intelligence for engineering applications.
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