Huang Tianping, Huang Faguo, Qin Zhaohui, Pan Jiafang
Key Laboratory of Advanced Manufacturing and Automation Technology (Guilin University of Technology), Education Department of Guangxi Zhuang Autonomous Region, Guilin, 541006, China.
Guangxi Engineering Research Center of Intelligent Rubber Equipment (Guilin University of Technology), Guilin, 541006, China.
Sci Rep. 2025 Apr 4;15(1):11581. doi: 10.1038/s41598-025-94260-2.
The study proposes an enhanced, high-caliber Population Evolution Polar Lights Optimization (IPLO) algorithm to address the shortcomings of the existing Polar Lights Optimization (PLO) method. These include issues like insufficient diversity in the population, a lack of speed in convergence, and an uneven balance between local optimization and global search. In the IPLO, a pseudo-random lens SPM chaos initialization (PRLS-CI) strategy is proposed for population initialization, aiming to enhance the quality and diversity of the initial population. To strike a successful balance between global exploration and local search, a reinforcement learning approach is suggested that combines adaptive dynamics with a reward loss function centered on exploration. Furthermore, the adaptive t-distribution mutation strategy is employed to enhance population diversity, accelerating the convergence speed of IPLO. In addition, the simplex method is used to construct diversified geometric search paths, improving the utilization efficiency of the population's peripheral individuals. A comparison between the proposed IPLO and well-known optimization algorithms, as well as their improved versions, shows that IPLO outperforms other algorithms and their improved versions on multiple benchmark functions, specifically in terms of faster convergence speed and higher solution accuracy. The validation outcomes on the CEC2017, CEC 2019, and CEC 2022 benchmark functions, along with four engineering design issues, further substantiate the efficacy of the IPLO algorithm in tackling intricate real-world optimization tasks. Compared to PLO, IPLO improves convergence accuracy by 66.7%, increases convergence speed by 69.6%, and enhances stability by 99.9%.
该研究提出了一种增强型、高水准的种群进化极光优化(IPLO)算法,以解决现有极光优化(PLO)方法的缺点。这些缺点包括种群多样性不足、收敛速度慢以及局部优化和全局搜索之间的平衡不均衡等问题。在IPLO中,提出了一种伪随机透镜SPM混沌初始化(PRLS-CI)策略用于种群初始化,旨在提高初始种群的质量和多样性。为了在全局探索和局部搜索之间取得成功平衡,建议采用一种强化学习方法,将自适应动力学与以探索为中心的奖励损失函数相结合。此外,采用自适应t分布变异策略来增强种群多样性,加快IPLO的收敛速度。此外,使用单纯形法构建多样化的几何搜索路径,提高种群外围个体的利用效率。将所提出的IPLO与知名优化算法及其改进版本进行比较表明,IPLO在多个基准函数上优于其他算法及其改进版本,特别是在收敛速度更快和求解精度更高方面。在CEC2017、CEC 2019和CEC 2022基准函数以及四个工程设计问题上的验证结果,进一步证实了IPLO算法在解决复杂现实世界优化任务方面的有效性。与PLO相比,IPLO的收敛精度提高了66.7%,收敛速度提高了69.6%,稳定性提高了99.9%。