An Improved Gray Wolf Optimization Algorithm Based on Levy Flight and Adaptive Strategies

Wenbo Zhang, R. Yao, Xiaoteng Yang, Kaiguang Wang
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引用次数: 1

Abstract

A new improved gray wolf optimization algorithm (LAGWO) is proposed to address the disadvantages of global exploration and local exploitation imbalance, slow convergence speed, low optimization-seeking accuracy and easy to fall into local optimality when solving complex problems. Firstly, the influence of the attenuation factor on the gray wolf optimization algorithm is analyzed, and an adaptive attenuation factor with different exploration ratios can be set according to different optimization problems is proposed to balance the exploration and exploitation capabilities of the algorithm and to ensure that the algorithm has a certain global search capability even at the late stage of the optimization search. Numerical simulation experiments show that increasing the exploration capacity ratio is beneficial to improving the convergence accuracy of the algorithm. Then, the characteristics of occasional long-distance walking of Levy's flight are applied to the optimization search process of α and β wolves to improve the global search ability of the algorithm and avoid falling into local optimum. Aiming at the feature that the candidate wolves ignore the different importance of the three leading wolves in the position update, the adaptive learning weight strategy is proposed to ensure that the constraint of individual gray wolves is reduced at the early stage of the algorithm seeking and improve the global search ability of the algorithm, and at the same time, it can speed up the convergence speed and improve the convergence accuracy at the late stage of the seeking. Finally, simulation experiments are carried out for 12 standard test functions and compared with several other algorithms, and the experimental results show that the algorithm has greater advantages in the optimization-seeking accuracy, algorithm stability and convergence speed.
基于Levy飞行和自适应策略的改进灰狼优化算法
针对求解复杂问题时全局探索与局部开发不平衡、收敛速度慢、寻优精度低、易陷入局部最优等缺点,提出了一种改进的灰狼优化算法。首先,分析了衰减因子对灰狼优化算法的影响,提出了根据不同的优化问题设置不同探索比例的自适应衰减因子,以平衡算法的探索和开发能力,保证算法即使在优化搜索后期也具有一定的全局搜索能力。数值模拟实验表明,提高勘探容量比有利于提高算法的收敛精度。然后,将Levy飞行偶尔长距离行走的特点应用到α狼和β狼的优化搜索过程中,提高算法的全局搜索能力,避免陷入局部最优。针对候选狼在位置更新过程中忽略3头狼的不同重要性的特点,提出自适应学习权策略,保证在算法寻优的前期减少个体灰狼的约束,提高算法的全局搜索能力,同时在寻优的后期加快收敛速度,提高收敛精度。最后,对12个标准测试函数进行了仿真实验,并与其他几种算法进行了比较,实验结果表明,该算法在寻优精度、算法稳定性和收敛速度等方面具有较大的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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