Tu Binbin, Wang Fei, Huo Yan, Wang Xiaotian
College of Intelligent Science and Engineering, Shenyang University, Shenyang, China.
College of Information Engineering, Shenyang University, Shenyang, China.
Sci Rep. 2023 Dec 21;13(1):22909. doi: 10.1038/s41598-023-49754-2.
The grey wolf optimizer is an effective and well-known meta-heuristic algorithm, but it also has the weaknesses of insufficient population diversity, falling into local optimal solutions easily, and unsatisfactory convergence speed. Therefore, we propose a hybrid grey wolf optimizer (HGWO), based mainly on the exploitation phase of the harris hawk optimization. It also includes population initialization with Latin hypercube sampling, a nonlinear convergence factor with local perturbations, some extended exploration strategies. In HGWO, the grey wolves can have harris hawks-like flight capabilities during position updates, which greatly expands the search range and improves global searchability. By incorporating a greedy algorithm, grey wolves will relocate only if the new location is superior to the current one. This paper assesses the performance of the hybrid grey wolf optimizer (HGWO) by comparing it with other heuristic algorithms and enhanced schemes of the grey wolf optimizer. The evaluation is conducted using 23 classical benchmark test functions and CEC2020. The experimental results reveal that the HGWO algorithm performs well in terms of its global exploration ability, local exploitation ability, convergence speed, and convergence accuracy. Additionally, the enhanced algorithm demonstrates considerable advantages in solving engineering problems, thus substantiating its effectiveness and applicability.
灰狼优化器是一种有效且著名的元启发式算法,但它也存在种群多样性不足、容易陷入局部最优解以及收敛速度不尽人意等缺点。因此,我们提出了一种混合灰狼优化器(HGWO),主要基于哈里斯鹰优化的开发阶段。它还包括使用拉丁超立方采样进行种群初始化、带有局部扰动的非线性收敛因子以及一些扩展的探索策略。在HGWO中,灰狼在位置更新期间可以具备类似哈里斯鹰的飞行能力,这极大地扩展了搜索范围并提高了全局搜索能力。通过纳入贪婪算法,灰狼仅在新位置优于当前位置时才会重新定位。本文通过将混合灰狼优化器(HGWO)与其他启发式算法以及灰狼优化器的增强方案进行比较,评估了其性能。使用23个经典基准测试函数和CEC2020进行了评估。实验结果表明,HGWO算法在全局探索能力、局部开发能力、收敛速度和收敛精度方面表现良好。此外,该增强算法在解决工程问题方面具有显著优势,从而证实了其有效性和适用性。