Qi Yun, Yu Kaiwang, Li Xunping, Wang Wei, Cui Xinchao, Bai Chenhao
College of Mining and Coal, Inner Mongolia University of Science and Technology, Baotou, Inner Mongolia, China.
College of Coal Engineering, Shanxi Datong University, Datong, Shanxi, China.
PLoS One. 2025 May 28;20(5):e0323789. doi: 10.1371/journal.pone.0323789. eCollection 2025.
To address the challenge of personnel evacuation during mine fires, an enhanced Whale Optimization Algorithm (WOA) incorporating a hybrid strategy inspired by the intelligent behavior of marine life is proposed and applied to mine escape route planning. Initially, to overcome the limitations of the original WOA-such as poor optimization accuracy, susceptibility to local optima, and slow convergence-five improvement strategies are introduced: Sobol sequence for population initialization, nonlinear time-varying factors, adaptive weighting, stochastic learning, and Cauchy mutation. These enhancements are compared against single-strategy improved WOAs.Subsequently, path planning simulations were conducted using several extracted algorithms and grid-based methods. The results demonstrate that the optimal path length achieved by the Multi-Strategy WOA (MSWOA) is 41.7% shorter than that of the standard WOA, 42.3% shorter than WOA-1, and 48.5% shorter than PSO for the shortest path. Additionally, the average path length of MSWOA is 32.2% shorter than WOA, 40.5% shorter than WOA-1, and 41.4% shorter than PSO. The MSWOA algorithm generates the shortest and smoothest path among the tested methods.Based on the analysis of the path graph and iteration frequency graph, it is recommended to apply the MSWOA algorithm to path planning experiments. The findings indicate that the WOA with the five integrated strategies significantly enhances optimization accuracy and convergence speed, making it a robust solution for mine evacuation route planning.
为应对矿井火灾期间人员疏散的挑战,提出了一种改进的鲸鱼优化算法(WOA),该算法融合了受海洋生物智能行为启发的混合策略,并将其应用于矿井逃生路线规划。首先,为克服原始WOA的局限性,如优化精度差、易陷入局部最优以及收敛速度慢,引入了五种改进策略:用于种群初始化的索博尔序列、非线性时变因子、自适应加权、随机学习和柯西变异。将这些改进与单策略改进的WOA进行了比较。随后,使用几种提取的算法和基于网格的方法进行了路径规划模拟。结果表明,多策略WOA(MSWOA)实现的最优路径长度比标准WOA短41.7%,比WOA - 1短42.3%,比粒子群优化算法(PSO)的最短路径短48.5%。此外,MSWOA的平均路径长度比WOA短32.2%,比WOA - 1短40.5%,比PSO短41.4%。在测试方法中,MSWOA算法生成的路径最短且最平滑。基于对路径图和迭代频率图的分析,建议将MSWOA算法应用于路径规划实验。研究结果表明,具有五种集成策略的WOA显著提高了优化精度和收敛速度,使其成为矿井疏散路线规划的可靠解决方案。