Shi Song, Miao Yichen, Di Cheng, Zhao Quanchao, Zheng Yantao, Liu Changwu
College of Water Resource and Hydropower, Sichuan University, Chengdu, 610065, China.
Faculty of Civil Engineering and Mechanics, Kunming University of Science and Technology, Kunming, 650500, China.
Sci Rep. 2025 Mar 31;15(1):11018. doi: 10.1038/s41598-025-86989-7.
Rock mass mechanical parameters are essential for the design and construction of underground engineering projects, but parameters obtained through traditional methods are often unsuitable for direct use in numerical simulations. The back analysis method, based on displacement monitoring, has emerged as a new approach for determining rock mass parameters. In this study, an experimental scheme was developed using orthogonal and uniform experimental designs to obtain training samples for the neural network. A GA-PSO-BP neural network model (GPSO-BP) was proposed, combining the fast convergence of the particle swarm optimization (PSO) algorithm and the global optimization capability of the genetic algorithm (GA). This model was applied to invert the rock mass parameters E, μ, φ, and c for deep-buried tunnels. The results indicate that the GPSO-BP neural network model outperforms the BP, GA-BP, and PSO-BP neural network models in terms of faster convergence and higher accuracy. It also shows superior performance in handling small datasets and complex problems, achieving better data fitting and the highest score in rank analysis. The DDR curve further confirms the GPSO-BP model's computational efficiency. When the rock mass parameters derived from this model are applied to forward numerical simulations, the average error across four monitoring projects is only 4.34%, outperforming the other three models. Thus, this study provides an effective method for improving the accuracy of rock mass parameter inversion in underground engineering.
岩体力学参数对于地下工程项目的设计和施工至关重要,但通过传统方法获得的参数往往不适用于直接进行数值模拟。基于位移监测的反分析方法已成为确定岩体参数的一种新途径。在本研究中,采用正交和均匀试验设计制定了实验方案,以获取神经网络的训练样本。提出了一种GA-PSO-BP神经网络模型(GPSO-BP),它结合了粒子群优化(PSO)算法的快速收敛性和遗传算法(GA)的全局优化能力。该模型被应用于反演深埋隧道的岩体参数E、μ、φ和c。结果表明,GPSO-BP神经网络模型在收敛速度和精度方面优于BP、GA-BP和PSO-BP神经网络模型。它在处理小数据集和复杂问题方面也表现出卓越性能,实现了更好的数据拟合以及在秩分析中获得最高分。DDR曲线进一步证实了GPSO-BP模型的计算效率。当将该模型推导得到的岩体参数应用于正向数值模拟时,四个监测项目的平均误差仅为4.34%,优于其他三个模型。因此,本研究为提高地下工程中岩体参数反演的精度提供了一种有效方法。