Li Long
School of Management Science and Engineering, Shandong Technology and Business University, Yantai, 264005, Shandong, China.
Sci Rep. 2024 Oct 3;14(1):23028. doi: 10.1038/s41598-024-73742-9.
The accurate prediction of uneven rock mass classes is crucial for intelligent operation in tunnel-boring machine (TBM) tunneling. However, the classification of rock masses presents significant challenges due to the variability and complexity of geological conditions. To address these challenges, this study introduces an innovative predictive model combining the improved EWOA (IEWOA) and the light gradient boosting machine (LightGBM). The proposed IEWOA algorithm incorporates a novel parameter l for more effective position updates during the exploration stage and utilizes sine functions during the exploitation stage to optimize the search process. Additionally, the model integrates a minority class technique enhanced with a random walk strategy (MCT-RW) to extend the boundaries of minority classes, such as Classes II, IV, and V. This approach significantly improves the recall and F-score for these rock mass classes. The proposed methodology was rigorously evaluated against other predictive algorithms, demonstrating superior performance with an accuracy of 94.74%. This innovative model not only enhances the accuracy of rock mass classification but also contributes significantly to the intelligent and efficient construction of TBM tunnels, providing a robust solution to one of the key challenges in underground engineering.
准确预测不均匀岩体类别对于隧道掘进机(TBM)掘进中的智能作业至关重要。然而,由于地质条件的变异性和复杂性,岩体分类面临重大挑战。为应对这些挑战,本研究引入了一种结合改进的蛾火优化算法(IEWOA)和轻量级梯度提升机(LightGBM)的创新预测模型。所提出的IEWOA算法在探索阶段引入了一个新参数l,以实现更有效的位置更新,并在开发阶段利用正弦函数优化搜索过程。此外,该模型集成了一种采用随机游走策略增强的少数类技术(MCT-RW),以扩展II类、IV类和V类等少数类的边界。这种方法显著提高了这些岩体类别的召回率和F值。所提出的方法与其他预测算法进行了严格评估,以94.74%的准确率展示了卓越性能。这种创新模型不仅提高了岩体分类的准确性,还为TBM隧道的智能高效施工做出了重大贡献,为地下工程的关键挑战之一提供了强有力的解决方案。