利用主成分分析(PCA)-关联递归单元(GRU)神经网络预测隧道掘进机掘进中的岩体分类

Ke Man, Liwen Wu, Xiaoli Liu, Zhifei Song, Kena Li, Nawnit Kumar
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摘要

由于地下工程地质的复杂性,隧道掘进机(TBM)通常对围岩体的适应性较差,导致机器卡死和地质灾害。针对兰州水源地建设 TBM 项目,本研究提出了一种名为 PCA-GRU 的神经网络,将主成分分析(PCA)与门控递归单元(GRU)相结合,以提高 TBM 掘进中岩体分类预测的准确性。在建立 PCA-GRU 模型时,利用了对样本数据集中的九个参数进行 PCA 降维后得到的输入变量。随后,为了加快围岩分类预测的响应速度,对 PCA-GRU 模型进行了优化。最后,将 PCA-GRU 模型获得的预测结果与其他四个模型的预测结果进行了比较,并利用随机抽样分析法对预测结果进行了进一步检验。结果表明,PCA-GRU 模型可以快速预测 TBM 隧道中的岩体分类,运行时间约为 20 秒。在预测岩体分类方面,其准确度 A、宏观精度 MP 和宏观召回率 MR 分别为 0.9667、0.963 和 0.9763,表现优于前四种模型。在Ⅱ、Ⅲ、Ⅳ类岩体预测中,由于采用了降维技术,PCA-GRU 模型的精度 P 和召回率 R 都较好。随机抽样分析表明,PCA-GRU 模型显示出更强的泛化能力,使其更适用于各种岩体类别和岩性分布比例发生变化的情况。
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Prediction of rock mass classification in tunnel boring machine tunneling using the principal component analysis (PCA)–gated recurrent unit (GRU) neural network

Due to the complexity of underground engineering geology, the tunnel boring machine (TBM) usually shows poor adaptability to the surrounding rock mass, leading to machine jamming and geological hazards. For the TBM project of Lanzhou Water Source Construction, this study proposed a neural network called PCA–GRU, which combines principal component analysis (PCA) with gated recurrent unit (GRU) to improve the accuracy of predicting rock mass classification in TBM tunneling. The input variables from the PCA dimension reduction of nine parameters in the sample data set were utilized for establishing the PCA–GRU model. Subsequently, in order to speed up the response time of surrounding rock mass classification predictions, the PCA–GRU model was optimized. Finally, the prediction results obtained by the PCA–GRU model were compared with those of four other models and further examined using random sampling analysis. As indicated by the results, the PCA–GRU model can predict the rock mass classification in TBM tunneling rapidly, requiring about 20 s to run. It performs better than the previous four models in predicting the rock mass classification, with accuracy A, macro precision MP, and macro recall MR being 0.9667, 0.963, and 0.9763, respectively. In Class II, III, and IV rock mass prediction, the PCA–GRU model demonstrates better precision P and recall R owing to the dimension reduction technique. The random sampling analysis indicates that the PCA–GRU model shows stronger generalization, making it more appropriate in situations where the distribution of various rock mass classes and lithologies change in percentage.

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Issue Information Two-year growth of Deep Underground Science and Engineering: A perspective Acknowledgment of reviewers A review of mechanical deformation and seepage mechanism of rock with filled joints Issue Information
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