Railway Engineering Research Institute, China Academy of Railway Sciences Corporation Limited, Beijing, China.
State Key Laboratory of High-Speed Railway Track System, Beijing, China.
PLoS One. 2024 Jun 11;19(6):e0304981. doi: 10.1371/journal.pone.0304981. eCollection 2024.
Thin-bed soft rock is one of the main factors causing large deformations of tunnels. In addition to relying on some innovative construction techniques, detecting thin beds early during surface geological exploration and advanced geological prediction can provide a basis for planning and implementing effective coping measures. The commonly used seismic methods cannot meet the requirement for thin beds detection accuracy. A high-resolution (HR) seismic signal processing method is proposed by introducing a sequential convolutional neural network (SCNN). The deep learning dataset including low-resolution (LR) and HR seismic is firstly prepared through forward modeling. Then, a one-dimension (1D) SCNN architecture is proposed to establish the mapping relationship between LR and HR sequences. Training on the prepared dataset, the HR seismic processing model with high accuracy is achieved and applied to some practical seismic data. The applications on both poststack and prestack seismic data demonstrate that the trained HR processing model can effectively improve the seismic resolution and restore the high-frequency seismic energy so that to recognize the thin-bed rocks.
薄煤层软岩是导致隧道大变形的主要因素之一。除了依靠一些创新的施工技术外,在地表地质勘探和先进地质预测中尽早发现薄煤层,可以为规划和实施有效的应对措施提供依据。常用的地震方法无法满足薄煤层检测精度的要求。通过引入顺序卷积神经网络(SCNN),提出了一种高分辨率(HR)地震信号处理方法。首先通过正演建模准备包含低分辨率(LR)和 HR 地震的深度学习数据集。然后,提出了一维(1D)SCNN 架构来建立 LR 和 HR 序列之间的映射关系。在准备好的数据集上进行训练,得到了具有高精度的 HR 地震处理模型,并将其应用于一些实际地震数据中。在叠后和叠前地震数据上的应用表明,训练好的 HR 处理模型可以有效地提高地震分辨率,恢复高频地震能量,从而识别薄煤层岩石。