The paper "ST-SRNet: A deep learning framework for seismic response prediction of subsea tunnels" has been published in Tunnelling and Underground Space Technology.
As key infrastructure in nearshore and offshore areas, subsea tunnels face extremely high risks from earthquake disasters. Conventional numerical methods are computationally intensive, making them inadequate for real-time prediction demands under complex marine environments. To address this, this study proposes a rapid prediction method integrating high-fidelity finite element (FE) simulation and deep learning technology. A two-dimensional FE model incorporating bidirectional (horizontal and vertical) ground motions and hydrodynamic pressure effects is established to construct a comprehensive seismic response database. On this basis, the Subsea Tunnel Seismic Response Network (ST-SRNet) is developed, combining one-dimensional convolution, attention mechanisms, long short-term memory (LSTM), and a Feature-wise Linear Modulation (FiLM) module to achieve efficient and accurate prediction of seismic responses at multiple monitoring points. Results show that the model achieves high prediction accuracy, with the coefficient of determination values exceeding 0.95 and peak relative errors controlled below 10%, while also exhibiting strong generalization. An engineering case study further validates the robustness and applicability of the proposed method, providing effective technical support for disaster assessment, structural monitoring, and real-time early warning of subsea tunnels.
Note: Tunnelling and Underground Space Technology is a Q1 top journal in the field of engineering and technology, with an impact factor of 7.4 in 2025. The first author of the paper is Master’s student Yimu Chen, and Prof. Yutao Guo is the corresponding author. This research was supported by the Shenzhen Science and Technology Program.