Confining Pressure Forecasting of Shield Tunnel Lining Based on GRU Model and RNN Model

Min Wang,Xiao-Wei Ye, Jin-Dian Jia, Xin-Hong Ying,Yang Ding, Di Zhang, Feng Sun

SENSORS(2024)

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Abstract
The confining pressure has a great effect on the internal force of the tunnel. During construction, the confining pressure which has a crucial impact on tunnel construction changes due to the variation of groundwater level and applied load. Therefore, the safety of tunnels must have the magnitude of confining pressure accurately estimated. In this study, a complete tunnel confining pressure time axis was obtained through high-frequency field monitoring, the data are segmented into a training set and a testing set. Using GRU and RNN models, a confining pressure prediction model was established, and the prediction results were analyzed. The results indicate that the GRU model has a fast-training speed and higher accuracy. On the other hand, the training speed of the RNN model is slow, with lower accuracy. The dynamic characteristics of soil pressure during tunnel construction require accurate prediction models to maintain the safety of the tunnel. The comparison between GRU and RNN models not only highlights the advantages of the GRU model but also emphasizes the necessity of balancing speed accuracy in tunnel construction confining pressure prediction modeling. This study is helpful in improving the understanding of soil pressure dynamics and developing effective prediction tools to promote safer and more reliable tunnel construction practices.
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Key words
shield tunnel,confining pressure,time series forecasting,Gate Recurrent Unit (GRU),recurrent neural network (RNN),multi-output recursive strategy
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