Tunnel settlement has a significant impact on property security and personal safety. Accurate tunnel-settlement predictions can quickly reveal problems that may be addressed to prevent accidents. However, each acquisition point in the tunnel is only monitored once daily for around two months. This paper presents a new method for predicting tunnel settlement via transfer learning. First, a source model is constructed and trained by deep learning, then parameter transfer is used to transfer the knowledge gained from the source model to the target model, which has a small dataset. Based on this, the training complexity and training time of the target model can be reduced. The proposed method was tested to predict tunnel settlement in the tunne...
Singapore is a highly urbanized and densely populated city with high-rise buildings and complex infr...
A series of artificial neural networks modelling was conducted to investigate the ground deformation...
In order to solve the problems of long artificial time consumption, the inability to standardize the...
Tunnel settlement has a significant impact on property security and personal safety. Accurate tunnel...
Tunnel settlement commonly occurs during the tunnel construction processes in large cities. Existing...
Machine learning (ML) algorithms have been gradually used in predicting tunneling-induced settlement...
Ground settlement prediction during the process of mechanized tunneling is of paramount importance a...
With the development of society, the utilization rate of underground space is getting higher and hig...
Multi-step-ahead prediction of tunnel surrounding rock displacement is an effective way to ensure th...
Tunneling-induced ground surface settlement is associated with many complex influencing factors. Bey...
Ground surface settlement trough associated to tunneling is characterized by two important parameter...
The technology of tunnel boring machine (TBM) has been widely applied for underground construction w...
Ground settlement during and after tunnelling using TBM results in varying dynamic and static load a...
The safety of tunneling with shield tunnel boring machines largely depends on the tunnel face pressu...
The proliferation of data collected by modern tunnel boring machines (TBMs) presents a substantial o...
Singapore is a highly urbanized and densely populated city with high-rise buildings and complex infr...
A series of artificial neural networks modelling was conducted to investigate the ground deformation...
In order to solve the problems of long artificial time consumption, the inability to standardize the...
Tunnel settlement has a significant impact on property security and personal safety. Accurate tunnel...
Tunnel settlement commonly occurs during the tunnel construction processes in large cities. Existing...
Machine learning (ML) algorithms have been gradually used in predicting tunneling-induced settlement...
Ground settlement prediction during the process of mechanized tunneling is of paramount importance a...
With the development of society, the utilization rate of underground space is getting higher and hig...
Multi-step-ahead prediction of tunnel surrounding rock displacement is an effective way to ensure th...
Tunneling-induced ground surface settlement is associated with many complex influencing factors. Bey...
Ground surface settlement trough associated to tunneling is characterized by two important parameter...
The technology of tunnel boring machine (TBM) has been widely applied for underground construction w...
Ground settlement during and after tunnelling using TBM results in varying dynamic and static load a...
The safety of tunneling with shield tunnel boring machines largely depends on the tunnel face pressu...
The proliferation of data collected by modern tunnel boring machines (TBMs) presents a substantial o...
Singapore is a highly urbanized and densely populated city with high-rise buildings and complex infr...
A series of artificial neural networks modelling was conducted to investigate the ground deformation...
In order to solve the problems of long artificial time consumption, the inability to standardize the...