Machine learning (ML) algorithms have been gradually used in predicting tunneling-induced settlement, but there is no uniform process for establishing ML models and even obviously exists deficiency in the existing settlement prediction ML models. This study systematically demonstrates the process of application of machine learning (ML) algorithms in predicting tunneling-induced settlement. The whole process can be categorized into four phases: the selection of ML algorithms, the determination of optimum-hyper-parameters, the improvement in model robustness and sensitivity analysis. The prediction performance of five commonly used ML algorithms back-propagation (BPNN), general regression neural network (GRNN), extreme learning machine (ELM),...
For tunneling in urban areas, understanding the interaction and behavior of tunnels and the foundati...
Deformation of ground during tunnelling projects is one of the complex issues that is required to be...
Tunnel settlement has a significant impact on property security and personal safety. Accurate tunnel...
Machine learning (ML) algorithms have been gradually used in predicting tunneling-induced settlement...
Tunnel settlement commonly occurs during the tunnel construction processes in large cities. Existing...
Tunneling-induced ground surface settlement is associated with many complex influencing factors. Bey...
Deformation of ground during tunnelling projects is one of the complex issues that is required to be...
Increasing demand on infrastructures increases attention to shallow soft ground tunneling methods in...
The proliferation of data collected by modern tunnel-boring machines (TBMs) presents a substantial o...
Estimating surface settlement induced by excavation construction is an indispensable task in tunneli...
The proliferation of data collected by modern tunnel boring machines (TBMs) presents a substantial o...
With the development of society, the utilization rate of underground space is getting higher and hig...
Due to urbanization and population increase, need for metro tunnels, has been considerably increased...
Ground surface settlement trough associated to tunneling is characterized by two important parameter...
Construction-induced ground settlement is a serious hazard in underground tunnel construction. Accur...
For tunneling in urban areas, understanding the interaction and behavior of tunnels and the foundati...
Deformation of ground during tunnelling projects is one of the complex issues that is required to be...
Tunnel settlement has a significant impact on property security and personal safety. Accurate tunnel...
Machine learning (ML) algorithms have been gradually used in predicting tunneling-induced settlement...
Tunnel settlement commonly occurs during the tunnel construction processes in large cities. Existing...
Tunneling-induced ground surface settlement is associated with many complex influencing factors. Bey...
Deformation of ground during tunnelling projects is one of the complex issues that is required to be...
Increasing demand on infrastructures increases attention to shallow soft ground tunneling methods in...
The proliferation of data collected by modern tunnel-boring machines (TBMs) presents a substantial o...
Estimating surface settlement induced by excavation construction is an indispensable task in tunneli...
The proliferation of data collected by modern tunnel boring machines (TBMs) presents a substantial o...
With the development of society, the utilization rate of underground space is getting higher and hig...
Due to urbanization and population increase, need for metro tunnels, has been considerably increased...
Ground surface settlement trough associated to tunneling is characterized by two important parameter...
Construction-induced ground settlement is a serious hazard in underground tunnel construction. Accur...
For tunneling in urban areas, understanding the interaction and behavior of tunnels and the foundati...
Deformation of ground during tunnelling projects is one of the complex issues that is required to be...
Tunnel settlement has a significant impact on property security and personal safety. Accurate tunnel...