Litcius/Paper detail

Evaluation of geological conditions and clogging of tunneling using machine learning

Xuedong Bai, Wen-Chieh Cheng, Dominic Ek Leong Ong, Ge Li

2021Griffith Research Online (Griffith University, Queensland, Australia)36 citationsDOI

Abstract

There frequently exists inadequacy regarding the number of boreholes installed along tunnel alignment. While geophysical imaging techniques are available for pre-tunnelling geological characterization, they aim to detect specific object (e.g., water body and karst cave). There remains great motivation for the industry to develop a real-time identification technology relating complex geological conditions with the existing tunnelling parameters. This study explores the potential for the use of machine learning-based data driven approaches to identify the change in geology during tunnel excavation. Further, the feasibility for machine learning-based anomaly detection approaches to detect the development of clayey clogging is also assessed. The results of an application of the machine learning-based approaches to Xi’an Metro line 4 are presented in this paper where two tunnels buried in the water-rich sandy soils at depths of 12-14 m are excavated using a 6.288 m diameter EPB shield machine. A reasonable agreement with the measurements verifies their applicability towards widening the application horizon of machine learning-based approaches.

Topics & Concepts

CloggingKarstExcavationBoreholeGeologyQuantum tunnellingMining engineeringTunnel boring machineNew Austrian Tunnelling methodArtificial intelligenceGeotechnical engineeringEngineeringComputer scienceMechanical engineeringArchaeologyGeographyPhysicsPaleontologyOptoelectronicsTunneling and Rock MechanicsRock Mechanics and ModelingDrilling and Well Engineering