Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Development and Applicability Assessment of a Tunnel Face Monitoring System Against Tunnel Face Collapse
To avoid damage caused by rock collapse in tunnel faces, it is necessary to sound an alarm before a rock collapse occurs so that workers have time to evacuate from the tunnel face. However, the area around the tunnel face is a confined workspace where multiple workers and machines are mixed together, and visual monitoring by observers alone is not sufficient to ensure safety and time. To solve these problems, we have developed a system to identify cracks on the surface of shotcrete using deep learning based on semantic segmentation, a method of image analysis, to realize constant monitoring as a technology to support monitoring and judgment (Tunnel Face Monitoring System) (Uke et al. in ITA-AITES World Tunnel Congress, 2022 [1]). At mountain tunnel construction sites where this system is applied, work behaviors such as crack observing are likely to change depending on the work environment and surrounding conditions. Therefore, the observation of tunnel face was used as the target task to verify the effect of environmental changes on crack detection time. This paper reports on the AI construction method and the usefulness of this system, which was verified quantitatively and objectively in a demonstration case conducted with the budget of a project commissioned by the Ministry of Economy, Trade and Industry (METI) in 2021.
Development and Applicability Assessment of a Tunnel Face Monitoring System Against Tunnel Face Collapse
To avoid damage caused by rock collapse in tunnel faces, it is necessary to sound an alarm before a rock collapse occurs so that workers have time to evacuate from the tunnel face. However, the area around the tunnel face is a confined workspace where multiple workers and machines are mixed together, and visual monitoring by observers alone is not sufficient to ensure safety and time. To solve these problems, we have developed a system to identify cracks on the surface of shotcrete using deep learning based on semantic segmentation, a method of image analysis, to realize constant monitoring as a technology to support monitoring and judgment (Tunnel Face Monitoring System) (Uke et al. in ITA-AITES World Tunnel Congress, 2022 [1]). At mountain tunnel construction sites where this system is applied, work behaviors such as crack observing are likely to change depending on the work environment and surrounding conditions. Therefore, the observation of tunnel face was used as the target task to verify the effect of environmental changes on crack detection time. This paper reports on the AI construction method and the usefulness of this system, which was verified quantitatively and objectively in a demonstration case conducted with the budget of a project commissioned by the Ministry of Economy, Trade and Industry (METI) in 2021.
Development and Applicability Assessment of a Tunnel Face Monitoring System Against Tunnel Face Collapse
Lecture Notes in Civil Engineering
Hazarika, Hemanta (Herausgeber:in) / Haigh, Stuart Kenneth (Herausgeber:in) / Chaudhary, Babloo (Herausgeber:in) / Murai, Masanori (Herausgeber:in) / Manandhar, Suman (Herausgeber:in) / Hase, Ryohei (Autor:in) / Mihara, Yasuji (Autor:in) / Awaji, Dohta (Autor:in) / Hojo, Rieko (Autor:in) / Shimizu, Shoken (Autor:in)
International symposium on Construction Resources for Environmentally Sustainable Technologies ; 2023 ; Fukuoka, Japan
08.03.2024
11 pages
Aufsatz/Kapitel (Buch)
Elektronische Ressource
Englisch
3D Ground Movements Due to Tunnel Face Collapse
British Library Conference Proceedings | 2020
|3D Ground Movements Due to Tunnel Face Collapse
ASCE | 2020
|Numerical Study on Face Deformation and Collapse of Shield Tunnel
British Library Conference Proceedings | 2007
|British Library Online Contents | 2001
|Tunnel Face Stability Study in Soft Shallow Tunnel
Trans Tech Publications | 2014
|