Prediction of Subsidence during TBM Operation in Mixed-Face Ground Conditions from Realtime Monitoring Data
Abstract
:1. Introduction
2. Literature Review
3. Description of Project and EPB (Earth Pressure Balance) TBM Driving
3.1. TBM Driving
3.2. Geological Site Conditions
3.3. Occurrence of Subsidence
4. LSTM Networks
5. Training Model and Prediction for Subsidence
5.1. Challenges
5.2. Training Phase One: Feature Extraction from Machine Data
5.3. Results of Phase 1 Training
5.4. Training Phase Two: Subsidence Estimation of Features from Machine Data
5.5. Results of Phase Two Training
5.6. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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AI Model | Researcher | Theme | Year |
---|---|---|---|
PCA/ANFIS | Bouayad, D; Emeriault, F. [12] | Ground surface settlements induced by shield tunneling | 2017 |
Evolutionary Hybrid Neural Network | Zhang, K.; Lyu, H. M.; Shen, S. L.; Zhou, A.; Yin, Z. Y. [5] | Predicting shield tunneling induced ground settlement | 2020 |
Machine Learning | Chen, R.; Zhang, P.; Wu, H.; Wang, Z.; Zang, Z. [13] | Predicting shield tunneling induced ground settlement | 2019 |
ANN (Artificial Neural Network) | Kim, C.; Bae, G.; Hong, C.; Park, S.; Shin, H. [14] | Prediction of ground surface settlement due to tunneling | 2001 |
Suwansawat, S.;Einstein, H. [15] | Prediction the max. surface settlement caused by EPB Shield | 2006 | |
PSO-ANN | Hasanipanah, M.; Nooria-Bidgoli, M.; Jahed Armaghani, D.; Khamesi, H. [16] | Predicting surface settlement caused by tunneling | 2016 |
SVM (Support Vector Machine) | Samui, P. Sitharam, T. [17] | Settlement of shallow foundation on cohesionless soil | 2008 |
Item | Description |
---|---|
Type | Earth pressure balance |
Supplier | Herrenknecht (Germany) |
OD/ID | 7.71 m/7.69 m |
Thrust force | 1154 kN/m2/53,878 kN |
Cutter head | Dome type, 17-inch cutter, scraper |
Torque | 10,364–6500 kN-m (α = 22~25) |
RPM | 3.4 RPM, electric motor type |
Segment | RC-segment, L1, 500 mm + t300 mm, 7 pieces |
Muck handling | Muck car + vertical conveyor belt, belt scale |
Grouting | Upper Section 4 EA, probe drilling (22 holes) |
Item | Characteristics of Rock Type |
---|---|
Residual soil | Sandy gravel, N: 3~50, max size: φ500 mm |
Weathered rock | Silty core, Cohesion: 31 kPa, φ = 32° |
Soft rock | Gneiss, RMR: 30~50 |
Water Level | Approx. GL-7 m |
Unit weight | 20–21 kN/m2 |
UCS | 20–110 MPa |
Permeability | 2.5 × 10−3~2.5 × 10−5 cm/s |
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Lee, H.-K.; Song, M.-K.; Lee, S.S. Prediction of Subsidence during TBM Operation in Mixed-Face Ground Conditions from Realtime Monitoring Data. Appl. Sci. 2021, 11, 12130. https://doi.org/10.3390/app112412130
Lee H-K, Song M-K, Lee SS. Prediction of Subsidence during TBM Operation in Mixed-Face Ground Conditions from Realtime Monitoring Data. Applied Sciences. 2021; 11(24):12130. https://doi.org/10.3390/app112412130
Chicago/Turabian StyleLee, Hyun-Koo, Myung-Kyu Song, and Sean Seungwon Lee. 2021. "Prediction of Subsidence during TBM Operation in Mixed-Face Ground Conditions from Realtime Monitoring Data" Applied Sciences 11, no. 24: 12130. https://doi.org/10.3390/app112412130
APA StyleLee, H. -K., Song, M. -K., & Lee, S. S. (2021). Prediction of Subsidence during TBM Operation in Mixed-Face Ground Conditions from Realtime Monitoring Data. Applied Sciences, 11(24), 12130. https://doi.org/10.3390/app112412130