Evaluation of Jacking Forces in Weathered Phyllite Based on In Situ Pressuremeter Testing and Deep Learning
Abstract
:1. Introduction
2. Current Approaches for Assessing Frictional Jacking Forces
3. Project Background
4. Methodology
4.1. Cavity Expansion Theory and Pressuremeter Testing
4.2. Development of Rock Strength Parameters for Back-Analysis of Jacking Forces
4.3. Deep Learning Technique for Predicting OPERATION Parameters
4.4. Feature Visualisation of Operation Parameters through Attention Mapping
5. Results
5.1. Back-Analysis of Jacking Forces
5.2. Attention Mapping of Operation Parameters
6. Discussion
6.1. Influence of Operation Parameters at Micro-Tunnel Boring Machine (mTBM) Face
6.2. Influence of Jacking Speed on Jacking Force
6.3. Influence of Lubricant on Jacking Force
7. Conclusions
- (1)
- The pressuremeter testing was implemented to develop equivalent rock strength properties ( and ) based on cavity expansion theory, which will be used for back-analysing the frictional jacking forces model developed by Pellet-Beaucour and Kastner [17] on the friction coefficient.
- (2)
- The back-analysed friction coefficient using rock strength properties identified that the selected pipe jacking drive in weathered phyllite was well-lubricated. Furthermore, the discussed method using the pressuremeter test for the mechanistic approach was validated for back analysis on jacking forces in ‘soft rock’ [11,14].
- (3)
- The influences of pipe jacking operation parameters on jacking forces were visualised using the attention-based GRU model with an accuracy of 88%. From the overall analysis, the attention focused on the cumulative parameters, such as drive length, cumulative days and cumulative lubricant injected, became increasingly significant as the drive progressed.
- (4)
- The cumulative parameters contribute significantly to jacking forces. When the total number of days increases, it produces higher static frictional resistance along the pipes. When the pipe jacking progressed, the drive lengths increased, which caused higher frictional resistance pushing from the opposite direction, requiring larger jacking forces to overcome.
- (5)
- The operation parameters from the cutter face, such as thrust load, cutter torque and face slurry pressure, became less significant as the pipe jacking progressed. This observation is reasonable, considering the weathered phyllite has stable bore conditions, in which the jacking forces are more likely to be influenced by the increased friction along the surface of the pipe than the activities at the tunnel face.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Reference | Jacking Force Model | Definition and Soil Strength Parameters | ||
---|---|---|---|---|
[19] | = | pipe–soil interface frictional coefficient | ||
= | unit weight of soil | |||
= | diameter of pipe | |||
= | radius of pipe | |||
= | length of pipe | |||
= | residual friction angle | |||
[25] | = | soil–pipe adhesion | ||
= | reduction factor of jacking force | |||
= | outer diameter of pipe | |||
= | normal force | |||
= | interface friction angle | |||
= | pipe weight | |||
[17] | = | soil cohesion | ||
= | soil internal friction angle | |||
= | pipe–soil interface frictional coefficient | |||
= | length of pipe | |||
= | outer diameter of pipe | |||
= | unit weight of soil | |||
= | lateral earth pressure, 1 | |||
= | thrust coefficient of soil acting on pipe, 0.3 | |||
= | influencing soil width above pipe |
Operation Parameters | Influence on the Jacking Forces | References |
---|---|---|
Lubrication | Reduction in frictional force | [11,13,14] |
Stoppage | Increase in frictional static resistance | [13,15] |
Progress drive length | Increase in frictional force | [3,16,17] |
Jacking speed | Increase in face pressure force | [15,17,18,19] |
Shear Modulus | Function of Material Properties | Function of Cohesion and Friction Angle | Function of Friction Angle | Function of Dilation Angle |
---|---|---|---|---|
where = dilation angle | ||||
Where: = in-site pressure, derived from creep index plot | ||||
Frictional Jacking Force Model | Expressed Jacking Force Model |
---|---|
Where: = measured jacking forces |
Authors | ML/DL Techniques Used * | Objective | ||
---|---|---|---|---|
Prediction of Geological Conditions | Prediction of Changes in Ground Settlement | Prediction of Operation Parameters | ||
[26] | SVM | ✔ | ||
[36] | LSTM | ✔ | ||
[37] | RNN, LSTM | ✔ | ||
[38] | RNN | ✔ | ||
[39] | ANNs, GA-ANNs | ✔ | ||
[27] | ANNs, LSTM | ✔ | ||
[30] | ANNs, LSTM, GRU, Conv1d | ✔ | ||
[28] | GCN, LSTM | ✔ | ||
[40] | ANNs, LSTM | ✔ | ||
[29] | RF, SVM, AdaBoost | ✔ | ||
[20] | GRU, Attention mechanism | ✔ |
Parameters | Specification |
---|---|
Recurrent neural network type | Gated recurrent unit (GRU) |
Attention mechanism type | Bahdanau Attention |
Layers | 2 |
Neurons | 100 |
Epochs | 50 |
Step size | 10 |
Batch size | 1 |
Activation | Rectified Linear Unit (ReLU) |
Training set | 80% |
Testing set | 20% |
Strength Properties from Cavity Expansion Theory | Values |
---|---|
Young’s modulus, | 173 MPa |
Poisson’s ratio, | 0.3 |
Cohesion, | 3.6 MPa |
Friction angle, | 53° |
1.78 m | |
---|---|
Effective overburden pressure, | 162 kPa |
Best fit linear regression of measured jacking force, | 4.8 kN/m |
Cohesion, | 3600 kPa |
Friction angle, | 53.0° |
Friction coefficient, | 0.08 < 0.3 |
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Yeo, L.Y.; Phangkawira, F.; Kueh, P.G.; Lee, S.H.; Choo, C.S.; Zhang, D.; Ong, D.E.L. Evaluation of Jacking Forces in Weathered Phyllite Based on In Situ Pressuremeter Testing and Deep Learning. Geosciences 2024, 14, 55. https://doi.org/10.3390/geosciences14030055
Yeo LY, Phangkawira F, Kueh PG, Lee SH, Choo CS, Zhang D, Ong DEL. Evaluation of Jacking Forces in Weathered Phyllite Based on In Situ Pressuremeter Testing and Deep Learning. Geosciences. 2024; 14(3):55. https://doi.org/10.3390/geosciences14030055
Chicago/Turabian StyleYeo, Lit Yen, Fredrik Phangkawira, Pei Gee Kueh, Sue Han Lee, Chung Siung Choo, Dongming Zhang, and Dominic Ek Leong Ong. 2024. "Evaluation of Jacking Forces in Weathered Phyllite Based on In Situ Pressuremeter Testing and Deep Learning" Geosciences 14, no. 3: 55. https://doi.org/10.3390/geosciences14030055
APA StyleYeo, L. Y., Phangkawira, F., Kueh, P. G., Lee, S. H., Choo, C. S., Zhang, D., & Ong, D. E. L. (2024). Evaluation of Jacking Forces in Weathered Phyllite Based on In Situ Pressuremeter Testing and Deep Learning. Geosciences, 14(3), 55. https://doi.org/10.3390/geosciences14030055