Research on Deformation Safety Risk Warning of Super-Large and Ultra-Deep Foundation Pits Based on Long Short-Term Memory
Abstract
:1. Introduction
2. Research Area Engineering Overview
3. Introduction and Construction of Excavation-Induced Deformation Prediction Model
3.1. Recurrent Neural Networks (RNNs)
3.2. Long Short-Term Memory Neural Networks (LSTM)
- (1)
- Input Gate: The input gate determines the ratio of new memories merged with old memories.
- (2)
- Forget Gate: The forget gate selects which historical information to discard, preserving useful historical information and controlling the amount of historical information passed down.
- (3)
- Output Gate: The output gate governs the LSTM unit’s response to external stimuli and regulates the size of the output memory unit’s output.
3.3. Construction of LSTM Prediction Model
3.3.1. Training and Prediction with LSTM Model
3.3.2. Processing of Monitoring Data
- (1)
- Data Preprocessing
- (2)
- Data Normalization
4. Safety Risk Early Warning in Foundation Pit Engineering
4.1. Establishment of Safety Risk Early Warning Index System
4.2. Risk Quantification Based on Monitoring Data
4.3. Risk Assessment and Determination of Risk Levels
5. Application of LSTM Model in Deep Excavations
5.1. Establishment of Risk Warning Index System
5.2. Preparation of Predictive Data Samples
5.3. Training and Prediction of the Model
5.4. Analysis of Prediction Results
5.4.1. Comparison of Prediction Results
5.4.2. Analysis of Predictive Results
- (1)
- Absolute Error Analysis
- (2)
- Analysis of Relative Error
5.4.3. Transformation of Predicted Results into Risk Quantities
- (1)
- Transformation of W13 Predicted Results into Risk Quantities
- (2)
- Overall Risk Quantity of the Foundation Pit
5.5. Risk Control Measures
- (1)
- Throughout the construction of the foundation pit, adherence to the construction principles of “layered, step-by-step, symmetrical, balanced, and time-limited” is imperative, particularly during the excavation of earthwork for the foundation pit. This entails ensuring vertical layering, horizontal segmentation, and employing the construction excavation method of supporting before digging.
- (2)
- While excavating earthwork for the foundation pit, strict adherence to the foundation pit’s design requirements for slope protection is paramount to prevent horizontal instability. Additionally, timely execution of construction on the prestressed anchor cables of the support system is crucial for minimizing the exposure time of the unsupported foundation pit. Moreover, controlling the horizontal deformation of the support piles is imperative, particularly in high-risk areas.
- (3)
- Increase monitoring frequency and strengthen inspection. Select experienced personnel and monitoring personnel to form a group, increase the frequency of monitoring high-risk projects, strengthen patrols, and when the monitoring displacement continues to increase, relevant experts should be hired to evaluate and investigate the reasons, and the foundation pit should be reinforced in a timely manner to control the deformation of the foundation pit and prevent the overall risk level of the foundation pit from increasing.
- (4)
- During excavation of a foundation pit to its base, it is imperative to promptly address the pit bottom and pour the cushion layer of the foundation pit to mitigate excessive uplift of the bottom unloading, which could significantly affect the vertical displacement of the supporting piles.
- (5)
- Minimize the surface load within the influence range of the foundation pit. Store materials necessary for foundation pit construction in areas with favorable soil layers or lower risk within the foundation pit. In situations where conditions are constrained and materials must be stored in higher-risk areas, ensure temporary storage and reinforce the foundation pit’s support system.
6. Conclusions
- (1)
- This study focuses on developing a prediction and warning model for deep foundation pit deformation, proposing a method to convert monitoring data into risk quantities, assessing the overall safety status of foundation pits, and establishing a safety risk warning model for deep foundation pit deformation based on LSTM. Comparative analysis was conducted on the relative and absolute errors between the predicted results and the measured data. The absolute error value was controlled within 0.24~0.16 mm, and the average relative error value was 0.38%. Both fluctuated around the zero line, proving the effectiveness and accuracy of the LSTM training model.
- (2)
- By calculating the safety risk level of the on-site monitoring data and predicted data for each monitoring project, the overall safety risk predicted by the LSTM model is 1.17, with a risk level of four; the actual monitoring of the overall safety risk of the foundation pit is 1.13, and the risk level is also level four. The acceptance criteria and risk control plan are “unacceptable and require decision-making, develop control and early warning measures”. Therefore, corresponding early warning and control measures are proposed for monitoring projects with high risk levels in foundation pits to ensure that the foundation pit can maintain safety and stability during operation.
- (3)
- In terms of predicting the deformation of foundation pits, the LSTM model has good accuracy and effectiveness, and can be used to predict the deformation of various monitoring items in super-large and ultra-deep foundation pits in round gravel strata. By utilizing a quantitative analysis method to convert predictive data into risk indicators, the model can accurately determine the risk levels of individual monitoring projects within the foundation pit and the overall safety risk level. A comparison with scientifically sound judgment criteria enables the assessment of foundation pit engineering safety, ensuring reliable risk management and control.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Stratum | Elastic Modulus (MPa) | Poisson’s Ratio | Bulk Density (kN/m3) | Cohesive Force (kPa) | Internal Friction Angle (°) | Three Axis Test Secant Stiffness (kN/m2) |
---|---|---|---|---|---|---|
Artificial fill | 7.0 | 0.28 | 18.7 | 19.5 | 8.5 | 3850 |
Peaty soil | 12.1 | 0.40 | 13.2 | 20.0 | 6.0 | 6655 |
Silty clay | 16.0 | 0.30 | 19.0 | 40.0 | 12.0 | 8800 |
Round gravel soil | 196.7 | 0.46 | 19.4 | 9.4 | 41.0 | 108,185 |
Objective | Primary Indicator | Secondary Indicator |
---|---|---|
Safety Risk Early Warning for Deep Excavation Deformation | Main Structure | Horizontal Displacement of Pile Head |
Vertical Displacement of Pile Head | ||
Anchor Stress | ||
Surrounding Environment | Vertical Displacement of Surrounding Ground Surface | |
Deformation of Surrounding Buildings or Structures | ||
Vertical Displacement of Surrounding Roads | ||
Vertical Displacement of Flood Protection Wall Top |
<0.3 | 0.3~0.7 | 0.7~0.9 | 0.9~1.2 | >1.2 | |
---|---|---|---|---|---|
Risk level (r) | Level one | Level two | Level three | Level four | Level five |
Weight coefficients () | 0.018 | 0.050 | 0.135 | 0.368 | 1.000 |
Risk Level | Acceptance Criteria | Risk Warning and Control Plan |
---|---|---|
Level one | Negligible | Daily management and review |
Level two | Tolerable | Need to strengthen attention, daily review, and management |
Level three | Acceptable | Need to pay attention to and prevent risk, take monitoring measures |
Level four | Unacceptable | Need to make decisions and formulate control and warning measures |
Level five | Reject acceptance | Immediately stop, rectify, avoid, or initiate contingency plans |
Predicted Risk Quantity | Actual Risk Quantity | ||||
---|---|---|---|---|---|
Measurement Point | Risk Quantity | Weight | Measurement Point | Risk Quantity | Weight |
D1-1 | 0.49 | 0.050 | D1-1 | 0.70 | 0.050 |
FX6 | 1.04 | 0.368 | FX6 | 1.07 | 0.368 |
M2-237 | 0.20 | 0.018 | M2-237 | 0.20 | 0.018 |
QZF2 | 1.24 | 1.000 | QZF2 | 1.21 | 1.00 |
WY13 | 1.08 | 0.368 | WY13 | 1.02 | 0.368 |
W13 | 1.26 | 0.368 | W13 | 1.26 | 0.368 |
F1-1 | 0.40 | 0.050 | F1-1 | 0.56 | 0.050 |
αt | 1.17 | αt | 1.13 |
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Guo, Y.; Li, C.; Yan, M.; Ma, R.; Bi, W. Research on Deformation Safety Risk Warning of Super-Large and Ultra-Deep Foundation Pits Based on Long Short-Term Memory. Buildings 2024, 14, 1464. https://doi.org/10.3390/buildings14051464
Guo Y, Li C, Yan M, Ma R, Bi W. Research on Deformation Safety Risk Warning of Super-Large and Ultra-Deep Foundation Pits Based on Long Short-Term Memory. Buildings. 2024; 14(5):1464. https://doi.org/10.3390/buildings14051464
Chicago/Turabian StyleGuo, Yanhui, Chengjin Li, Ming Yan, Rui Ma, and Wei Bi. 2024. "Research on Deformation Safety Risk Warning of Super-Large and Ultra-Deep Foundation Pits Based on Long Short-Term Memory" Buildings 14, no. 5: 1464. https://doi.org/10.3390/buildings14051464
APA StyleGuo, Y., Li, C., Yan, M., Ma, R., & Bi, W. (2024). Research on Deformation Safety Risk Warning of Super-Large and Ultra-Deep Foundation Pits Based on Long Short-Term Memory. Buildings, 14(5), 1464. https://doi.org/10.3390/buildings14051464