Buried Pipeline Collapse Dynamic Evolution Processes and Their Settlement Prediction Based on PSO-LSTM
Abstract
:1. Introduction
2. Pipe-Soil Collapse Analysis Model
2.1. Engineering Calculation Model
2.2. Numerical Analysis Model
2.3. Calculation Results and Analysis
3. Dynamic Evolution Process of Underground Pipeline Collapse and Its Settlement Prediction
3.1. The Collapse Evolution Process of Soil Deformation
- (1)
- First in the middle and then spreading to the surroundings, the middle deforms into a rhombus shape.
- (2)
- The maximum deformation continues to expand from the top downward until it penetrates the remaining soil.
- (3)
- In the early stage of penetration, the top deformation is greater than the bottom deformation. After penetration, it continues to develop, and the bottom deformation gradually becomes larger than the top deformation.
- (4)
- The maximum deformation of the soil develops from compression in the upper part to tension in the lower part as the soil loses.
3.2. Collapse Evolution Process of Buried Pipeline Deformation
- (1)
- Diffusion occurs first in the middle and then around, and the middle deformation is a diamond.
- (2)
- The maximum deformation expands downward from the top until it penetrates the pipe.
- (3)
- In the early stage of penetration, the top deformation is greater than the bottom deformation. After penetration, it develops continuously. The tensile deformation at the bottom is slowly greater than the compressive deformation at the top. At the same time, the tensile area continues to expand from the middle to both ends.
- (4)
- The deformation of the pipeline is elliptical from the upper compression, and it is circular with the development of soil loss. The tops of both ends of the pipeline are compressed and developed into the tension of the middle collapse area.
3.3. The Collapse Evolution Process of Buried Pipeline Section Stress
- (1)
- In the early stage of collapse, that is, before the third layer of soil is lost, the stress on both sides of the pipe section is positive and in a state of tension. This is due to the squeezing effect of the soil on the pipe. As the collapse process evolves, the stress on both sides of the pipe section at the mid-span section position becomes negative and is in a compressed state. In the middle and late stages of collapse, that is, after the fifth layer of soil was lost, a new fluctuation value appeared between the edge of the collapse area and the middle of the span. This was due to the emergence of the “pipe-soil separation” phenomenon, accompanied by the generation of pipe-soil friction.
- (2)
- In the early stage of collapse, that is, before the third layer of soil is lost, the stress at the bottom point of the pipe section is negative and in a state of compression. As the collapse process evolves, the stress at the bottom point of the pipe section at the mid-span section is positive and in a state of tension. This is because with the loss of soil, the effect of soil weakens, and the settlement and deformation of the pipeline increase, resulting in increased tension at the bottom.
- (3)
- Before the fourth layer of soil collapses, the stress at the top of the pipe section is negative and in a state of compression. As the collapse process evolves, the stress at the bottom of the pipe section at the edge of the collapse area is positive and in a state of tension. This is due to the “step” shape of soil loss, which causes the bottom of the pipe to be sheared by the soil.
3.4. PSO-LSTM Settlement Prediction Model
3.4.1. LSTM structure
- (1)
- Forgetting gate: The forgetting gate determines which information should be removed from the cell state. It controls the degree of forgetting of the cell state through the sigmoid activation function.
- (2)
- Input gate: The input gate determines which information should be added to the cell state. It controls the importance of input information through the sigmoid activation function.
- (3)
- Output gate: The output gate determines which part of the cell state should be output to the next layer of the network and is processed by a sigmoid activation function and a tanh activation function to generate the final output.
3.4.2. Data Preparation
3.4.3. Model Building
3.4.4. Test Result
3.4.5. Results Comparison
4. Discussion
4.1. Discussion on Soil Collapse Simulation Research Methods
4.2. Discussion on the Generality of Research and Analysis Results
4.3. Discussion on the Risk of Overfitting the PSO-LSTM Prediction Model
5. Conclusions and Prospect
5.1. Conclusions
- (1)
- Based on the unit life and death technology, soil loss is simulated through the gradual failure of the mechanical effects of the collapse unit, which can accurately reflect the dynamic evolution process and mechanical characteristics of the collapse of the buried pipeline.
- (2)
- The axial stress is the control stress, the bottom of the mid-span pipe is the control point, and the mid-span section is the dangerous section. Excessive tensile stress is the main cause of the failure of buried pipelines.
- (3)
- Confirm the existence of the “pipe-soil separation” phenomenon, which occurs in the third layer of soil loss, and then supplement the assumption of the applicable prerequisite of “pipe-soil is always in contact” in the elastic foundation beam theory: settlement deformation of buried pipelines The calculation needs to be divided into two stages: cooperative deformation and non-cooperative deformation.
- (4)
- The collapse evolution process of buried pipeline deformation: first, the deformation first spreads from the middle to the surroundings, and the deformation in the middle takes on a “rhombus” shape; secondly, the maximum deformation continues to expand from the top downward until it “penetrates” the pipeline; the early stage of “penetration” is The deformation at the top is greater than the deformation at the bottom and continues to develop after “penetration”. The tensile deformation at the bottom is gradually greater than the compression deformation at the top.
- (5)
- Through the comparison of three settlement prediction models, the model in this paper shows good trend prediction and has the highest accuracy throughout the collapse cycle. This shows that the model can unearth the length of the pipeline, load sub-steps, top position of the pipe, position of the bottom of the pipe, positions of both sides of the pipe, material parameters, axial stress, pipe-soil contact status, and buried ground during the iterative training process. The internal laws of pipeline settlement values output a more reasonable settlement prediction value. The use of this model can provide a reference for safety risk management, disaster early warning, and intelligent monitoring when buried pipelines suffer from soil collapse disasters.
5.2. Prospect
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Piping Material | Density (kg/m3) | Elastic Modulus (MPa) | Yield Stress (MPa) | Ultimate Stress (MPa) | Poisson Ratio |
---|---|---|---|---|---|
PE100 | 950 | 800 | 40 | 45 | 0.45 |
Soil Type | Density (kg/m3) | Elastic Modulus (MPa) | Force of Cohesion (kPa) | Angle of Internal Friction (°) | Expansion Angle (°) | Poisson Ratio |
---|---|---|---|---|---|---|
sand | 2000 | 10 | 20 | 20 | 0 | 0.3 |
Number of Layers | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 |
---|---|---|---|---|---|---|---|---|
Thickness | 0.016 m | 0.032 m | 0.032 m | 0.032 m | 0.016 m | 0.032 m | 0.032 m | 0.032 m |
Ratio | 7.14% | 21.42% | 35.7% | 49.98% | 57.12% | 71.4% | 85.68% | 100% |
Optimization Parameters | The Number of Neurons | Dropout | Batch_Size |
---|---|---|---|
range | 16–64 | 0.03–0.3 | 64–128 |
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Zhou, Y.; Teng, Z.; Chi, L.; Liu, X. Buried Pipeline Collapse Dynamic Evolution Processes and Their Settlement Prediction Based on PSO-LSTM. Appl. Sci. 2024, 14, 393. https://doi.org/10.3390/app14010393
Zhou Y, Teng Z, Chi L, Liu X. Buried Pipeline Collapse Dynamic Evolution Processes and Their Settlement Prediction Based on PSO-LSTM. Applied Sciences. 2024; 14(1):393. https://doi.org/10.3390/app14010393
Chicago/Turabian StyleZhou, Yadong, Zhenchao Teng, Linlin Chi, and Xiaoyan Liu. 2024. "Buried Pipeline Collapse Dynamic Evolution Processes and Their Settlement Prediction Based on PSO-LSTM" Applied Sciences 14, no. 1: 393. https://doi.org/10.3390/app14010393
APA StyleZhou, Y., Teng, Z., Chi, L., & Liu, X. (2024). Buried Pipeline Collapse Dynamic Evolution Processes and Their Settlement Prediction Based on PSO-LSTM. Applied Sciences, 14(1), 393. https://doi.org/10.3390/app14010393