Assessment of the Nonlinear Flow Characteristic of Water Inrush Based on the Brinkman and Forchheimer Seepage Model
Abstract
:1. Introduction
2. Influence of Brinkman Seepage on the Evolution Law of Fault Water Inrush
2.1. Underground Rock Seepage Mechanism
- Groundwater flowing into a fault from an aquifer is a continuum.
- Groundwater is incompressible and unaffected by temperature, and the physical parameters of groundwater are constant.
2.2. Analysis of the Flow Field Characteristics of Fault Water Inrush
2.2.1. Aquifer Darcy Laminar Flow
2.2.2. Fault Brinkman Field
2.2.3. Permeability Ratio between Fault and Aquifer
2.3. Model Establishment
2.4. Transitional Boundary Conditions of Each Flow Field
2.5. Analysis of Numerical Result
2.5.1. Analysis of Water Flow Pressure
2.5.2. Analysis of the Characteristics of Fault Water Flow Velocity
3. Effect of Forchheimer Seepage on the Evolution Law of Fault Water Inrush
3.1. Analysis of the Flow Field Characteristics of Fault Water Inrush
Analysis of the Non-Darcy Forchheimer Flow Formula in Faults
3.2. Analysis of the Calculation Results
3.2.1. Analysis of Water Flow Pressure
3.2.2. Influence of the Forchheimer Coefficient on Fault Water Inrush
3.2.3. Influence of the Non-Darcy Effect on Groundwater Flow
3.2.4. Influence of the Forchheimer Coefficient on Groundwater Flow
4. Conclusions
- (1)
- During groundwater seepage, groundwater flow does not always satisfy the linear Darcy equation. A high-speed flowing fluid will form a non-Darcy effect zone near the fault due to the gradual change in the hydrostatic pressure of the aquifer and the porosity of the fault. As fault permeability increases, the non-Darcy flow region will gradually expand from the fault.
- (2)
- In fault water inrush induced by excavation, the flow resistance of groundwater in the fault is finally dominated by viscous resistance. Groundwater flow in faults changes constantly. Therefore, water inrush from underground faults is a dynamic process, and the state of faults constantly changes with their attributes.
- (3)
- The Forchheimer equation can quantitatively describe flow behavior in faults and analyze various changes in water inrush from faults under various working conditions by changing permeability. It can be used to determine transition from Darcy flow to high-speed non-Darcy flow.
- (4)
- For engineering purposes, the Forchheimer equation has a reasonable physical meaning and can be used to conveniently describe groundwater flow, particularly non-Darcy flow. Therefore, the Forchheimer equation is recommended to predict the inflow of groundwater inrush. Predicting this inflow is critical for the safety of a project. In the case of low velocity, the non-Darcy effect was not evidenced in the entire region; however, it was in several high-velocity areas.
- (5)
- When water flows in the aquifer, it can be regarded as a Darcy seepage process because of its small velocity. When water flows through faults, the porosity and permeability of faults are very high, and the velocity of flow is very high. At this time, it can no longer be regarded as a Darcy flow process. The Forchheimer’s model and Brinkman’s model can be adopted to simulate this non-Darcy process in this stage. From the simulation results (the distribution characteristics of flow pressure and water velocity), the difference between Forchheimer’s model and Brinkman’s model results are not obvious. Both models can be used to simulate the flow characteristics in the process of water inrush. Further research should be conducted to verify the validity of the two models in the analysis of water inrush accidents through experiments.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Parameter | Expression |
---|---|
Water density | 1000 kg/m3 |
Dynamic viscosity coefficient | 0.001 Pa·s |
Permeability | 2.1 × 10−11 m2 |
Model length | 350 m |
Initial pressure | 4.1× 106 Pa |
Flow Field | Aquifer | Fault |
---|---|---|
Water density (kg/m3) | 1000 | 1000 |
Dynamic viscosity coefficient (Pa·s) | 0.001 | 0.001 |
Porosity | 0.14 | 0.348 |
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Xue, Y.; Liu, Y.; Dang, F.; Liu, J.; Ma, Z.; Zhu, L.; Yang, H. Assessment of the Nonlinear Flow Characteristic of Water Inrush Based on the Brinkman and Forchheimer Seepage Model. Water 2019, 11, 855. https://doi.org/10.3390/w11040855
Xue Y, Liu Y, Dang F, Liu J, Ma Z, Zhu L, Yang H. Assessment of the Nonlinear Flow Characteristic of Water Inrush Based on the Brinkman and Forchheimer Seepage Model. Water. 2019; 11(4):855. https://doi.org/10.3390/w11040855
Chicago/Turabian StyleXue, Yi, Yang Liu, Faning Dang, Jia Liu, Zongyuan Ma, Lin Zhu, and Hongwei Yang. 2019. "Assessment of the Nonlinear Flow Characteristic of Water Inrush Based on the Brinkman and Forchheimer Seepage Model" Water 11, no. 4: 855. https://doi.org/10.3390/w11040855
APA StyleXue, Y., Liu, Y., Dang, F., Liu, J., Ma, Z., Zhu, L., & Yang, H. (2019). Assessment of the Nonlinear Flow Characteristic of Water Inrush Based on the Brinkman and Forchheimer Seepage Model. Water, 11(4), 855. https://doi.org/10.3390/w11040855