Development and Testing of a Mathematical Model for Dynamic Network Simulation of the Oil Displacement Process
Abstract
:1. Introduction
2. Mathematical Model of Network Simulation of Oil Displacement Processes
- Two-phase motion is considered: a fluid with a wetting angle less than 90 degrees will be called wetting, and the other one is non-wetting.
- One mode of two-phase fluid flow is implemented, which is the piston-like displacement mode where the phase interface is perpendicular to the flow.
- Reverse displacement of fluid is prohibited, i.e., if the element is completely filled with the displacing fluid, then the displaced fluid cannot return back to the element.
- Fluids do not mix with each other due to a rigid phase interface.
- However, in network elements, where both components are present, the physical properties of the fluid (density and viscosity) are determined by the mixture rule.
- Fluids are incompressible; therefore, information about pressure changes is distributed instantly without shock waves.
2.1. A Hydraulic Network Model for Determining the Distribution of Pressure Drops and Flow Rates throughout the Network
2.2. Transfer of the Second Phase over the Network
2.2.1. Clustering
2.2.2. Capillary Pressure
2.2.3. Computational Algorithm
- Setting the initial distribution of pressure, flow rates, and phase concentrations over the network.
- Determining the list of network elements in which the phase replacement process at the first time step is possible.
- Calculating the density and pressure for all network elements by Equations (5) and (6).
- Calculate (by Equation (12)) and set the pressure for the branches corresponding to capillary pressure.
- Solving the hydraulic problem, which results in obtaining a new distribution of pressure and flow rates.
- Calculating the pressure field for the nodes.
- Determining the flow rate in the branches using the above calculated pressure field.
- Prohibiting the reverse displacement of the fluid in the network branches.
- Repeating the operation starting from point 5a until the number of blocked branches becomes zero.
- .
- Recalculating the phase concentrations using Equation (11).
- Conducting checking for the presence of closed clusters.
- Updating the list of network elements in which the phase replacement process is possible at a time step.
- Repeating the entire algorithm starting from the 3rd step.
3. Validation and Testing the Developed Numerical Technique
3.1. Oil Displacement from the Straight Microchannel
3.2. Oil Displacement from a Microfluidic Chip with Irregular Porosity
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Wetting Angle | Calculated pressure drop, kpa | Analytical Pressure Drop, kpa | Discrepancy of Total Pressure Drop, % | Calculated Difference with the Option with a Wetting Angle of 90°, kPa | Analytical Difference with the Option with a Wetting Angle of 90°, kPa | Discrepancy of Capillary Pressure Drop, % |
---|---|---|---|---|---|---|
40 | 3.437 | 3.437 | 0 | 0.186 | 0.184 | 0.01 |
90 | 3.251 | 3.253 | 0.06 | 0 | 0 | 0 |
140 | 3.07 | 3.069 | −0.03 | −0.181 | −0.184 | −0.02 |
Parameter | Value |
---|---|
Microchannel cross-section | 100 × 110 µm |
Cross-section of the pores | Ø85 and Ø63 µm |
Inlet channel length, including bifurcations | 27.7 mm |
Outlet channel length, including bifurcations | 99.2 mm |
Total length of the porous channel | 4800 mm |
Inlet channel volume | 0.9 µl |
Outlet channel volume | 3.2 µl |
Porous space volume | 38 µl |
Roughness of channel surface | 5 nm |
Channel coating | hydrophilic |
Microchannel cross-section | 100 × 110 µm |
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Filimonov, S.A.; Pryazhnikov, M.I.; Pryazhnikov, A.I.; Minakov, A.V. Development and Testing of a Mathematical Model for Dynamic Network Simulation of the Oil Displacement Process. Fluids 2022, 7, 311. https://doi.org/10.3390/fluids7090311
Filimonov SA, Pryazhnikov MI, Pryazhnikov AI, Minakov AV. Development and Testing of a Mathematical Model for Dynamic Network Simulation of the Oil Displacement Process. Fluids. 2022; 7(9):311. https://doi.org/10.3390/fluids7090311
Chicago/Turabian StyleFilimonov, Sergey A., Maxim I. Pryazhnikov, Andrey I. Pryazhnikov, and Andrey V. Minakov. 2022. "Development and Testing of a Mathematical Model for Dynamic Network Simulation of the Oil Displacement Process" Fluids 7, no. 9: 311. https://doi.org/10.3390/fluids7090311
APA StyleFilimonov, S. A., Pryazhnikov, M. I., Pryazhnikov, A. I., & Minakov, A. V. (2022). Development and Testing of a Mathematical Model for Dynamic Network Simulation of the Oil Displacement Process. Fluids, 7(9), 311. https://doi.org/10.3390/fluids7090311