Leakage Monitoring and Quantitative Prediction Model of Injection–Production String in an Underground Gas Storage Salt Cavern
Abstract
:1. Introduction
2. Model Development
2.1. Mathematical Model
- (1)
- The temperature of the pipe column is symmetrical along the center line of the pipe column, and the pipe column is isotropic;
- (2)
- There is only one case of string leakage in the casing;
- (3)
- The annulus between the pipe string and the casing is sealed;
- (4)
- The thermal physical properties of each material in the wellbore remain unchanged;
- (5)
- No consideration is given to changes in borehole structure.
2.2. Model Solving
- (1)
- Input the initial temperature and pressure distribution of the inner and outer tubes;
- (2)
- Calculate the thermal physical property parameters of the gas according to the temperature and pressure field distribution calculated at time k or the last iteration;
- (3)
- Assume the leakage rate of pipe leakage port Q at time k;
- (4)
- The mass conservation equation is used to solve the pressure field distribution at k + 1 moment;
- (5)
- The fluid–column–annulus heat transfer model established in this paper is used to solve the temperature field distribution at k + 1;
- (6)
- Determine whether the temperature field distribution meets the convergence condition, and, if it does not, jump back to step (2);
- (7)
- Perform the k + 2 moment solution until the solution time is complete.
3. Experimental Verification
- (1)
- Open the bolts and flanges on the wall of the jacket tube.
- (2)
- Release the pressure in the annulus.
- (3)
- Replace the leak holes of other sizes and leak points of different depths.
- (4)
- Repeat the above experiment process.
4. Sensitivity Analysis
4.1. Leakage Rate
4.2. Ambient Temperature
4.3. Heat Transfer Coefficient
5. Conclusions
- The formula for calculating the heat transfer at the leakage port under unsteady temperature conditions was established, and the quantitative relationship between the temperature difference and leakage rate was set by considering the Joule–Thomson effect. The predicted value of the gas leakage rate was obtained by inverting the temperature data of the string.
- A simulation test of leakage monitoring for the injection–production string of salt cavern gas storage was carried out. Combined with DTS monitoring technology, the measured temperature value of string leakage under pressure was obtained. By comparing the calculated value with the predicted value, the prediction of the leakage rate was realized, and the maximum error was less than 5%, which verified the accuracy of the mathematical model.
- The sensitivity of the leakage rate, ambient temperature, and related heat transfer coefficient was evaluated. The results showed that when the leakage rate value was reduced to 0.16 m3/h, it would be difficult to accurately monitor the DTS when the temperature change range was less than 0.5 °C; the ambient temperature significantly influences temperature monitoring, and the temperature fluctuation error at 20 to 50 °C is 26%. This influence factor should be considered when designing the DTS.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
A | leakage port area, m2 |
Cv,g | specific heat capacity of the fluid, J/(kg∙°C) |
H | energy carried by the fluid, J/kg |
M | molar mass of gas, kg/kmol |
p | fluid pressure, Pa |
PA | wellhead annulus pressure, Pa |
R | molar gas constant, J/(mol∙K) |
t | leakage time, s |
T | temperature of leakage point, °C |
Tf | temperature of pore fluid, °C |
U | internal energy of a molar gas at every moment, J/kg |
v | fluid leakage rate, m2/s |
Z | compression factor |
ρ | fluid density, kg/m3 |
μjT | Joule–Thomson effect coefficient, K/Pa |
Δt | increment of time, s |
Δz | a micro-expression of the length of the leakage path from the pipe column to the annulus |
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DTS | Index |
---|---|
Detection unit length (spatial resolution) | 0.02 m |
Positioning accuracy | ±1 m |
Measuring time | <30 s |
Temperature resolution | 0.1 °C |
Sampling interval | 0.02 m |
Temperature variation accuracy | 0.5 °C (2000 m) |
No. | Leakage Position (m) | Test Phase | Average Leakage Rate (m3/h) | Interface Displacement (m/h) |
---|---|---|---|---|
W1# | 892.1~894.5 | Phase 1 | 3.06 | 4.33 |
Phase 2 | 0.71 | 4.11 | ||
W2# | 893.2~895.4 | Phase 1 | 0.10 | 0.40 |
Phase 2 | 0.08 | 0.08 | ||
W3# | 894.3~896.2 | Phase 1 | 0.16 | 1.05 |
Phase 2 | 0.03 | 0.42 | ||
W4# | 903.2~904.3 | Phase 1 | 0.12 | 0.05 |
Phase 2 | 0.04 | 0.18 | ||
W5# | 888.9~889.7 | Phase 1 | 0.14 | 0.24 |
Phase 2 | 0.09 | 0.03 |
Parameter | Value | Parameter | Value |
---|---|---|---|
Wellbore diameter | 0.254 m | Ground temperature | 20 °C |
Gas recovery rate | 35 m3/s | Geothermal gradient | 0.03 °C/m |
Gas production duration | 8 d | Resting time | 8 d |
Initial gas storage pressure | 16.5 MPa | The density of the surrounding rock | 2650 kg/m3 |
Specific heat of gas | 2347 J/(kg∙K) | Thermal conductivity of gas | 0.15 W/(m∙K) |
Specific heat of surrounding rock | 999 J/(kg∙K) | Thermal conductivity of surrounding rock | 2.09 W/(m∙K) |
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Jiang, T.; Cao, D.; Liao, Y.; Xie, D.; He, T.; Zhang, C. Leakage Monitoring and Quantitative Prediction Model of Injection–Production String in an Underground Gas Storage Salt Cavern. Energies 2023, 16, 6173. https://doi.org/10.3390/en16176173
Jiang T, Cao D, Liao Y, Xie D, He T, Zhang C. Leakage Monitoring and Quantitative Prediction Model of Injection–Production String in an Underground Gas Storage Salt Cavern. Energies. 2023; 16(17):6173. https://doi.org/10.3390/en16176173
Chicago/Turabian StyleJiang, Tingting, Dongling Cao, Youqiang Liao, Dongzhou Xie, Tao He, and Chaoyang Zhang. 2023. "Leakage Monitoring and Quantitative Prediction Model of Injection–Production String in an Underground Gas Storage Salt Cavern" Energies 16, no. 17: 6173. https://doi.org/10.3390/en16176173
APA StyleJiang, T., Cao, D., Liao, Y., Xie, D., He, T., & Zhang, C. (2023). Leakage Monitoring and Quantitative Prediction Model of Injection–Production String in an Underground Gas Storage Salt Cavern. Energies, 16(17), 6173. https://doi.org/10.3390/en16176173