Simulation Analysis of CO2-EOR Process and Feasibility of CO2 Storage during EOR
Abstract
:1. Introduction
1.1. Introduction
- CO2 and oil miscibility
- miscible
- near-miscible
- immiscible
- injection type
- continuous gas injection (CGI)
- water alternating gas injection (WAG)
- simultaneous water and gas injection (SWAG)
1.2. Literature Review
2. Materials and Methods
3. Results
4. Discussion
5. Conclusions
- Retention of CO2 was affected by the distance between the injection and the production wells; smaller distances between them mean a higher volume of retained CO2 related to higher permeabilities and depth. The WAG ratio also had an impact on retention: ratios of 1:1 and 1:2 showed bigger retention caused by slug size of gas injection, which means more volume of the CO2 injected.
- When considering economic factors, well distance has an important effect on values of NPV. Higher values of NPV were attached to the smaller distances and cases with a permeability of 50 mD. For greater distances, the value of NPV was lower. UF will not be affected by oil and carbon prices, discount rates, and royalties. So, despite the market situation, having a lower UF with positive NPV is an indicator for perspective EOR strategies because of lower expenses for CO2 recycling.
- The most optimal case should fulfill the highest NPV and retention and the lowest UF. From the results of this investigation, an optimal case had a permeability of 50 mD, depth ranges between 1545 and 1845 m (from near miscible to miscible conditions), a WAG ratio of 1:2 was the best followed by 1:1. Regarding well distances, the choice should be based on the benefit from a higher NPV (risked to changing oil and carbon prices) with a higher UF or a moderately smaller NPV with a slightly lower UF. In the absence of more simulation results, it can be concluded that there are some optimal (not maximum or minimum) depth and permeability which will give the highest retention, additional recovery, and thus NPV.
- The maximum correlation value in the diagonal correlation matrix was around 0.2, and the minimum was around −0.6, i.e., negative correlations were much higher than positive ones, which implies that the CO2-EOR failure uncertainty will be smaller than the quality of the profit assessments.
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
References
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Model 1 | Model 2 | Model 3 | |
---|---|---|---|
Depth (m) | 715 | 1545 | 1845 |
WAG Ratio | 1:1, 1:2, 2:1 | 1:1, 1:2, 2:1 | 1:1, 1:2, 2:1 |
Initial Datum Pressure (bar) | 78 | 164 | 195 |
Reservoir Temperature (°C) | 60 | 96.6 | 110 |
Permeability (mD) | 5, 50, and 250 | 5, 50, and 250 | 5, 50, and 250 |
Distance between injection and production wells | Smaller and Greater | Smaller and Greater | Smaller and Greater |
Time truncation and convergence controls | |
Target TTE (time truncation error): | 0.2 |
Maximum non-linear convergence error: | 0.001 |
Maximum material balance error: | 0.000001 |
Target reduction in the square of the relative residual norm in the linear solver: | Improvement by a factor of 1 × 10−10 in the square of the residual |
Maximum TTE (Time Truncation Error): | 10 |
Target normalized solution change: | 0.2 Fully Implicit |
Maximum normalized solution change: | 10 Fully Implicit |
Maximum fugacity (phase equilibrium) error convergence criterion: | 0.001 |
Control of Newton and linear iterations | |
Maximum number of non-linear iterations in a timestep: | 20 Fully Implicit |
Minimum number of non-linear iterations in a timestep: | 1 |
Maximum number of linear iterations: | 40 |
Minimum number of linear iterations in a Newton iteration: | 1 |
Maximum pressure change at last Newton iteration: | no-limit |
Target maximum pressure change in a timestep: | 100 atm |
Model 1 | Model 2 and Model 3 | |
---|---|---|
Component | mol% | mol% |
N2 | 0.04 | 0.09 |
CO2 | 0.36 | 0.46 |
C1 | 20.30 | 33.25 |
C2 | 3.66 | 3.92 |
C3 | 3.31 | 3.11 |
NC4 | 3.23 | 2.83 |
NC5 | 3.32 | 2.81 |
C6 | 3.36 | 2.78 |
C7::13 | 8.80 | 7.24 |
C14::19 | 16.72 | 13.60 |
C20::25 | 17.64 | 14.29 |
C26::32 | 12.86 | 10.41 |
C33::C46 | 6.41 | 5.20 |
Parameter | Price | Price | Price | Price |
---|---|---|---|---|
Oil | 25$/bbl | 40$/bbl | 50$/bbl | |
CO2 | 10€/t | 25€/t | 40€/t | 55€/t |
r | 8% | 10% | 12% |
Parameter | Value |
---|---|
CAPEX | 29 million € |
OPEX, percentage of produced oil value | 5% |
Injection of water | 1 €/t |
Electricity price | 20 and 40 €/MWh |
Royalty, percentage of produced oil value | 12% |
greater well distance | 12.45440 | −1.13065 | 0.16019 | 0.35021 | 0.03930 | −1.06107 |
smaller well distance | 0.842453 | −0.24244 | 0.029734 | 7.927405 | 0.02378 | −9.83669 |
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Arnaut, M.; Vulin, D.; José García Lamberg, G.; Jukić, L. Simulation Analysis of CO2-EOR Process and Feasibility of CO2 Storage during EOR. Energies 2021, 14, 1154. https://doi.org/10.3390/en14041154
Arnaut M, Vulin D, José García Lamberg G, Jukić L. Simulation Analysis of CO2-EOR Process and Feasibility of CO2 Storage during EOR. Energies. 2021; 14(4):1154. https://doi.org/10.3390/en14041154
Chicago/Turabian StyleArnaut, Maja, Domagoj Vulin, Gabriela José García Lamberg, and Lucija Jukić. 2021. "Simulation Analysis of CO2-EOR Process and Feasibility of CO2 Storage during EOR" Energies 14, no. 4: 1154. https://doi.org/10.3390/en14041154
APA StyleArnaut, M., Vulin, D., José García Lamberg, G., & Jukić, L. (2021). Simulation Analysis of CO2-EOR Process and Feasibility of CO2 Storage during EOR. Energies, 14(4), 1154. https://doi.org/10.3390/en14041154