Analysis of Available Conditions for InSAR Surface Deformation Monitoring in CCS Projects
Abstract
:1. Introduction
2. Feasibility of Monitoring CCS Using the InSAR Technique
3. Influencing Factors of InSAR Monitoring in a CCS Project
3.1. Vegetation Coverage
3.2. Topographic Factor
3.3. Reservoir Location
3.4. Land Use/Land Cover
3.5. Injection Rate
3.6. Injection Quantity
3.7. Reservoir Depth
3.8. Monitoring Duration
4. InSAR Feasibility Assessment of a CCS Site
4.1. Evaluation Methods
4.2. Feasibility Assessment
5. Discussion
6. Conclusions
- (1)
- InSAR technology is a potential monitoring method for CCS sequestration leakage and migration, but it is still in its infancy. More than 130 CCS sequestration areas were utilized in this study, but less than 10 were monitored using the InSAR technique. In addition, the results were also uneven. The reasons are complex and varied, but they can be divided into the characteristic limitations of InSAR technology and the special requirements of CCS sequestration. Therefore, a parameter is required to assess whether InSAR monitoring is viable for a specific region.
- (2)
- InSAR technology still has technical limitations for monitoring surface deformation, especially in complex mountainous areas. Due to safety considerations, CCS storage areas are often built far away from cities, including mountains and deserts. These places are inevitably faced with layout, foreshortening, and other incoherence phenomena, resulting in the absence and inaccuracy of results. In this study, the fractional vegetation cover and R-index were selected to evaluate the influence of vegetation and topography on the results of InSAR, so as to evaluate the feasibility of InSAR.
- (3)
- The use of InSAR technology also has certain requirements for the injection mode and the injection area. According to limitations in the field design and the injection plan, the injection rate and injection amount of each storage area were different. However, a slow and small amount of injection had an extremely insignificant and irregular response on the surface deformation, and the regular deformation trend could not be identified. Hence, it could not be determined whether CO2 injection was the primary controlling factor of the surface deformation. Therefore, we evaluated the injection volume, injection depth, injection rate, land use/land cover, reservoir type, and monitoring duration. Given the fixed evaluation criteria, we concluded that a large amount and stable injection were suitable for deformation monitoring, so as to realize the feasibility evaluation of InSAR technology in CO2 sequestration areas.
- (4)
- To comprehensively evaluate the feasibility of InSAR monitoring in CO2 sequestration areas, an evaluation model of the InSAR feasibility was established according to the characteristics of InSAR and the CCS sequestration areas. For a typical injection area or under injection areas, suggestions were made on whether InSAR can be used for monitoring. In addition, the cases of successful application and failure to detect deformation were verified. The cases of successful monitoring and the cases wherein deformation was not accurately detected were both used to validate the evaluation parameters. The results demonstrated that most of the sequestration areas were suitable for the InSAR technique, and the feasibility was consistent with the collected data.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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FVC | Surface Type | Score |
---|---|---|
0–0.1 | Barren | 1.0 |
0.1–0.3 | Low coverage | 0.8 |
0.3–0.45 | Medium-low coverage | 0.6 |
0.45–0.6 | Medium coverage | 0.4 |
0.6–1 | High coverage | 0.2 |
Classes | Pixel Compression | Score |
---|---|---|
≤0 | Layout/foreshortening | 0 |
0–0.3 | High–bad slope | 0.25 |
0.3–0.6 | Medium slope | 0.5 |
0.6–0.8 | Low good slope | 0.75 |
>0.8 | Very low good slope | 1 |
Reservoir Location | Score |
---|---|
Onshore | 1 |
Offshore | 0 |
Applicability of InSAR Technique | NRSCC Classification | Score |
---|---|---|
Very suitable | Bare land | 1.0 |
Suitable | Grassland | 0.8 |
Impervious surface | ||
Suspectable/As appropriate | Forest | 0.5 |
Tundra | ||
Cropland | ||
Shrubland | ||
Not suitable | Water | 0 |
Wetland | ||
Snow and Ice |
Injection Rate (m3/Day) | Score |
---|---|
<30 | 0.2 |
30–150 | 0.4 |
150–2000 | 0.6 |
2000–8000 | 0.8 |
>8000 | 1 |
Total Injection Quantity (Mt) | Score |
---|---|
<0.01 | 0.2 |
0.01–0.1 | 0.4 |
0.01–0.05 | 0.6 |
0.05–1.0 | 0.8 |
>1.0 | 1 |
Reservoir Depth (km) | Score |
---|---|
0.5–1.5 | 1 |
1.5–2.5 | 0.8 |
2.5–4 | 0.6 |
>4 | 0.4 |
Duration (Year) | Score |
---|---|
<1 | 0.5 |
1–3 | 0.8 |
3–5 | 1.0 |
>5 | 0.8 |
Score | Feasibility |
---|---|
0 | Not applicable |
0.1–0.3 | May be applicable |
0.3–0.6 | Applicable |
0.6–0.9 | Strongly applicable |
0.9–1.0 | Highly recommended |
Project Name | Reservoir Location | Vegetation Coverage | Topographic Factor | LULC | Injection Rate (m3/Day) | Total Injection (Mt) | Reservoir Depth (km) | Duration (Year) | Country | Scale | Status | |
---|---|---|---|---|---|---|---|---|---|---|---|---|
Al Reyadah | Onshore (54.47, 24.32) | Medium-low coverage | Very low good slope | Bare land | 1,170,000 | 1.6 | 2.5 | 2 | United Arab Emirates | Commercial | Operational | 0.912 |
Frio | Onshore (−94.80, 30.00) | Medium-low coverage | Very low good slope | Forest | 87,200 | 1.4 | 1.5 | 4 | USA | Commercial | Finished | 0.881 |
Shizhuang ECBM Pilot | Onshore (112.71, 35.87) | Low coverage | Medium slope | Cropland | 5450 | 0.025 | 0.7 | 2 | China | Pilot | Operational | 0.718 |
In Salah | Onshore (2.82, 28.64) | Barren | Very low good slope | Bare land | 1,792,000 | 14.0 | 1.8 | 7 | Algeria | Commercial | Finished | 0.993 |
Ketzin | Onshore (12.87, 52.49) | High coverage | Low good slope | Cropland | 54,500 | 0.06 | 0.7 | 3 | Germany | Pilot | Finished | 0.756 |
Lanxes Newcastle | Onshore (29.97, −27.78) | Barren | Very low good slope | Bare land | 92,650 | 0.12 | 1.0 | 2 | South Africa | Pilot | Operational | 0.930 |
Lotte CCUS Project | Offshore (−1.11, 54.58) | / | / | / | / | / | / | / | UK | Pilot | In Design | 0 |
Otway Basin | Onshore (150.63, −24.33) | Low coverage | Low good slope | Impervious surface | 81,750 | 0.075 | 2.0 | 10 | Australia | Pilot | Finished | 0.842 |
PEMEX EOR Pilot | Onshore (−94.56, 18.00) | Medium coverage | Medium slope | Impervious surface | 50,000 | 0.5 | 1.8 | 1 | Mexico | Commercial | In Design | 0.522 |
Ras Laffan | Onshore (51.54, 25.91) | Barren | Low good slope | Bare land | 300,000 | 2.1 | 1.0 | 1 | Qatar | Commercial | Operational | 0.656 |
RECOPOL | Onshore (16.84, 51.47) | Medium-low | Medium slope | Cropland | 510 | 0.0001 | 1.1 | 1 | Poland | Pilot | Operational | 0.699 |
ROAD | Offshore (4.02, 51.96) | / | / | / | / | / | / | / | Netherlands | Pilot | Finished | 0 |
San Juan | Onshore (−108.44, 36.80) | Barren | Very low good slope | Bare land | 2100 | 0.104 | 0.8 | 5 | USA | Commercial | Finished | 0.815 |
Shenhua Ordos Pilot | Onshore (110.15, 39.33) | Low coverage | Low good slope | Impervious surface | 60,000 | 0.3 | 2.7 | 3 | China | Pilot | Finished | 0.632 |
Sleipner | Offshore (3.00, 58.41) | / | / | / | / | / | / | / | Norway | Commercial | Finished | 0 |
Tomakomai CCS Project | Offshore (141.65, 42.63) | / | / | / | / | / | / | / | Japan | Commercial | Finished | 0 |
Lacq | Onshore (−0.67, 43.44) | Low coverage | Very low good slope | Grassland | 109,000 | 0.012 | 4.5 | 2 | France | Commercial | Operational | 0.843 |
Uthmaniyah EOR Project | Onshore (49.36, 24.80) | Barren | Very low good slope | Bare land | 1,274,000 | 4.0 | 3.6 | 5 | Saudi Arabia | Pilot | Operational | 0.883 |
West Texas Scurry field | Onshore (−101.09, 32.07) | Low coverage | Low good slope | Grassland | 90,000 | 55.0 | 2.0 | 35 | USA | Commercial | Finished | 0.712 |
Weyburn CO2 Project | Onshore (−103.68, 49.51) | Barren | Low good slope | Grassland | 7,085,000 | 25.0 | 1.5 | 15 | Canada | Commercial | Operational | 0.832 |
Yangchang Jingbian | Onshore (108.91, 37.42) | Low coverage | Medium slope | Grassland | 7000 | 0.005 | 3.0 | 5 | China | Pilot | Finished | 0.694 |
Youngil Bay | Offshore (129.46, 36.06) | / | / | / | / | / | / | / | South Korea | Pilot | Finished | 0 |
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Zhang, T.; Zhang, W.; Yang, R.; Gao, H.; Cao, D. Analysis of Available Conditions for InSAR Surface Deformation Monitoring in CCS Projects. Energies 2022, 15, 672. https://doi.org/10.3390/en15020672
Zhang T, Zhang W, Yang R, Gao H, Cao D. Analysis of Available Conditions for InSAR Surface Deformation Monitoring in CCS Projects. Energies. 2022; 15(2):672. https://doi.org/10.3390/en15020672
Chicago/Turabian StyleZhang, Tian, Wanchang Zhang, Ruizhao Yang, Huiran Gao, and Dan Cao. 2022. "Analysis of Available Conditions for InSAR Surface Deformation Monitoring in CCS Projects" Energies 15, no. 2: 672. https://doi.org/10.3390/en15020672
APA StyleZhang, T., Zhang, W., Yang, R., Gao, H., & Cao, D. (2022). Analysis of Available Conditions for InSAR Surface Deformation Monitoring in CCS Projects. Energies, 15(2), 672. https://doi.org/10.3390/en15020672