Author
Listed:
- Haitao Xu
(Centre for Offshore Engineering and Safety Technology, China University of Petroleum (East China), Qingdao 266580, China
China National Petroleum Corporation (CNPC), Beijing 100007, China)
- Kang Liu
(Centre for Offshore Engineering and Safety Technology, China University of Petroleum (East China), Qingdao 266580, China)
- Zixiu Yao
(China National Petroleum Corporation (CNPC), Beijing 100007, China)
- Guoming Chen
(Centre for Offshore Engineering and Safety Technology, China University of Petroleum (East China), Qingdao 266580, China)
- Xiaosong Qiu
(China National Petroleum Corporation (CNPC), Beijing 100007, China)
- Weiming Shao
(College of New Energy, China University of Petroleum (East China), Qingdao 266580, China)
Abstract
The steady operation of underground gas storage (UGS) is significant for securing national energy. However, long-term cyclic injection-production operation causes the dynamic changes in formation stress, potentially leading to fault reactivation and slippage. This could affect the seal performance of the fault zone and cause disastrous consequences. In this paper, a mechanical analysis model for fault slip is constructed to study the dynamic seal performance in response to long-term injection-production cycles. An intelligent approach is proposed to predicate the fault slip value based on machine learning algorithms. It can realize long-term prediction of fault slip value under a new condition of injection-production operation. The study shows that (1) formation pressure tends to accumulate near the fault zone due to the low permeability, and the interface of the reservoir layer, cap layer, and fault zone is the seal weak position of UGS; (2) the response of fault slip is driven by the injection-production rate and the reservoir pressure. There is a significant coupling relationship between the fault slip value and the accumulated injection gas volume; (3) the intelligent prediction approach can capture the nonlinear dynamic characteristics of slip tendency accurately, and it exhibits good prediction performance and generalization ability under the new operating condition. This study effectively assesses the dynamic risk for fault slip of depleted hydrocarbon reservoir UGS during the long-term injection-production procedure. It provides an effective technical approach for fault slip tendency analysis and injection-production process optimization, which is important for the sustainable operation of UGS reducing the risk of seal failure and supporting gas storage security.
Suggested Citation
Haitao Xu & Kang Liu & Zixiu Yao & Guoming Chen & Xiaosong Qiu & Weiming Shao, 2026.
"An Efficient Geomechanical Modeling and Intelligent Prediction Approach for Fault Slip in Underground Gas Storage During Long-Term Injection-Production Operation,"
Sustainability, MDPI, vol. 18(6), pages 1-24, March.
Handle:
RePEc:gam:jsusta:v:18:y:2026:i:6:p:3039-:d:1899316
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