Robust Optimization of Hydraulic Fracturing Design for Oil and Gas Scientists to Develop Shale Oil Resources
Abstract
1. Introduction
2. Methodology
2.1. Displacement Discontinuity Method (DDM)
2.2. Fracture Propagation and Hydraulic Natural Fracture Interaction
2.3. Optimization of Fracture Design
- (1)
- The sequential coupling of DDM-based geo-mechanical simulation and EDFM-based reservoir simulation can effectively represent fracture propagation and flow in naturally fractured reservoirs;
- (2)
- Incorporating geological and geo-mechanical uncertainties improves the robustness of NPV-based design decisions;
- (3)
- The inclusion of well spacing as a design variable significantly influences drainage efficiency and economic performance in multi-well development scenarios.
3. Computational Results
3.1. Fracture Design Optimization
3.2. Well Spacing Optimization
4. Conclusions
- Basic geo-mechanical principles and HF-NF interactions can be considered in the fracture propagation process, thus creating complex fracture patterns when using DDM. EDFM can be used to explicitly model multi-phase flow in the complex fracture network. HWMHF design and well spacing can be optimized effectively in naturally fractured oil reservoirs by combining the DDM and EDFM.
- Based on the work, oil and gas scientists can find the optimal strategy to develop unconventional resources. This will encourage them to make greater contributions to the oil and gas industry.
- Considering the uncertainties in the natural fracture location, length, and orientation, robust optimization is necessary, and the natural fracture patterns can be sampled from Gaussian distributions. When optimizing HWMHF design and well spacing, the objective function can be defined as the expected comprehensive NPV, which includes the drilling cost, fracturing cost, production revenue, and leasing cost.
- As for the first case in optimizing fracture spacing, stage spacing, treatment pressure, and treatment volume, compared to PSO and GA, the pattern search algorithm yields the best performance in terms of the maximum expected NPV and the computational cost. Compared to the initial guess, the pattern search algorithms improve the average comprehensive NPV by 35 with only forward simulation runs.
- As for the second case with well spacing added, the estimated optimal design parameters obtained from robust optimization give an average comprehensive NPV equal to 2.81, which is 102.4 higher than the average comprehensive NPV (1.38) obtained with the initial design parameters.
- The future work will incorporate real field production and microseismic data to validate and calibrate the simulation models. Additionally, extending the optimization framework to multi-well pads with interference modeling will be applied in the field-scale applications.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Design Variables | Initial | Lower | Upper |
---|---|---|---|
Fracture spacing (m) | 20 | 20 | 100 |
Stage spacing (m) | 70 | 20 | 100 |
Treatment volume () | 800 | 200 | 1200 |
Treatment pressure () | 23.5 | 21.5 | 24.5 |
Optimization Algorithm | Average NPV () | Num. of Simulation |
---|---|---|
GA | 1.41 | 15,000 |
PSO | 1.33 | 15,000 |
PS | 1.46 | 250 |
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Lin, Q.; Fang, W.; Zhang, L.; Mu, Q.; Li, H.; Li, L.; Wang, B. Robust Optimization of Hydraulic Fracturing Design for Oil and Gas Scientists to Develop Shale Oil Resources. Processes 2025, 13, 1920. https://doi.org/10.3390/pr13061920
Lin Q, Fang W, Zhang L, Mu Q, Li H, Li L, Wang B. Robust Optimization of Hydraulic Fracturing Design for Oil and Gas Scientists to Develop Shale Oil Resources. Processes. 2025; 13(6):1920. https://doi.org/10.3390/pr13061920
Chicago/Turabian StyleLin, Qiang, Wen Fang, Li Zhang, Qiuhuan Mu, Hui Li, Lizhe Li, and Bo Wang. 2025. "Robust Optimization of Hydraulic Fracturing Design for Oil and Gas Scientists to Develop Shale Oil Resources" Processes 13, no. 6: 1920. https://doi.org/10.3390/pr13061920
APA StyleLin, Q., Fang, W., Zhang, L., Mu, Q., Li, H., Li, L., & Wang, B. (2025). Robust Optimization of Hydraulic Fracturing Design for Oil and Gas Scientists to Develop Shale Oil Resources. Processes, 13(6), 1920. https://doi.org/10.3390/pr13061920