Ensemble Surrogates and NSGA-II with Active Learning for Multi-Objective Optimization of WAG Injection in CO2-EOR
Abstract
1. Introduction
2. Methodology
2.1. Stacking Ensemble Surrogate Modeling
2.2. Multi-Objective Optimization Algorithm (NSGA-II)
2.3. Diversity-Controlled Active Sampling in Decision Space
2.4. Experimental Design and Evaluation Metrics
3. Results and Discussion
3.1. Comparison of Prediction Accuracy of the Surrogate Models
3.2. Optimization Convergence and Evolution of Model Error
3.3. Pareto Solution Set and Multi-Objective Trade-Off Analysis
3.4. Validation of the Effectiveness of the DCAF Sampling Strategy
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Approach Family | Typical Workflow | Pros | Limits/Gaps | Best for |
|---|---|---|---|---|
| Full-physics, model-based opt. | Full-physics, model-based opt. | Full-physics, model-based opt. | Full-physics, model-based opt. | Full-physics, model-based opt. |
| Direct sim-based MOEA | NSGA-II/MOPSO evaluates simulator per candidate | Handles nonconvexity; diverse Pareto set | Very high eval budget (esp. 3D) | Benchmarks/big compute |
| Static SA-MOEA (single surrogate) | Offline DOE → train 1 proxy → MOEA on proxy | Large speed-up | Proxy drift near opt.; OOD errors; false Pareto risk | Early screening/simple cases |
| Ensemble/MF SA-MOEA | Multi-proxy or MF (stack/select/transfer) + MOEA | More robust; better bias–variance | Still coverage-limited; ensemble diversity often not explicit | Strong nonlinearity; multi-output objs |
| Closed-loop surrogate + AL | Proxy opt. → infill → simulate → update | Data-efficient; accuracy near Pareto | Infill clustering; weak decision-space coverage | Tight sim budgets/expensive sims |
| Techno-economic/low-carbon tri-obj. | Joint: recovery–storage–NPV/(emissions) | Decision-relevant; avoids uneconomic “optima” | Econ uncertainty; often simplified/post hoc | Field planning/CCUS investments |
| Parameter | Numerical Value | Unit |
|---|---|---|
| Reservoir area | 1.1 | km2 |
| Reservoir depth | 2540 | m |
| Reservoir thickness | (6, 9, 15) | m |
| Reservoir temperature | 72 | °C |
| Original formation pressure | 27.5 | MPa |
| Average porosity | 30 | % |
| Horizontal permeability | (500, 50, 200) | mD |
| Vertical permeability | (50, 50, 25) | mD |
| Rock compressibility | 7.25 × 10−3 | MPa−1 |
| The compressibility of water | 4.8 × 10−3 | MPa−1 |
| Initial water saturation | 20 | % |
| Number of grids | 35 × 35 × 3 | / |
| Grid size | 30 × 30 | m |
| Composition | Reservoir Fluid Mole Fraction (%) | Injected Gas Mole Fraction (%) |
|---|---|---|
| CO2 | 0 | 100 |
| C1 | 50 | 0 |
| C3 | 3 | 0 |
| C6 | 7 | 0 |
| C10 | 20 | 0 |
| C15 | 15 | 0 |
| C20 | 5 | 0 |
| Parameter | Unit | Minimum Value | Median Value | Maximum Value |
|---|---|---|---|---|
| Water injection rate | STB/D | 4000 | 12,000 | 20,000 |
| Gas injection rate | MCF/D | 12,000 | 16,000 | 20,000 |
| WAG half-cycle | day | 60 | 210 | 360 |
| WAG duration | year | 4 | 6 | 8 |
| Sampling Strategy | Sampling Quantity | Average Error of ORF (%) | Average Error of CSR (%) | Average Error of NPV (%) |
|---|---|---|---|---|
| baseline | 945 | 0.395 | 2.90 | 0.691 |
| distance-loss thresholds β = 5% | 698 | 0.317 | 2.69 | 0.675 |
| distance-loss thresholds β = 10% | 599 | 0.347 | 2.84 | 0.692 |
| distance-loss thresholds β = 20% | 461 | 0.323 | 2.98 | 0.689 |
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Zhu, Y.; Li, H.; Zheng, Y.; Li, C.; Guo, C.; Wang, X. Ensemble Surrogates and NSGA-II with Active Learning for Multi-Objective Optimization of WAG Injection in CO2-EOR. Energies 2025, 18, 6575. https://doi.org/10.3390/en18246575
Zhu Y, Li H, Zheng Y, Li C, Guo C, Wang X. Ensemble Surrogates and NSGA-II with Active Learning for Multi-Objective Optimization of WAG Injection in CO2-EOR. Energies. 2025; 18(24):6575. https://doi.org/10.3390/en18246575
Chicago/Turabian StyleZhu, Yutong, Hao Li, Yan Zheng, Cai Li, Chaobin Guo, and Xinwen Wang. 2025. "Ensemble Surrogates and NSGA-II with Active Learning for Multi-Objective Optimization of WAG Injection in CO2-EOR" Energies 18, no. 24: 6575. https://doi.org/10.3390/en18246575
APA StyleZhu, Y., Li, H., Zheng, Y., Li, C., Guo, C., & Wang, X. (2025). Ensemble Surrogates and NSGA-II with Active Learning for Multi-Objective Optimization of WAG Injection in CO2-EOR. Energies, 18(24), 6575. https://doi.org/10.3390/en18246575

