Sustainable CO2 Storage Assessment in Saline Aquifers Using a Hybrid ANN and Numerical Simulation Model Across Different Trapping Mechanisms
Abstract
:1. Introduction
2. Carbon Capture and Storage (CCS) in Saline Aquifers
2.1. Trapping Mechanisms in CCS
2.1.1. Structural and Stratigraphic Trapping
2.1.2. Residual Trapping
2.1.3. Solubility Trapping
2.1.4. Mineral Trapping
2.2. Importance of Integrated Trapping Mechanisms
2.3. Utilizing CMG-GEM for CO2 Storage Simulations
2.4. Predictive Modeling Using Artificial Neural Networks (ANNs)
2.5. Integration of Simulation Data with ANNs in CCS
Paper Title | Description | Input Parameters | Output Parameters | Key Advantages | Limitations |
---|---|---|---|---|---|
Physics-Based Proxy Modeling of CO2 Sequestration in Deep Saline Aquifers | This study uses physics-based proxy modeling with machine learning (ML) to predict CO2 trapping mechanisms’ residual, solubility, and mineral trapping. An expansive dataset generated using a compositional reservoir simulator was used to train and validate four ML models: multilayer perceptron (MLP), random forest (RF), support vector regression (SVR), and extreme gradient boosting (XGB) [12]. | Basic petrophysical and fluid properties | Residual, solubility, and structural traps | Uses physics-based proxy modeling | Limited parameter selection and requires further field-scale validation |
Multi-Objective Optimization of CO2 Enhanced Oil Recovery Projects Using a Hybrid Artificial Intelligence Approach | This study develops a hybrid optimization workflow for CO2—EOR projects considering multiple objective functions. The robustness of the development is confirmed via a field case study. Moreover, this work investigates the relationship between the solutions of the aggregative objective function and the Pareto front, which helps define constraints and reduces the uncertainties involved in the multi-objective optimization process [27]. | EOR-specific parameters (pressure, injection rates) | CO2-EOR-related trapping mechanisms | Optimizes CO2-EOR efficiency | Not focused on sequestration |
Real-time High-resolution CO2 Geological Storage Prediction using Nested Fourier Neural Operators | The study introduces the Nested Fourier Neural Operator (FNO), a machine learning framework designed for the high-resolution, dynamic 3D modeling of CO2 storage at the basin level. This approach uses a hierarchy of FNOs to produce forecasts at varying levels of refinement and accelerates flow predictions by nearly 700,000 times compared to traditional methods. By learning the solution operator for the governing partial differential equations, Nested FNO acts as a versatile alternative to numerical simulators, accommodating diverse reservoir conditions, geological heterogeneity, and injection schemes [28]. | Geological heterogeneity, injection schemes | CO2 flow dynamics (not trapping-specific) | faster than traditional simulation models | Requires significant computational power and requires further field-scale validation |
Deep learning-based coupled flow–geomechanics surrogate model for CO2 sequestration | This study presents a deep-learning-based surrogate model, the recurrent R-U-Net, for predicting flow and geomechanical responses in CO2 storage operations. Combining convolutional and recurrent neural networks, the model captures the spatial and temporal evolution of CO2 saturation, pressure, and surface displacement fields. Trained on 2000 high-fidelity simulations of storage aquifer realizations, it accurately predicts 3D aquifer dynamics and 2D surface displacement maps, reducing computational demands [29]. | Flow and geomechanical parameters | Pressure, saturation, and surface displacement | Predicts both subsurface and surface deformation | High-fidelity training required |
Application of machine learning to predict CO2 trapping performance in deep saline aquifers | This study applies machine learning (ML) models—Gaussian Process Regression (GPR), Support Vector Machine (SVM), and random forest (RF) to predict CO2 trapping efficiency in saline formations. A training dataset was developed using uncertainty variables, including geological, petrophysical, and physical parameters, to analyze residual trapping, solubility trapping, and cumulative CO2 injection [30]. | Geological and petrophysical properties | Residual, solubility, and cumulative injection | Incorporates uncertainty analysis | Lacks real-time dynamic modeling and requires further field-scale validation |
Sustainable CO2 Storage Assessment in Saline Aquifers Using a Hybrid ANN and Numerical Simulation Model Across Different Trapping Mechanisms (Current Paper) | This study employs the Levenberg–Marquardt backpropagation algorithm to develop an artificial neural network (ANN) model for predicting total CO2 storage capacity and its distribution across different trapping mechanisms. The ANN is trained using a wide range of geological and operational parameters, derived from extensive reservoir simulation runs, ensuring that the model captures the complex interactions governing CO2 sequestration. | Includes the parameters of the other models plus extra input sets not included in previous models (aquifer volume, hysteresis coefficient, reservoir pressure, and CO2 injection pressure) | All four major mechanisms (residual, solubility, mineral, and structural) in addition to CO2 supercritical volume; these outputs are only included in this study | ✔ Fully conclusive predictions (total CO2 volume + full trapping breakdown) ✔ Balances accuracy and computational efficiency ✔ Real-time adaptability and easy to use | Requires further field-scale validation |
3. Methodology
3.1. Data Generation Using 3D Simulation
3.2. ANN Model Development
3.3. Different ANN Algorithms in MATLAB
Parameters | Highest Value | Lowest Value |
---|---|---|
Thickness (m) | 10 | 3 |
Hysteresis factor | 0.6 | 0.1 |
Injector BHP, KPa | 50,000 | 30,000 |
Injection Rate (m3/day) | 12,000 | 7000 |
Horizontal Permeability (md) | 1000 | 50 |
Vertical Permeability (md) | 0.5 | 0.1 |
Porosity (%) | 0.3 | 0.08 |
Reservoir Pressure, KPa | 11,800 | 8000 |
Aquifer Volume, m3 | 10,000 | 1000 |
Thickness (m) | 10 | 3 |
Hysteresis factor | 0.6 | 0.1 |
4. Results and Discussion
4.1. Impact of Different Parameters on Different Traps
4.2. Evaluating the Reliability and Accuracy of the Models
4.3. Strengths, Limitations and Future Work
5. Conclusions
- The generation of the diverse dataset from 250 CMG-GEM simulations using detailed sensitivity analysis in the development of ANN models yielded a diverse dataset covering several subsurface and operation scenarios.
- This generated dataset is used to develop different ANN models with different algorithms while including the optimization of the number of inputs, outputs, and hidden layers.
- Then, based on the results, the final ANN was chosen to encompass 9 inputs with 10 hidden layers and 5 outputs.
- The inputs represented in the geological and operational parameters include the porosity, grid thickness, both horizontal and vertical permeability, injection rate, bottom hole flowing pressure, hysteresis factor, aquifer volume, and reservoir pressure.
- The outputs included the CO2 trapping states, including structural, residual, dissolved, mineralized, and total (supercritical).
- The Levenberg–Marquardt (LM) algorithm is selected as it showed higher stability and efficiency compared to the other algorithms, with an impressive coefficient of determination (R2) of 0.977 in forecasting CO2 sequestration.
- The methodology deployed in the research provides a scalable framework that leverages sophisticated simulation tools alongside machine learning techniques, thereby enriching our comprehension of CCS processes. A sensitivity analysis integral to the simulation phase was instrumental in pinpointing pivotal parameters that influence CO2 sequestration, which in turn guided the development of the ANN model and ensured its applicability to practical scenarios.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Aquifer Parameters | Values |
---|---|
Grid number | 300,000 (100 × 100 × 30) |
Length (m) | 1000 |
Width (m) | 1000 |
Depth at the top (m) | 1400 |
Thickness (m) | 30 |
Permeability (md) | 150 |
Porosity (%) | 0.23 |
Salinity (M) | 1.7 |
Component | CO2 |
Critical Pressure (atm) | 72.8 |
Critical Temperature (K) | 304.2 |
Algorithm | Performance and Accuracy | Use Cases |
---|---|---|
Bayesian Regularization (BR) |
| Well-suited for regression problems and complex pattern recognition tasks where model generalization was crucial. |
Scaled Conjugate Gradient (SCG) |
| It is advantageous for training large neural networks and handling datasets where computational resources are limited. |
Levenberg–Marquardt (LM) |
| It is effective for function approximation, pattern recognition, and time-series prediction problems where the dataset size is not excessively large. |
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Hamed, M.; Shirif, E. Sustainable CO2 Storage Assessment in Saline Aquifers Using a Hybrid ANN and Numerical Simulation Model Across Different Trapping Mechanisms. Sustainability 2025, 17, 2904. https://doi.org/10.3390/su17072904
Hamed M, Shirif E. Sustainable CO2 Storage Assessment in Saline Aquifers Using a Hybrid ANN and Numerical Simulation Model Across Different Trapping Mechanisms. Sustainability. 2025; 17(7):2904. https://doi.org/10.3390/su17072904
Chicago/Turabian StyleHamed, Mazen, and Ezeddin Shirif. 2025. "Sustainable CO2 Storage Assessment in Saline Aquifers Using a Hybrid ANN and Numerical Simulation Model Across Different Trapping Mechanisms" Sustainability 17, no. 7: 2904. https://doi.org/10.3390/su17072904
APA StyleHamed, M., & Shirif, E. (2025). Sustainable CO2 Storage Assessment in Saline Aquifers Using a Hybrid ANN and Numerical Simulation Model Across Different Trapping Mechanisms. Sustainability, 17(7), 2904. https://doi.org/10.3390/su17072904