Machine Learning-Based Probabilistic Lithofacies Prediction from Conventional Well Logs: A Case from the Umiat Oil Field of Alaska
Abstract
:1. Introduction
2. Umiat Oil Field
3. Data
3.1. Lithofacies of the Lower Grandstand Member (LGST)
3.2. Well Log Data
- Gamma-ray (GR)—measures the total natural radioactivity emanating from a formation,
- Density (RHOB)—measures the rock bulk density based on the density of electrons in the formation,
- Neutron porosity (NPHI)—measures a formation’s porosity by estimating neutron energy losses in porous rocks,
- Sonic (DT)—measures the travel time or velocity of an elastic wave through the formation.
4. Methods
4.1. Pre-Processing
4.2. Machine Learning Algorithms
4.3. A. Ascendant Hierarchical Clustering (AHC)
4.4. B. Self-Organizing Maps (SOM)
4.5. C. Artificial Neural Network (ANN)
4.6. D. Multi-Resolution Graph-Based Clustering (MRGC)
5. Results and Discussion
5.1. Model Comparison
5.2. Lithofacies Prediction and Validation in Test Wells
6. Conclusions
- Machine learning techniques, such as AHC, SOM, ANN, and MGRC, can be used to integrate the facies descriptions from core data with the conventional geophysical logs for predicting lithofacies in uncored wells.
- The predicted values of facies largely depend on the quality and size of input data, the machine learning method, and the training parameters used in machine learning algorithms.
- We conclude that SOM is a better choice among all other methods for multi-dimensional well data with a small sample size. Despite lower model accuracy, the performances of ANN and MRGC can be significantly improved with more core data or training samples.
- Application of machine learning techniques in the uncored wells can help in visualizing complex or multi-dimensional reservoir data in two-dimensions and can provide the assessment of reservoir quality at lower costs and saving time.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Facies | Description | Depositional Setting | Color |
---|---|---|---|
SI | Sandstone–horizontal, plane-parallel lamination | Distributary mouth bar and foreshore | 1 |
Sx | Sandstone–Trough or planar cross-bedding | Foreshore and upper shoreface | 2 |
Sm | Sandstone–massive | Delta-front and foreshore | 3 |
Sr | Sandstone–ripple cross-lamination | Delta-front and lower shoreface | 4 |
FI | Mudstone—carbonaceous | Distal self/prodelta | 5 |
Umiat 18 | Umiat 23H | SeaBee-1 | |||||||
---|---|---|---|---|---|---|---|---|---|
Measured Depth (ft) | 10–2600 | 200–4100 | 100–15615 | ||||||
GR | RHOB | NPHI | GR | RHOB | NPHI | GR | RHOB | NPHI | |
Unit | API | g/cm3 | V/V | API | g/cm3 | V/V | API | g/cm3 | V/V |
Min | 31.07 | 2.33 | 16.2 | 20.53 | 1.443 | 10 | 22.73 | 1.847 | −0.09 |
Max | 164.66 | 2.645 | 45.6 | 172.44 | 2.639 | 53 | 168.74 | 2.738 | 60.1 |
Mean | 77.11 | 2.84 | 26.16 | 80.05 | 2.348 | 24 | 65.92 | 2.499 | 33.38 |
Method | AHC | ANN | SOM | MRGC | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Factor | Number of Classes | Neurons in Hidden Layer | Number of Neurons | Number of Optimal Models | ||||||||
- | 10 | 25 | 40 | 2 | 5 | 10 | 2 × 2 | 5 × 5 | 7 × 7 | 3 | 4 | 5 |
R2 | 0.52 | 0.75 | 0.85 | 0.65 | 0.73 | 0.74 | 0.75 | 0.79 | 0.90 | 0.33 | 0.64 | 0.68 |
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Dixit, N.; McColgan, P.; Kusler, K. Machine Learning-Based Probabilistic Lithofacies Prediction from Conventional Well Logs: A Case from the Umiat Oil Field of Alaska. Energies 2020, 13, 4862. https://doi.org/10.3390/en13184862
Dixit N, McColgan P, Kusler K. Machine Learning-Based Probabilistic Lithofacies Prediction from Conventional Well Logs: A Case from the Umiat Oil Field of Alaska. Energies. 2020; 13(18):4862. https://doi.org/10.3390/en13184862
Chicago/Turabian StyleDixit, Nilesh, Paul McColgan, and Kimberly Kusler. 2020. "Machine Learning-Based Probabilistic Lithofacies Prediction from Conventional Well Logs: A Case from the Umiat Oil Field of Alaska" Energies 13, no. 18: 4862. https://doi.org/10.3390/en13184862
APA StyleDixit, N., McColgan, P., & Kusler, K. (2020). Machine Learning-Based Probabilistic Lithofacies Prediction from Conventional Well Logs: A Case from the Umiat Oil Field of Alaska. Energies, 13(18), 4862. https://doi.org/10.3390/en13184862