Prediction Technology of a Reservoir Development Model While Drilling Based on Machine Learning and Its Application
Abstract
:1. Introduction
2. Geological Setting
3. Material and Method
3.1. Data Collection and Processing
3.2. The Parameters Were Selected by Stepwise Regression Analysis
3.2.1. The Parameters of Logging Elements Were Optimized by Stepwise Regression Analysis
3.2.2. Using Stepwise Regression Analysis to Optimize Drilling Engineering Parameters
3.3. Model Establishment and Evaluation
3.4. Model Verification
4. Result
5. Discussion
6. Conclusions
- A machine learning-based approach is proposed for predicting the development mode of buried hill reservoirs during drilling. Firstly, a multi-parameter fusion technique is employed to integrate element logging and engineering logging data obtained while drilling, followed by optimization of sensitive parameters using stepwise regression analysis. Subsequently, a prediction model for the development mode of buried hill reservoirs is established using the LightGBM algorithm, providing a novel method for rapid prediction in this context. The accuracy of the proposed model surpasses previous approaches.
- Through the validation of three machine learning models, namely LightGBM, SVM, and DNN, it is demonstrated that LightGBM exhibits the highest accuracy in identifying the weathering zone with a remarkable precision of 96.7% while achieving an accuracy rate of 95.8% for identifying the inside zone. Following closely is the DNN, which attains accuracies of 88.6% and 90.2% for the weathering zone and inside zone identification, respectively. The SVM model demonstrates an identification accuracy of 84.6% for the weathering zone and 87.6% for inner zone recognition correspondingly. Consequently, it can be concluded that the LightGBM algorithm model holds great potential in predicting reservoir development patterns within this oilfield. The ideas and methods in this paper can be further applied to the development and production of other oil fields so as to improve the efficiency of exploration and development.
- In contrast to the transmission evaluation method, this prediction approach employs MWD data for assessment and offers an intelligent technical solution for prediction in scenarios with limited data. It exhibits characteristics of enhanced prediction speed and heightened accuracy. This methodology can serve as a robust foundation for efficient field exploration and development decision-making, thereby effectively advancing the progress of oil and gas reservoir exploration and development in this region.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Model | Quadratic Sum | DOF | Mean Square | F-Value | Significance p | |
---|---|---|---|---|---|---|
a | Regression | 23.669 | 1 | 23.669 | 109.593 | <0.001 |
Residual error | 163.277 | 756 | 0.216 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
b | Regression | 34.840 | 2 | 17.420 | 86.468 | <0.001 |
Residual error | 152.106 | 755 | 0.201 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
c | Regression | 48.040 | 3 | 16.013 | 86.922 | <0.001 |
Residual error | 138.906 | 754 | 0.184 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
d | Regression | 51.387 | 4 | 12.847 | 71.362 | <0.001 |
Residual error | 135.559 | 753 | 0.180 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
e | Regression | 53.409 | 5 | 10.682 | 60.153 | <0.001 |
Residual error | 133.537 | 752 | 0.178 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
f | Regression | 55.306 | 6 | 9.218 | 52.586 | <0.001 |
Residual error | 131.640 | 751 | 0.175 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
g | Regression | 60.047 | 7 | 8.578 | 50.699 | <0.001 |
Residual error | 126.899 | 750 | 0.169 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
h | Regression | 61.743 | 8 | 7.718 | 46.171 | <0.001 |
Residual error | 125.203 | 749 | 0.167 | — | — | |
Summary | 186.946 | 757 | — | — | — |
Model | Quadratic Sum | DOF | Mean Square | F-Value | Significance p | |
---|---|---|---|---|---|---|
a | Regression | 48.585 | 1 | 48.585 | 265.464 | <0.001 |
Residual error | 138.361 | 756 | 0.183 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
b | Regression | 54.023 | 2 | 27.011 | 153.425 | <0.001 |
Residual error | 132.923 | 755 | 0.176 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
c | Regression | 55.756 | 3 | 18.585 | 106.817 | <0.001 |
Residual error | 131.190 | 754 | 0.174 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
d | Regression | 57.521 | 4 | 14.380 | 83.665 | <0.001 |
Residual error | 129.425 | 753 | 0.172 | — | — | |
Summary | 186.946 | 757 | — | — | — | |
e | Regression | 58.251 | 5 | 11.650 | 68.076 | <0.001 |
Residual error | 128.695 | 752 | 0.171 | — | — | |
Summary | 186.946 | 757 | — | — | — |
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Wang, X.; Mao, M.; Yang, Y.; Yuan, S.; Guo, M.; Li, H.; Cheng, L.; Wang, H.; Ye, X. Prediction Technology of a Reservoir Development Model While Drilling Based on Machine Learning and Its Application. Processes 2024, 12, 975. https://doi.org/10.3390/pr12050975
Wang X, Mao M, Yang Y, Yuan S, Guo M, Li H, Cheng L, Wang H, Ye X. Prediction Technology of a Reservoir Development Model While Drilling Based on Machine Learning and Its Application. Processes. 2024; 12(5):975. https://doi.org/10.3390/pr12050975
Chicago/Turabian StyleWang, Xin, Min Mao, Yi Yang, Shengbin Yuan, Mingyu Guo, Hongru Li, Leli Cheng, Heng Wang, and Xiaobin Ye. 2024. "Prediction Technology of a Reservoir Development Model While Drilling Based on Machine Learning and Its Application" Processes 12, no. 5: 975. https://doi.org/10.3390/pr12050975
APA StyleWang, X., Mao, M., Yang, Y., Yuan, S., Guo, M., Li, H., Cheng, L., Wang, H., & Ye, X. (2024). Prediction Technology of a Reservoir Development Model While Drilling Based on Machine Learning and Its Application. Processes, 12(5), 975. https://doi.org/10.3390/pr12050975