Logging Lithology Discrimination with Enhanced Sampling Methods for Imbalance Sample Conditions
-
Published:2024-07-26
Issue:15
Volume:14
Page:6534
-
ISSN:2076-3417
-
Container-title:Applied Sciences
-
language:en
-
Short-container-title:Applied Sciences
Author:
Liu Jingyue123, Tian Fei123ORCID, Zhao Aosai123ORCID, Zheng Wenhao1234, Cao Wenjing123
Affiliation:
1. CAS Engineering Laboratory for Deep Resources Equipment and Technology, Institute of Geology and Geophysics, Chinese Academy of Sciences, Beijing 100029, China 2. Innovation Academy for Earth Science, Chinese Academy of Sciences, Beijing 100029, China 3. College of Earth and Planetary Sciences, University of Chinese Academy of Sciences, Beijing 100049, China 4. Department of Earth Science and Engineering, Imperial College London, London SW7 2BP, UK
Abstract
In the process of lithology discrimination from a conventional well logging dataset, the imbalance in sample distribution restricts the accuracy of log identification, especially in the fine-scale reservoir intervals. Enhanced sampling balances the distribution of well logging samples of multiple lithologies, which is of great significance to precise fine-scale reservoir characterization. This study employed data over-sampling and under-sampling algorithms represented by the synthetic minority over-sampling technique (SMOTE), adaptive synthetic sampling (ADASYN), and edited nearest neighbors (ENN) to process well logging dataset. To achieve automatic and precise lithology discrimination on enhanced sampled well logging dataset, support vector machine (SVM), random forest (RF), and gradient boosting decision tree (GBDT) models were trained using cross-validation and grid search methods. Aimed to objectively evaluate the performance of different models on different sampling results from multiple perspectives, the lithology discrimination results were evaluated and compared based on the Jaccard index and F1 score. By comparing the predictions of eighteen lithology discrimination workflows, a new discrimination process containing ADASYN, ENN, and RF has the most precise lithology discrimination result. This process improves the discrimination accuracy of fine-scale reservoir interval lithology, has great generalization ability, and is feasible in a variety of different geological environments.
Funder
the Youth Innovation Promotion Association Foundation of the Chinese Academy of Sciences Chinese National key research and development program the Strategic Priority Research Program of the Chinese Academy of Sciences China National Petroleum Corporation (CNPC) Scientific research and technology development project
Reference51 articles.
1. Research and progress of Intelligent Drilling Technology System and related theories;Zhu;Chin. J. Geophys.-Chin. Ed.,2023 2. Vásconez Garcia, R.G., Mohammadizadeh, S., Avansi, M.C.K., Basilici, G., Bomfim, L.d.S., Cunha, O.R., Soares, M.V.T., Mesquita, Á.F., Mahjour, S.K., and Vidal, A.C. (2024). Geological Insights from Porosity Analysis for Sustainable Development of Santos Basin’s Presalt Carbonate Reservoir. Sustainability, 16. 3. Liu, H., Zhang, X.L., Li, Z.L., Weng, Z.P., and Song, Y.P. (2024). A borehole clustering based method for lithological identification using logging data. Earth Sci. Inform. 4. Datta, D., Singh, G., Routray, A., Mohanty, W.K., and Mahadik, R. (2021, January 13–16). Automatic Classification of Lithofacies with Highly Imbalanced Dataset Using Multistage SVM Classifier. Proceedings of the IECON 2021—47th Annual Conference of the IEEE Industrial Electronics Society, Toronto, ON, Canada. 5. An Intelligent Inversion Method for Azimuth Electromagnetic Logging While Drilling Measurements;Kang;IEEE Access,2023
|
|