自动岩相分类:埃及西部沙漠舒山盆地储层综合机器学习方法

IF 2.2 4区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY Journal of African Earth Sciences Pub Date : 2024-11-19 DOI:10.1016/j.jafrearsci.2024.105487
Amr M. Abuzeid , Ashraf R. Baghdady , Ahmed A. Kassem
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引用次数: 0

摘要

机器学习的应用是石油地质学家进行相分类的关键工具。这种新的工作流程通过利用测井数据中隐藏的统计模式为地质学家提供一些可识别的聚类选项,从而与现有的分类器区别开来。这些选择以其他地质数据源为指导,使地质学家能够保留所选簇的尺寸位置,以便在其他缺乏这些额外数据源的井中进行识别。该分类技术最大限度地发挥了常规测井资料(伽马、电阻率、密度、中子和声波)在识别岩石类型、孔隙度等级、流体含量方面的价值,突出了相似的岩相特征和元素组成,有助于高可信度地推断孔隙度和渗透率。在本研究中,该工作流程旨在预测粉砂岩、页岩、石灰岩、玄武岩侵入体和煤炭,准确识别各种砂岩亚相,区分四口井的致密砂岩和含油气砂岩,并在另一口井进行盲验证。利用光石扫描工具、岩石薄片和实验室分析对分类进行验证。这种综合方法证明了该方法的有效性和适用性,标志着石油地质中相分类的重大进展。
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Automated lithofacies classification: A comprehensive machine learning approach in Shushan Basin reservoirs, Western Desert, Egypt
The application of machine learning serves as a pivotal tool for petroleum geologists in facies classification. This new workflow distinguishes itself from existing classifiers by leveraging hidden statistical patterns in logging data to present a few recognizable clustering options for geologists. These choices are guided by other geological data sources, allowing geologists to retain the dimensional locations of chosen clusters for identification in other wells lacking these additional sources. The classification technique maximizes the value of conventional logging data (gamma ray, resistivity, density, neutron and sonic) for discerning rock typing, porosity ranking, fluid content, highlighting similar petrographic characteristics and elements composition, facilitating the inference of porosity and permeability degrees with high confidence.
The workflow is designed in this study to predict siltstone, shale, limestone, basaltic intrusions, and coal, accurately identifies various sandstone sub-facies, differentiates between tight and hydrocarbon-bearing sandstone across four wells, with blind validation on a separate well. The classification is validated using Litho Scanner tool, petrography thin sections, and laboratory analysis.
This comprehensive approach demonstrates the efficiency and applicability of the methodology, marking significant advancements in facies classification within petroleum geology.
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来源期刊
Journal of African Earth Sciences
Journal of African Earth Sciences 地学-地球科学综合
CiteScore
4.70
自引率
4.30%
发文量
240
审稿时长
12 months
期刊介绍: The Journal of African Earth Sciences sees itself as the prime geological journal for all aspects of the Earth Sciences about the African plate. Papers dealing with peripheral areas are welcome if they demonstrate a tight link with Africa. The Journal publishes high quality, peer-reviewed scientific papers. It is devoted primarily to research papers but short communications relating to new developments of broad interest, reviews and book reviews will also be considered. Papers must have international appeal and should present work of more regional than local significance and dealing with well identified and justified scientific questions. Specialised technical papers, analytical or exploration reports must be avoided. Papers on applied geology should preferably be linked to such core disciplines and must be addressed to a more general geoscientific audience.
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