机器学习在多井测井资料岩相分类中的应用

S. Saroji, Ekrar Winata, Putra Pratama Wahyu Hidayat, S. Prakoso, F. Herdiansyah
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引用次数: 7

摘要

岩相分类是通过间接测量来识别岩石岩性的过程。通常,分类是由经验丰富的地球科学家手工处理的。本文提出了一种基于机器学习的岩相自动分类方法,以提高计算能力,缩短岩相分类过程的耗时。支持向量机(SVM)算法已成功应用于印尼达玛油田。机器学习的输入是各种测井数据集,例如伽马射线、密度、电阻率、中子孔隙度和有效孔隙度。机器学习可以对7种岩相和沉积环境进行分类,包括河道、坝砂、滩砂、碳酸盐、火山和页岩。经过训练的岩相类数据在验证阶段的分类准确率达到90%以上,超出训练数据的验证阶段的分类准确率达到65%以上。分类后的岩相可以作为描述横向和纵向岩石分布模式的输入。
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The Implementation of Machine Learning in Lithofacies Classification using Multi Well Logs Data
Lithofacies classification is a process to identify rock lithology by indirect measurements. Usually, the classification is processed manually by an experienced geoscientist. This research presents an automated lithofacies classification using a machine learning method to increase computational power in shortening the lithofacies classification process's time consumption. The support vector machine (SVM) algorithm has been applied successfully to the Damar field, Indonesia. The machine learning input is various well-log data sets, e.g., gamma-ray, density, resistivity, neutron porosity, and effective porosity. Machine learning can classify seven lithofacies and depositional environments, including channel, bar sand, beach sand, carbonate, volcanic, and shale. The classification accuracy in the verification phase with trained lithofacies class data reached more than 90%, while the accuracy in the validation phase with beyond trained data reached 65%. The classified lithofacies then can be used as the input for describing lateral and vertical rock distribution patterns.
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审稿时长
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