Applied Machine Learning Methods for Detecting Fractured Zones by Using Petrophysical Logs

H. Azizi, Hassanzadeh Reza
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引用次数: 3

Abstract

In the last decade, a few valuable types of research have been conducted to discriminate fractured zones from non-fractured ones. In this paper, petrophysical and image logs of eight wells were utilized to detect fractured zones. Decision tree, random forest, support vector machine, and deep learning were four classifiers applied over petrophysical logs and image logs for both training and testing. The output of classifiers was fused by ordered weighted averaging data fusion to achieve more reliable, accurate, and general results. Accuracy of close to 99% has been achieved. This study reports a significant improvement compared to the existing work that has an accuracy of close to 80%.
应用机器学习方法探测岩石物理测井裂缝带
在过去的十年中,已经进行了一些有价值的研究,以区分裂缝带和非裂缝带。利用8口井的岩石物理测井和成像测井资料对裂缝带进行了探测。决策树、随机森林、支持向量机和深度学习是对岩石物理日志和图像日志进行训练和测试的四种分类器。分类器的输出通过有序加权平均数据融合进行融合,以获得更可靠、准确和通用的结果。已达到接近99%的准确率。与现有的准确率接近80%的工作相比,这项研究报告了一个显着的改进。
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