Machine learning prediction of tortuosity in digital rock

Fadhillah Akmal, M. Cisco Ramadhan Dzulizar, Muhammad Faizal Rafli, Fatimah Az-Zahra, M. I. Khoirul Haq, Irwan Ary Dharmawan
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引用次数: 0

Abstract

Physical rock property measurement is an important stage in energy exploration, both for hydrocarbons and geothermal sources. The value of physical rock properties can provide information about reservoir quality, and one of these properties is tortuosity. Tortuosity is an intrinsic property of porous materials that describes the level of complexity of the porous arrangement when a fluid passes through it. Conventionally, tortuosity values are measured through laboratory analysis and numerical simulation, but these measurements can take a long time. An alternative method for measuring tortuosity is using machine learning with a convolutional neural network (CNN). A CNN is a type of deep neural network designed to analyze multi-channel images and has been applied successfully to classification and non-linear regression problems. By training a CNN on a dataset of digital rock samples that have been simulated using numerical computation to obtain their tortuosity values, it is possible to demonstrate that CNNs can accurately predict the tortuosity of digital rock. The result is that the CNN model can predict tortuosity values with the Xception model being the most accurate with the lowest RMSE value of 0.90962.
数字岩石扭曲度的机器学习预测
岩石物性测量是油气和地热资源勘探的重要环节。岩石物理性质的数值可以提供储层质量的信息,其中之一就是弯曲度。弯曲度是多孔材料的固有特性,它描述了流体通过多孔材料时多孔结构的复杂程度。传统上,弯曲度值是通过实验室分析和数值模拟来测量的,但这些测量可能需要很长时间。测量扭曲度的另一种方法是使用卷积神经网络(CNN)的机器学习。CNN是一种用于分析多通道图像的深度神经网络,已成功应用于分类和非线性回归问题。通过在数字岩石样本数据集上训练CNN,并通过数值计算模拟得到其扭曲度值,可以证明CNN可以准确预测数字岩石的扭曲度。结果表明,CNN模型可以预测弯曲度值,其中Xception模型最准确,RMSE最低,为0.90962。
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审稿时长
16 weeks
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