基于自动薄切片图像和Ct扫描分析的碎屑岩孔隙尺度拓扑重建新方法

V. Krutko, B. Belozerov, S. Budennyy, E. Sadikhov, O. Kuzmina, D. Orlov, E. Muravleva, D. Koroteev
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引用次数: 5

摘要

提出了一种基于碎屑岩薄片的多孔介质拓扑重建框架。该框架基于两个连续的阶段:将薄片图像分割成颗粒、多孔介质、水泥(对分割元素进行进一步的矿物学分类),并在孔隙尺度上重建岩石的三维体素模型。该框架利用机器学习算法分割2d薄片图像,对颗粒、水泥、孔隙空间进行结构和矿物学分类,并重建多孔介质的3D模型。将图像处理方法与卷积神经网络(cnn)相结合,对岩石薄片图像进行分割,并对分割后的物体进行矿物分类。将生成对抗网络(Generative Adversarial Networks, gan)应用于二维薄片图像的分割和分类,实现了三维多孔介质的重建。作为重建质量的标准,对原始和重建的多孔岩石三维合成模型进行了数值计算和比较:闵可夫斯基泛函(孔隙度、比表面积、平均宽度、欧拉特征)和绝对渗透率。采用孔隙网络模型计算绝对渗透率。三维重建框架在Achimovskiy组(西伯利亚西部)碎屑样品的一组薄片和CT层析图上进行了测试。结果表明,基于Minkowski泛函的拟合优度指标对多孔介质拓扑结构的重构是有效的。CNN和GAN的结合使用允许创建一个鲁棒的三维拓扑重建框架。计算出的孔隙度特征与实验室测量的孔隙度和渗透率相吻合。所开发的岩相薄片自动特征提取和基于这些特征的三维重建算法可以实现以下目标:首先是减少了专家在岩石学分析过程中所做的日常工作。其次,为了进一步进行绝对渗透率和相对渗透率计算,减少了每个物理样品所需的昂贵且耗时的CT扫描次数。该方法将岩石薄片和CT数据分析提升到一个新的水平,在速度、数据集成和岩样制备等方面显著改变了传统岩心实验工作流程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Approach To Clastic Rocks Pore-Scale Topology Reconstruction Based On Automatic Thin-Section Images and Ct Scans Analysis
A framework for porous media topology reconstruction from petrographic thin sections for clastic rocks is proposed. The framework is based on two sequential stages: segmentation of thin sections imagesinto grains, porous media, cement (with further mineralogical classification of segmented elements) and reconstructing a three-dimensional voxel model of rock at pore scale. The framework exploits machine learning algorithms in order to segment2D thin section images, perform structural and mineralogical classification of grains, cement, pore space, and reconstruct 3D models of porous media. Segmentation of petrographic thin section images and mineral classification of the segmented objects are performed by the means of combination of image processing methods and Convolutional Neural Networks (CNNs). The 3D porous media reconstruction is done by means of the Generative Adversarial Networks (GANs) are applied to the segmented and classified 2D images of thin sections. As the criteria of the reconstruction quality, the following metrics were numerically calculated and compared for original and reconstructed synthetic 3D models of porous rocks: Minkowski functionals (porosity, surface area, mean breadth, Euler characteristic) and absolute permeability. Absolute permeability was calculated using pore network model. The 3D reconstruction framework was tested on a set of thin sections and CT tomograms of the clastic samples from the Achimovskiy formation (Western Siberia). The results showed the validity of the goodness-of-fit metrics based on Minkowski functionals for reconstruction the topology of porous media. The combined usage of CNN and GAN allowed to create a robust 3D topology reconstruction framework. The calculated poroperm characteristics are correlated with laboratory measurements of porosity and permeability. The developed algorithms of automatic feature extraction from petrographic thin sections and 3D reconstruction based on these features allow to achieve the following goals. First is the reduction of the amount of the routine work done by an expert during petrographic analysis. Second leads to the reduction of the number of expensive and time-consuming CT scannings required for each physical sample in order to perform further absolute and relative permeability calculations. The proposed method can bring the petrographic thin section and CT data analysis to a new level and significantly change traditional core experiments workflow in terms of speed, data integration and rock sample preparation.
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