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广义网络建模:作为多孔介质孔隙空间粗尺度离散化的网络提取

Generalized network modeling: Network extraction as a coarse-scale discretization of the void space of porous media.

作者信息

Raeini Ali Q, Bijeljic Branko, Blunt Martin J

机构信息

Department of Earth Science and Engineering, Imperial College London, London SW7 2AZ, United Kingdom.

出版信息

Phys Rev E. 2017 Jul;96(1-1):013312. doi: 10.1103/PhysRevE.96.013312. Epub 2017 Jul 20.

Abstract

A generalized network extraction workflow is developed for parameterizing three-dimensional (3D) images of porous media. The aim of this workflow is to reduce the uncertainties in conventional network modeling predictions introduced due to the oversimplification of complex pore geometries encountered in natural porous media. The generalized network serves as a coarse discretization of the surface generated from a medial-axis transformation of the 3D image. This discretization divides the void space into individual pores and then subdivides each pore into sub-elements called half-throat connections. Each half-throat connection is further segmented into corners by analyzing the medial axis curves of its axial plane. The parameters approximating each corner-corner angle, volume, and conductivity-are extracted at different discretization levels, corresponding to different wetting layer thickness and local capillary pressures during multiphase flow simulations. Conductivities are calculated using direct single-phase flow simulation so that the network can reproduce the single-phase flow permeability of the underlying image exactly. We first validate the algorithm by using it to discretize synthetic angular pore geometries and show that the network model reproduces the corner angles accurately. We then extract network models from micro-CT images of porous rocks and show that the network extraction preserves macroscopic properties, the permeability and formation factor, and the statistics of the micro-CT images.

摘要

开发了一种通用的网络提取工作流程,用于对多孔介质的三维(3D)图像进行参数化。该工作流程的目的是减少由于天然多孔介质中复杂孔隙几何形状过度简化而导致的传统网络建模预测中的不确定性。通用网络用作从3D图像的中轴线变换生成的表面的粗离散化。这种离散化将孔隙空间划分为单个孔隙,然后将每个孔隙细分为称为半喉连接的子元素。通过分析其轴向平面的中轴线曲线,将每个半喉连接进一步细分为角点。在不同的离散化级别提取近似每个角点-角点角度、体积和电导率的参数,对应于多相流模拟期间不同的润湿层厚度和局部毛细管压力。使用直接单相流模拟计算电导率,以便网络能够准确再现基础图像的单相流渗透率。我们首先通过使用该算法离散合成角形孔隙几何形状来验证算法,并表明网络模型能够准确再现角点角度。然后,我们从多孔岩石的微观CT图像中提取网络模型,并表明网络提取保留了宏观特性、渗透率和地层因数,以及微观CT图像的统计信息。

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