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Image-based effective medium approximation for fast permeability evaluation of porous media core samples

机译:用于多孔介质核心样品的快速渗透性评估的基于图像的有效介质近似

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摘要

An image-based effective medium approximation (EMA) is developed so as to permit very fast transport properties evaluations of 3D porous media. From an image-based porous network (IBPN) built upon digital image processing of 3D binary images, we focus on throat's local geometrical properties at the pore scale, for being the most sensible structural units which build up the local pressure. This approach is a 3D image-based extension of the critical point approach proposed in 2D fractures. We show, from analyzing various core rock samples available in the literature, that the asymptotic assumptions associated with the preeminence of critical points in throats are indeed geometrically relevant. We then describe how the image-based EMA evaluated from the conductances computed from the discrete IBPN can be reliably evaluated. The proposed method is evaluated upon the estimation of core sample permeability from binarized image obtained using X-ray tomography. Since it combines digital image treatments with statistical data post-processing without the need of computational fluid dynamics (CFD) computation, it is extremely cost efficient. The results are compared with a micro-scale Stokes flow computation in various rock samples. The sensitivity to the pore discretization also is discussed and illustrated.
机译:开发了基于图像的有效介质近似(EMA),以便允许3D多孔介质的非常快速的运输特性评估。根据基于图像的多孔网络(IBPN),基于3D二进制图像的数字图像处理,我们专注于孔隙率的喉部局部几何特性,是最明智的结构单元,它构成了局部压力。这种方法是基于3D图像的临界点延伸,其临界点方法提出在2D裂缝中。我们展示了分析文献中可用的各种核心岩石样本,即与喉咙中临界点的优势相关的渐近假设确实是几何上的相关性。然后,我们描述如何可靠地评估从离散IBPN计算的导电评估的基于图像的EMA。所提出的方法在使用X射线断层扫描获得的二值化图像估计核心样品渗透性时评估。由于它将数字图像处理与统计数据的后处理结合而不需要计算流体动力学(CFD)计算,因此它是非常成本效益的。将结果与各种岩石样本中的微级斯托克斯流量进行比较。还讨论并说明了对孔径离散化的敏感性。

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