Abstract

The permeability of complex porous materials is of interest to many engineering disciplines. This quantity can be obtained via direct flow simulation, which provides the most accurate results, but is very computationally expensive. In particular, the simulation convergence time scales poorly as the simulation domains become less porous or more heterogeneous. Semi-analytical models that rely on averaged structural properties (i.e., porosity and tortuosity) have been proposed, but these features only partly summarize the domain, resulting in limited applicability. On the other hand, data-driven machine learning approaches have shown great promise for building more general models by virtue of accounting for the spatial arrangement of the domains’ solid boundaries. However, prior approaches building on the convolutional neural network (ConvNet) literature concerning 2D image recognition problems do not scale well to the large 3D domains required to obtain a representative elementary volume (REV). As such, most prior work focused on homogeneous samples, where a small REV entails that the global nature of fluid flow could be mostly neglected, and accordingly, the memory bottleneck of addressing 3D domains with ConvNets was side-stepped. Therefore, important geometries such as fractures and vuggy domains could not be modeled properly. In this work, we address this limitation with a general multiscale deep learning model that is able to learn from porous media simulation data. By using a coupled set of neural networks that view the domain on different scales, we enable the evaluation of large (>512^3) images in approximately one second on a single graphics processing unit. This model architecture opens up the possibility of modeling domain sizes that would not be feasible using traditional direct simulation tools on a desktop computer. We validate our method with a laminar fluid flow case using vuggy samples and fractures. As a result of viewing the entire domain at once, our model is able to perform accurate prediction on domains exhibiting a large degree of heterogeneity. We expect the methodology to be applicable to many other transport problems where complex geometries play a central role.

Highlights

  • In the last few decades, micro-tomographic imaging in conjunction with direct numerical simulations have been developed extensively to act as a complementary tool for laboratory measurements of porous materials (Schepp et al 2020)

  • We propose an architecture designed to overcome the hurdles of training convolutional neural networks to small 3D volumes, the multiscale network (MS-Net), and show that MSNet is a suitable system to model physics in complex porous materials

  • We will present two computational experiments that were carried-out to show how the MultiScale Network for hierarchical regression (MS-Net) is able to learn from 3D domains with heterogeneities at different scales

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Summary

Introduction

In the last few decades, micro-tomographic imaging in conjunction with direct numerical simulations (digital rock technologies) have been developed extensively to act as a complementary tool for laboratory measurements of porous materials (Schepp et al 2020). The increase in speed and availability of computational resources (graphics processing units, supercomputer clusters, and cloud computing) has made it possible to develop direct simulation methods to obtain petrophysical properties based on 3D images (Pan et al 2004; Tartakovsky and Meakin 2005; White et al 2006; Jenny et al 2003). Solving these problems in time frames that could allow their industrial applicability requires thousands of computing cores. A model that could give fast and accurate approximations of a given petrophysical property is of great interest

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