Stochastic reconstruction of an oolitic limestone by generative adversarial networks
This work addresses the need for efficient generation of representative material micro-structures in digital rock physics, though it is incremental as it applies an existing GAN method to a new dataset.
The authors tackled the problem of stochastic 3D image reconstruction for digital rock physics by applying generative adversarial networks (GANs) to an oolitic limestone micro-CT dataset, achieving fast and accurate reconstructions as validated by comparisons of Minkowski functionals, effective permeability, and flow velocity distributions.
Stochastic image reconstruction is a key part of modern digital rock physics and materials analysis that aims to create numerous representative samples of material micro-structures for upscaling, numerical computation of effective properties and uncertainty quantification. We present a method of three-dimensional stochastic image reconstruction based on generative adversarial neural networks (GANs). GANs represent a framework of unsupervised learning methods that require no a priori inference of the probability distribution associated with the training data. Using a fully convolutional neural network allows fast sampling of large volumetric images.We apply a GAN based workflow of network training and image generation to an oolitic Ketton limestone micro-CT dataset. Minkowski functionals, effective permeability as well as velocity distributions of simulated flow within the acquired images are compared with the synthetic reconstructions generated by the deep neural network. While our results show that GANs allow a fast and accurate reconstruction of the evaluated image dataset, we address a number of open questions and challenges involved in the evaluation of generative network-based methods.