Literature DB >> 29347591

Reconstruction of three-dimensional porous media using generative adversarial neural networks.

Lukas Mosser1, Olivier Dubrule1, Martin J Blunt1.   

Abstract

To evaluate the variability of multiphase flow properties of porous media at the pore scale, it is necessary to acquire a number of representative samples of the void-solid structure. While modern x-ray computer tomography has made it possible to extract three-dimensional images of the pore space, assessment of the variability in the inherent material properties is often experimentally not feasible. We present a method to reconstruct the solid-void structure of porous media by applying a generative neural network that allows an implicit description of the probability distribution represented by three-dimensional image data sets. We show, by using an adversarial learning approach for neural networks, that this method of unsupervised learning is able to generate representative samples of porous media that honor their statistics. We successfully compare measures of pore morphology, such as the Euler characteristic, two-point statistics, and directional single-phase permeability of synthetic realizations with the calculated properties of a bead pack, Berea sandstone, and Ketton limestone. Results show that generative adversarial networks can be used to reconstruct high-resolution three-dimensional images of porous media at different scales that are representative of the morphology of the images used to train the neural network. The fully convolutional nature of the trained neural network allows the generation of large samples while maintaining computational efficiency. Compared to classical stochastic methods of image reconstruction, the implicit representation of the learned data distribution can be stored and reused to generate multiple realizations of the pore structure very rapidly.

Year:  2017        PMID: 29347591     DOI: 10.1103/PhysRevE.96.043309

Source DB:  PubMed          Journal:  Phys Rev E        ISSN: 2470-0045            Impact factor:   2.529


  3 in total

1.  Connectivity-informed drainage network generation using deep convolution generative adversarial networks.

Authors:  Sung Eun Kim; Yongwon Seo; Junshik Hwang; Hongkyu Yoon; Jonghyun Lee
Journal:  Sci Rep       Date:  2021-01-15       Impact factor: 4.379

2.  On the generation of realistic synthetic petrographic datasets using a style-based GAN.

Authors:  Ivan Ferreira; Ardiansyah Koeshidayatullah; Luis Ochoa
Journal:  Sci Rep       Date:  2022-07-27       Impact factor: 4.996

3.  Computed Tomography 3D Super-Resolution with Generative Adversarial Neural Networks: Implications on Unsaturated and Two-Phase Fluid Flow.

Authors:  Nick Janssens; Marijke Huysmans; Rudy Swennen
Journal:  Materials (Basel)       Date:  2020-03-19       Impact factor: 3.623

  3 in total

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