Predicting Effective Diffusivity of Porous Media from Images by Deep Learning
Haiyi Wu, Wen-Zhen Fang, Qinjun Kang, Wen-Quan Tao, and Rui Qiao

TL;DR
This paper demonstrates that deep learning models, specifically CNNs, can predict the effective diffusivity of porous media from images with high accuracy and significantly reduced computational cost compared to traditional simulation methods.
Contribution
The study introduces a CNN-based approach for predicting diffusivity from porous media images, outperforming empirical equations and addressing prediction challenges for low diffusivity structures.
Findings
CNN predicts diffusivity with <10% error for De > 0.2
Model outperforms empirical Bruggeman equation
Removing trapped regions improves accuracy for low De structures
Abstract
We report the application of machine learning methods for predicting the effective diffusivity (De) of two-dimensional porous media from images of their structures. Pore structures are built using reconstruction methods and represented as images, and their effective diffusivity is computed by lattice Boltzmann (LBM) simulations. The datasets thus generated are used to train convolutional neural network (CNN) models and evaluate their performance. The trained model predicts the effective diffusivity of porous structures with computational cost orders of magnitude lower than LBM simulations. The optimized model performs well on porous media with realistic topology, large variation of porosity (0.28-0.98), and effective diffusivity spanning more than one order of magnitude (), e.g., >95% of predicted De have truncated relative error of <10% when the true De is larger than 0.2. The CNN…
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Taxonomy
TopicsLattice Boltzmann Simulation Studies · NMR spectroscopy and applications · Heat and Mass Transfer in Porous Media
