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Predicting porosity, permeability, and tortuosity of porous media from images by deep learning

Krzysztof M. Graczyk, Maciej Matyka

2020Scientific Reports157 citationsDOIOpen Access PDF

Abstract

Convolutional neural networks (CNN) are utilized to encode the relation between initial configurations of obstacles and three fundamental quantities in porous media: porosity ([Formula: see text]), permeability (k), and tortuosity (T). The two-dimensional systems with obstacles are considered. The fluid flow through a porous medium is simulated with the lattice Boltzmann method. The analysis has been performed for the systems with [Formula: see text] which covers five orders of magnitude a span for permeability [Formula: see text] and tortuosity [Formula: see text]. It is shown that the CNNs can be used to predict the porosity, permeability, and tortuosity with good accuracy. With the usage of the CNN models, the relation between T and [Formula: see text] has been obtained and compared with the empirical estimate.

Topics & Concepts

TortuosityPorous mediumPermeability (electromagnetism)Convolutional neural networkArtificial intelligenceLattice Boltzmann methodsPorosityDeep learningComputer scienceComputationMaterials scienceArtificial neural networkRelation (database)Flow (mathematics)Biological systemPattern recognition (psychology)Residual neural networkFluid dynamicsComputer visionLattice Boltzmann Simulation StudiesEnhanced Oil Recovery TechniquesHeat and Mass Transfer in Porous Media
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