3D Porous Structure Image Generation
PDF (Russian)

Keywords

digital core
hydrocarbon reservoir
neural network
generative adversarial network
porous media
porosity

How to Cite

1.
Kamilov E.M., Egorov A.A. 3D Porous Structure Image Generation // Russian Journal of Cybernetics. 2020. Vol. 1, № 3. P. 33-40. DOI: 10.51790/2712-9942-2020-1-3-4.

Abstract

In this study, a convolutional generative adversarial neural network generating 3D images of porous media (rock) was developed. The neural network can be modified to generate porous media with specific properties such as porosity factor, permeability factor, composition and sizes of the grains, channels, and voids.

https://doi.org/10.51790/2712-9942-2020-1-3-4
PDF (Russian)

References

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