A Decade of Generative Adversarial Networks for Porous Material Reconstruction

arXiv:2603.11836v15.9h-index: 2
Predicted impact top 96% in CV · last 90 daysOriginality Synthesis-oriented
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It addresses the problem of digital reconstruction for porous materials in fields like geology and tissue engineering, but it is incremental as it reviews existing methods rather than introducing new ones.

This review analyzes 96 articles from 2017-2026 on using Generative Adversarial Networks (GANs) for reconstructing porous materials, showing improvements such as porosity accuracy within 1% of original samples and up to 79% reduction in permeability prediction errors.

Digital reconstruction of porous materials has become increasingly critical for applications ranging from geological reservoir characterization to tissue engineering and electrochemical device design. While traditional methods such as micro-computed tomography and statistical reconstruction approaches have established foundations in this field, the emergence of deep learning techniques, particularly Generative Adversarial Networks (GANs), has revolutionized porous media reconstruction capabilities. This review systematically analyzes 96 peer-reviewed articles published from 2017 to early 2026, examining the evolution and applications of GAN-based approaches for porous material image reconstruction. We categorize GAN architectures into six distinct classes, namely Vanilla GANs, Multi-Scale GANs, Conditional GANs, Attention-Enhanced GANs, Style-based GANs, and Hybrid Architecture GANs. Our analysis reveals substantial progress including improvements in porosity accuracy (within 1% of original samples), permeability prediction (up to 79% reduction in mean relative errors), and achievable reconstruction volumes (from initial $64^3$ to current $2{,}200^3$ voxels). Despite these advances, persistent challenges remain in computational efficiency, memory constraints for large-scale reconstruction, and maintaining structural continuity in 2D-to-3D transformations. This systematic analysis provides a comprehensive framework for selecting appropriate GAN architectures based on specific application requirements.

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