Speaker
Description
Pore-scale transport analysis relies on high-resolution three-dimensional X-ray micro-computed tomography (micro-CT) images that accurately resolve pore geometry and connectivity. In practice, voxel resolutions sufficient for pore-scale characterization are typically achievable only for millimeter-scale subcores with a limited field of view (FOV), whereas imaging centimeter-scale samples required to capture a representative elemental volume (REV) necessitates substantially coarser spatial resolution to maintain a sufficiently large FOV. Deep-learning-based super-resolution methods offer a pathway to mitigate this resolution–FOV trade-off by enhancing low-resolution micro-CT images beyond physical acquisition limits. However, a critical challenge remains in establishing physically grounded validation frameworks to determine whether super-resolved images preserve pore geometry and flow-relevant properties, particularly for large resolution enhancements. In this study, we evaluate the physical consistency of super-resolved micro-CT images generated using a patch-based super-resolution generative adversarial network (Patch/SRGAN). High-resolution three-dimensional volumes (256³, ~2.197 µm/voxel) are reconstructed from low-resolution inputs (32³, ~17.576 µm/voxel), corresponding to an 8× resolution enhancement. Two reconstruction strategies are examined: direct volumetric 3D super-resolution and a computationally efficient pseudo-3D approach based on stacking independently super-resolved 2D slices. Reconstruction accuracy is assessed using pore-scale geometric and transport metrics, including total and connected porosity, two-point correlation functions, pore sphericity, the Euler characteristic, specific surface area, directional tortuosity, and absolute permeability from pore-scale flow simulations. We find that reconstructions with similar visual quality can preserve flow-relevant pore structure to greatly different levels. These results underscore the necessity of physics-informed validation beyond image-based metrics alone.
| Country | United States of America |
|---|---|
| Student Awards | I would like to submit this presentation into the Earth Energy Science (EES) and Capillarity Student Poster Awards. |
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