Robustness and Transferability of Pix2Geomodel for Bidirectional Facies Property Translation in a Complex Reservoir
arXiv cs.CV / 5/6/2026
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Key Points
- The study tests the robustness and transferability of Pix2Geomodel (Pix2Pix-based image-to-image translation) for bidirectional translation between facies and petrophysical properties in a more complex reservoir with sparse conditioning and reduced vertical support.
- By converting facies and properties (porosity, permeability, and VCL) into aligned 2D image slices and evaluating six bidirectional tasks, the authors create a stricter benchmark for preserving facies–property relationships under constrained data.
- Using a Pix2Pix architecture with a U-Net generator and PatchGAN discriminator, performance is assessed via image metrics, visual inspection, and variogram-based spatial continuity validation.
- Results indicate the model maintains dominant geological structures and key spatial-continuity trends, with the best reported performance for facies→porosity (highest pixel accuracy and frequency-weighted IoU) and for VCL→facies (highest mean pixel accuracy and mean IoU).
- Overall, the paper concludes that Pix2Geomodel can generalize beyond the original dataset, offering a practical framework for rapid facies-property translation in complex reservoir geomodeling workflows.
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