Robustness and Transferability of Pix2Geomodel for Bidirectional Facies Property Translation in a Complex Reservoir
Abdulrahman Al-Fakih, Nabil Sariah, Ardiansyah Koeshidayatullah, Sherif Hanafy, SanLinn I. Kaka

TL;DR
This study assesses the robustness and transferability of Pix2Geomodel, a deep learning approach, for bidirectional translation of facies and petrophysical properties in complex, data-sparse reservoir models.
Contribution
It demonstrates that Pix2Geomodel can effectively preserve geological features and transfer across different reservoir datasets under constrained data conditions.
Findings
Pix2Geomodel preserves dominant geological architecture.
High accuracy in facies to porosity translation.
Effective transferability demonstrated in complex reservoirs.
Abstract
Reservoir geomodeling is central to subsurface characterization, but it remains challenging because conditioning data are sparse, geological heterogeneity is strong, and conventional geostatistical workflows often struggle to capture nonlinear relationships between facies and petrophysical properties. This study evaluates the robustness and transferability of Pix2Geomodel on a different and more complex reservoir dataset with reduced vertical support. The new case includes a heterogeneous reservoir-quality classification and only 54 retained layers, providing a stricter test of whether Pix2Pix-based image-to-image translation can preserve facies-property relationships under constrained data conditions. Facies, porosity, permeability, and clay volume (VCL) were extracted from a reference reservoir model, exported as aligned two-dimensional slices, augmented using consistent geometric…
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