PCP-GAN: Property-Constrained Pore-scale image reconstruction via conditional Generative Adversarial Networks
Ali Sadeghkhani, Brandon Bennett, Masoud Babaei, Arash Rabbani

TL;DR
This paper introduces a property-constrained cGAN framework that generates realistic, property-controlled pore-scale images, improving subsurface characterization by addressing data scarcity and heterogeneity challenges.
Contribution
The study presents a novel multi-conditional GAN model that accurately controls pore properties and captures geological variability from limited data, enhancing digital rock physics applications.
Findings
Achieved high porosity control with R^2=0.95
Validated preservation of pore network characteristics
Generated images significantly more representative than random samples
Abstract
Obtaining truly representative pore-scale images that match bulk formation properties remains a fundamental challenge in subsurface characterization, as natural spatial heterogeneity causes extracted sub-images to deviate significantly from core-measured values. This challenge is compounded by data scarcity, where physical samples are only available at sparse well locations. This study presents a multi-conditional Generative Adversarial Network (cGAN) framework that generates representative pore-scale images with precisely controlled properties, addressing both the representativeness challenge and data availability constraints. The framework was trained on thin section samples from four depths (1879.50-1943.50 m) of a carbonate formation, simultaneously conditioning on porosity values and depth parameters within a single unified model. This approach captures both universal pore network…
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Taxonomy
TopicsEnhanced Oil Recovery Techniques · Hydrocarbon exploration and reservoir analysis · Mineral Processing and Grinding
