Omarkhan Samarkanov, Masoud Riazi School of Mining and Geosciences
Presented at: 6th EAGE Global Energy Transition Conference & Exhibition (GET 2025), Rotterdam, Netherlands
Researchers at Nazarbayev University have developed a novel Physics-Informed Neural Network (PINN) framework to model complex fluid flows in porous media. This work, presented within the "Carbon Capture & Storage" and student tracks at the prestigious EAGE GET 2025, addresses a critical bottleneck in reservoir engineering: the high computational cost of simulating multiphase flow in heterogeneous reservoirs.
THE CHALLENGE
Traditional numerical simulators (such as Finite Volume methods) require dividing a reservoir into millions of grid cells to track fluid movement accurately. This approach is computationally expensive, especially when modeling complex substances like emulsions, which dynamically alter rock permeability as droplets become trapped in pores.
THE AI SOLUTION
The team, led by Prof. Masoud Riazi and Omarkhan Samarkanov, replaced the traditional grid with a mesh-free deep learning architecture that "knows" physics.
KEY FINDINGS
WHY IT MATTERS: FROM EOR TO CCS
While validated on Emulsion Flooding for Enhanced Oil Recovery (EOR), the team emphasizes that this technology is a bridge to green energy solutions. The underlying physics—multiphase transport, trapping mechanisms, and pressure management—are mathematically identical to those required for Carbon Capture and Storage (CCS).
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Strategic Impact: By providing fast and accurate simulation tools, this innovation supports the optimization of secure carbon sequestration sites and geothermal reservoirs, contributing directly to the global energy transition.