FFINO: Factorized Fourier Improved Neural Operator for Modeling Multiphase Flow in Underground Hydrogen Storage
Tao Wang, Hewei Tang

TL;DR
The paper introduces FFINO, a neural operator model that significantly improves speed and accuracy in simulating multiphase flow in underground hydrogen storage, enabling real-time management and decision-making.
Contribution
A novel factorized Fourier neural operator architecture (FFINO) that outperforms existing models in speed, parameter efficiency, and accuracy for multiphase flow modeling in underground hydrogen storage.
Findings
FFINO has 38.1% fewer trainable parameters than FMIONet.
FFINO achieves 7,850 times faster inference than numerical simulators.
FFINO improves prediction accuracy by up to 16.3%.
Abstract
Underground hydrogen storage (UHS) is a promising energy storage option for the current energy transition to a low-carbon economy. Fast modeling of hydrogen plume migration and pressure field evolution is crucial for UHS field management. In this study, a new neural operator architecture, factorized Fourier improved neural operator or FFINO is proposed as a fast surrogate model for multiphase flow problems in UHS. Experimental relative permeability curves reported in the literature are also parameterized as key uncertainty parameters for the FFINO model. FFINO model performance with the state-of-the-art Fourier-enhanced multiple-input neural operators or FMIONet model are systematically studied through a comprehensive combination of metrics. Our new FFINO model has 38.1% fewer trainable parameters, 17.6% less training time, and 12% less GPU memory cost compared to FMIONet. The FFINO…
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