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U-FNO -- An enhanced Fourier neural operator-based deep-learning model for multiphase flow

About

Numerical simulation of multiphase flow in porous media is essential for many geoscience applications. Machine learning models trained with numerical simulation data can provide a faster alternative to traditional simulators. Here we present U-FNO, a novel neural network architecture for solving multiphase flow problems with superior accuracy, speed, and data efficiency. U-FNO is designed based on the newly proposed Fourier neural operator (FNO), which has shown excellent performance in single-phase flows. We extend the FNO-based architecture to a highly complex CO2-water multiphase problem with wide ranges of permeability and porosity heterogeneity, anisotropy, reservoir conditions, injection configurations, flow rates, and multiphase flow properties. The U-FNO architecture is more accurate in gas saturation and pressure buildup predictions than the original FNO and a state-of-the-art convolutional neural network (CNN) benchmark. Meanwhile, it has superior data utilization efficiency, requiring only a third of the training data to achieve the equivalent accuracy as CNN. U-FNO provides superior performance in highly heterogeneous geological formations and critically important applications such as gas saturation and pressure buildup "fronts" determination. The trained model can serve as a general-purpose alternative to routine numerical simulations of 2D-radial CO2 injection problems with significant speed-ups than traditional simulators.

Gege Wen, Zongyi Li, Kamyar Azizzadenesheli, Anima Anandkumar, Sally M. Benson• 2021

Related benchmarks

TaskDatasetResultRank
Forward PDE solvingPlasticity
Relative L2 Error0.0039
21
Forward PDE solvingAirfoil
Relative L22.69
21
Forward PDE solvingPipe
Relative L2 Error0.0056
20
Forward PDE solvingElasticity
Relative L2 Error0.0239
19
PDE solvingNavier-Stokes Regular Grid (test)
Relative L2 Error0.2231
16
PDE solvingDarcy Regular Grid (test)
Relative L2 Error0.0183
16
Operator learningPipe Structured Mesh (test)
Relative L2 Error0.0056
15
PDE solvingPipe Structured Mesh (test)
Relative L2 Error0.0056
15
Operator learningPlasticity Structured Mesh (test)
Relative L2 Error0.0039
15
Operator learningNavier-Stokes Regular Grid (test)
Relative L2 Error0.2231
15
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