Hybrid DeepONet Surrogates for Multiphase Flow in Porous Media
Ezequiel S. Santos, Gabriel F. Barros, Amanda C. N. Oliveira, R\^omulo M. Silva, Rodolfo S. M. Freitas, Dakshina M. Valiveti, Xiao-Hui Wu, Fernando A. Rochinha, Alvaro L. G. A. Coutinho

TL;DR
This paper develops hybrid neural operator surrogates combining DeepONet with Fourier Neural Operators, MLPs, and KANs to efficiently model complex multiphase flows in porous media, reducing computational costs and parameters.
Contribution
It introduces a novel hybrid DeepONet framework that decouples spatial and temporal learning, improving efficiency and accuracy for complex porous media flow simulations.
Findings
Hybrid models achieve high accuracy with fewer parameters.
Framework effectively handles 2D and 3D multiphase flow problems.
Surrogates perform well on large-scale reservoir simulations.
Abstract
The solution of partial differential equations (PDEs) plays a central role in numerous applications in science and engineering, particularly those involving multiphase flow in porous media. Complex, nonlinear systems govern these problems and are notoriously computationally intensive, especially in real-world applications and reservoirs. Recent advances in deep learning have spurred the development of data-driven surrogate models that approximate PDE solutions with reduced computational cost. Among these, Neural Operators such as Fourier Neural Operator (FNO) and Deep Operator Networks (DeepONet) have shown strong potential for learning parameter-to-solution mappings, enabling the generalization across families of PDEs. However, both methods face challenges when applied independently to complex porous media flows, including high memory requirements and difficulty handling the time…
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Taxonomy
TopicsModel Reduction and Neural Networks · Generative Adversarial Networks and Image Synthesis · Reservoir Engineering and Simulation Methods
