Computationally Efficient Multiscale Neural Networks Applied To Fluid Flow In Complex 3D Porous Media
Javier Santos, Ying Yin, Honggeun Jo, Wen Pan, Qinjun Kang, Hari, Viswanathan, Masa Prodanovic, Michael Pyrcz, Nicholas Lubbers

TL;DR
This paper introduces a multiscale neural network model that efficiently predicts fluid flow in complex 3D porous media, significantly reducing computation time compared to traditional simulation methods.
Contribution
It presents a novel multiscale deep learning architecture capable of modeling large 3D porous structures efficiently, overcoming previous scalability limitations of ConvNets.
Findings
Model evaluates large 3D domains in about one second.
Enables analysis of complex geometries like fractures and vuggy domains.
Outperforms traditional simulation in computational efficiency.
Abstract
The permeability of complex porous materials can be obtained via direct flow simulation, which provides the most accurate results, but is very computationally expensive. In particular, the simulation convergence time scales poorly as simulation domains become tighter or more heterogeneous. Semi-analytical models that rely on averaged structural properties (i.e. porosity and tortuosity) have been proposed, but these features only summarize the domain, resulting in limited applicability. On the other hand, data-driven machine learning approaches have shown great promise for building more general models by virtue of accounting for the spatial arrangement of the domains solid boundaries. However, prior approaches building on the Convolutional Neural Network (ConvNet) literature concerning 2D image recognition problems do not scale well to the large 3D domains required to obtain a…
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