Prediction of Local Concentration Fields in Porous Media With Chemical Reaction Using a Multi Scale Convolutional Neural Network

Prediction of Local Concentration Fields in Porous Media With Chemical Reaction Using a Multi Scale Convolutional Neural Network

Agnese Marcato, Javier E. Santos, Gianluca Boccardo, Hari Viswanathan, Daniele Marchisio, Maša Prodanović

It is often difficult to rely on detailed computational modeling alone (for example in optimization loops for designing devices, or subsurface flow exploration) due to the heavy computational costs. To this end, a cheaper surrogate model is needed. In this work (available in open access), we show how to use an innovative type of convolutional neural network, with multi-scale capabilities, extended to interpret transport and reaction results coming from detailed simulations. The network is able replicate the full-order 3D results, much faster (almost instantaneously) and with high accuracy.

Chemical Engineering Journal 455, 140367 (2023)
Corresponding Author: Gianluca Boccardo


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