Improving Deep Learning Performance for Predicting Large-Scale Porous-Media Flow through Feature Coarsening

05/08/2021
by   Bicheng Yan, et al.
0

Physics-based simulation for fluid flow in porous media is a computational technology to predict the temporal-spatial evolution of state variables (e.g. pressure) in porous media, and usually requires high computational expense due to its nonlinearity and the scale of the study domain. This letter describes a deep learning (DL) workflow to predict the pressure evolution as fluid flows in large-scale 3D heterogeneous porous media. In particular, we apply feature coarsening technique to extract the most representative information and perform the training and prediction of DL at the coarse scale, and further recover the resolution at the fine scale by 2D piecewise cubic interpolation. We validate the DL approach that is trained from physics-based simulation data to predict pressure field in a field-scale 3D geologic CO_2 storage reservoir. We evaluate the impact of feature coarsening on DL performance, and observe that the feature coarsening can not only decrease training time by >74 memory consumption by >75 the DL workflow provides predictive efficiency with  1400 times speedup compared to physics-based simulation.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset