Efficient Deep Learning Techniques for Multiphase Flow Simulation in Heterogeneous Porous Media

07/22/2019
by   Yating Wang, et al.
0

We present efficient deep learning techniques for approximating flow and transport equations for both single phase and two-phase flow problems. The proposed methods take advantages of the sparsity structures in the underlying discrete systems and can be served as efficient alternatives to the system solvers at the full order. In particular, for the flow problem, we design a network with convolutional and locally connected layers to perform model reductions. Moreover, we employ a custom loss function to impose local mass conservation constraints. This helps to preserve the physical property of velocity solution which we are interested in learning. For the saturation problem, we propose a residual type of network to approximate the dynamics. Our main contribution here is the design of custom sparsely connected layers which take into account the inherent sparse interaction between the input and output. After training, the approximated feed-forward map can be applied iteratively to predict solutions in the long range. Our trained networks, especially in two-phase flow where the maps are nonlinear, show their great potential in accurately approximating the underlying physical system and improvement in computational efficiency. Some numerical experiments are performed and discussed to demonstrate the performance of our proposed techniques.

READ FULL TEXT

page 9

page 12

page 18

research
01/11/2022

CDNNs: The coupled deep neural networks for coupling of the Stokes and Darcy-Forchheimer problems

In this article, we present an efficient deep learning method called cou...
research
06/09/2020

On the conservation properties in multiple scale coupling and simulation for Darcy flow with hyperbolic-transport in complex flows

We present and discuss a novel approach to deal with conservation proper...
research
11/20/2019

Towards Physics-informed Deep Learning for Turbulent Flow Prediction

While deep learning has shown tremendous success in a wide range of doma...
research
12/12/2022

Physics-preserving IMPES based multiscale methods for immiscible two-phase flow in highly heterogeneous porous media

In this paper, we propose a physics-preserving multiscale method to solv...
research
09/08/2020

Weak Form Theory-guided Neural Network (TgNN-wf) for Deep Learning of Subsurface Single and Two-phase Flow

Deep neural networks (DNNs) are widely used as surrogate models in geoph...
research
03/04/2021

A vertex scheme for two-phase flow in heterogeneous media

This paper presents the numerical solution of immiscible two-phase flows...
research
04/05/2021

CCSNet: a deep learning modeling suite for CO_2 storage

Numerical simulation is an essential tool for many applications involvin...

Please sign up or login with your details

Forgot password? Click here to reset