Uncertainty quantification of two-phase flow in porous media via coupled-TgNN surrogate model

05/28/2022
by   Jian Li, et al.
0

Uncertainty quantification (UQ) of subsurface two-phase flow usually requires numerous executions of forward simulations under varying conditions. In this work, a novel coupled theory-guided neural network (TgNN) based surrogate model is built to facilitate computation efficiency under the premise of satisfactory accuracy. The core notion of this proposed method is to bridge two separate blocks on top of an overall network. They underlie the TgNN model in a coupled form, which reflects the coupling nature of pressure and water saturation in the two-phase flow equation. The TgNN model not only relies on labeled data, but also incorporates underlying scientific theory and experiential rules (e.g., governing equations, stochastic parameter fields, boundary and initial conditions, well conditions, and expert knowledge) as additional components into the loss function. The performance of the TgNN-based surrogate model for two-phase flow problems is tested by different numbers of labeled data and collocation points, as well as the existence of data noise. The proposed TgNN-based surrogate model offers an effective way to solve the coupled nonlinear two-phase flow problem and demonstrates good accuracy and strong robustness when compared with the purely data-driven surrogate model. By combining the accurate TgNN-based surrogate model with the Monte Carlo method, UQ tasks can be performed at a minimum cost to evaluate statistical quantities. Since the heterogeneity of the random fields strongly impacts the results of the surrogate model, corresponding variance and correlation length are added to the input of the neural network to maintain its predictive capacity. The results show that the TgNN-based surrogate model achieves satisfactory accuracy, stability, and efficiency in UQ problems of subsurface two-phase flow.

READ FULL TEXT

page 19

page 22

page 26

page 30

page 34

page 37

research
04/25/2020

Efficient Uncertainty Quantification for Dynamic Subsurface Flow with Surrogate by Theory-guided Neural Network

Subsurface flow problems usually involve some degree of uncertainty. Con...
research
11/17/2020

Theory-guided Auto-Encoder for Surrogate Construction and Inverse Modeling

A Theory-guided Auto-Encoder (TgAE) framework is proposed for surrogate ...
research
01/18/2019

Physics-Constrained Deep Learning for High-dimensional Surrogate Modeling and Uncertainty Quantification without Labeled Data

Surrogate modeling and uncertainty quantification tasks for PDE systems ...
research
07/22/2021

Mini-data-driven Deep Arbitrary Polynomial Chaos Expansion for Uncertainty Quantification

The surrogate model-based uncertainty quantification method has drawn a ...
research
03/05/2021

Physics-aware deep neural networks for surrogate modeling of turbulent natural convection

Recent works have explored the potential of machine learning as data-dri...
research
08/11/2023

Surrogate Model for Geological CO2 Storage and Its Use in MCMC-based History Matching

Deep-learning-based surrogate models show great promise for use in geolo...

Please sign up or login with your details

Forgot password? Click here to reset