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

11/17/2020
by   Nanzhe Wang, et al.
1

A Theory-guided Auto-Encoder (TgAE) framework is proposed for surrogate construction and is further used for uncertainty quantification and inverse modeling tasks. The framework is built based on the Auto-Encoder (or Encoder-Decoder) architecture of convolutional neural network (CNN) via a theory-guided training process. In order to achieve the theory-guided training, the governing equations of the studied problems can be discretized and the finite difference scheme of the equations can be embedded into the training of CNN. The residual of the discretized governing equations as well as the data mismatch constitute the loss function of the TgAE. The trained TgAE can be used to construct a surrogate that approximates the relationship between the model parameters and responses with limited labeled data. In order to test the performance of the TgAE, several subsurface flow cases are introduced. The results show the satisfactory accuracy of the TgAE surrogate and efficiency of uncertainty quantification tasks can be improved with the TgAE surrogate. The TgAE also shows good extrapolation ability for cases with different correlation lengths and variances. Furthermore, the parameter inversion task has been implemented with the TgAE surrogate and satisfactory results can be obtained.

READ FULL TEXT

page 17

page 18

page 20

page 21

page 25

page 28

page 29

page 30

research
07/28/2020

Deep-Learning based Inverse Modeling Approaches: A Subsurface Flow Example

Deep-learning has achieved good performance and shown great potential fo...
research
05/28/2022

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

Uncertainty quantification (UQ) of subsurface two-phase flow usually req...
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
07/19/2020

Semi Conditional Variational Auto-Encoder for Flow Reconstruction and Uncertainty Quantification from Limited Observations

We present a new data-driven model to reconstruct nonlinear flow from sp...
research
02/07/2023

Analyzing the Performance of Deep Encoder-Decoder Networks as Surrogates for a Diffusion Equation

Neural networks (NNs) have proven to be a viable alternative to traditio...
research
04/30/2022

Identification of Physical Processes and Unknown Parameters of 3D Groundwater Contaminant Problems via Theory-guided U-net

Identification of unknown physical processes and parameters of groundwat...

Please sign up or login with your details

Forgot password? Click here to reset