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

07/28/2020
by   Nanzhe Wanga, et al.
0

Deep-learning has achieved good performance and shown great potential for solving forward and inverse problems. In this work, two categories of innovative deep-learning based inverse modeling methods are proposed and compared. The first category is deep-learning surrogate-based inversion methods, in which the Theory-guided Neural Network (TgNN) is constructed as a deep-learning surrogate for problems with uncertain model parameters. By incorporating physical laws and other constraints, the TgNN surrogate can be constructed with limited simulation runs and accelerate the inversion process significantly. Three TgNN surrogate-based inversion methods are proposed, including the gradient method, the iterative ensemble smoother (IES), and the training method. The second category is direct-deep-learning-inversion methods, in which TgNN constrained with geostatistical information, named TgNN-geo, is proposed for direct inverse modeling. In TgNN-geo, two neural networks are introduced to approximate the respective random model parameters and the solution. Since the prior geostatistical information can be incorporated, the direct-inversion method based on TgNN-geo works well, even in cases with sparse spatial measurements or imprecise prior statistics. Although the proposed deep-learning based inverse modeling methods are general in nature, and thus applicable to a wide variety of problems, they are tested with several subsurface flow problems. It is found that satisfactory results are obtained with a high efficiency. Moreover, both the advantages and disadvantages are further analyzed for the proposed two categories of deep-learning based inversion methods.

READ FULL TEXT

page 23

page 24

page 28

page 35

page 37

page 38

page 39

page 42

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
03/05/2022

Bathymetry Inversion using a Deep-Learning-Based Surrogate for Shallow Water Equations Solvers

River bathymetry is critical for many aspects of water resources managem...
research
08/29/2022

Autoinverse: Uncertainty Aware Inversion of Neural Networks

Neural networks are powerful surrogates for numerous forward processes. ...
research
06/09/2020

Fast Modeling and Understanding Fluid Dynamics Systems with Encoder-Decoder Networks

Is a deep learning model capable of understanding systems governed by ce...
research
12/26/2018

Deep learning electromagnetic inversion with convolutional neural networks

Geophysical inversion attempts to estimate the distribution of physical ...
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...
research
11/14/2018

Deep Bayesian Inversion

Characterizing statistical properties of solutions of inverse problems i...

Please sign up or login with your details

Forgot password? Click here to reset