Deep-Learning based Inverse Modeling Approaches: A Subsurface Flow Example
Nanzhe Wang, Haibin Chang, and Dongxiao Zhang

TL;DR
This paper introduces two innovative deep-learning based inverse modeling methods for subsurface flow problems, demonstrating their efficiency and effectiveness in handling uncertain parameters and sparse data.
Contribution
It proposes and compares surrogate-based and direct deep-learning inverse modeling methods, incorporating physical laws and geostatistics for improved accuracy and efficiency.
Findings
High inversion accuracy achieved in subsurface flow problems
Methods work well with sparse measurements and uncertain priors
Both advantages and disadvantages analyzed for the proposed methods
Abstract
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…
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