Solution of physics-based inverse problems using conditional generative adversarial networks with full gradient penalty

06/08/2023
by   Deep Ray, et al.
0

The solution of probabilistic inverse problems for which the corresponding forward problem is constrained by physical principles is challenging. This is especially true if the dimension of the inferred vector is large and the prior information about it is in the form of a collection of samples. In this work, a novel deep learning based approach is developed and applied to solving these types of problems. The approach utilizes samples of the inferred vector drawn from the prior distribution and a physics-based forward model to generate training data for a conditional Wasserstein generative adversarial network (cWGAN). The cWGAN learns the probability distribution for the inferred vector conditioned on the measurement and produces samples from this distribution. The cWGAN developed in this work differs from earlier versions in that its critic is required to be 1-Lipschitz with respect to both the inferred and the measurement vectors and not just the former. This leads to a loss term with the full (and not partial) gradient penalty. It is shown that this rather simple change leads to a stronger notion of convergence for the conditional density learned by the cWGAN and a more robust and accurate sampling strategy. Through numerical examples it is shown that this change also translates to better accuracy when solving inverse problems. The numerical examples considered include illustrative problems where the true distribution and/or statistics are known, and a more complex inverse problem motivated by applications in biomechanics.

READ FULL TEXT

page 20

page 23

page 24

page 26

page 28

page 29

research
02/15/2022

The efficacy and generalizability of conditional GANs for posterior inference in physics-based inverse problems

In this work, we train conditional Wasserstein generative adversarial ne...
research
07/06/2021

Solution of Physics-based Bayesian Inverse Problems with Deep Generative Priors

Inverse problems are notoriously difficult to solve because they can hav...
research
05/20/2020

Inverse Estimation of Elastic Modulus Using Physics-Informed Generative Adversarial Networks

While standard generative adversarial networks (GANs) rely solely on tra...
research
09/02/2021

Solving Inverse Problems with Conditional-GAN Prior via Fast Network-Projected Gradient Descent

The projected gradient descent (PGD) method has shown to be effective in...
research
09/17/2020

Integration of AI and mechanistic modeling in generative adversarial networks for stochastic inverse problems

The problem of finding distributions of input parameters for determinist...
research
03/27/2020

GAN-based Priors for Quantifying Uncertainty

Bayesian inference is used extensively to quantify the uncertainty in an...
research
11/20/2018

MimicGAN: Corruption-Mimicking for Blind Image Recovery & Adversarial Defense

Solving inverse problems continues to be a central challenge in computer...

Please sign up or login with your details

Forgot password? Click here to reset