Markov Chain Generative Adversarial Neural Networks for Solving Bayesian Inverse Problems in Physics Applications
In the context of solving inverse problems for physics applications within a Bayesian framework, we present a new approach, Markov Chain Generative Adversarial Neural Networks (MCGANs), to alleviate the computational costs associated with solving the Bayesian inference problem. GANs pose a very suit...
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Zusammenfassung: | In the context of solving inverse problems for physics applications within a
Bayesian framework, we present a new approach, Markov Chain Generative
Adversarial Neural Networks (MCGANs), to alleviate the computational costs
associated with solving the Bayesian inference problem. GANs pose a very
suitable framework to aid in the solution of Bayesian inference problems, as
they are designed to generate samples from complicated high-dimensional
distributions. By training a GAN to sample from a low-dimensional latent space
and then embedding it in a Markov Chain Monte Carlo method, we can highly
efficiently sample from the posterior, by replacing both the high-dimensional
prior and the expensive forward map. We prove that the proposed methodology
converges to the true posterior in the Wasserstein-1 distance and that sampling
from the latent space is equivalent to sampling in the high-dimensional space
in a weak sense. The method is showcased on two test cases where we perform
both state and parameter estimation simultaneously. The approach is shown to be
up to two orders of magnitude more accurate than alternative approaches while
also being up to two orders of magnitude computationally faster, in multiple
test cases, including the important engineering setting of detecting leaks in
pipelines. |
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DOI: | 10.48550/arxiv.2111.12408 |