Bayesian tomography using polynomial chaos expansion and deep generative networks
Giovanni Angelo Meles, Macarena Amaya, Shiran Levy, Stefano Marelli,, Niklas Linde

TL;DR
This paper introduces a novel Bayesian tomography approach combining deep generative models and polynomial chaos expansion to efficiently explore complex priors and accurately evaluate likelihoods in geophysical inverse problems.
Contribution
It presents a new method integrating variational autoencoders with PCE surrogate models for improved Bayesian inversion in complex geological settings.
Findings
Effective sampling of complex priors via VAE in MCMC
High-accuracy surrogate modeling with PCE on VAE latent space
Enhanced efficiency in Bayesian GPR traveltime tomography
Abstract
Implementations of Markov chain Monte Carlo (MCMC) methods need to confront two fundamental challenges: accurate representation of prior information and efficient evaluation of likelihoods. Principal component analysis (PCA) and related techniques can in some cases facilitate the definition and sampling of the prior distribution, as well as the training of accurate surrogate models, using for instance, polynomial chaos expansion (PCE). However, complex geological priors with sharp contrasts necessitate more complex dimensionality-reduction techniques, such as, deep generative models (DGMs). By sampling a low-dimensional prior probability distribution defined in the low-dimensional latent space of such a model, it becomes possible to efficiently sample the physical domain at the price of a generator that is typically highly non-linear. Training a surrogate that is capable of capturing…
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Taxonomy
TopicsUnderwater Acoustics Research · Geophysical Methods and Applications · Image Processing and 3D Reconstruction
MethodsPrincipal Components Analysis
