The impact of observation density on Bayesian inversion of latent dynamics in shock-dominated flows
Bipin Tiwari, Muhammad Abid, and Omer San

TL;DR
This paper introduces a Bayesian inversion framework using autoencoder-based reduced-order models to efficiently infer initial states in shock-dominated flows from sparse, noisy measurements, with quantified uncertainty.
Contribution
It develops a non-intrusive AE-ROM surrogate combined with NUTS sampling for rapid, accurate Bayesian inverse analysis of complex shock tube flows.
Findings
AE-ROM accurately reconstructs shock-tube structures.
A latent dimension of 32 balances accuracy and compactness.
Increasing observation density reduces posterior uncertainty by over 75%.
Abstract
Inferring unknown initial states in shock-dominated compressible flows from sparse and noisy measurements is a challenging ill-posed inverse problem due to nonlinear wave interactions and limited sensing. In this work, we develop a non-intrusive reduced-order modeling framework for efficient Bayesian initial-state inversion with uncertainty quantification. The framework combines a convolutional autoencoder with a learned latent-space forward operator. The autoencoder compresses high-dimensional flow fields into a compact nonlinear latent representation, while the forward operator predicts final-time latent states from encoded initial conditions. This AE-ROM surrogate enables rapid forward evaluations and is embedded within a No-U-Turn Sampler (NUTS) for posterior exploration. The framework is demonstrated using 500 high-fidelity Sod shock tube simulations generated through Latin…
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