Latent Generative Modeling of Random Fields from Limited Training Data
James E. Warner, Tristan A. Shah, Patrick E. Leser, Geoffrey F. Bomarito, Joshua D. Pribe, Michael C. Stanley

TL;DR
This paper introduces a latent-space variational autoencoder approach for modeling random fields with limited data, incorporating domain knowledge to improve sampling and representation of complex uncertainties.
Contribution
It proposes a constraint-aware VAE that learns compact, physically consistent representations of functions, enabling effective generative modeling with sparse or indirect data.
Findings
Effective wind velocity field reconstruction from sparse sensors.
Improved material property inference from indirect measurements.
Enhanced sample quality and robustness over standard VAEs.
Abstract
The ability to accurately model random fields plays a critical role in science and engineering for problems involving uncertain, spatially-varying quantities such as heterogeneous material properties and turbulent flows. Deep generative models offer a powerful tool for sampling high- or infinite-dimensional uncertainties like random fields, but their reliance on large, dense training datasets limits their applicability in contexts where sufficient data is difficult or expensive to obtain. In this work, we propose a latent-space approach to generative modeling of random fields that incorporates domain knowledge to supplement limited training data. A constraint-aware variational autoencoder (VAE) with a function decoder is first used to learn compact latent representations of continuous functions that adhere to known physical or statistical constraints, even when training data is sparse…
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