TL;DR
This paper introduces a probabilistic, semi-supervised surrogate modeling framework that incorporates physical constraints via virtual observables, improving data efficiency and physical fidelity in computational physics models.
Contribution
It proposes a Bayesian generative model that integrates physical laws as virtual observables and leverages unlabeled data for semi-supervised training of surrogates.
Findings
Enhanced surrogate accuracy with limited data
Effective incorporation of physical constraints
Utilization of unlabeled data improves model learning
Abstract
The data-centric construction of inexpensive surrogates for fine-grained, physical models has been at the forefront of computational physics due to its significant utility in many-query tasks such as uncertainty quantification. Recent efforts have taken advantage of the enabling technologies from the field of machine learning (e.g. deep neural networks) in combination with simulation data. While such strategies have shown promise even in higher-dimensional problems, they generally require large amounts of training data even though the construction of surrogates is by definition a Small Data problem. Rather than employing data-based loss functions, it has been proposed to make use of the governing equations (in the simplest case at collocation points) in order to imbue domain knowledge in the training of the otherwise black-box-like interpolators. The present paper provides a flexible,…
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