TL;DR
This paper introduces a physics-informed variational autoencoder that disentangles known physics from confounding influences in data, improving interpretability and generalization in modeling physical systems with limited and noisy data.
Contribution
It proposes a novel architecture combining physics-based models with data-driven autoencoders, using adversarial training to ensure interpretability of physics-grounded latent variables.
Findings
Successfully disentangles physics from confounding influences
Improves interpretability of latent representations
Demonstrates effectiveness on synthetic engineering data
Abstract
Inference and prediction under partial knowledge of a physical system is challenging, particularly when multiple confounding sources influence the measured response. Explicitly accounting for these influences in physics-based models is often infeasible due to epistemic uncertainty, cost, or time constraints, resulting in models that fail to accurately describe the behavior of the system. On the other hand, data-driven machine learning models such as variational autoencoders are not guaranteed to identify a parsimonious representation. As a result, they can suffer from poor generalization performance and reconstruction accuracy in the regime of limited and noisy data. We propose a physics-informed variational autoencoder architecture that combines the interpretability of physics-based models with the flexibility of data-driven models. To promote disentanglement of the known physics and…
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