Case Studies of Generative Machine Learning Models for Dynamical Systems
Nachiket U. Bapat, Randy C. Paffenroth, Raghvendra V. Cowlagi

TL;DR
This paper explores the use of generative AI models, specifically GANs and VAEs, to produce data for aerospace systems that adhere to physical laws, aiming to reduce model mismatch with limited training data.
Contribution
It introduces a novel approach to train generative models with small datasets while ensuring outputs satisfy governing physical laws, demonstrated through aerospace case studies.
Findings
VAE-based models effectively generate physically consistent data.
Models perform well with only a few hundred training examples.
Generative models improve data synthesis for aerospace applications.
Abstract
Systems like aircraft and spacecraft are expensive to operate in the real world. The design, validation, and testing for such systems therefore relies on a combination of mathematical modeling, abundant numerical simulations, and a relatively small set of real-world experiments. Due to modeling errors, simplifications, and uncertainties, the data synthesized by simulation models often does not match data from the system's real-world operation. We consider the broad research question of whether this model mismatch can be significantly reduced by generative artificial intelligence models (GAIMs). Unlike text- or image-processing, where generative models have attained recent successes, GAIM development for aerospace engineering applications must not only train with scarce operational data, but their outputs must also satisfy governing equations based on natural laws, e.g., conservation…
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