Physics-Informed Machine Learning for Predicting the Ballistic Limit of Whipple Shields

Published in International Journal of Impact Engineering, 2025

Machine learning (ML) models can provide improved accuracy over semi-analytical ballistic limit equations (BLEs) for predicting the outcome of space debris impacts on spacecraft structures. However, they should not be applied beyond the scope of their training data. We develop and demonstrate two approaches for incorporating physics knowledge, in the form of existing BLEs, into ML models. The resulting physics-informed models provide modestly improved classification accuracy when applied on a database of experimental records as well as improved agreement with BLEs when applied outside the scope of the dataset compared to previous data-driven ML models.
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