2024
DOI: 10.1029/2023sw003652
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Improving Thermospheric Density Predictions in Low‐Earth Orbit With Machine Learning

Giacomo Acciarini,
Edward Brown,
Tom Berger
et al.

Abstract: Thermospheric density is one of the main sources of uncertainty in the estimation of satellites' position and velocity in low‐Earth orbit. This has negative consequences in several space domains, including space traffic management, collision avoidance, re‐entry predictions, orbital lifetime analysis, and space object cataloging. In this paper, we investigate the prediction accuracy of empirical density models (e.g., NRLMSISE‐00 and JB‐08) against black‐box machine learning (ML) models trained on precise orbit … Show more

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