LGROSYFeb 18

Machine Learning Argument of Latitude Error Model for LEO Satellite Orbit and Covariance Correction

arXiv:2602.16764v1h-index: 37Has Code
Originality Incremental advance
AI Analysis

This work addresses the need for accurate position, navigation, and timing services as alternatives to GNSS, though it is incremental as it builds on existing VCM ephemerides and propagators.

The paper tackled the problem of inaccurate orbit propagation and uncertainty quantification for LEO satellites due to mismodeled atmospheric drag, by developing a machine learning approach that corrects error growth in the argument of latitude, extending the applicability of Gaussian assumptions and improving covariance modeling without modifying existing propagators.

Low Earth orbit (LEO) satellites are leveraged to support new position, navigation, and timing (PNT) service alternatives to GNSS. These alternatives require accurate propagation of satellite position and velocity with a realistic quantification of uncertainty. It is commonly assumed that the propagated uncertainty distribution is Gaussian; however, the validity of this assumption can be quickly compromised by the mismodeling of atmospheric drag. We develop a machine learning approach that corrects error growth in the argument of latitude for a diverse set of LEO satellites. The improved orbit propagation accuracy extends the applicability of the Gaussian assumption and modeling of the errors with a corrected mean and covariance. We compare the performance of a time-conditioned neural network and a Gaussian Process on datasets computed with an open source orbit propagator and publicly available Vector Covariance Message (VCM) ephemerides. The learned models predict the argument of latitude error as a Gaussian distribution given parameters from a single VCM epoch and reverse propagation errors. We show that this one-dimensional model captures the effect of mismodeled drag, which can be mapped to the Cartesian state space. The correction method only updates information along the dimensions of dominant error growth, while maintaining the physics-based propagation of VCM covariance in the remaining dimensions. We therefore extend the utility of VCM ephemerides to longer time horizons without modifying the functionality of the existing propagator.

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