TL;DR
This paper compares semi-analytical and non-averaged orbit propagation methods, highlighting the advantages of regularized non-averaged formulations for long-term high-altitude and elliptical satellite orbit analysis.
Contribution
It introduces a collection of regularized non-averaged methods implemented in THALASSA and demonstrates their efficiency and accuracy advantages over semi-analytical methods for various orbit types.
Findings
Non-averaged methods are up to two times slower than semi-analytical for LEO.
Non-averaged methods are comparable in speed for GTO.
Non-averaged methods are ten times faster for HEO.
Abstract
This paper is concerned with the comparison of semi-analytical and non-averaged propagation methods for Earth satellite orbits. We analyse the total integration error for semi-analytical methods and propose a novel decomposition into dynamical, model truncation, short-periodic, and numerical error components. The first three are attributable to distinct approximations required by the method of averaging, which fundamentally limit the attainable accuracy. In contrast, numerical error, the only component present in non-averaged methods, can be significantly mitigated by employing adaptive numerical algorithms and regularized formulations of the equations of motion. We present a collection of non-averaged methods based on the integration of existing regularized formulations of the equations of motion through an adaptive solver. We implemented the collection in the orbit propagation code…
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