International Journal of Computational Intelligence Systems (Aug 2024)

Inter-Satellite Link Prediction with Supervised Learning Based on Kepler and SGP4 Orbits

  • Estel Ferrer,
  • Joan A. Ruiz-De-Azua,
  • Francesc Betorz,
  • Josep Escrig

DOI
https://doi.org/10.1007/s44196-024-00610-9
Journal volume & issue
Vol. 17, no. 1
pp. 1 – 9

Abstract

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Abstract Distributed Space Systems (DSS) are gaining prominence in the space industry due to their ability to increase mission performance by allowing cooperation and resource sharing between multiple satellites. In DSS where communication between heterogeneous satellites is necessary, achieving autonomous cooperation while minimizing energy consumption is a critical requirement, particularly in sparse constellations with nano-satellites. In order to minimize the functioning time and energy consumed by the Inter-Satellite Links established for satellite-to-satellite communication, their temporal encounters must be anticipated. This work proposes an autonomous solution based on Supervised Learning that allows heterogeneous satellites in circular polar Low-Earth Orbits to predict their close-approach encounters given the Orbital Elements. The model performance is evaluated and compared in two different scenarios: (1) a simplified scenario assuming Kepler orbits and (2) a realistic scenario assuming Simplified General Perturbations 4 orbital model. The obtained results demonstrate a Balanced Accuracy exceeding 95% when compared to realistic data from an available database. This work represents a promising initial stage in developing an alternative approach within the field of DSS.

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