open access publication

Article, 2024

On-Board Federated Learning for Satellite Clusters with Inter-Satellite Links

IEEE Transactions on Communications, ISSN 0090-6778, Volume 72, 6, Pages 3408-3424, 10.1109/TCOMM.2024.3356429

Contributors

Razmi N. 0000-0002-3486-1672 (Corresponding author) [1] Matthiesen B. 0000-0002-4582-3938 [1] Dekorsy A. 0000-0002-5790-1470 [1] Popovski P. 0000-0001-6195-4797 [1] [2]

Affiliations

  1. [1] University of Bremen
  2. [NORA names: Germany; Europe, EU; OECD];
  3. [2] Aalborg University
  4. [NORA names: AAU Aalborg University; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

The emergence of mega-constellations of interconnected satellites has a major impact on the integration of cellular wireless and non-Terrestrial networks, while simultaneously offering previously inconceivable data gathering capabilities. This paper studies the problem of running a federated learning (FL) algorithm within low Earth orbit satellite constellations connected with intra-orbit inter-satellite links (ISL), aiming to efficiently process collected data in situ. Satellites apply on-board machine learning and transmit local parameters to the parameter server (PS). The main contribution is a novel approach to enhance FL in satellite constellations using intra-orbit ISLs. The key idea is to rely on predictability of satellite visits to create a system design in which ISLs mitigate the impact of intermittent connectivity and transmit aggregated parameters to the PS. We first devise a synchronous FL, which is extended towards an asynchronous FL for the case of sparse satellite visits to the PS. An efficient use of the satellite resources is attained by sparsification-based compression the aggregated parameters within each orbit. Performance is evaluated in terms of accuracy and required data transmission size. We observe a sevenfold increase in convergence speed over the state-of-The-Art using ISLs, and 10× reduction in communication load through the proposed in-network aggregation strategy.

Keywords

Low Earth orbit, federated learning, intra-orbit inter-satellite links, mega-constellations, sparsification

Data Provider: Elsevier