Ground-Assisted Federated Learning in LEO Satellite Constellations
Nasrin Razmi, Bho Matthiesen, Armin Dekorsy, Petar Popovski
Abstract
In Low Earth Orbit (LEO) mega constellations, there are relevant use cases, such as inference based on satellite imaging, in which a large number of satellites collaboratively train a machine learning model without sharing their local datasets. To address this problem, we propose a new set of algorithms based on Federated learning (FL), including a novel asynchronous FL procedure based on FedAvg that exhibits better robustness against heterogeneous scenarios than the state-of-the-art. Extensive numerical evaluations based on MNIST and CIFAR-10 datasets highlight the fast convergence speed and excellent asymptotic test accuracy of the proposed method.
Topics & Concepts
Computer scienceRobustness (evolution)MNIST databaseAsynchronous communicationConstellationLow earth orbitSatelliteConvergence (economics)InferenceArtificial intelligenceDeep learningMachine learningTelecommunicationsAerospace engineeringChemistryPhysicsEngineeringEconomic growthBiochemistryEconomicsGeneAstronomySatellite Communication SystemsAdvanced Wireless Communication TechnologiesAge of Information Optimization