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LEOEdge: A Satellite-Ground Cooperation Platform for the AI Inference in Large LEO Constellation

Su Yao, Yiyin Lin, Mu Wang, Ke Xu, Mingwei Xu, Changqiao Xu, Hongke Zhang

2024IEEE Journal on Selected Areas in Communications19 citationsDOI

Abstract

With the rapid growth of low earth orbit (LEO) satellites, enabling LEO AI inference becomes a fast-increasing trend. However, due to resource heterogeneity, scheduling complexity, and fast movement, how to decide the place of executing each AI inference task is nontrivial in LEO systems. In this paper, we propose LEOEdge, an edge-assisted AI inference system for LEO satellites. We first introduce the adaptive modeling technologies that automatically generate the model for each satellite according to its computation resources. We then propose a layered scheduling optimization scheme to schedule the AI inference task in a distributed manner. LEOEdge also designs a seamless data transmission scheme to avoid transmission failure due to the LEO satellite movement. We conduct a series of simulation tests to validate the performance of the proposed LEOEdge, in terms of the neural network searching efficiency, average time execution latency, and delivery latency.

Topics & Concepts

ConstellationComputer scienceSatellite constellationSatelliteSatellite broadcastingInferenceCommunications satelliteTelecommunicationsComputer networkArtificial intelligenceAerospace engineeringPhysicsEngineeringAstronomySatellite Communication SystemsSpacecraft Design and Technology
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