Stochastic Geometry-Based Performance Evaluation for LEO Satellite-Assisted Space Caching
Chunyi Ma, Jiajie Xu, Jianhua Yang, Mustafa A. Kishk

TL;DR
This paper investigates the use of stochastic geometry to evaluate the performance of LEO satellite-assisted space caching in MEC networks, highlighting its potential to enhance global coverage and reduce latency.
Contribution
It introduces the first analytical framework combining stochastic geometry and queuing theory to assess space caching with LEO satellites in MEC networks.
Findings
LEO satellite space caching improves MEC network performance.
Altitude and number of LEO satellites significantly affect delay.
The proposed model provides system-level design insights.
Abstract
To achieve the Internet of Things (IoT) vision,Mobile Edge Computing (MEC) is a promising technology aimed at providing low-latency computing services to user equipment (UE). However, terrestrial MEC network struggles to provide service to UEs in remote and maritime region. Low Earth Orbit (LEO) satellite networks have the potential to overcome geographical restrictions and provide seamless global coverage for UEs. In this paper, we provide the first attempt to use stochastic geometry to investigate the performance of implementing space caching with LEO satellites (SATs) in the MEC network. We study a LEO satellite-assisted space caching MEC network, and LEO SATs can be equipped with servers to enable space caching, with the advantage of seamless coverage to assist terrestrial CSs for serving UEs in remote or maritime reigon. Using stochastic geometry and queuing theory, we establish an…
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Taxonomy
Methodstravel james
