SatFlow: Scalable Network Planning for LEO Mega-Constellations
Sheng Cen, Qiying Pan, Yifei Zhu, Bo Li

TL;DR
SatFlow is a scalable, hierarchical network planning framework for LEO mega-constellations that optimizes topology, traffic, and power allocation using multi-agent reinforcement learning and distributed algorithms, significantly reducing costs.
Contribution
The paper introduces SatFlow, a novel distributed and hierarchical framework that effectively plans large-scale LEO satellite networks by decomposing the problem and applying advanced optimization techniques.
Findings
Reduces flow violation ratio by up to 21%.
Decreases total operational costs by up to 89.4%.
Demonstrates scalability on various mega-constellations.
Abstract
Low-earth-orbit (LEO) satellite communication networks have evolved into mega-constellations with hundreds to thousands of satellites inter-connecting with inter-satellite links (ISLs). Network planning, which plans for network resources and architecture to improve the network performance and save operational costs, is crucial for satellite network management. However, due to the large scale of mega-constellations, high dynamics of satellites, and complex distribution of real-world traffic, it is extremely challenging to conduct scalable network planning on mega-constellations with high performance. In this paper, we propose SatFlow, a distributed and hierarchical network planning framework to plan for the network topology, traffic allocation, and fine-grained ISL terminal power allocation for mega-constellations. To tackle the hardness of the original problem, we decompose the grand…
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Taxonomy
TopicsSatellite Communication Systems · Spacecraft Design and Technology · Astronomy and Astrophysical Research
