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Routing in Small Satellite Networks: A GNN-based Learning Approach

Authors :
Liu, Mengjie
Li, Jian
Lu, Hancheng
Liu, Mengjie
Li, Jian
Lu, Hancheng
Publication Year :
2021

Abstract

Small satellite networks (SSNs), which are constructed by large number of small satellites in low earth orbits (LEO), are considered as promising ways to provide ubiquitous Internet access. To handle stochastic Internet traffic, on-board routing is necessary in SSNs. However, large-scale, high dynamic SSN topologies and limited resources make on-board routing in SSNs face great challenges. To address this issue, we turn to graph neural network (GNN), a deep learning network inherently designed for graph data, motivated by the fact that SSNs can be naturally modeled as graphs. By exploiting GNN's topology extraction capabilities, we propose a GNN-based learning routing approach (GLR) to achieve near-optimal on-board routing with low complexity. We design high-order and low-order feature extractor and cross process to deal with high dynamic topologies of SSNs, even those topologies that have never been seen in training. Simulation results demonstrate that GLR results in a significant reduction in routing computation cost while achieves near-optimal routing performance in SSNs with different scales compared with typical existing satellite routing algorithms.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1269571254
Document Type :
Electronic Resource