학술논문

Graph Learning for Multi-Satellite based Spectrum Sensing
Document Type
Conference
Source
2023 IEEE 23rd International Conference on Communication Technology (ICCT) Communication Technology (ICCT), 2023 IEEE 23rd International Conference on. :1112-1116 Oct, 2023
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Signal Processing and Analysis
Space vehicles
Satellite broadcasting
Collaboration
Low earth orbit satellites
Sensors
Task analysis
Computational complexity
Graph learning
sub-Nyquist
spectrum sensing
Language
ISSN
2576-7828
Abstract
Recently, Low Earth Orbit (LEO) satellite Internet has been deployed and provides access service. In the near future, with high-speed development and dense deployment of non-terrestrial and terrestrial infrastructures, limited spectrum resources will not be allocated enough. Consequently, dynamic spectrum access enables the coexistence of non-terrestrial and terrestrial networks in the same spectrum, and hence, efficient spectrum sensing technology plays a vital role. Unlike spectrum sensing in terrestrial networks, satellites in space are too far from the Earth, resulting in serious channel fading, and the spectrum sensing performance of any single satellite may be degraded significantly. To provide better spectrum sensing performance, multiple satellite collaboration can offer data diversity. However, that collaboration is a non-trivial task in LEO satellites, due to the heterogeneity of radio frequency channels between satellites and ground station. We leverage the graph model to represent the relationship of multiple satellites with different channel quality, and propose a graph attention neural network to fuse their signals for spectrum sensing. Extensive experiments demonstrate that our multiple satellites collaboration framework efficiently executes spectrum sensing tasks, and outperforms conventional deep learning methods.