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Harnessing Supervised Learning for Adaptive Beamforming in Multibeam Satellite Systems

Authors :
Ortiz, Flor
Vasquez-Peralvo, Juan A.
Querol, Jorge
Lagunas, Eva
Rios, Jorge L. Gonzalez
Garces, Luis
Monzon-Baeza, Victor
Chatzinotas, Symeon
Publication Year :
2023

Abstract

In today's ever-connected world, the demand for fast and widespread connectivity is insatiable, making multibeam satellite systems an indispensable pillar of modern telecommunications infrastructure. However, the evolving communication landscape necessitates a high degree of adaptability. This adaptability is particularly crucial for beamforming, as it enables the adjustment of peak throughput and beamwidth to meet fluctuating traffic demands by varying the beamwidth, side lobe level (SLL), and effective isotropic radiated power (EIRP). This paper introduces an innovative approach rooted in supervised learning to efficiently derive the requisite beamforming matrix, aligning it with system requirements. Significantly reducing computation time, this method is uniquely tailored for real-time adaptation, enhancing the agility and responsiveness of satellite multibeam systems. Exploiting the power of supervised learning, this research enables multibeam satellites to respond quickly and intelligently to changing communication needs, ultimately ensuring uninterrupted and optimized connectivity in a dynamic world.<br />Comment: under review for conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.14123
Document Type :
Working Paper