Multi-Objective Reinforcement Learning for Cognitive Radio--Based Satellite Communications
Author(s) -
Paulo Victor R. Ferreira,
Randy Paffenroth,
Alexander M. Wyglinski,
Timothy M. Hackett,
Sven G. Bilén,
Richard C. Reinhart,
Dale J. Mortensen
Publication year - 2016
Publication title -
24th aiaa international communications satellite systems conference
Language(s) - English
Resource type - Conference proceedings
DOI - 10.2514/6.2016-5726
Subject(s) - cognitive radio , reinforcement learning , communications satellite , computer science , satellite , satellite broadcasting , telecommunications , artificial intelligence , engineering , wireless , aerospace engineering
Previous research on cognitive radios has addressed the performance of various machinelearning and optimization techniques for decision making of terrestrial link properties. In this paper, we present our recent investigations with respect to reinforcement learning that potentially can be employed by future cognitive radios installed onboard satellite communications systems specifically tasked with radio resource management. This work analyzes the performance of learning, reasoning, and decision making while considering multiple objectives for time-varying communications channels, as well as different crosslayer requirements. Based on the urgent demand for increased bandwidth, which is being addressed by the next generation of high-throughput satellites, the performance of cognitive radio is assessed considering links between a geostationary satellite and a fixed ground station operating at Ka-band (26 GHz). Simulation results show multiple objective performance improvements of more than 3.5 times for clear sky conditions and 6.8 times for rain conditions.
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