Title :
Predictive spectrum sensing strategy based on reinforcement learning
Author :
Qu Zhaowei ; Cui Rong ; Song Qizhu ; Yin Sixing
Author_Institution :
Beijing Univ. of Posts & Telecommun., Beijing, China
Abstract :
In this paper, we consider a cognitive radio (CR) system with a single secondary user (SU) and multiple licensed channels. The SU requests a fixed number of licensed channels and must sense the licensed channels one by one before transmission. By leveraging prediction based on correlation between the licensed channels, we propose a novel spectrum sensing strategy, to decide which channel is the best choice to sense in order to reduce the sensing time overhead and further improve the SU´s achievable throughput. Since the correlation coefficients between the licensed channels cannot be exactly known in advance, the spectrum sensing strategy is designed based on the model-free reinforcement learning (RL). The experimental results show that the proposed spectrum sensing strategy based on reinforcement learning converges and outperforms random sensing strategy in terms of long-term statistics.
Keywords :
cognitive radio; learning (artificial intelligence); radio spectrum management; signal detection; cognitive radio system; correlation coefficients; leveraging prediction; long-term statistics; model-free reinforcement learning; multiple licensed channels; predictive spectrum sensing strategy; secondary user; Cognitive radio; Correlation coefficient; Learning (artificial intelligence); Predictive models; Throughput; cognitive radio; reinforcement learning; spectrum prediction; spectrum sensing;
Journal_Title :
Communications, China
DOI :
10.1109/CC.2014.6969800