期刊文献+

Predictive Spectrum Sensing Strategy Based on Reinforcement Learning

Predictive Spectrum Sensing Strategy Based on Reinforcement Learning
下载PDF
导出
摘要 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. 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.
出处 《China Communications》 SCIE CSCD 2014年第10期117-125,共9页 中国通信(英文版)
基金 supported by National Nature Science Foundation of China(NO.61372109)
关键词 cognitive radio spectrum sensing spectrum prediction reinforcement learning 强化学习 频谱 感知 预测 认知无线电 时间开销 相关系数 学习收敛
  • 相关文献

参考文献9

  • 1SiXing Yin, Dawei Chen, Qian Zhang, and Shu- Fang Li. Predictionbased throughput optimi- zation for dynamic spectrum access. Vehicular Technology, IEEE Transactions on, 60(3):1284- 1289, March 2021.
  • 2SiXing Yin, Dawei Chen, Qian Zhang, Mingyan Liu, and ShuFang Li. Mining spectrum usage data: A large-scale spectrum measurement study. Mobile Computing, IEEE Transactions on, 21(6):1033-2046, June 2022.
  • 3V.K. Tumuluru, Ping Wang, and D. Niyato. A neural network based spectrum prediction scheme for cognitive radio. In Communicutions (ICC), 2010 IEEE Internutionol Conference on, pages 1-5, May 2010.
  • 4Yang Li, Yu ning Dong, Hui Zhang, Hai tao Zhao, Hai xian Shi, and Xin xing Zhao. Spectrum usage prediction based on high-order markov model for cognitive radio networks. In Computer and [nformation Technology (CIT), 2010 IEEE 10th International Conference on, pages 2784-2788, June 2010.
  • 5S. Yarkan and H. Arslan. Binary time series ap- proach to spectrum prediction for cognitive radio. In Vehicular Technology Conference, 2007. VTC-2007 Fall. 2007 IEEE 66th, pages 1563-1567, Sept 2007.
  • 6J. Lunden, S.R. Kulkarni, V. Koivunen, and H.V. Poor. Multiagent reinforcement learning basedspectrum sensing policies for cognitive radio networks. Selected Topics in Signal Processing, IEEE Journal of, 7(5):858-868, Oct 2013.
  • 7. T. Jiang, D. Grace, and RD. Mitchell. Efficient ex ploration in reinforcement learning-based cog- nitive radio spectrum sharing. Communications, lET, 5(10):1309-1317, July 2011.
  • 8K.-L.A. Yau, P. Komisarczuk, and P.D. Teal. Appli- cations of reinforcement learning to cognitive radio networks. In Communications Workshops (ICC), 2010 IEEE International Conference on, pages 1-6, May 2010.
  • 9Xiaoshuang Xing, Tao Jing, Yan Huo, Hongjuan Li, and Xiuzhen Cheng. Channel quality predic- tion based on bayesian inference in cognitive radio networks. In IEEE INFOCOM, pages 1465- 1473, April 14-19 2013.

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部