A survey of dynamic spectrum allocation based on reinforcement learning algorithms in cognitive radio networks

作者:Yonghua Wang, Zifeng Ye, Pin Wan, Jiajun Zhao

摘要

Cognitive radio is an emerging technology that is considered to be an evolution for software device radio in which cognition and decision-making components are included. The main function of cognitive radio is to exploit “spectrum holes” or “white spaces” to address the challenge of the low utilization of radio resources. Dynamic spectrum allocation, whose significant functions are to ensure that cognitive users access the available frequency and bandwidth to communicate in an opportunistic manner and to minimize the interference between primary and secondary users, is a key mechanism in cognitive radio networks. Reinforcement learning, which rapidly analyzes the amount of data in a model-free manner, dramatically facilitates the performance of dynamic spectrum allocation in real application scenarios. This paper presents a survey on the state-of-the-art spectrum allocation algorithms based on reinforcement learning techniques in cognitive radio networks. The advantages and disadvantages of each algorithm are analyzed in their specific practical application scenarios. Finally, we discuss open issues in dynamic spectrum allocation that can be topics of future research.

论文关键词:Reinforcement learning, Spectrum allocation, Cognitive radio networks

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10462-018-9639-x