IEEE Access (Jan 2020)

An Intelligent Anti-Jamming Scheme for Cognitive Radio Based on Deep Reinforcement Learning

  • Jianliang Xu,
  • Huaxun Lou,
  • Weifeng Zhang,
  • Gaoli Sang

DOI
https://doi.org/10.1109/ACCESS.2020.3036027
Journal volume & issue
Vol. 8
pp. 202563 – 202572

Abstract

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Cognitive radio network is an intelligent wireless communication system which can adjust its transmission parameters according to the environment thanks to its learning ability. It is a feasible and promising direction to solve the spectrum scarcity issue and has become a research focus in communication community. However, cognitive radio network is vulnerable to jamming attack, resulting in serious degradation of spectrum utilization. In this article, we view the anti-jamming task of cognitive radio as a Markov decision process and propose an intelligent anti-jamming scheme based on deep reinforcement learning. We aim to learn a policy for users to maximize their rate of successful transmission. Specifically, we design Double Deep Q Network (Double DQN) to model the confrontation between the cognitive radio network and the jammer. The Q network is implemented using Transformer encoder to effectively estimate action-values from raw spectrum data. The simulation results indicate that our approach can effectively defend against several kinds of jamming attacks.

Keywords