IEEE Access (Jan 2021)

Resilient Dynamic Channel Access via Robust Deep Reinforcement Learning

  • Feng Wang,
  • Chen Zhong,
  • M. Cenk Gursoy,
  • Senem Velipasalar

DOI
https://doi.org/10.1109/ACCESS.2021.3133506
Journal volume & issue
Vol. 9
pp. 163188 – 163203

Abstract

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As the applications of deep reinforcement learning (DRL) in wireless communications grow, sensitivity of DRL-based wireless communication strategies against adversarial attacks has started to draw increasing attention. In order to address such sensitivity and alleviate the resulting security concerns, we in this paper consider a victim user that performs DRL-based dynamic channel access, and an attacker that executes DRL-based jamming attacks to disrupt the victim. Hence, both the victim and attacker are DRL agents and can interact with each other, retrain their models, and adapt to opponents’ policies. In this setting, we initially develop an adversarial jamming attack policy that aims at minimizing the accuracy of victim’s decision making on dynamic channel access. Subsequently, we devise defense strategies against such an attacker, and propose three defense strategies, namely diversified defense with proportional-integral-derivative (PID) control, diversified defense with an imitation attacker, and defense via orthogonal policies. We design these strategies to maximize the attacked victim’s accuracy and evaluate their performances.

Keywords