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Cognitive Radio Jamming Mitigation using Markov Decision Process and Reinforcement Learning

机译:使用马尔可夫决策过程和强化学习的认知无线电干扰缓解

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摘要

The Cognitive radio technology is a promising solution to the imbalance between scarcity and under utilization of the spectrum. However, this technology is susceptible to both classical and advanced jamming attacks which can prevent it from the efficient exploitation of the free frequency bands. In this paper, we explain how a cognitive radio can exploit its ability of dynamic spectrum access and its learning capabilities to avoid jammed channels. We start by the definition of jamming attacks in cognitive radio networks and we give a review of its potential countermeasures. Then, we model the cognitive radio behavior in the suspicious environment as a markov decision process. To solve this optimization problem, we implement the Q-learning algorithm in order to learn the jammer strategy and to pro-actively avoid jammed channels. We present the limits of this algorithm in cognitive radio context and we propose a modified version to speed up learning a safe strategy. The effectiveness of this modified algorithm is evaluated by simulations and compared to the original Q-learning algorithm.
机译:认知无线电技术是一种解决频谱稀缺和频谱利用不平衡的有前途的解决方案。但是,该技术容易受到经典和高级干扰攻击的影响,这会阻止其有效利用自由频段。在本文中,我们解释了认知无线电如何利用其动态频谱访问能力和学习能力来避免阻塞信道。我们从认知无线电网络中的干扰攻击的定义开始,然后回顾其潜在的对策。然后,我们将可疑环境中的认知无线电行为建模为马尔科夫决策过程。为了解决此优化问题,我们实现了Q学习算法,以学习干扰策略并主动避免信道阻塞。我们在认知无线电环境中提出了该算法的局限性,并提出了一种改进版本以加快学习安全策略的速度。通过仿真评估了该改进算法的有效性,并将其与原始Q学习算法进行了比较。

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