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Self-Learning Bayesian Generative Models for Jammer Detection in Cognitive-UAV-Radios

机译:认知 - 无用电无线电 - 无线电 - 无线电 - 无线电探测中的自学贝叶斯生成模型

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Unmanned Aerial Vehicles (UAVs) attracted both industry and research community owing to their fascinating features like mobility, deployment flexibility and strong Line of Sight (LoS) links. The integration of Cognitive Radio (CR) can greatly help UAVs to overcome several issues especially spectrum scarcity. However, the dynamic radio environment in CR and the strong dependence of safe communications from LoS channels integrity in UAV communications make the Cognitive- UAV-Radio vulnerable to jamming attacks. This work aims to study the integration of CR and UAVs introducing a Self- Awareness (SA) framework from the physical layer security perspective. Under the SA framework, a Dynamic Bayesian Network (DBN) model is proposed as a representation of the radio environment and a modified Markov Jump Particle Filter (MJPF) is employed for prediction and state estimation purposes. A novel jammer detection framework is proposed that allows the UAV to perform abnormality evaluation at different hierarchical levels. The jammer is shown to be located effectively in both time and frequency domains. Experimental results show the effectiveness of the proposed framework in terms of detection probability and accuracy.
机译:无人驾驶飞行器(无人机)由于流动性,部署灵活性和强大的视线(LOS)链接,因此吸引了行业和研究界。认知无线电(CR)的整合可以极大地帮助克服几个问题,尤其是谱稀缺。然而,CR中的动态无线电环境以及从洛斯频道诚信在UAV通信中的安全通信的强烈依赖使得易受干扰攻击的认知无线电无线电。这项工作旨在研究CR和无人机从物理层安全角度介绍自我意识(SA)框架的集成。在SA框架下,提出了一种动态贝叶斯网络(DBN)模型作为无线电环境的表示,并且采用改进的马尔可夫跳粒滤波器(MJPF)用于预测和状态估计目的。提出了一种新型的干扰检测框架,允许UAV在不同的层级执行异常评估。 Jammer显示在时间和频率域中有效地定位。实验结果表明,在检测概率和准确性方面提出了框架的有效性。

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