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Improving security of the Internet of Things via RF fingerprinting based device identification system

机译:通过基于射频指纹识别的设备识别系统提高物联网的安全性

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Security is one of the primary concerns when designing wireless networks. Along detecting user identity, it is also important to detect the devices at the hardware level. The trivial identity create-and-discard process at higher layers of the protocol stack alone is not sufficient to effectively counter security threats, such as masquerading and Sybil attacks. To counter these attacks, various radio frequency fingerprinting-based solutions are proposed for the identification of the devices. However, these approaches use expansive devices for signal capturing and rely on high sampling rates and large feature sets for analysis. In this paper, we propose a radio frequency fingerprinting-based device identification technique. The proposed technique is tested on 4G-LTE network for combined intra and inter-manufacturer device detection. It uses low-cost software defined radio to capture smartphone emissions at a lower sampling rate, using our proposed preamble threshold-based detection algorithm. The results show that our proposed technique provides classification accuracy of 95.6 at different SNR levels.
机译:在设计无线网络时,安全性是主要关注点之一。除了检测用户身份外,在硬件级别检测设备也很重要。仅靠协议栈较高层的琐碎身份创建和丢弃过程不足以有效应对安全威胁,例如伪装和女巫攻击。为了应对这些攻击,提出了各种基于射频指纹识别的解决方案来识别设备。然而,这些方法使用扩展设备进行信号捕获,并依靠高采样率和大型特征集进行分析。在本文中,我们提出了一种基于射频指纹识别的设备识别技术。在4G-LTE网络上测试了所提出的技术,用于制造商内部和制造商之间的设备检测。它使用低成本的软件定义无线电,使用我们提出的基于前导码阈值的检测算法,以较低的采样率捕获智能手机的辐射。结果表明,所提技术在不同信噪比水平下的分类准确率为95.6%。

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