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Automated Labeling and Learning for Physical Layer Authentication Against Clone Node and Sybil Attacks in Industrial Wireless Edge Networks

机译:自动标签和学习对克隆节点和工业无线边缘网络中的Sybil攻击的物理层认证

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摘要

In this article, a scheme to detect both clone and Sybil attacks by using channel-based machine learning is proposed. To identify malicious attacks, channel responses between sensor peers have been explored as a form of fingerprints with spatial and temporal uniqueness. Moreover, the machine-learning-based method is applied to provide a more accurate authentication rate. Specifically, by combining with edge devices, we apply a threshold detection method based on channel differences to provide offline training sample sets with labels for the machine learning algorithm, which avoids manually generating labels. Therefore, our proposed scheme is lightweight for resource constrained industrial wireless devices, since only an online-decision making is required. Extensive simulations and experiments were conducted in real industrial environments. Both results show that the authentication accuracy rate of our strategy with an appropriate threshold can achieve 84% without manual labeling.
机译:在本文中,提出了一种通过使用基于频道的机器学习来检测克隆和Sybil攻击的方案。为了识别恶意攻击,传感器对等体之间的频道响应已被探索为具有空间和时间唯一性的指纹形式。此外,应用了基于机器学习的方法来提供更准确的认证速率。具体地,通过与边缘设备组合,我们应用基于信道差异的阈值检测方法,以提供具有机器学习算法的标签的离线训练样本集,这避免了手动产生标签。因此,我们所提出的计划是资源受限工业无线设备的重量轻,因为只需要在线决策。广泛的模拟和实验在真正的工业环境中进行。这两个结果表明,我们的策略的认证精度率与适当的阈值可以实现84%而无需手动标记。

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