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Effective and robust detection of jamming attacks

机译:有效而强大的检测干扰攻击

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In this paper we present and evaluate anomaly-based intrusion detection algorithms for detecting attacks at the physical layer of wireless networks, by seeking for changes in the Signal-to-Noise ratio statistical characteristics. Two types of algorithms are proposed: simple threshold algorithms and cumulative sum (cusum) algorithms. Performance evaluation is performed in terms of the detection probability, false alarm rate, detection delay and the robustness of the algorithms to different detection threshold values. The algorithms are applied locally to measurements collected from three locations of an experimental network and under two attack intensities. The results show that the cumulative sum algorithms are more robust and achieve higher performance under both attack intensities. Next, we use the Dempster-Shafer algorithm to fuse the outputs provided by the above locally executed algorithms at different nodes, thus forming a collaborative intrusion detection system. The evaluation shows that the robustness substantially increases while the performance remains high, for both types of attacks.
机译:在本文中,我们通过寻找信噪比统计特性的变化,介绍并评估了基于异常的入侵检测算法,用于检测无线网络物理层的攻击。提出了两种类型的算法:简单阈值算法和累积和(cusum)算法。根据检测概率,错误警报率,检测延迟以及算法对不同检测阈值的鲁棒性进行性能评估。该算法在本地应用于从实验网络的三个位置以及两个攻击强度下收集的测量值。结果表明,累积和算法在两种攻击强度下均更鲁棒,并具有更高的性能。接下来,我们使用Dempster-Shafer算法将上述本地执行的算法提供的输出融合到不同的节点上,从而形成一个协作式入侵检测系统。评估表明,对于这两种类型的攻击,鲁棒性都显着提高,而性能仍保持较高水平。

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