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Association Graph Based Jamming Detection in Multi-Hop Wireless Networks

机译:多跳无线网络中基于关联图的干扰检测

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Jamming attacks have been a great challenge for the researchers since they can severely damage the Quality of Service (QoS) of Multi-Hop Wireless Networks (MHWNs). Therefore, how to detect and distinguish multiple jamming attacks and thus to restore network service has been a hot topic in recent years. Note that different jamming attacks will cause different network status changes in MHWN. Based on this observation, a jamming detection algorithm based on association graph is put forward in this paper. The proposed algorithm consists of two phases, i.e. learning and detection phases. At the learning phase, with different symptoms are extracted through learning from various samples collected from both jamming and jamming-free scenarios, symptom-attack graph is built. Then, at the detection phase, the built symptom-attack association graph is adopted to detect the jamming attacks that lead to the observed symptoms by some particular network node. A series of simulation experiments on NS3 validated that the proposed method can efficiently detect and classify the typical jamming attacks, such as reactive, random and constant jamming attacks.
机译:干扰攻击对于研究人员来说是一个巨大的挑战,因为它们会严重破坏多跳无线网络(MHWN)的服务质量(QoS)。因此,如何检测和区分多种干扰攻击并由此恢复网络服务已成为近年来的热门话题。请注意,不同的干扰攻击将导致MHWN中的不同网络状态更改。在此基础上,提出了一种基于关联图的干扰检测算法。所提出的算法包括两个阶段,即学习和检测阶段。在学习阶段,通过学习从干扰和无干扰场景中收集的各种样本中提取出不同的症状,从而建立症状攻击图。然后,在检测阶段,采用构建的症状-攻击关联图来检测导致某些特定网络节点观察到症状的干扰攻击。在NS3上进行的一系列仿真实验证明,该方法可以有效地检测和分类典型的干扰攻击,例如反应性,随机和恒定干扰攻击。

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