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Accurate Detection of Sinkhole Attacks in IoT Networks Using Local Agents

机译:使用本地代理准确检测IoT网络中的污水池攻击

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In this paper we explore the feasibility of employing local security agents to detect sinkhole attacks in IoT multihop networks. Sinkhole attacks, which divert traffic towards the compromised node(s), prevent information from reaching their intended destination. Sinkhole attacks are unique in their operation and are often difficult to be recognized locally. We examine three types of local agents and employ thresholds, binary logistic regression (BLR) and support vector machines (SVM) as anomaly detectors. The local security agents' deployment and evaluation is done both in a simulated environment and in a real network of resource-constrained nodes. We have concluded that threshold-based detection is not suitable for deployment in local agents. During the evaluation phase, the BLR and SVM detection modules for the Sinkhole attack are found to be able to detect the presence of the Sinkhole attack, with exceptionally high accuracy.
机译:在本文中,我们探讨了使用本地安全代理检测IoT多跳网络中的漏洞攻击的可行性。污水孔攻击将流量引向受感染的节点,从而阻止了信息到达其预期的目的地。污水池攻击在其操作中是独特的,并且通常难以在本地识别。我们检查了三种类型的本地代理,并使用阈值,二进制逻辑回归(BLR)和支持向量机(SVM)作为异常检测器。本地安全代理的部署和评估都在模拟环境和资源受限节点的真实网络中完成。我们已经得出结论,基于阈值的检测不适合在本地代理中部署。在评估阶段,发现用于Sinkhole攻击的BLR和SVM检测模块能够以极高的准确性检测Sinkhole攻击的存在。

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