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Detecting FDI Attack on Dense IoT Network with Distributed Filtering Collaboration and Consensus

机译:用分布式过滤协作和共识检测了对密集物联网网络的外国直接投资攻击

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The rise of IoT has made possible the development of personalized services, like industrial services that often deal with massive amounts of data. However, as IoT grows, its threats are even greater. The false data injection (FDI) attack stands out as being one of the most harmful to data networks like IoT. The majority of current systems to handle this attack do not take into account the data validation, especially on the data clustering service. This work introduces CONFINIT, an intrusion detection system against FDI attacks on the data dissemination service into dense IoT. It combines watchdog surveillance and collaborative consensus among IoT devices for getting the swift detection of attackers. CONFINIT was evaluated in the NS-3 simulator into a dense industrial IoT and it has gotten detection rates of 99%, 3.2% of false negative and 3.6% of false positive rates, adding up to 35% in clustering without FDI attackers.
机译:IOT的崛起使得人性化服务的发展成为可能,如工业服务,通常会处理大量数据。然而,随着物联网增长,其威胁更大。虚假数据注入(FDI)攻击脱颖而出是与IOT这样的数据网络最有害的攻击之一。大多数用于处理此攻击的当前系统不会考虑数据验证,尤其是在数据聚类服务上。这项工作介绍了对抗FDI对数据传播服务的入侵检测系统进入密集物联网的入侵检测系统。它将看门狗监控和联合在线设备之间的协作共识结合起来获得攻击者的迅速检测。 Confinit在NS-3 Simulator中评估了密集的工业物联网,它的检测率为99%,假阴性3.2%,占误率的3.6%,在没有FDI攻击者的情况下增加了35%的聚类。

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