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ELD: Adaptive Detection of Malicious Nodes under Mix-Energy-Depleting-Attacks Using Edge Learning in IoT Networks

机译:ELD:使用边缘学习在IOT网络中使用边缘学习的混合能量消耗攻击下的恶意节点的自适应检测

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Due to the distributed framework, Internet of Things (IoT) is vulnerable to insider attacks like energy-depleting attack, where an attacker can behave maliciously to consume the battery of IoT devices. Such attack is difficult to detect because the attacker may behave differently under various environments and it is hard to decide the attack path. In this work, we focus on this challenge, and consider an advanced energy-depleting attack, called mix-energy-depleting attack, which combines three typical attacks such as carousel attack, flooding attack and replay attack. Regarding the detection, we propose an approach called Edge Learning Detection (ELD), which can learn malicious traffic by constructing an intrusion edge and can identify malicious nodes by building an intrusion graph. To overcome the problem that it is impractical to provide labeled data for system training in advance, our proposed ELD can train its model during detection by labeling traffic automatically. Then the obtained detection results can be used to optimize the adaptability of ELD in detecting practical attacks. In the evaluation, as compared with some similar methods, ELD can overall provide a better detection rate ranged from 5% to 40% according to concrete conditions.
机译:由于分布式框架,事物互联网(物联网)很容易受到能量消耗攻击等内幕攻击,其中攻击者可以恶意消耗IOT设备的电池。这种攻击难以检测,因为攻击者在各种环境下表现不同,并且很难决定攻击路径。在这项工作中,我们专注于这一挑战,并考虑一个叫做混合能量消耗攻击的先进的能量消耗攻击,这相结合了三种典型的攻击,如旋转木马攻击,洪水攻击和重播攻击。关于检测,我们提出了一种称为边缘学习检测(ELD)的方法,可以通过构建入侵边缘来学习恶意流量,并且可以通过构建入侵图来识别恶意节点。为了克服提前为系统培训提供标记数据是不切实际的问题,我们建议的ELD可以通过自动标记流量在检测期间训练其模型。然后,获得的检测结果可用于优化ELD在检测实际攻击时的适应性。在评估中,与一些类似的方法相比,通过具体条件,ELD可以整体提供更好的检测率从5%到40%。

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