FBAD:智慧城市物联网医疗的基于雾的攻击检测

Ibrahim Alrashdi, Ali Alqazzaz, Raed Alharthi, E. Aloufi, M. Zohdy, Ming Hua
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引用次数: 30

摘要

由于各种异构物联网(IoT)协议,零日攻击的数量呈指数级增长。已经引入了许多基于集中式的技术来识别物联网环境中的恶意活动。然而,这些技术在满足物联网需求方面存在高延迟等问题。本文提出了一种基于雾的攻击检测(FBAD)框架,该框架使用在线顺序极限学习机(EOS-ELM)集成来有效检测恶意活动。我们指出了在雾计算中部署分布式攻击检测技术的高效建议框架的高级视图,因为它更接近网络边缘的物联网设备,因此具有高精度和低延迟。此外,我们将我们的框架与其他现有方法(包括ELM和OS-ELM)的性能进行了比较。实验结果表明,分布式体系结构在检测时间和分类精度方面优于集中式体系结构。
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FBAD: Fog-based Attack Detection for IoT Healthcare in Smart Cities
The number of zero-day attacks has been exponentially increasing due to a variety of heterogeneous Internet of Things (IoT) protocols. Many centralized-based techniques have been introduced to identify malicious activities in IoT environments. However, these techniques have suffered including a high latency to satisfy IoT requirements. This paper proposes a fog-based attack detection (FBAD) framework using an ensemble of online sequential extreme learning machine (EOS-ELM) for efficiently detecting malicious activities. We indicate a high-level view of the efficient proposed framework for deploying the distributed attack detection technique in fog computing due to high accuracy and low latency, as it is closer to the IoT devices at the network edge. Furthermore, we compare the performance of our framework with other existing approaches including ELM and OS-ELM. The results of the experiment demonstrate that distributed architecture outperforms centralized architecture in terms of the detection time and classification accuracy.
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