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Hierarchical anomaly based intrusion detection and localization in IoT

机译:物联网中基于层次异常的入侵检测和定位

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In IoT systems, WSNs and Gateways are exposed to many attacks. WSNs are usually exposed to different types of intrusions like node compromise and denial of service attacks. IoT gateways that connects WSN to the Internet are exposed to all conventional IP attacks. In this paper, we propose an anomaly detection approach using support vector machines (SVM) for WSN intrusion detection, and deep learning technique for gateway intrusion detection. We propose a detection protocol that dynamically executes the on-demand SVM classifier in a hierarchical way whenever an intrusion is suspected. We combine machine learning classification with a statistical approach for malicious node localization. This novel approach allows finding a compromise between intrusion detection efficiency and resource overhead for WSN and gateway security.
机译:在物联网系统中,WSN和网关容易受到许多攻击。 WSN通常会遭受不同类型的入侵,例如节点入侵和拒绝服务攻击。将WSN连接到Internet的IoT网关容易受到所有常规IP攻击。在本文中,我们提出了一种使用支持​​向量机(SVM)进行WSN入侵检测的异常检测方法,以及用于网关入侵检测的深度学习技术。我们提出了一种检测协议,该协议可在怀疑入侵时以分层方式动态执行按需SVM分类器。我们将机器学习分类与统计方法相结合,以进行恶意节点本地化。这种新颖的方法允许在入侵检测效率与WSN和网关安全性的资源开销之间找到折衷方案。

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