集群it:物联网环境中基于集群的入侵检测

Robert P. Markiewicz, D. Sgandurra
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引用次数: 4

摘要

低功耗和资源受限的设备正在构成我们智能网络的更大一部分。由于这个原因,他们最近成为各种网络攻击的目标。然而,这些设备通常不能实现传统的入侵检测系统(IDS),或者它们不能产生或存储检查所需的审计跟踪。因此,通常有必要调整现有的IDS系统和恶意软件检测方法来应对这些限制。我们探索无监督学习技术的应用,特别是聚类,为低功耗设备组成的网络开发一种新的IDS。我们描述了我们的解决方案,称为cluster - it(物联网集群),用于管理从连接设备的协作和分布式网络收集的异构数据,并在保持协议不可知的同时搜索这些数据以寻找折衷指标。我们概述了光学在各种可用的物联网数据集上的新应用,这些数据集由数据包和流捕获组成,以展示所提出技术的能力并评估其在开发物联网IDS中的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clust-IT: clustering-based intrusion detection in IoT environments
Low-powered and resource-constrained devices are forming a greater part of our smart networks. For this reason, they have recently been the target of various cyber-attacks. However, these devices often cannot implement traditional intrusion detection systems (IDS), or they can not produce or store the audit trails needed for inspection. Therefore, it is often necessary to adapt existing IDS systems and malware detection approaches to cope with these constraints. We explore the application of unsupervised learning techniques, specifically clustering, to develop a novel IDS for networks composed of low-powered devices. We describe our solution, called Clust-IT (Clustering of IoT), to manage heterogeneous data collected from cooperative and distributed networks of connected devices and searching these data for indicators of compromise while remaining protocol agnostic. We outline a novel application of OPTICS to various available IoT datasets, composed of both packet and flow captures, to demonstrate the capabilities of the proposed techniques and evaluate their feasibility in developing an IoT IDS.
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