Hybrid Deep Learning-Based Intrusion Detection System for RPL IoT Networks

Yahya Al Sawafi, A. Touzene, Rachid Hedjam
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引用次数: 1

Abstract

Internet of things (IoT) has become an emerging technology transforming everyday physical objects to be smarter by using underlying technologies such as sensor networks. The routing protocol for low-power and lossy networks (RPL) is considered one of the promising protocols designed for the IoT networks. However, due to the constrained nature of the IoT devices in terms of memory, processing power, and network capabilities, they are exposed to many security attacks. Unfortunately, the existing Intrusion Detection System (IDS) approaches using machine learning that have been proposed to detect and mitigate security attacks in internet networks are not suitable for analyzing IoT traffics. This paper proposed an IDS system using the hybridization of supervised and semi-supervised deep learning for network traffic classification for known and unknown abnormal behaviors in the IoT environment. In addition, we have developed a new IoT specialized dataset named IoTR-DS, using the RPL protocol. IoTR-DS is used as a use case to classify three known security attacks (DIS, Rank, and Wormhole). The proposed Hybrid DL-Based IDS is evaluated and compared to some existing ones, and the results are promising. The evaluation results show an accuracy detection rate of 98% and 92% in f1-score for multi-class attacks when using pre-trained attacks (known traffic) and an average accuracy of 95% and 87% in f1-score when predicting untrained attacks for two attack behaviors (unknown traffic).
面向 RPL 物联网网络的基于深度学习的混合入侵检测系统
物联网(IoT)已成为一项新兴技术,它利用传感器网络等底层技术将日常物理对象变得更加智能。低功耗和有损网络路由协议(RPL)被认为是为物联网网络设计的前景广阔的协议之一。然而,由于物联网设备在内存、处理能力和网络功能方面的限制,它们面临着许多安全攻击。遗憾的是,现有的利用机器学习检测和缓解互联网网络安全攻击的入侵检测系统(IDS)方法并不适合分析物联网流量。本文提出了一种利用监督和半监督深度学习混合的 IDS 系统,用于对物联网环境中已知和未知的异常行为进行网络流量分类。此外,我们还利用 RPL 协议开发了一个名为 IoTR-DS 的新物联网专用数据集。IoTR-DS 被用作对三种已知安全攻击(DIS、Rank 和 Wormhole)进行分类的用例。对所提出的基于 DL 的混合 IDS 进行了评估,并与现有的一些 IDS 进行了比较,结果令人鼓舞。评估结果表明,在使用预训练攻击(已知流量)时,多类攻击的检测准确率分别为 98% 和 92%(f1-score);在预测两种攻击行为(未知流量)的未训练攻击时,平均准确率分别为 95% 和 87%(f1-score)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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