基于深度随机神经网络的工业物联网入侵检测模型

Shahid Latif, Zeba Idrees, Z. Zou, Jawad Ahmad
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引用次数: 34

摘要

工业物联网(IIoT)已成为工业领域的新兴趋势。工业物联网网络中存在的数百万个传感器会产生大量数据,这些数据可能会为几次网络攻击打开大门。入侵检测系统(IDS)监控实时互联网流量,识别网络攻击的行为和类型。本文提出了一种基于深度随机神经(DRaNN)的工业物联网入侵检测方案。使用新一代工业物联网安全数据集UNSW-NB15对所提出的方案进行了评估。实验结果表明,该模型成功地对9种不同类型的攻击进行了分类,假阳性率低,准确率高达99.54%。为了验证所提方案的可行性,实验结果还与目前最先进的基于深度学习的入侵检测方案进行了比较。该模型实现了99.41%的攻击检测率。
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DRaNN: A Deep Random Neural Network Model for Intrusion Detection in Industrial IoT
Industrial Internet of Things (IIoT) has arisen as an emerging trend in the industrial sector. Millions of sensors present in IIoT networks generate a massive amount of data that can open the doors for several cyber-attacks. An intrusion detection system (IDS) monitors real-time internet traffic and identify the behavior and type of network attacks. In this paper, we presented a deep random neural (DRaNN) based scheme for intrusion detection in IIoT. The proposed scheme is evaluated by using a new generation IIoT security dataset UNSW-NB15. Experimental results prove that the proposed model successfully classified nine different types of attacks with a low false-positive rate and great accuracy of 99.54%. To validate the feasibility of the proposed scheme, experimental results are also compared with state-of-the-art deep learning-based intrusion detection schemes. The proposed model achieved a higher attack detection rate of 99.41%.
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