基于深度学习模型和基于规则的特征选择的工业物联网入侵检测

J. B. Awotunde, Chinmay Chakraborty, E. Adeniyi
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引用次数: 65

摘要

工业物联网(IIoT)是一个将数字设备和服务与物理系统连接起来的最新研究领域。工业物联网已被用于从多个传感器生成大量数据,该设备遇到了几个问题。工业物联网面临着各种形式的网络攻击,这些攻击危及其为组织提供无缝运营的能力。这些风险会给企业带来财务和声誉损失,还会导致敏感信息被盗。因此,已经开发了几种网络入侵检测系统(NIDS)来对抗和保护工业物联网系统,但可用于开发智能NIDS的信息收集是一项艰巨的任务;因此,在检测现有的和新的攻击方面存在严重的挑战。因此,该研究为工业物联网提供了一种基于深度学习的入侵检测范式,采用混合基于规则的特征选择来训练和验证从TCP/IP数据包中捕获的信息。训练过程采用基于规则的特征选择和深度前馈神经网络混合模型实现。利用NSL-KDD和UNSW-NB15两个知名的网络数据集对该方案进行了测试。性能对比结果显示,该方法在NSL-KDD数据集上的准确率、检出率和FPR分别比其他相关方法高99.0%、99.0%和1.0%,在UNSW-NB15数据集上的准确率、检出率和FPR分别比其他相关方法高98.9%、99.9%和1.1%。最后,使用各种评估指标进行仿真实验,结果表明该方法适用于工业物联网入侵网络攻击分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion Detection in Industrial Internet of Things Network-Based on Deep Learning Model with Rule-Based Feature Selection
The Industrial Internet of Things (IIoT) is a recent research area that links digital equipment and services to physical systems. The IIoT has been used to generate large quantities of data from multiple sensors, and the device has encountered several issues. The IIoT has faced various forms of cyberattacks that jeopardize its capacity to supply organizations with seamless operations. Such risks result in financial and reputational damages for businesses, as well as the theft of sensitive information. Hence, several Network Intrusion Detection Systems (NIDSs) have been developed to fight and protect IIoT systems, but the collections of information that can be used in the development of an intelligent NIDS are a difficult task; thus, there are serious challenges in detecting existing and new attacks. Therefore, the study provides a deep learning-based intrusion detection paradigm for IIoT with hybrid rule-based feature selection to train and verify information captured from TCP/IP packets. The training process was implemented using a hybrid rule-based feature selection and deep feedforward neural network model. The proposed scheme was tested utilizing two well-known network datasets, NSL-KDD and UNSW-NB15. The suggested method beats other relevant methods in terms of accuracy, detection rate, and FPR by 99.0%, 99.0%, and 1.0%, respectively, for the NSL-KDD dataset, and 98.9%, 99.9%, and 1.1%, respectively, for the UNSW-NB15 dataset, according to the results of the performance comparison. Finally, simulation experiments using various evaluation metrics revealed that the suggested method is appropriate for IIOT intrusion network attack classification.
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