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Machine Learning-Based Network Vulnerability Analysis of Industrial Internet of Things

机译:基于机器学习的工业物联网网络脆弱性分析

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摘要

It is critical to secure the Industrial Internet of Things (IIoT) devices because of potentially devastating consequences in case of an attack. Machine learning (ML) and big data analytics are the two powerful leverages for analyzing and securing the Internet of Things (IoT) technology. By extension, these techniques can help improve the security of the IIoT systems as well. In this paper, we first present common IIoT protocols and their associated vulnerabilities. Then, we run a cyber-vulnerability assessment and discuss the utilization of ML in countering these susceptibilities. Following that, a literature review of the available intrusion detection solutions using ML models is presented. Finally, we discuss our case study, which includes details of a real-world testbed that we have built to conduct cyber-attacks and to design an intrusion detection system (IDS). We deploy backdoor, command injection, and Structured Query Language (SQL) injection attacks against the system and demonstrate how a ML-based anomaly detection system can perform well in detecting these attacks. We have evaluated the performance through representative metrics to have a fair point of view on the effectiveness of the methods.
机译:保护工业物联网(IIoT)设备至关重要,因为在遭受攻击的情况下可能会造成灾难性后果。机器学习(ML)和大数据分析是分析和保护物联网(IoT)技术的两种强大手段。通过扩展,这些技术也可以帮助提高IIoT系统的安全性。在本文中,我们首先介绍常见的IIoT协议及其相关的漏洞。然后,我们进行了网络漏洞评估,并讨论了ML在应对这些敏感性方面的应用。随后,介绍了使用ML模型的可用入侵检测解决方案的文献综述。最后,我们讨论我们的案例研究,其中包括我们为进行网络攻击和设计入侵检测系统(IDS)而构建的真实测试平台的详细信息。我们针对系统部署后门,命令注入和结构化查询语言(SQL)注入攻击,并演示了基于ML的异常检测系统如何在检测这些攻击中表现良好。我们已经通过代表性指标评估了性能,以便对方法的有效性有公正的看法。

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