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Design of Intrusion Prevention System for OT Networks Using Deep Neural Networks

机译:基于深度神经网络的OT网络入侵防御系统设计

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The Automation industries that uses Supervisory Control and Data Acquisition (SCADA) systems are highly vulnerable for Network threats. Systems that are air-gapped and isolated from the internet are highly affected due to insider attacks like Spoofing, DOS and Malware threats that affects confidentiality, integrity and availability of Operational Technology (OT) system elements and degrade its performance even though security measures are taken. In this paper, a behavior-based intrusion prevention system (IPS) is designed for OT networks. The proposed system is implemented on SCADA test bed with two systems replicates automation scenarios in industry. This paper describes 4 main classes of cyber-attacks with their subclasses against SCADA systems and methodology with design of components of IPS system, database creation, Baselines and deployment of system in environment. IPS system identifies not only IT protocols but also Industry Control System (ICS) protocols Modbus and DNP3 with their inside communication fields using deep packet inspection (DPI). The analytical results show 99.89% accuracy on binary classification and 97.95% accuracy on multiclass classification of different attack vectors performed on network with low false positive rate. These results are also validated by actual deployment of IPS in SCADA systems with the prevention of DOS attack.
机译:使用监督控制和数据采集(SCADA)系统的自动化行业极易受到网络威胁的攻击。由于内部攻击(例如欺骗,DOS和恶意软件)而受到威胁,即使采用了安全措施,这些系统也会影响互联网,这些系统受到内部欺骗的严重影响,这些欺骗会影响运营技术(OT)系统元素的机密性,完整性和可用性,并降低其性能。 。本文针对OT网络设计了基于行为的入侵防御系统(IPS)。所提出的系统在SCADA测试台上实现,其中两个系统复制了工业中的自动化方案。本文介绍了网络攻击的4个主要类别,以及针对SCADA系统和方法的子类别,以及IPS系统组件的设计,数据库创建,基线和系统在环境中的部署。 IPS系统不仅可以使用深度数据包检查(DPI)识别IT协议,还可以识别行业控制系统(ICS)协议Modbus和DNP3及其内部通信字段。分析结果表明,在低误报率的网络上,对不同攻击向量的二进制分类精度为99.89%,对多类分类精度为97.95%。通过防止DOS攻击,在SCADA系统中实际部署IPS也可以验证这些结果。

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