Security in Process: Detecting Attacks in Industrial Process Data

S. D. Antón, A. Lohfink, C. Garth, H. Schotten
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引用次数: 11

Abstract

Due to the fourth industrial revolution, industrial applications make use of the progress in communication and embedded devices. This allows industrial users to increase efficiency and manageability while reducing cost and effort. Furthermore, the fourth industrial revolution, creating the so-called Industry 4.0, opens a variety of novel use and business cases in the industrial environment. However, this progress comes at the cost of an enlarged attack surface of industrial companies. Operational networks that have previously been phyiscally separated from public networks are now connected in order to make use of new communication capabilites. This motivates the need for industrial intrusion detection solutions that are compatible to the long-term operation machines in industry as well as the heterogeneous and fast-changing networks. In this work, process data is analysed. The data is created and monitored on real-world hardware. After a set up phase, attacks are introduced into the systems that influence the process behaviour. A time series-based anomaly detection approach, the Matrix Profiles, are adapted to the specific needs and applied to the intrusion detection. The results indicate an applicability of these methods to detect attacks in the process behaviour. Furthermore, they are easily integrated into existing process environments. Additionally, one-class classifiers One-Class Support Vector Machines and Isolation Forest are applied to the data without a notion of timing. While Matrix Profiles perform well in terms of creating and visualising results, the one-class classifiers perform poorly.
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过程中的安全:检测工业过程数据中的攻击
由于第四次工业革命,工业应用利用了通信和嵌入式设备的进步。这允许工业用户在降低成本和工作量的同时提高效率和可管理性。此外,第四次工业革命创造了所谓的工业4.0,在工业环境中开辟了各种新的用途和商业案例。然而,这一进步是以扩大工业企业的攻击面为代价的。以前在物理上与公共网络分离的业务网络现在连接起来,以便利用新的通信能力。这激发了对工业入侵检测解决方案的需求,这些解决方案必须兼容工业中长期运行的机器以及异构和快速变化的网络。在本工作中,对工艺数据进行了分析。数据是在真实的硬件上创建和监控的。在设置阶段之后,会将影响流程行为的攻击引入系统。基于时间序列的异常检测方法——矩阵配置文件,适应了入侵检测的特殊需要。结果表明,这些方法适用于检测进程行为中的攻击。此外,它们很容易集成到现有的过程环境中。此外,单类分类器单类支持向量机和隔离森林应用于数据,没有时间概念。虽然Matrix Profiles在创建和可视化结果方面表现良好,但单类分类器表现不佳。
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