细节中的魔鬼:工业应用中的攻击场景

S. D. Antón, Alexander Hafner, H. Schotten
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引用次数: 8

摘要

在过去的几年里,工业网络变得越来越互联,并向私有或公共网络开放。这会提高效率和可管理性,但也会增加攻击面。工业网络通常由遗留系统组成,这些系统在设计时没有考虑到安全性。在过去十年中,对网络物理系统的攻击有所增加,对物理工作造成了严重后果。在这项工作中,对工业网络上的攻击向量进行了分类。模拟真实世界的过程,然后引入攻击。最后,采用两种基于机器学习的时间序列异常检测方法对攻击进行检测。矩阵轮廓比预测长短期记忆网络(一种神经网络)更成功。
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Devil in the Detail: Attack Scenarios in Industrial Applications
In the past years, industrial networks have become increasingly interconnected and opened to private or public networks. This leads to an increase in efficiency and manageability, but also increases the attack surface. Industrial networks often consist of legacy systems that have not been designed with security in mind. In the last decade, an increase in attacks on cyber-physical systems was observed, with drastic consequences on the physical work. In this work, attack vectors on industrial networks are categorised. A real-world process is simulated, attacks are then introduced. Finally, two machine learning-based methods for time series anomaly detection are employed to detect the attacks. Matrix Profiles are employed more successfully than a predictor Long Short-Term Memory network, a class of neural networks.
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