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Time is of the Essence: Machine Learning-Based Intrusion Detection in Industrial Time Series Data

机译:时间至关重要:工业时间序列数据中基于机器学习的入侵检测

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The Industrial Internet of Things drastically increases connectivity of devices in industrial applications. In addition to the benefits in efficiency, scalability and ease of use, this creates novel attack surfaces. Historically, industrial networks and protocols do not contain means of security, such as authentication and encryption, that are made necessary by this development. Thus, industrial IT-security is needed. In this work, emulated industrial network data is transformed into a time series and analysed with three different algorithms. The data contains labeled attacks, so the performance can be evaluated. Matrix Profiles perform well with almost no parameterisation needed. Seasonal Autoregressive Integrated Moving Average performs well in the presence of noise, requiring parameterisation effort. Long Short Term Memory-based neural networks perform mediocre while requiring a high training-and parameterisation effort.
机译:工业物联网极大地增加了工业应用中设备的连接性。除了在效率,可伸缩性和易用性方面的优势外,这还创建了新颖的攻击面。从历史上看,工业网络和协议不包含此开发必需的安全手段,例如身份验证和加密。因此,需要工业IT安全性。在这项工作中,将仿真的工业网络数据转换为时间序列,并使用三种不同的算法进行分析。数据包含标记的攻击,因此可以评估性能。 Matrix Profiles表现良好,几乎不需要参数设置。季节性自回归综合移动平均线在存在噪声的情况下表现良好,需要进行参数设置。基于长期短期记忆的神经网络性能中等,同时需要大量的训练和参数化工作。

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