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Abstract
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.