Behavioural intrusion detection in water distribution systems using neural networks

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Authors

Ramotsoela, Tsotsope Daniel
Hancke, Gerhard P.
Abu-Mahfouz, Adnan Mohammed

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Institute of Electrical and Electronics Engineers

Abstract

There has been an increasing number of attacks against critical water system infrastructure in recent years. This is largely due to the fact that these systems are heavily dependent on computer networks meaning that an attacker can use conventional techniques to penetrate this network which would give them access to the supervisory control and data acquisition (SCADA) system. The devastating impact of a successful attack in these critical infrastructure applications could be long-lasting with major social and financial implications. Intrusion detection systems are deployed as a secondary defence mechanism in case an attacker is able to bypass the systems preventative security mechanisms. In this thesis, behavioural intrusion detection is addressed in the context of detecting cyber-attacks in water distribution systems. A comparative analysis of various predictive neural network architectures is conducted and from this a novel voting-based ensemble technique is presented. Finally an analysis of how this approach to behavioural intrusion detection can be enhanced by both univariate and multivariate outlier detection techniques It was found that multiple algorithms working together are able to counteract their limitation to produce a more robust algorithm with improved results.

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Keywords

Anomaly detection, Cyber-physical security, Industrial control system, Machine learning, Water distribution system, Supervisory control and data acquisition (SCADA)

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Citation

T. D. Ramotsoela, G. P. Hancke and A. M. Abu-Mahfouz, "Behavioural Intrusion Detection in Water Distribution Systems Using Neural Networks," in IEEE Access, vol. 8, pp. 190403-190416, 2020, doi: 10.1109/ACCESS.2020.3032251.