ID:
publications-4476
Type:
article
Year:
2022
Authors:
Wei, Yuying and Wei, Yuying and Li, Tian and Zhou, Kun and Law, Adrian Wingβ€Keung and Yang, Chun and Yang, Chun and Tang, Di and Tang, Di
Title:
Combined Anomaly Detection Framework for Digital Twins of Water Treatment Facilities
Venue/Journal:
Water
DOI:
10.3390/w14071001
Research type:
Water System:
Technical Focus:
Abstract:
Digital twins of cyber-physical systems with automated process control systems using programmable logic controllers (PLCs) are increasingly popular nowadays. At the same time, cyber-physical security is also a growing concern with system connectivity. This study develops a combined anomaly detection framework (CADF) against various types of security attacks on the digital twin of process control in water treatment facilities. CADF utilizes the PLC-based whitelist system to detect anomalies that target the actuators and the deep learning approach of natural gradient boosting (NGBoost) and probabilistic assessment to detect anomalies that target the sensors. The effectiveness of CADF is verified using a physical facility for water treatment with membrane processes called the Secure Water Treatment (SWaT) system in the Singapore University of Technology and Design. Various attack scenarios are tested in SWaT by falsifying the reported values of sensors and actuators in the digital twin process. These scenarios include both trivial attacks, which are commonly studied, as well as non-trivial (i.e., sophisticated) attacks, which are rarely reported. The results show that CADF performs very well with good detection accuracy in all scenarios, and particularly, it is able to detect all sophisticated attacks while ongoing before they can induce damage to the water treatment facility. CADF can be further extended to other cyber-physical systems in the future.
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