Digital twins have recently gained significant interest in simulation,
optimization, and predictive maintenance of Industrial Control Systems (ICS).
Recent studies discuss the possibility of using digital twins for intrusion
detection in industrial systems. Accordingly, this study contributes to a
digital twin-based security framework for industrial control systems, extending
its capabilities for simulation of attacks and defense mechanisms. Four types
of process-aware attack scenarios are implemented on a standalone open-source
digital twin of an industrial filling plant: command injection, network Denial
of Service (DoS), calculated measurement modification, and naive measurement
modification. A stacked ensemble classifier is proposed as the real-time
intrusion detection, based on the offline evaluation of eight supervised
machine learning algorithms. The designed stacked model outperforms previous
methods in terms of F1-Score and accuracy, by combining the predictions of
various algorithms, while it can detect and classify intrusions in near
real-time (0.1 seconds). This study also discusses the practicality and
benefits of the proposed digital twin-based security framework.