Cyber-Resilient Digital Twins: Discriminating Attacks for Safe Critical Infrastructure Control
About
Industrial Cyber-Physical Systems (ICPS) face growing threats from cyber-attacks that exploit sensor and control vulnerabilities. Digital Twin (DT) technology can detect anomalies via predictive modelling, but current methods cannot distinguish attack types and often rely on costly full-system shutdowns. This paper presents i-SDT (intelligent Self-Defending DT), combining hydraulically-regularized predictive modelling, multi-class attack discrimination, and adaptive resilient control. Temporal Convolutional Networks (TCNs) with differentiable conservation constraints capture nominal dynamics and improve robustness to adversarial manipulations. A recurrent residual encoder with Maximum Mean Discrepancy (MMD) separates normal operation from single- and multi-stage attacks in latent space. When attacks are confirmed, Model Predictive Control (MPC) uses uncertainty-aware DT predictions to keep operations safe without shutdown. Evaluation on SWaT and WADI datasets shows major gains in detection accuracy, 44.1% fewer false alarms, and 56.3% lower operational costs in simulation-in-the-loop evaluation. with sub-second inference latency confirming real-time feasibility on plant-level workstations, i-SDT advances autonomous cyber-physical defense while maintaining operational resilience.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Anomaly Detection | SWaT | F1 Score94.2 | 276 | |
| Multi-class attack detection | SWaT 36 scenarios (test) | Normal Precision97.3 | 6 | |
| Multi-class attack detection | WADI 15 scenarios (test) | Precision (Normal)95.8 | 5 | |
| Attack Taxonomy Discrimination | SWaT | MMD^20.142 | 5 | |
| Attack Taxonomy Discrimination | WADI | MMD^20.131 | 5 | |
| Disruption mitigation and resilience evaluation | WADI 15 Attacks (test) | Relative Disruption (D_rel)0.461 | 4 | |
| Disruption mitigation and resilience evaluation | SWaT 36 Attacks (test) | D_rel56.3 | 4 |