2020 Virtual AIChE Annual Meeting
(14d) Post Cyber-Attack Secure State Reconstruction for Nonlinear Processes Using Machine Learning
Authors
This work investigates state-reconstruction strategies to maintain the controllability of the system effectively following the detection of cyber-attacks on sensor measurements. Considering a general class of nonlinear systems of which the sensor measurements are vulnerable to malicious cyber-attacks, there have been previous works on robust control frameworks that effectively maintain the stability of the process in the presence of cyber-attacks, within which the detection and differentiation of various types of cyber-attacks have been successfully carried out by machine-learning-based detection algorithms [2,4]. In this work, we further explore recuperation measures as a response plan after the detection of cyber-attacks to minimize or eliminate its impact. A machine-learning-based state reconstruction approach is presented to provide estimated state measurements based on falsified state measurements, and it ensures stable operation of the process before reliable sensor measurements can be re-installed.
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[2] Chen, S., Wu, Z., Christofides, P.D., 2020a. Cyber-attack detection and resilient operation of non-linear processes under lyapunov-based economic model predictive control. Computers & ChemicalEngineering 136, 106806.
[3] Hu, Q., Fooladivanda, D., Chang, Y.H., Tomlin, C.J., 2017. Secure state estimation for nonlinearpower systems under cyber attacks, in: Proceedings of the American Control Conference, Seattle,Washington. pp. 2779â2784.
[4] Wu, Z., Albalawi, F., Zhang, J., Zhang, Z., Durand, H., Christofides, P.D., 2018. Detecting andhandling cyber-attacks in model predictive control of chemical processes. Mathematics 6, 173, 22pages.