Litcius/Paper detail

Poisoning attacks on cyber attack detectors for industrial control systems

Moshe Kravchik, Battista Biggio, Asaf Shabtai

202131 citationsDOIOpen Access PDF

Abstract

Recently, neural network (NN)-based methods, including autoencoders, have been proposed for the detection of cyber attacks targeting industrial control systems (ICSs). Such detectors are often retrained, using data collected during system operation, to cope with the natural evolution (i.e., concept drift) of the monitored signals. However, by exploiting this mechanism, an attacker can fake the signals provided by corrupted sensors at training time and poison the learning process of the detector such that cyber attacks go undetected at test time. With this research, we are the first to demonstrate such poisoning attacks on ICS cyber attack online NN detectors. We propose two distinct attack algorithms, namely, interpolation- and back-gradient based poisoning, and demonstrate their effectiveness on both synthetic and real-world ICS data. We also discuss and analyze some potential mitigation strategies.

Topics & Concepts

Industrial control systemComputer securityProcess (computing)Computer scienceDetectorCyber-attackControl (management)Control systemControl system securityArtificial neural networkEngineeringProcess controlReal-time computingIntrusion detection systemArtificial intelligenceKey (lock)Smart Grid Security and ResilienceAnomaly Detection Techniques and ApplicationsNetwork Security and Intrusion Detection
Poisoning attacks on cyber attack detectors for industrial control systems | Litcius