CRLGMay 31, 2018

Cyberattack Detection using Deep Generative Models with Variational Inference

arXiv:1805.12511v130 citations
Originality Incremental advance
AI Analysis

This addresses cybersecurity for critical infrastructure systems, such as water distribution, by reducing the need for human engineering, though it is incremental with noted issues like false alarms.

The study tackled cyberattack detection in critical infrastructure by developing a deep generative model with variational inference that autonomously learns normal behavior from raw data, applied to a simulated water distribution system with attacks like PLC hacks and malicious actuator activation, showing the model's ability to discern attacks through reproduction probability plots.

Recent years have witnessed a rise in the frequency and intensity of cyberattacks targeted at critical infrastructure systems. This study designs a versatile, data-driven cyberattack detection platform for infrastructure systems cybersecurity, with a special demonstration in water sector. A deep generative model with variational inference autonomously learns normal system behavior and detects attacks as they occur. The model can process the natural data in its raw form and automatically discover and learn its representations, hence augmenting system knowledge discovery and reducing the need for laborious human engineering and domain expertise. The proposed model is applied to a simulated cyberattack detection problem involving a drinking water distribution system subject to programmable logic controller hacks, malicious actuator activation, and deception attacks. The model is only provided with observations of the system, such as pump pressure and tank water level reads, and is blind to the internal structures and workings of the water distribution system. The simulated attacks are manifested in the model's generated reproduction probability plot, indicating its ability to discern the attacks. There is, however, need for improvements in reducing false alarms, especially by optimizing detection thresholds. Altogether, the results indicate ability of the model in distinguishing attacks and their repercussions from normal system operation in water distribution systems, and the promise it holds for cyberattack detection in other domains.

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