These labels were automatically added by AI and may be inaccurate. For details, see About Literature Database.
Abstract
Power grids are becoming more digitized, resulting in new opportunities for
the grid operation but also new challenges, such as new threats from the
cyber-domain. To address these challenges, cybersecurity solutions are being
considered in the form of preventive, detective, and reactive measures. Machine
learning-based intrusion detection systems are used as part of detection
efforts to detect and defend against cyberattacks. However, training and
testing data for these systems are often not available or suitable for use in
machine learning models for detecting multi-stage cyberattacks in smart grids.
In this paper, we propose a method to generate synthetic data using a
graph-based approach for training machine learning models in smart grids. We
use an abstract form of multi-stage cyberattacks defined via graph formulations
and simulate the propagation behavior of attacks in the network. Within the
selected scenarios, we observed promising results, but a larger number of
scenarios need to be studied to draw a more informed conclusion about the
suitability of synthesized data.