Graph Neural Networks Based Detection of Stealth False Data Injection
Attacks in Smart Grids
- URL: http://arxiv.org/abs/2104.02012v2
- Date: Sun, 10 Oct 2021 22:51:49 GMT
- Title: Graph Neural Networks Based Detection of Stealth False Data Injection
Attacks in Smart Grids
- Authors: Osman Boyaci, Amarachi Umunnakwe, Abhijeet Sahu, Mohammad Rasoul
Narimani, Muhammad Ismail, Katherine Davis, Erchin Serpedin
- Abstract summary: False data injection attacks (FDIAs) aim to break the integrity of measurements by injecting false data into the smart metering devices in power grids.
We present a generic, localized, and stealth (unobservable) attack generation methodology and publicly accessible datasets for researchers to develop and test their algorithms.
We propose a Graph Neural Network (GNN) based, scalable and real-time detector of FDIAs that efficiently combines model-driven and data-driven approaches.
- Score: 6.188609547699017
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: False data injection attacks (FDIAs) represent a major class of attacks that
aim to break the integrity of measurements by injecting false data into the
smart metering devices in power grids. To the best of authors' knowledge, no
study has attempted to design a detector that automatically models the
underlying graph topology and spatially correlated measurement data of the
smart grids to better detect cyber attacks. The contributions of this paper to
detect and mitigate FDIAs are twofold. First, we present a generic, localized,
and stealth (unobservable) attack generation methodology and publicly
accessible datasets for researchers to develop and test their algorithms.
Second, we propose a Graph Neural Network (GNN) based, scalable and real-time
detector of FDIAs that efficiently combines model-driven and data-driven
approaches by incorporating the inherent physical connections of modern AC
power grids and exploiting the spatial correlations of the measurement. It is
experimentally verified by comparing the proposed GNN based detector with the
currently available FDIA detectors in the literature that our algorithm
outperforms the best available solutions by 3.14%, 4.25%, and 4.41% in F1 score
for standard IEEE testbeds with 14, 118, and 300 buses, respectively.
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