CRAILGSep 6, 2024

Detection of False Data Injection Attacks (FDIA) on Power Dynamical Systems With a State Prediction Method

arXiv:2409.04609v19 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

This work addresses cybersecurity threats in power systems, which is critical for preventing catastrophic failures, but it appears incremental as it builds on existing prediction methods for a specific domain.

The paper tackles the problem of detecting false data injection attacks (FDIA) in power systems by using state prediction models like LSTM and GNN-LSTM to predict frequency dynamics and identify discrepancies caused by attacks, achieving high detection accuracy across various settings.

With the deeper penetration of inverter-based resources in power systems, false data injection attacks (FDIA) are a growing cyber-security concern. They have the potential to disrupt the system's stability like frequency stability, thereby leading to catastrophic failures. Therefore, an FDIA detection method would be valuable to protect power systems. FDIAs typically induce a discrepancy between the desired and the effective behavior of the power system dynamics. A suitable detection method can leverage power dynamics predictions to identify whether such a discrepancy was induced by an FDIA. This work investigates the efficacy of temporal and spatio-temporal state prediction models, such as Long Short-Term Memory (LSTM) and a combination of Graph Neural Networks (GNN) with LSTM, for predicting frequency dynamics in the absence of an FDIA but with noisy measurements, and thereby identify FDIA events. For demonstration purposes, the IEEE 39 New England Kron-reduced model simulated with a swing equation is considered. It is shown that the proposed state prediction models can be used as a building block for developing an effective FDIA detection method that can maintain high detection accuracy across various attack and deployment settings. It is also shown how the FDIA detection should be deployed to limit its exposure to detection inaccuracies and mitigate its computational burden.

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