January 8, 2025
Conference Paper

SNNPG: Using Spiking Neural Networks to Detect Attacks in the Power Grid

Abstract

We explore the potential of Spiking Neural Networks (SNN) to enhance the security of power grid operations by detecting False Data Injection (FDI) attacks. These attacks manipulate PMU readings, leading to erroneous control decisions and grid disruptions. We develop a method to convert Phase Measurement Unit (PMU) data into spike trains, capturing both temporal and spatial dimensions. Using an SNN model, we conduct evaluations with simulated power grid data, showcasing accuracy in detecting FDI attacks. SNN models rapidly identify anomalies in real-time PMU data, safeguarding grid operations by alerting operators to irregular readings and preventing incorrect decisions.

Published: January 8, 2025

Citation

Hood K., A. Li, and Q. Guan. 2024. SNNPG: Using Spiking Neural Networks to Detect Attacks in the Power Grid. In International Conference on Neuromorphic Systems (ICONS 2024), July 30-August 2, 2024, Arlington, VA, 224-228. Los Alamitos, California:IEEE Computer Society. PNNL-SA-199477. doi:10.1109/ICONS62911.2024.00039