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Autori principali: Manzoor, Faizan, Khattar, Vanshaj, Herath, Akila, Black, Clifton, Nielsen, Matthew C, Hong, Junho, Liu, Chen-Ching, Jin, Ming
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2501.16453
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author Manzoor, Faizan
Khattar, Vanshaj
Herath, Akila
Black, Clifton
Nielsen, Matthew C
Hong, Junho
Liu, Chen-Ching
Jin, Ming
author_facet Manzoor, Faizan
Khattar, Vanshaj
Herath, Akila
Black, Clifton
Nielsen, Matthew C
Hong, Junho
Liu, Chen-Ching
Jin, Ming
contents The occurrences of cyber attacks on the power grids have been increasing every year, with novel attack techniques emerging every year. In this paper, we address the critical challenge of detecting novel/zero-day attacks in digital substations that employ the IEC-61850 communication protocol. While many heuristic and machine learning (ML)-based methods have been proposed for attack detection in IEC-61850 digital substations, generalization to novel or zero-day attacks remains challenging. We propose an approach that leverages the in-context learning (ICL) capability of the transformer architecture, the fundamental building block of large language models. The ICL approach enables the model to detect zero-day attacks and learn from a few examples of that attack without explicit retraining. Our experiments on the IEC-61850 dataset demonstrate that the proposed method achieves more than $85\%$ detection accuracy on zero-day attacks while the existing state-of-the-art baselines fail. This work paves the way for building more secure and resilient digital substations of the future.
format Preprint
id arxiv_https___arxiv_org_abs_2501_16453
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Detecting Zero-Day Attacks in Digital Substations via In-Context Learning
Manzoor, Faizan
Khattar, Vanshaj
Herath, Akila
Black, Clifton
Nielsen, Matthew C
Hong, Junho
Liu, Chen-Ching
Jin, Ming
Machine Learning
Artificial Intelligence
The occurrences of cyber attacks on the power grids have been increasing every year, with novel attack techniques emerging every year. In this paper, we address the critical challenge of detecting novel/zero-day attacks in digital substations that employ the IEC-61850 communication protocol. While many heuristic and machine learning (ML)-based methods have been proposed for attack detection in IEC-61850 digital substations, generalization to novel or zero-day attacks remains challenging. We propose an approach that leverages the in-context learning (ICL) capability of the transformer architecture, the fundamental building block of large language models. The ICL approach enables the model to detect zero-day attacks and learn from a few examples of that attack without explicit retraining. Our experiments on the IEC-61850 dataset demonstrate that the proposed method achieves more than $85\%$ detection accuracy on zero-day attacks while the existing state-of-the-art baselines fail. This work paves the way for building more secure and resilient digital substations of the future.
title Detecting Zero-Day Attacks in Digital Substations via In-Context Learning
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2501.16453