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Adversarial-aware Machine Learning for Enhancing Smart Grid Security

Sodiq, Yusuf Ademola; Gaber, Tarek; Amin, Reham; Jimenez-Aranda, Angel; Galeela, Mohamed

Authors

Yusuf Ademola Sodiq

Tarek Gaber

Reham Amin

Mohamed Galeela



Abstract

Smart grid systems are essential components of modern power infrastructures, where machine learning has found wide-ranging applications, particularly in the development of intrusion detection systems. However, such systems remain vulnerable to adversarial attacks, including data poisoning techniques like label flipping attack. This paper proposes a novel, adversarial-aware machine learning-based intrusion detection system that is robust against label flipping attacks, thereby enhancing the integrity and reliability of the energy distribution network. The proposed solution was evaluated using the ICS cyber-attack dataset from the University of Queensland, with multiple models undergoing progressive testing. Initially, the base model employed three key algorithms: Random Forest, K-Nearest Neighbors, and XGBoost. These models were subjected to simulated label flipping attacks with varying intensities (10%-50%), which caused a significant decline in performance. To counter this, a countermeasure technique was integrated into the system, successfully restoring model accuracy and achieving a consistent accuracy of 75.96% across all attack intensities. Among the algorithms, Random Forest demonstrated the greatest resilience, showing a notable recovery after mitigation. This study underscores the critical role of preventive defense strategies and robust machine learning algorithms in safeguarding smart grids against cyber threats.

Presentation Conference Type Conference Paper (published)
Conference Name 2024 25th International Middle East Power System Conference (MEPCON)
Start Date Dec 17, 2024
End Date Dec 19, 2024
Acceptance Date Oct 31, 2024
Online Publication Date Jan 28, 2025
Publication Date Dec 17, 2024
Deposit Date Mar 27, 2025
Publisher Institute of Electrical and Electronics Engineers
Peer Reviewed Peer Reviewed
ISBN 979-8-3503-7965-5
DOI https://doi.org/10.1109/mepcon63025.2024.10850149