Elevating Cybersecurity for Smart Grid Systems—A Container-Based Approach Enhanced by Machine Learning

Abukeshek, Mays; Barakat, Basel and Ajayi, Bamidele. 2024. 'Elevating Cybersecurity for Smart Grid Systems—A Container-Based Approach Enhanced by Machine Learning'. In: 2024 29th International Conference on Automation and Computing (ICAC). Sunderland, United Kingdom 28 - 30 August 2024. [Conference or Workshop Item]

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Abstract or Description

This paper presents a comprehensive implementation of a cybersecurity solution for smart grid network containers. The methodology utilises (i) Qualys API-based vulnerability scanning and reporting system for vulnerability identification, (ii) Docker deployment for security and isolation, (iii) advanced load balancing techniques for resource optimisation, and (iv) machine learning-powered anomaly detection for threat identification and vulnerability prioritisation. The implementation was used to create a dataset that continues the details of several simulated attacks, enabling effective training and evaluation of a robust machine-learning model. The paper provides a thorough description of the implemented system architecture, the Qualys API-based vulnerability scanning and reporting system, the data set creation process, simulated attacks in Docker implementation, the load balancing process, and the machine learning model used for vulnerability prioritisation. The experiments showed that the machine learning model performed exceptionally well across all conducted attacks i.e., Denial of Service, Remote-to-Local, User-to-Root, and Probes, achieving high scores in accuracy, precision, recall, and F1 scores.

Item Type:

Conference or Workshop Item (Paper)

Identification Number (DOI):

https://doi.org/10.1109/ICAC61394.2024.10718762

Additional Information:

©2024 Crown

Keywords:

Cybersecurity, smart grid, ML, Attacks, API, Docker

Departments, Centres and Research Units:

Computing

Dates:

DateEvent
23 October 2024Published

Event Location:

Sunderland, United Kingdom

Date range:

28 - 30 August 2024

Item ID:

38175

Date Deposited:

31 Jan 2025 11:15

Last Modified:

31 Jan 2025 11:21

URI:

https://research.gold.ac.uk/id/eprint/38175

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