A Scoping Review of Machine Learning Applications in Power System Protection and Disturbance Management
Oelhaf J, Kordowich G, Pashaei M, Bergler C, Maier A, Jäger J, Bayer S (2025)
Publication Language: English
Publication Status: Accepted
Publication Type: Journal article, Review article
Future Publication Type: Journal article
Publication year: 2025
Journal
Book Volume: Volume 172
Article Number: 111257
Journal Issue: November 2025
URI: https://www.sciencedirect.com/science/article/pii/S0142061525008051
DOI: 10.1016/j.ijepes.2025.111257
Open Access Link: https://www.sciencedirect.com/science/article/pii/S0142061525008051
Abstract
The
integration of renewable and distributed energy resources has
fundamentally reshaped modern power systems, challenging conventional
protection schemes built around centralized generation. This scoping
review synthesizes recent literature on machine learning (ML)
applications in power system protection and disturbance management,
following the PRISMA for Scoping Reviews framework. Based on over 100
publications, three key objectives are addressed: (i) assessing the
scope of ML research in protection tasks; (ii) evaluating ML performance
across diverse operational scenarios; and (iii) identifying methods
suitable for evolving grid conditions.
Machine
learning models often demonstrate high accuracy on simulated datasets;
however, their performance under real-world conditions remains
insufficiently validated. The existing literature is fragmented, with
inconsistencies in methodological rigor, dataset quality, and evaluation
metrics. This lack of standardization hampers the comparability of
results and limits the generalizability of findings across different
applications. To address these challenges, this review introduces a
machine learning-oriented taxonomy for protection tasks, resolves key
terminological inconsistencies, and advocates for standardized reporting
practices. It further provides guidelines for comprehensive dataset
documentation, methodological transparency, and consistent evaluation
protocols, aiming to improve reproducibility and enhance the practical
relevance of research outcomes.
Critical
gaps remain, including the scarcity of real-world validation,
insufficient robustness testing, and limited consideration of deployment
feasibility. Future research should prioritize public benchmark
datasets, realistic validation methods, and advanced ML architectures.
These steps are essential to move ML-based protection from theoretical
promise to practical deployment in increasingly dynamic and
decentralized power systems.
Authors with CRIS profile
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How to cite
APA:
Oelhaf, J., Kordowich, G., Pashaei, M., Bergler, C., Maier, A., Jäger, J., & Bayer, S. (2025). A Scoping Review of Machine Learning Applications in Power System Protection and Disturbance Management. International Journal of Electrical Power & Energy Systems, Volume 172(November 2025). https://doi.org/10.1016/j.ijepes.2025.111257
MLA:
Oelhaf, Julian, et al. "A Scoping Review of Machine Learning Applications in Power System Protection and Disturbance Management." International Journal of Electrical Power & Energy Systems Volume 172.November 2025 (2025).
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