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Data-driven estimation of the amount of under frequency load shedding in small power systems

Rajabdorri, Mohammad; Troffaes, Matthias C. M.; Kazemtabrizi, Behzad; Sarvarizadeh, Miad; Sigrist, Lukas; Lobato, Enrique

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Authors

Mohammad Rajabdorri

Miad Sarvarizadeh

Lukas Sigrist

Enrique Lobato



Abstract

This paper presents a data-driven methodology for estimating under frequency load shedding (UFLS) in small power systems. UFLS plays a vital role in maintaining system stability by shedding load when the frequency drops below a specified threshold following loss of generation. Using a dynamic system frequency response (SFR) model we generate different values of UFLS (i.e., labels) predicated on a set of carefully selected operating conditions (i.e., features). Machine learning (ML) algorithms are then applied to learn the relationship between chosen features and the UFLS labels. A novel regression tree and the Tobit model are suggested for this purpose and we show how the resulting non-linear model can be directly incorporated into a MILP problem. The trained model can be used to estimate UFLS in security-constrained operational planning problems, improving frequency response, optimizing reserve allocation, and reducing costs. The methodology is applied to the La Palma island power system, demonstrating its accuracy and effectiveness. The results confirm that the amount of UFLS can be estimated with the mean absolute error (MAE) as small as 0.213 megawatts for the whole process, with a model that is representable as a mixed integer linear programming (MILP) for use in scheduling problems such as unit commitment among others.

Citation

Rajabdorri, M., Troffaes, M. C. M., Kazemtabrizi, B., Sarvarizadeh, M., Sigrist, L., & Lobato, E. (2025). Data-driven estimation of the amount of under frequency load shedding in small power systems. Engineering Applications of Artificial Intelligence, 139(Part B), Article 109617. https://doi.org/10.1016/j.engappai.2024.109617

Journal Article Type Article
Acceptance Date Nov 3, 2024
Online Publication Date Nov 13, 2024
Publication Date 2025-01
Deposit Date Oct 16, 2024
Publicly Available Date Nov 6, 2024
Journal Engineering Applications of Artificial Intelligence
Print ISSN 0952-1976
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 139
Issue Part B
Article Number 109617
DOI https://doi.org/10.1016/j.engappai.2024.109617
Keywords island power systems, Machine Learning, under frequency load shedding, novel binary tree structure, Tobit model, Data-driven model
Public URL https://durham-repository.worktribe.com/output/2960305
This output contributes to the following UN Sustainable Development Goals:

SDG 7 - Affordable and Clean Energy

Ensure access to affordable, reliable, sustainable and modern energy for all

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