Near real-time machine learning framework in distribution networks with low-carbon technologies using smart meter data

Dokur, E, Erdogan, N ORCID logoORCID: https://orcid.org/0000-0003-1621-2748, Sengor, I, Yuzgec, U and Hayes, BP, 2025. Near real-time machine learning framework in distribution networks with low-carbon technologies using smart meter data. Applied Energy, 384: 125433. ISSN 0306-2619

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Abstract

The widespread adoption of low-carbon technologies, such as photovoltaics, electric vehicles, heat pumps, and energy storage units introduces challenges to distribution network congestion and power quality, particularly raising concerns about voltage stability. Enhanced voltage visibility in low-voltage networks is increasingly vital for active grid management, making efficient voltage forecasting tools essential. This study introduces a novel data-driven approach for forecasting node voltages in low-voltage networks with high penetration of low-carbon technologies. Using time series of power measurements from smart meter data, the study integrates an Extreme Learning Machine with the Single Candidate Optimizer to enhance computational efficiency and forecasting accuracy. The model is validated using smart meter datasets from two different low-voltage networks with low-carbon technologies and is compared with several established machine learning models. The results demonstrate that the optimization algorithm significantly improves the tuning of model parameters, achieving up to a 17-fold reduction in computation time compared to the fastest metaheuristic methods implemented. The proposed model demonstrated superior accuracy, with an average voltage deviation of 0.56%. Although the computation time per node achieved is not yet suitable for real time applications, the study shows that the optimization method significantly improves the performance of the forecasting tool.

Item Type: Journal article
Publication Title: Applied Energy
Creators: Dokur, E., Erdogan, N., Sengor, I., Yuzgec, U. and Hayes, B.P.
Publisher: Elsevier
Date: 15 April 2025
Volume: 384
ISSN: 0306-2619
Identifiers:
Number
Type
10.1016/j.apenergy.2025.125433
DOI
S0306261925001631
Publisher Item Identifier
2366767
Other
Rights: This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
Divisions: Schools > School of Science and Technology
Record created by: Jonathan Gallacher
Date Added: 10 Feb 2025 13:56
Last Modified: 10 Feb 2025 13:56
URI: https://irep.ntu.ac.uk/id/eprint/53013

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