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A global modeling framework for load forecasting in distribution networks
ID Grabner, Miha (Author), ID Wang, Yi (Author), ID Wen, Qingsong (Author), ID Blažič, Boštjan (Author), ID Štruc, Vitomir (Author)

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Abstract
With the increasing numbers of smart meter installations, scalable and efficient load forecasting techniques are critically needed to ensure sustainable situation awareness within the distribution networks. Distribution networks include a large amount of different loads at various aggregation levels, such as individual consumers, low-voltage feeders, and transformer stations. It is impractical to develop individual (or so-called local) forecasting models for each load separately. Additionally, such local models also (i) (largely) ignore the strong dependencies between different loads that might be present due to their spatial proximity and the characteristics of the distribution network, (ii) require historical data for each load to be able to make forecasts, and (iii) are incapable of adjusting to changes in the load behavior without retraining. To address these issues, we propose a global modeling framework for load forecasting in distribution networks that, unlike its local competitors, relies on a single global model to generate forecasts for a large number of loads. The global nature of the framework, significantly reduces the computational burden typically required when training multiple local forecasting models, efficiently exploits the cross-series information shared among different loads, and facilitates forecasts even when historical data for a load is missing or the behavior of a load evolves over time. To further improve on the performance of the proposed framework, an unsupervised localization mechanism and optimal ensemble construction strategy are also proposed to localize/personalize the global forecasting model to different load characteristics. Our experimental results show that the proposed framework outperforms naive benchmarks by more than 25% (in terms of Mean Absolute Error) on real-world dataset while exhibiting highly desirable characteristics when compared to the local models that are predominantly used in the literature. All source code and data are made publicly available to enable reproducibility: https://github.com/mihagrabner/GlobalModelingFramework.

Language:English
Keywords:load forecasting, distribution networks, predictive models, smart meter, global model, deep learning
Work type:Article
Typology:1.01 - Original Scientific Article
Organization:FE - Faculty of Electrical Engineering
Publication status:Published
Publication version:Version of Record
Year:2023
Number of pages:Str. 4927–4941
Numbering:Vol. 14, no. 6
PID:20.500.12556/RUL-154010 This link opens in a new window
UDC:621.31
ISSN on article:1949-3053
DOI:10.1109/TSG.2023.3264525 This link opens in a new window
COBISS.SI-ID:148068611 This link opens in a new window
Publication date in RUL:18.01.2024
Views:754
Downloads:66
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Record is a part of a journal

Title:IEEE transactions on smart grid
Shortened title:IEEE trans. smart grid
Publisher:Institute of Electrical and Electronics Engineers
ISSN:1949-3053
COBISS.SI-ID:7809108 This link opens in a new window

Licences

License:CC BY 4.0, Creative Commons Attribution 4.0 International
Link:http://creativecommons.org/licenses/by/4.0/
Description:This is the standard Creative Commons license that gives others maximum freedom to do what they want with the work as long as they credit the author.

Secondary language

Language:Slovenian
Keywords:napovedovanje odjema, distribucijsko omrežje, modeli za napovedovanje

Projects

Funder:ARRS - Slovenian Research Agency
Project number:P2-0250
Name:Metrologija in biometrični sistemi

Funder:ARRS - Slovenian Research Agency
Project number:L2-4436
Name:Optimizacija obratovanja nizkonapetostnega distribucijskega omrežja z integrirano fleksibilnostjo v realnem času s pomočjo globokega spodbujevanega učenja (DRIFT)

Funder:Other - Other funder or multiple funders
Funding programme:Alibaba Innovative Research Programme

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