4.7 Article

Predicting Consumer Load Profiles Using Commercial and Open Data

Journal

IEEE TRANSACTIONS ON POWER SYSTEMS
Volume 31, Issue 5, Pages 3693-3701

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TPWRS.2015.2493083

Keywords

Advanced metering infrastructure; classification; load profile; open data; spectral clustering

Funding

  1. Electrabel-GDF SUEZ

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Automated Metering Infrastructure (AMI) has gradually become commonplace within the utilities industry and has brought with it numerous improvements in all related fields. Specifically in tariff setting and demand response models, classification of smart meter readings into load profiles helps in finding the right segments to target. This paper addresses the issue of assigning new customers, for whom no AMI readings are available, to one of these load profiles. This post-clustering phase has received little attention in the past. Our framework combines commercial, government and open data with the internal company data to accurately predict the load profile of a new customer using high performing classification models. The daily load profiles are generated using Spectral Clustering and are used as the dependent variable in our model. The framework was tested on over 6000 customers from GDF SUEZ in Belgium and six relevant load profiles were identified. The results show that the combination of internal data with commercial and cartographic data achieves the highest accuracy. Using external data alone, the model was still able to adequately place customers into their relevant load profile.

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