Adaptive probabilistic forecasting of electricity (net-)load

de Vilmarest, J., Browell, J. , Fasiolo, M., Goude, Y. and Wintenberger, O. (2024) Adaptive probabilistic forecasting of electricity (net-)load. IEEE Transactions on Power Systems, 39(2), pp. 4154-4163. (doi: 10.1109/TPWRS.2023.3310280)

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Abstract

Electricityload forecasting is a necessary capability for power system operators and electricity market participants. Both demand and supply characteristics evolve over time. On the demand side, unexpected events as well as longer-term changes in consumption habits affect demand patterns. On the production side, the increasing penetration of intermittent power generation significantly changes the forecasting needs. We address this challenge in two ways. First, our setting is adaptive ; our models take into account the most recent observations available to automatically respond to changes in the underlying process. Second, we consider probabilistic rather than point forecasting; indeed, uncertainty quantification is required to operate electricity systems efficiently and reliably. Our methodology relies on the Kalman filter, previously used successfully for adaptive point load forecasting. The probabilistic forecasts are obtained by quantile regressions on the residuals of the point forecasting model. We achieve adaptive quantile regressions using the online gradient descent; we avoid the choice of the gradient step size considering multiple learning rates and aggregation of experts. We apply the method to two data sets: the regional net-load in Great Britain and the demand of seven large cities in the United States. Adaptive procedures improve forecast performance substantially in both use cases for both point and probabilistic forecasting.

Item Type:Articles
Additional Information:Funding Agency: 10.13039/501100001665-Agence Nationale de la Recherche.
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Browell, Dr Jethro
Authors: de Vilmarest, J., Browell, J., Fasiolo, M., Goude, Y., and Wintenberger, O.
College/School:College of Science and Engineering > School of Mathematics and Statistics > Statistics
Journal Name:IEEE Transactions on Power Systems
Publisher:IEEE
ISSN:0885-8950
ISSN (Online):1558-0679
Published Online:30 August 2023
Copyright Holders:Copyright © 2024, IEEE
First Published:First published in IEEE Transactions on Power Systems 39(2):4154-4163
Publisher Policy:Reproduced in accordance with the publisher copyright policy

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