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07.03.2024 | Original Paper

Comparison of multi-step forecasting methods for renewable energy

verfasst von: E. Dolgintseva, H. Wu, O. Petrosian, A. Zhadan, A. Allakhverdyan, A. Martemyanov

Erschienen in: Energy Systems

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Abstract

Multi-step forecasting influences systems of energy management a lot, but traditional methods are unable to obtain important feature information because of the complex composition of features, which causes prediction errors. There are numerous types of data to forecast in the energy sector; we present the following datasets for comparison in the paper: electricity demand, PV production, and heating, ventilation, and air conditioning load. For a detailed comparison, we took both classical and modern forecasting methods: Bayesian ridge, Ridge regression, Linear regression, ARD regression, LightGBM, RF, Bi-RNN, Bi-LSTM, Bi-GRU, and XGBoost.

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Metadaten
Titel
Comparison of multi-step forecasting methods for renewable energy
verfasst von
E. Dolgintseva
H. Wu
O. Petrosian
A. Zhadan
A. Allakhverdyan
A. Martemyanov
Publikationsdatum
07.03.2024
Verlag
Springer Berlin Heidelberg
Erschienen in
Energy Systems
Print ISSN: 1868-3967
Elektronische ISSN: 1868-3975
DOI
https://doi.org/10.1007/s12667-024-00656-w