Standard

Harvard

APA

Vancouver

Author

BibTeX

@article{f7eba5aa39f640efb18f4bd2b9b1298e,
title = "Comparison of multi-step forecasting methods for renewable energy",
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.",
keywords = "Multi-step forecasting, Energy forecasting, Renewable energy, Neural network, Direct forecasting, Recursive forecasting, LightGBM, Direct forecasting, Energy forecasting, LightGBM, Multi-step forecasting, Neural network, Recursive forecasting, Renewable energy",
author = "E. Dolgintseva and H. Wu and O. Petrosian and A. Zhadan and A. Allakhverdyan and Мартемьянов, {Алексей Алексеевич}",
note = "Dolgintseva, E., Wu, H., Petrosian, O. et al. Comparison of multi-step forecasting methods for renewable energy. Energy Syst (2024). https://doi.org/10.1007/s12667-024-00656-w",
year = "2024",
month = mar,
day = "7",
doi = "10.1007/s12667-024-00656-w",
language = "English",
journal = "Energy Systems",
issn = "1868-3967",
publisher = "Springer Nature",

}

RIS

TY - JOUR

T1 - Comparison of multi-step forecasting methods for renewable energy

AU - Dolgintseva, E.

AU - Wu , H.

AU - Petrosian, O.

AU - Zhadan, A.

AU - Allakhverdyan, A.

AU - Мартемьянов, Алексей Алексеевич

N1 - Dolgintseva, E., Wu, H., Petrosian, O. et al. Comparison of multi-step forecasting methods for renewable energy. Energy Syst (2024). https://doi.org/10.1007/s12667-024-00656-w

PY - 2024/3/7

Y1 - 2024/3/7

N2 - 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.

AB - 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.

KW - Multi-step forecasting

KW - Energy forecasting

KW - Renewable energy

KW - Neural network

KW - Direct forecasting

KW - Recursive forecasting

KW - LightGBM

KW - Direct forecasting

KW - Energy forecasting

KW - LightGBM

KW - Multi-step forecasting

KW - Neural network

KW - Recursive forecasting

KW - Renewable energy

UR - https://www.mendeley.com/catalogue/b47a08c1-ea5a-3210-a18c-b7c4c66b126d/

U2 - 10.1007/s12667-024-00656-w

DO - 10.1007/s12667-024-00656-w

M3 - Article

JO - Energy Systems

JF - Energy Systems

SN - 1868-3967

ER -

ID: 111465097