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The Selection of Machine Learning Model and Its Hyperparameters Using Bayesian Optimization for Short-Term Wind Power Forecasting: book chapter. / Snegirev, Denis; Samoylenko, Vladislav; Pazderin, Andrew и др.
Proceedings of the 2023 Belarusian-Ural-Siberian Smart Energy Conference, BUSSEC 2023: book. Institute of Electrical and Electronics Engineers Inc., 2023. стр. 18-23.

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Harvard

Snegirev, D, Samoylenko, V, Pazderin, A & Bartolomey, P 2023, The Selection of Machine Learning Model and Its Hyperparameters Using Bayesian Optimization for Short-Term Wind Power Forecasting: book chapter. в Proceedings of the 2023 Belarusian-Ural-Siberian Smart Energy Conference, BUSSEC 2023: book. Institute of Electrical and Electronics Engineers Inc., стр. 18-23, Международная конференция "Belarusian-Ural-Siberian Smart Energy Conference (BUSSEC) 2023", Екатеринбург, Российская Федерация, 25/09/2023. https://doi.org/10.1109/BUSSEC59406.2023.10296274

APA

Snegirev, D., Samoylenko, V., Pazderin, A., & Bartolomey, P. (2023). The Selection of Machine Learning Model and Its Hyperparameters Using Bayesian Optimization for Short-Term Wind Power Forecasting: book chapter. в Proceedings of the 2023 Belarusian-Ural-Siberian Smart Energy Conference, BUSSEC 2023: book (стр. 18-23). Institute of Electrical and Electronics Engineers Inc.. https://doi.org/10.1109/BUSSEC59406.2023.10296274

Vancouver

Snegirev D, Samoylenko V, Pazderin A, Bartolomey P. The Selection of Machine Learning Model and Its Hyperparameters Using Bayesian Optimization for Short-Term Wind Power Forecasting: book chapter. в Proceedings of the 2023 Belarusian-Ural-Siberian Smart Energy Conference, BUSSEC 2023: book. Institute of Electrical and Electronics Engineers Inc. 2023. стр. 18-23 doi: 10.1109/BUSSEC59406.2023.10296274

Author

Snegirev, Denis ; Samoylenko, Vladislav ; Pazderin, Andrew и др. / The Selection of Machine Learning Model and Its Hyperparameters Using Bayesian Optimization for Short-Term Wind Power Forecasting : book chapter. Proceedings of the 2023 Belarusian-Ural-Siberian Smart Energy Conference, BUSSEC 2023: book. Institute of Electrical and Electronics Engineers Inc., 2023. стр. 18-23

BibTeX

@inproceedings{539274b91e454b2aaa112afc2353cf2c,
title = "The Selection of Machine Learning Model and Its Hyperparameters Using Bayesian Optimization for Short-Term Wind Power Forecasting: book chapter",
abstract = "Modern energy systems are often characterized by a significant share of the renewable energy sources installed capacity. Wind power is one of the most widespread renewable energy sources. Wind power forecasting is known to be a very effective measure for the wind farms integration into the power systems in terms of the short-term and ultra-short-term power end energy balances planning. This paper presents a technique for short-term wind power plants generation forecasting using a Bayesian optimization for model and its hyperparameters selection. The proposed approach provides for prior indirect selection of the most effective machine learning model that is expected to provide the best performance. The range of considered machine learning models includes regression tree, support vector machine, feed forward neural network, gaussian process regression and ensemble methods - random forest and gradient boosting over decision trees. The proposed approach provides a significant advance in prediction efficiency compared to manual selection of model and its hyperparameters halving normalized mean absolute error of a prediction. {\textcopyright} 2023 IEEE.",
author = "Denis Snegirev and Vladislav Samoylenko and Andrew Pazderin and Petr Bartolomey",
year = "2023",
doi = "10.1109/BUSSEC59406.2023.10296274",
language = "English",
isbn = "979-835035807-0",
pages = "18--23",
booktitle = "Proceedings of the 2023 Belarusian-Ural-Siberian Smart Energy Conference, BUSSEC 2023",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
address = "United States",
note = "2023 Belarusian-Ural-Siberian Smart Energy Conference (BUSSEC) ; Conference date: 25-09-2023 Through 29-09-2023",

}

RIS

TY - GEN

T1 - The Selection of Machine Learning Model and Its Hyperparameters Using Bayesian Optimization for Short-Term Wind Power Forecasting

T2 - 2023 Belarusian-Ural-Siberian Smart Energy Conference (BUSSEC)

AU - Snegirev, Denis

AU - Samoylenko, Vladislav

AU - Pazderin, Andrew

AU - Bartolomey, Petr

PY - 2023

Y1 - 2023

N2 - Modern energy systems are often characterized by a significant share of the renewable energy sources installed capacity. Wind power is one of the most widespread renewable energy sources. Wind power forecasting is known to be a very effective measure for the wind farms integration into the power systems in terms of the short-term and ultra-short-term power end energy balances planning. This paper presents a technique for short-term wind power plants generation forecasting using a Bayesian optimization for model and its hyperparameters selection. The proposed approach provides for prior indirect selection of the most effective machine learning model that is expected to provide the best performance. The range of considered machine learning models includes regression tree, support vector machine, feed forward neural network, gaussian process regression and ensemble methods - random forest and gradient boosting over decision trees. The proposed approach provides a significant advance in prediction efficiency compared to manual selection of model and its hyperparameters halving normalized mean absolute error of a prediction. © 2023 IEEE.

AB - Modern energy systems are often characterized by a significant share of the renewable energy sources installed capacity. Wind power is one of the most widespread renewable energy sources. Wind power forecasting is known to be a very effective measure for the wind farms integration into the power systems in terms of the short-term and ultra-short-term power end energy balances planning. This paper presents a technique for short-term wind power plants generation forecasting using a Bayesian optimization for model and its hyperparameters selection. The proposed approach provides for prior indirect selection of the most effective machine learning model that is expected to provide the best performance. The range of considered machine learning models includes regression tree, support vector machine, feed forward neural network, gaussian process regression and ensemble methods - random forest and gradient boosting over decision trees. The proposed approach provides a significant advance in prediction efficiency compared to manual selection of model and its hyperparameters halving normalized mean absolute error of a prediction. © 2023 IEEE.

UR - http://www.scopus.com/inward/record.url?partnerID=8YFLogxK&scp=85178016807

U2 - 10.1109/BUSSEC59406.2023.10296274

DO - 10.1109/BUSSEC59406.2023.10296274

M3 - Conference contribution

SN - 979-835035807-0

SP - 18

EP - 23

BT - Proceedings of the 2023 Belarusian-Ural-Siberian Smart Energy Conference, BUSSEC 2023

PB - Institute of Electrical and Electronics Engineers Inc.

Y2 - 25 September 2023 through 29 September 2023

ER -

ID: 49264097