DEVELOPMENT OF AN ARTIFICIAL NEURAL NETWORK FOR FORECASTING ELECTRICITY IMBALANCES IN THE IPS OF UKRAINE
Article_10 PDF (Українська)

Keywords

short-term forecasting
electricity imbalances
neural networks

How to Cite

Сичова, В. . “DEVELOPMENT OF AN ARTIFICIAL NEURAL NETWORK FOR FORECASTING ELECTRICITY IMBALANCES IN THE IPS OF UKRAINE”. Proceedings of the Institute of Electrodynamics of the National Academy of Sciences of Ukraine, no. 66, Dec. 2023, p. 058, doi:10.15407/publishing2023.66.058.

Abstract

The article presents the results of the study of an artificial neural network model of the LSTM type for short-term forecasting of the values of positive and negative imbalances of electric energy in the IPS of Ukraine. The analysis of forecasting results obtained with the help of hyperparameter optimization models and different window lengths and combining them into an ensemble of models was performed. Conducted research based on actual data of the balancing market of electric energy of Ukraine showed the effectiveness of using the specified models to solve the given problem. Ref. 10, fig. 3, tab. 3.

https://doi.org/10.15407/publishing2023.66.058
Article_10 PDF (Українська)

References

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Copyright (c) 2023 V. Sychova

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