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Deep Neural Network Configuration Sensitivity Analysis in Wind Power Forecasting (CROSBI ID 315105)

Prilog u časopisu | izvorni znanstveni rad | domaća recenzija

Đaković, Josip ; Franc, Bojan ; Kuzle, Igor ; Liu, Yongqian Deep Neural Network Configuration Sensitivity Analysis in Wind Power Forecasting // Energija : časopis Hrvatske elektroprivrede, 70 (2022), 3; 19-24. doi: 10.37798/202170389

Podaci o odgovornosti

Đaković, Josip ; Franc, Bojan ; Kuzle, Igor ; Liu, Yongqian

engleski

Deep Neural Network Configuration Sensitivity Analysis in Wind Power Forecasting

The trend toward increasing integration of wind farms into the power system is a challenge for transmission and distribution system operators and electricity market operators. The variability of electricity generation from wind farms increases the requirements for the flexibility needed for the reliable and stable operation of the power system. Operating a power system with a high share of renewables requires advanced generation and consumption forecasting methods to ensure the reliable and economical operation of the system. Installed wind power capacities require advanced techniques to monitor and control such data-rich power systems. The rapid development of advanced artificial neural networks and data processing capabilities offers numerous potential applications. The effectiveness of advanced deep recurrent neural networks with long-term memory is constantly being demonstrated for learning complex temporal sequence-to-sequence dependencies. This paper presents the application of deep learning methods to wind power production forecasting. The models are trained using historical wind farm generation measurements and NWP weather forecasts for the areas of Croatian wind farms. Furthermore, a comparison of the accuracy of the proposed models with currently used forecasting tools is presented

Wind power forecasting, deep learning, recurrent neural networks, LSTM, big data analytics, wind farms

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Podaci o izdanju

70 (3)

2022.

19-24

objavljeno

0013-7448

1849-0751

10.37798/202170389

Povezanost rada

Elektrotehnika, Računarstvo

Poveznice