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http://hdl.handle.net/10553/76420
Título: | Performance Improvement of Artificial Neural Network Model in Short-term Forecasting of Wind Farm Power Output | Autores/as: | Velázquez Medina, Sergio Leandro Portero Ajenjo, Ulises |
Clasificación UNESCO: | 250616 Teledetección (Geología) | Palabras clave: | Artificial Neural Networks (ANN) Model Performance Wind Power Forecasting Wind Power Output |
Fecha de publicación: | 2020 | Publicación seriada: | Journal Of Modern Power Systems And Clean Energy | Resumen: | Due to the low dispatchability of wind power, the massive integration of this energy source in power systems requires short-term and very short-term wind power output forecasting models to be as efficient and stable as possible. A study is conducted in the present paper of potential improvements to the performance of artificial neural network (ANN) models in terms of efficiency and stability. Generally, current ANN models have been developed by considering exclusively the meteorological information of the wind farm reference station, in addition to selecting a fixed number of time periods prior to the forecasting. In this respect, new ANN models are proposed in this paper, which are developed by: varying the number of prior 1-h periods (periods prior to the forecasting hour) chosen for the input layer parameters; and/or incorporating in the input layer data from a second weather station in addition to the wind farm reference station. It has been found that the model performance is always improved when data from a second weather station are incorporated. The mean absolute relative error (MARE) of the new models is reduced by up to 7.5%. Furthermore, the longer the forecasting horizon, the greater the degree of improvement. | URI: | http://hdl.handle.net/10553/76420 | ISSN: | 2196-5625 | DOI: | 10.35833/MPCE.2018.000792 | Fuente: | Journal of Modern Power Systems and Clean Energy [ISSN 2196-5625], v. 8 (3), p. 484-490, (Mayo 2020) |
Colección: | Artículos |
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