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Publicaciones

Effect of Cloudiness on Solar Radiation Forecasting

Autores

Lopez, Gabriel , Sarmiento-Rosales, Sergio M. , Gueymard, Christian A. , Marzo, Aitor , Alonso-Montesinos, Joaquin , Polo, Jesus , Martin-Chivelet, Nuria , FERRADA MARTINEZ, PABLO DANIEL, Barbero, Javier , Batlles, Francisco J. , Vela, Nieves , Cardemil, JM , Guthrie, K , Ruther, R

Publicación externa

No

Medio

Proceedings Of The Ises Solar World Conference 2019 And The Iea Shc Solar Heating And Cooling Conference For Buildings And Industry 2019

Alcance

Proceedings Paper

Naturaleza

Científica

Cuartil JCR

Cuartil SJR

Fecha de publicacion

01/01/2019

ISI

000604438100203

Abstract

Solar radiation forecasting has become a critical information technology to facilitate the integration of PV and thermal solar power plants into the electricity grid of any country. Artificial neural network (ANN) modeling of time series is known as a useful and effective forecasting tool to achieve this task, due to its ability to find nonlinear relationships hidden inside historical data. Unfortunately, fast cloudiness transients add a stochastic signal to the solar radiation time series, thus diminishing the effectiveness of this methodology. In this work, ANNs are trained to provide 1-day-ahead forecasts of global solar radiation under various cloud regimes. Nine years of data measured under diverse climates at eight stations from the U.S. SURFRAD network are used. Training periods of less than two years are found too short and result in larger errors. Using a training period of eight years, the forecast accuracy is found to depend on cloud fraction (and thus location), with RMS errors ranging from 10% up to 45%.

Palabras clave

Forecasting; solar radiation; time series; artificial neural networks; PV performance

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