Title of article :
Prediction of global solar irradiance based on time series analysis:
Application to solar thermal power plants energy production planning
Author/Authors :
Luis Mart?´n b، نويسنده , , *، نويسنده , , Luis F. Zarzalejo، نويسنده , ,
Jesu´ s Polo a، نويسنده , , Ana Navarro، نويسنده , , Ruth Marchante b، نويسنده , ,
Marco Cony b، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2010
Abstract :
Due to strong increase of solar power generation, the predictions of incoming solar energy are acquiring more importance. Photovoltaic
and solar thermal are the main sources of electricity generation from solar energy. In the case of solar thermal energy plants with
storage energy system, its management and operation need reliable predictions of solar irradiance with the same temporal resolution as
the temporal capacity of the back-up system. These plants can work like a conventional power plant and compete in the energy stock
market avoiding intermittence in electricity production.
This work presents a comparisons of statistical models based on time series applied to predict half daily values of global solar irradiance
with a temporal horizon of 3 days. Half daily values consist of accumulated hourly global solar irradiance from solar raise to solar
noon and from noon until dawn for each day. The dataset of ground solar radiation used belongs to stations of Spanish National
Weather Service (AEMet). The models tested are autoregressive, neural networks and fuzzy logic models. Due to the fact that half daily
solar irradiance time series is non-stationary, it has been necessary to transform it to two new stationary variables (clearness index and
lost component) which are used as input of the predictive models. Improvement in terms of RMSD of the models essayed is compared
against the model based on persistence. The validation process shows that all models essayed improve persistence. The best approach to
forecast half daily values of solar irradiance is neural network models with lost component as input, except Lerida station where models
based on clearness index have less uncertainty because this magnitude has a linear behaviour and it is easier to simulate by models.
2010 Elsevier Ltd. All rights reserved.
Keywords :
Solar thermal energy , Solar radiation forecasting , Solar radiation , Clearness index , Energy meteorology , Lost component
Journal title :
Solar Energy
Journal title :
Solar Energy