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Photovoltaic forecasting with artificil neural networks

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Figure

Figure 1 - Relation between forecasting horizons, forecasting models and the related activities
Figure 2 - Classification of the forecasting models (Temporal Resolution vs Spatial Resolution)
Figure 6 - Feedfoward neural network with n inputs, a layer of N c  hidden neurons, and N 0
Figure 8 - Fully recurrent artificial neural network. (Krenker et al., 2011)
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