Inicio  /  Forecasting  /  Vol: 4 Par: 1 (2022)  /  Artículo
ARTÍCULO
TITULO

Irradiance Nowcasting by Means of Deep-Learning Analysis of Infrared Images

Alessandro Niccolai    
Seyedamir Orooji    
Andrea Matteri    
Emanuele Ogliari and Sonia Leva    

Resumen

This work proposes and evaluates a method for the nowcasting of solar irradiance variability in multiple time horizons, namely 5, 10, and 15 min ahead. The method is based on a Convolutional Neural Network structure that exploits infrared sky images acquired through an All-Sky Imager to estimate the range of possible values that the Clear-Sky Index will possibly assume over a selected forecast horizon. All data available, from the infrared images to the measurements of Global Horizontal Irradiance (necessary in order to compute Clear-Sky Index), are acquired at SolarTechLAB in Politecnico di Milano. The proposed method demonstrated a discrete performance level, with an accuracy peak for the 5 min time horizon, where about 65% of the available samples are attributed to the correct range of Clear-Sky Index values.