Authors
Wesley A Souza, Augusto MS Alonso, Luiz GR Bernardino, Marcelo F Castoldi, Claudionor F Nascimento, Fernando P Marafão
Publication date
2023/12/2
Book
Energy Informatics Academy Conference
Pages
63-82
Publisher
Springer Nature Switzerland
Description
Solar irradiation is the backbone of photovoltaic power technologies and its quantization allows to optimize energy generation. However, solar irradiation can be difficult to detect, mostly due to the design and disposition of sensors, as well as their high cost. To address this limitation, this paper proposes a deep neural network-based model to estimate global solar irradiation by only relying on weather data, focusing on applications targeting the Brazilian territory. The model uses a deep neural network trained with data from the Brazilian National Institute of Meteorology (INMET), which includes 606 nationwide weather stations and over 39 million hourly records of meteorological variables cataloged from years 2010 to 2022. Thus, in this paper i) a deep neural network is used to estimate irradiation, and ii) a long short-term memory is used to predict solar irradiation considering different time granularities: 5 min, 30 …
Scholar articles
WA Souza, AMS Alonso, LGR Bernardino, MF Castoldi… - Energy Informatics Academy Conference, 2023