Publication: Solar irradiation forecastby deep learning architectures
Date
2022
Authors
Omer Dagistanli
Hasan Erbay
Hasim Yurttakal
Hakan Kor
Journal Title
Journal ISSN
Volume Title
Publisher
National Library of Serbia
Abstract
<jats:p>Global solar irradiation data is a crucial component to measure solar energy
potential when we plan, size, and design solar photovoltaic fields. Often,
due to the absence of measuring equipment at meteorological stations, data
for the place of interest are not available. However, solar irradiation can
be estimated by ordinary meteorological data such as humidity, and air
temperature. Herein we propose two different deep learning methods, one
based on a deep neural network regression and the other based on
multivariate long short term memory unit networks, to estimate solar
irradiation at given locations. Validation criteria include mean absolute
error, mean squared error, and coefficient of determination (R2 value).
According to the simulation results, multivariate long short term memory
unit networks performs slightly better than deep neural network. Even
though both have very close R2 values, multivariate long short term memory?s
R2 values are more consistent. The same is true for mean squared error and
mean absolute error.</jats:p>