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Machine learning approaches for thermal updraft prediction in wind solar tower systems.

Authors :
Rushdi, Mostafa A.
Yoshida, Shigeo
Watanabe, Koichi
Ohya, Yuji
Source :
Renewable Energy: An International Journal. Nov2021, Vol. 177, p1001-1013. 13p.
Publication Year :
2021

Abstract

Wind solar towers constitute a fairly new scheme for harvesting renewable energy from solar and wind energy sources. In such a tower, solar radiation is collected and hot air is enforced to go fast through the tower, a process called thermal updraft, which fuels a wind turbine to generate power. Using vortex generators at the top of the tower creates a pressure difference, which increases the thermal updraft. In this work, we describe the setup of a wind solar tower system established at Kyushu University in Japan. Then, we demonstrate how data was collected from this system in order to train regression models for thermal updraft prediction. The feature selection process was guided by sensitivity analysis. After that, several machine learning models were investigated and the most suitable model was selected based on quality and time metrics. The linear regression model was particularly examined in detail, and was shown to have a satisfactory high accuracy of thermal updraft prediction graphically and numerically with a coefficient of determination of R 2 = 0.981. We also evaluated a reduced prediction model based on the six most essential features, which could be a reduced model description for the WST. This reduced model showed little performance degradation (R 2 = 0.974), with significant reduction in the needed effort and resources, as well as data collection requirements. [Display omitted] • Wind solar tower: renewable energy technique that combines powers from solar & wind. • Machine learning methods gained research momentum because of their prediction capabilities. • The linear regression model was accurately sufficient in predicting thermal updraft. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09601481
Volume :
177
Database :
Academic Search Index
Journal :
Renewable Energy: An International Journal
Publication Type :
Academic Journal
Accession number :
151779817
Full Text :
https://doi.org/10.1016/j.renene.2021.06.033