Spatio-temporal interpretable neural network for solar irradiation prediction using transformer

Resource type
Journal Article
Authors/contributors
Title
Spatio-temporal interpretable neural network for solar irradiation prediction using transformer
Abstract
Deep learning models have been increasingly applied in the field of solar radiation prediction. However, the characteristics of a deep learning black box model restrict its application in practical scenarios such as model predictive control. Because energy system controllers may be unable to make final decisions based solely on the predictions of a black-box model. This study considers both the temporal and spatial dependencies of solar radiation predictions through unfolding sequences and applying a transformer model As the results indicate, the transformer model used can improve the mean absolute percent error by approximately 20.9% and the mean squared error by 14.3% compared to the baseline recurrent neural network model. At the same time, detailed case studies show that the transformer model heavily considers humidity and temperature when predicting the more significant outcomes Finally, the detailed results of a one-step analysis prove that the change in weight of the transformer model is related to the change in outdoor weather conditions.
Publication
Energy and Buildings
Volume
297
Pages
113461
Date
2023-10-15
Journal Abbr
Energy and Buildings
ISSN
0378-7788
Accessed
12/02/2024, 21:31
Library Catalogue
ScienceDirect
Call Number
openalex:W4386034952
Extra
openalex: W4386034952
Citation
Gao, Y., Miyata, S., Matsunami, Y., & Akashi, Y. (2023). Spatio-temporal interpretable neural network for solar irradiation prediction using transformer. Energy and Buildings, 297, 113461. https://doi.org/10.1016/j.enbuild.2023.113461