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  4. Surface solar radiation: AI satellite retrieval can outperform Heliosat and generalizes to other climate zones
 

Surface solar radiation: AI satellite retrieval can outperform Heliosat and generalizes to other climate zones

URI
https://arbor.bfh.ch/handle/arbor/45462
Version
Published
Identifiers
10.1080/01431161.2025.2471596
Date Issued
2025-03-11
Author(s)
Schuurman, K. R.
Meyer, Angela  
Type
Article
Language
English
Subjects

Solar radiation

surface solar irradia...

satellite retrieval

deep learning

emulation

Heliosat

Meteosat

Abstract
Accurate estimates of surface solar irradiance (SSI) are essential for solar resource assessments and solar energy forecasts in grid integration and building control applications. SSI estimates for spatially extended regions can be retrieved from geostationary satellites such as Meteosat. Traditional SSI satellite retrievals like Heliosat rely on physical radiative transfer modelling. We introduce a machine-learning-based satellite retrieval for instantaneous SSI and demonstrate its capability to provide accurate and generalizable SSI estimates across Europe. Our deep learning retrieval provides near real-time SSI estimates based on data-driven emulation of Heliosat and fine-tuning on pyranometer networks. By including SSI from ground stations, our SSI retrieval model can outperform Heliosat accuracy and generalize well to regions with other climates and surface albedos in cloudy conditions (clear-sky index < 0.8). Our results indicate that the generalizability of a data-driven SSI retrieval model is not only related to the model training data or training method, but also depends on the amount of cloudiness present in the location at which SSI is retrieved with the data-driven model. We found that, in cloudy conditions, a model trained only on ground stations can estimate SSI accurately even in locations with different surface albedos, far away from the training test domain. We also show that the SSI retrieved from Heliosat exhibits large biases in mountain regions, and that training and fine-tuning our retrieval models on SSI data from ground stations strongly reduces these biases, outperforming Heliosat. Furthermore, we quantify the relative importance of the Meteosat channels and other predictor variables like solar zenith angle for the accuracy of our deep learning SSI retrieval model in different cloud conditions. We find that in cloudy conditions multiple near-infrared and infrared channels enhance the performance. Our results can facilitate the development of more accurate satellite retrieval models of surface solar irradiance.
DOI
https://doi.org/10.24451/dspace/12042
Publisher DOI
10.1080/01431161.2025.2471596
Journal or Serie
International Journal of Remote Sensing
ISSN
0143-1161
Publisher URL
https://www.tandfonline.com/doi/full/10.1080/01431161.2025.2471596
Organization
Technik und Informatik  
TI Lehre  
Volume
46
Issue
8
Publisher
Taylor & Francis
Submitter
Meyer, Angela
Citation apa
Schuurman, K. R., & Meyer, A. (2025). Surface solar radiation: AI satellite retrieval can outperform Heliosat and generalizes to other climate zones. In International Journal of Remote Sensing (Vol. 46, Issue 8). Taylor & Francis. https://doi.org/10.24451/dspace/12042
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Surface solar radiation AI satellite retrieval can outperform Heliosat and generalizes to other climate zones.pdf

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