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Paletta et al., 2023 - Google Patents

Advances in solar forecasting: Computer vision with deep learning

Paletta et al., 2023

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Document ID
2679474197376893482
Author
Paletta Q
Terrén-Serrano G
Nie Y
Li B
Bieker J
Zhang W
Dubus L
Dev S
Feng C
Publication year
Publication venue
Advances in Applied Energy

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Snippet

Renewable energy forecasting is crucial for integrating variable energy sources into the grid. It allows power systems to address the intermittency of the energy supply at different spatiotemporal scales. To anticipate the future impact of cloud displacements on the energy …
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