Omnivision forecasting: combining satellite observations with sky images for improved intra-hour solar energy predictions
Integration of intermittent renewable energy sources into electric grids in large proportions is challenging. A well-established approach aimed at addressing this difficulty involves the anticipation of the upcoming energy supply variability to adapt the response of the grid. In solar energy, short-...
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Zusammenfassung: | Integration of intermittent renewable energy sources into electric grids in
large proportions is challenging. A well-established approach aimed at
addressing this difficulty involves the anticipation of the upcoming energy
supply variability to adapt the response of the grid. In solar energy,
short-term changes in electricity production caused by occluding clouds can be
predicted at different time scales from all-sky cameras (up to 30-min ahead)
and satellite observations (up to 6h ahead). In this study, we integrate these
two complementary points of view on the cloud cover in a single machine
learning framework to improve intra-hour (up to 60-min ahead) irradiance
forecasting. Both deterministic and probabilistic predictions are evaluated in
different weather conditions (clear-sky, cloudy, overcast) and with different
input configurations (sky images, satellite observations and/or past irradiance
values). Our results show that the hybrid model benefits predictions in
clear-sky conditions and improves longer-term forecasting. This study lays the
groundwork for future novel approaches of combining sky images and satellite
observations in a single learning framework to advance solar nowcasting. |
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DOI: | 10.48550/arxiv.2206.03207 |