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| title: README | |
| emoji: π | |
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| SolarBench is an initiative focused on reducing barriers for researchers and practitioners to access large environmental datasets for advancing solar energy forecasting and related fields. | |
| This repo contains multiple data modalities and is structured as follow: | |
| - `ground_full`: Ground-based sensor data include **sky images**, a variety of **meteorological measurements**, and labels for solar forecasting tasks, namely different **solar irradiance** components (i.e., GHI, DHI, and DNI) or **power generation** from solar panels. | |
| - `ground_no_skycam`: A lite version of `ground_full` by excluding sky images. Useful for fast analysis and training non-vision models or performing ablation studies. | |
| - `satellite`: **Geostationary satellite imagery** including GOES, Himawari, MSG. | |
| - `weather_forecasts`: **Numerical weather predictions** (e.g., GFS). | |
| - `climate_reanalysis`: Retrospective **climate reanalysis** datasets (e.g., ERA5). | |
| These data can be easily accessed and made into use through the machine learning toolbox we developed. For more details, check it out here: |