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Global daily 1 km land surface precipitation based on cloud cover-informed downscaling.

Dirk Nikolaus KargerAdam M WilsonColin R MahonyNiklaus E ZimmermanWalter Jetz
Published in: Scientific data (2021)
High-resolution climatic data are essential to many questions and applications in environmental research and ecology. Here we develop and implement a new semi-mechanistic downscaling approach for daily precipitation estimate that incorporates high resolution (30 arcsec, ≈1 km) satellite-derived cloud frequency. The downscaling algorithm incorporates orographic predictors such as wind fields, valley exposition, and boundary layer height, with a subsequent bias correction. We apply the method to the ERA5 precipitation archive and MODIS monthly cloud cover frequency to develop a daily gridded precipitation time series in 1 km resolution for the years 2003 onward. Comparison of the predictions with existing gridded products and station data from the Global Historical Climate Network indicates an improvement in the spatio-temporal performance of the downscaled data in predicting precipitation. Regional scrutiny of the cloud cover correction from the continental United States further indicates that CHELSA-EarthEnv performs well in comparison to other precipitation products. The CHELSA-EarthEnv daily precipitation product improves the temporal accuracy compared with a large improvement in the spatial accuracy especially in complex terrain.
Keyphrases
  • high resolution
  • physical activity
  • electronic health record
  • climate change
  • big data
  • machine learning
  • deep learning
  • data analysis
  • artificial intelligence
  • high speed