Articles | Volume 17, issue 19
https://doi.org/10.5194/gmd-17-7245-2024
https://doi.org/10.5194/gmd-17-7245-2024
Model description paper
 | 
09 Oct 2024
Model description paper |  | 09 Oct 2024

RASCAL v1.0: an open-source tool for climatological time series reconstruction and extension

Álvaro González-Cervera and Luis Durán

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Cited articles

Abatzoglou, J. T. and Brown, T. J.: A comparison of statistical downscaling methods suited for wildfire applications, Int. J. Climatol., 32, 772–780, 2012. a
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Begert, M., Schlegel, T., and Kirchhofer, W.: Homogeneous temperature and precipitation series of Switzerland from 1864 to 2000, Int. J. Climatol., 25, 65–80, 2005. a
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Short summary
RASCAL is an open-source Python tool designed for reconstructing daily climate observations, especially in regions with complex local phenomena. It merges large-scale weather patterns with local weather using the analog method. Evaluations in central Spain show that RASCAL outperforms ERA20C reanalysis in reconstructing precipitation and temperature. RASCAL offers opportunities for broad scientific applications, from short-term forecasts to local-scale climate change scenarios.