Bias Correction of Global High-Resolution Precipitation Climatologies Using Streamflow Observations from 9372 Catchments
Abstract
We introduce a set of global high-resolution (0.05 degrees) precipitation (P) climatologies corrected for bias using streamflow (Q) observations from 9372 stations worldwide. For each station, we inferred the "true" long-term P using a Budyko curve, which is an empirical equation relating long-term P, Q, and potential evaporation. We subsequently calculated long-term bias correction factors for three state-of-the-art P climatologies [the "WorldClim version 2" database (WorldClim V2); Climatologies at High Resolution for the Earth's Land Surface Areas, version 1.2 (CHELSA V1.2 ); and Climate Hazards Group Precipitation Climatology, version 1 (CHPclim V1)], after which we used random-forest regression to produce global gap-free bias correction maps for the P climatologies. Monthly climatological bias correction factors were calculated by disaggregating the long-term bias correction factors on the basis of gauge catch efficiencies. We found that all three climatologies systematically underestimate P over parts of all major mountain ranges globally, despite the explicit consideration of orography in the production of each climatology. In addition, all climatologies underestimate P at latitudes >60 degrees N, likely because of gauge undercatch. Exceptionally high long-term correction factors (>1.5) were obtained for all three P climatologies in Alaska, High Mountain Asia, and Chile-regions characterized by marked elevation gradients, sparse gauge networks, and significant snowfall. Using the bias-corrected WorldClim V2, we demonstrated that other widely used P datasets (GPCC V2015, GPCP V2.3, and MERRA-2) severely underestimate P over Chile, the Himalayas, and along the Pacific coast of North America. Mean P for the global land surface based on the bias-corrected WorldClim V2 is 862 mm yr(-1) (a 9.4% increase over the original WorldClim V2). The annual and monthly bias-corrected P climatologies have been released as the Precipitation Bias Correction (PBCOR) dataset, which is available online ().
Más información
Título según WOS: | Bias Correction of Global High-Resolution Precipitation Climatologies Using Streamflow Observations from 9372 Catchments |
Título según SCOPUS: | Bias correction of global high-resolution precipitation climatologies using streamflow observations from 9372 catchments |
Título de la Revista: | JOURNAL OF CLIMATE |
Volumen: | 33 |
Número: | 4 |
Editorial: | AMER METEOROLOGICAL SOC |
Fecha de publicación: | 2020 |
Página de inicio: | 1299 |
Página final: | 1315 |
Idioma: | English |
DOI: |
10.1175/JCLI-D-19-0332.1 |
Notas: | ISI, SCOPUS |