Bias-corrected high-resolution precipitation datasets assessment over a tropical mountainous region in Colombia: A case of study in Upper Cauca River Basin
Surface gauge measurements have been commonly employed to analyze the precipitation's high spatial and temporal variability. However, incomplete area coverage and deficiencies over most tropical and complex topography mean significant limitations of this measurement type. Satellite-derived data...
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Veröffentlicht in: | Journal of South American earth sciences 2024-07, Vol.140, p.104898, Article 104898 |
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Sprache: | eng |
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Zusammenfassung: | Surface gauge measurements have been commonly employed to analyze the precipitation's high spatial and temporal variability. However, incomplete area coverage and deficiencies over most tropical and complex topography mean significant limitations of this measurement type. Satellite-derived datasets, combined with the integration of in-situ observations with satellite data, are an alternative to address these limitations by offering a more spatially homogeneous and temporally comprehensive coverage for scarce data areas of the globe. Nevertheless, applying a bias correction technique on the precipitation datasets is still necessary before they are used for research due to their considerable bias. Here, we analyze the performance of CHIRPS, WorldClim, and TerraClimate datasets compared to data from 30 rain gauge stations over the South-West of Colombia, specifically in the Upper Cauca River Basin-UCRB between 1981 and 2018. Additionally, we applied the Quantile Mapping correction to all gridded precipitation products, and subsequently, the corrected rainfall is compared to the observed data on the monthly, seasonal, and annual scale. Our results show that the CHIRPS dataset better captures the seasonal and monthly variability. CHIRPS presents the best performance during less rainy seasons and at low elevation zones (900–2000 m above sea level-m.a.s.l.), followed by TerraClimate. Utilizing the bias correction methodology, we generated a new, corrected, and more reliable monthly precipitation time series for each location from all gridded precipitation products. Additionally, we found that the correction of the CHIRPS dataset presented the best performance across all spatiotemporal scales in the UCRB. Therefore, this study provides an accurate precipitation database for a complex topographic tropical region with limited data availability.
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•CHIRPS, WorldClim, and TerraClimate are contrasted with data from 30 rain gauges (1981–2018) in Southwest Colombia.•For CHIRPS, the best results are observed at the monthly and seasonal scales compared to other time scales.•The correction of the CHIRPS dataset presented the best performance across all spatiotemporal scales in the UCRB.•All gridded precipitation products perform worse at elevations > 2000 m.a.s.l. in mountainous regions..•Accurate and corrected precipitation datasets were produced after a Quantile Mapping Method application. |
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ISSN: | 0895-9811 1873-0647 |
DOI: | 10.1016/j.jsames.2024.104898 |