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  4. The perils of regridding: examples using a global precipitation dataset
 
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The perils of regridding: examples using a global precipitation dataset

Publikationstyp
Journal Article
Date Issued
2021-11-01
Sprache
English
Author(s)
Rajulapati, Chandra Rupa  
Papalexiou, Simon Michael  
Clark, Martyn P.  
Pomeroy, John W.  
TORE-URI
https://hdl.handle.net/11420/57758
Journal
Journal of applied meteorology and climatology  
Volume
60
Issue
11
Start Page
1561
End Page
1573
Citation
Journal of Applied Meteorology and Climatology 60 (11): 1561-1573 (2021)
Publisher DOI
10.1175/JAMC-D-20-0259.1
Scopus ID
2-s2.0-85131874935
Publisher
AMS
Gridded precipitation datasets are used in many applications such as the analysis of climate variability/ change and hydrological modeling. Regridding precipitation datasets is common for model coupling (e.g., coupling atmospheric and hydrological models) or comparing different models and datasets. However, regridding can considerably alter precipitation statistics. In this global analysis, the effects of regridding a precipitation dataset are emphasized using three regridding methods (first-order conservative, bilinear, and distance-weighted averaging). The differences between the original and regridded dataset are substantial and greatest at high quantiles. Differences of 46 and 0.13 mm are noted in high (0.95) and low (0.05) quantiles, respectively. The impacts of regridding vary spatially for land and oceanic regions; there are substantial differences at high quantiles in tropical land regions, and at low quantiles in polar regions. These impacts are approximately the same for different regridding methods. The differences increase with the size of the grid at higher quantiles and vice versa for low quantiles. As the grid resolution increases, the difference between original and regridded data declines, yet the shift size dominates for high quantiles for which the differences are higher. While regridding is often necessary to use gridded precipitation datasets, it should be used with great caution for fine resolutions (e.g., daily and sub-daily), because it can severely alter the statistical properties of precipitation, specifically at high and low quantiles.
Subjects
Data processing | Interpolation schemes | Precipitation
DDC Class
600: Technology
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