Publications des scientifiques de l'IRD

Heredia M. B., Junquas Clémentine, Prieur C., Condom Thomas. (2018). New statistical methods for precipitation bias correction applied to WRf model simulations in the Antisana Region, Ecuador. Journal of Hydrometeorology, 19 (12), p. 2021-2040. ISSN 1525-755X.

Titre du document
New statistical methods for precipitation bias correction applied to WRf model simulations in the Antisana Region, Ecuador
Année de publication
2018
Type de document
Article référencé dans le Web of Science WOS:000454494100001
Auteurs
Heredia M. B., Junquas Clémentine, Prieur C., Condom Thomas
Source
Journal of Hydrometeorology, 2018, 19 (12), p. 2021-2040 ISSN 1525-755X
The Ecuadorian Andes are characterized by a complex spatiotemporal variability of precipitation. Global circulation models do not have sufficient horizontal resolution to realistically simulate the complex Andean climate and in situ meteorological data are sparse; thus, a high-resolution gridded precipitation product is needed for hydrological purposes. The region of interest is situated in the center of Ecuador and covers three climatic influences: the Amazon basin, the Andes, and the Pacific coast. Therefore, regional climate models are essential tools to simulate the local climate with high spatiotemporal resolution; this study is based on simulations from the Weather Research and Forecasting (WRF) Model. The WRF Model is able to reproduce a realistic precipitation variability in terms of the diurnal cycle and seasonal cycle compared to observations and satellite products; however, it generated some nonnegligible bias in the region of interest. We propose two new methods for precipitation bias correction of the WRF precipitation simulations based on in situ observations. One method consists of modeling the precipitation bias with a Gaussian process metamodel. The other method is a spatial adaptation of the cumulative distribution function transform approach, called CDF-t, based on Voronoi diagrams. The methods are compared in terms of precipitation occurrence and intensity criteria using a cross-validation leave-one-out framework. In terms of both criteria, the Gaussian process metamodel approach yields better results. However, in the upper parts of the Andes (>2000 m), the spatial CDF-t method seems to better preserve the spatial WRF physical patterns.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Bioclimatologie [072]
Description Géographique
EQUATEUR
Localisation
Fonds IRD [F B010084996]
Identifiant IRD
PAR00018751
Contact