Publications des scientifiques de l'IRD

Panthou G., Vischel T., Lebel Thierry, Blanchet J., Quantin G., Ali A. (2015). Estimation de cartes d'aléa pluviométrique en Afrique de l'Ouest : comparaison de différentes approches. Houille Blanche : Revue Internationale de l'Eau, (6), p. 42-48. ISSN 0018-6368.

Titre du document
Estimation de cartes d'aléa pluviométrique en Afrique de l'Ouest : comparaison de différentes approches
Année de publication
2015
Type de document
Article référencé dans le Web of Science WOS:000370644200006
Auteurs
Panthou G., Vischel T., Lebel Thierry, Blanchet J., Quantin G., Ali A.
Source
Houille Blanche : Revue Internationale de l'Eau, 2015, (6), p. 42-48 ISSN 0018-6368
In a world of increasing exposure of populations to natural hazards, the mapping of extreme rainfall remains a key subject of study. Such maps are required for both flood risk management and civil engineering structure design, the challenge being to take into account the local information provided by point rainfall series as well as the necessity of some regional coherency. Two approaches based on the extreme value theory are compared here, with an application to extreme rainfall mapping in West Africa. The first approach is a local fit and interpolation (LFI) consisting of a spatial interpolation of the generalized extreme value (GEV) distribution parameters estimated independently at each station. The second approach is a spatial maximum likelihood estimation (SMLE); it directly estimates the GEV distribution over the entire region by a single maximum likelihood fit using jointly all measurements combined with spatial covariates. Five LFI and three SMLE methods are considered, using the information provided by 126 daily rainfall series covering the period 1950-1990. The methods are first evaluated in calibration. Then the predictive skills and the robustness are assessed through a cross-validation and an independent network validation process. The SMLE approach, especially when using the mean annual rainfall as covariate, appears to perform better for most of the scores computed. Using the Niamey 104 year time series, it is also shown that the SMLE approach has the capacity to deal more efficiently with the effect of local outliers by using the spatial information provided by nearby stations.
Plan de classement
Hydrologie [062]
Description Géographique
AFRIQUE DE L'OUEST
Localisation
Fonds IRD
Identifiant IRD
PAR00014294
Contact