Publications des scientifiques de l'IRD

Sivelle V., Massari C., Tramblay Yves, Filippucci P., Dakhlaoui H., Quintana-Seguí P., Clavera-Gispert R., Boutaghane H., Boulmaiz T., Quast R., Vreugdenhill M. (2025). Investigating hydrological modeling uncertainties in the Mediterranean region by combining precipitation and soil moisture products. Journal of Hydrology : Regional Studies, 62, p. 103015 [18 p.].

Titre du document
Investigating hydrological modeling uncertainties in the Mediterranean region by combining precipitation and soil moisture products
Année de publication
2025
Type de document
Article référencé dans le Web of Science WOS:001634936600001
Auteurs
Sivelle V., Massari C., Tramblay Yves, Filippucci P., Dakhlaoui H., Quintana-Seguí P., Clavera-Gispert R., Boutaghane H., Boulmaiz T., Quast R., Vreugdenhill M.
Source
Journal of Hydrology : Regional Studies, 2025, 62, p. 103015 [18 p.]
Study region: The study focus on five catchments in the Mediterranean Region distributed over Spain, France, Italy, Tunisia and Algeria. Study focus: The study runs four lumped parameter hydrological models combining eight precipitation products and four soil moisture products. A Bayesian inference scheme is built to estimate posterior parameter distribution for any combination of hydrological model, precipitation and soil moisture. The simulated streamflows are evaluated using both Nash-Sutcliffe Efficiency criteria and multi-resolution analysis. The results from Bayesian inference combining streamflow and soil moisture is compared to the results when considering only streamflow as a benchmark. New hydrological insights for the region: The results indicates that hydrological model performance through the Nash-Sutcliffe Efficiency criteria is more sensitive to the forcing precipitation product than the model structure. Also, forcing hydrological models with merged precipitation product brings better streamflow predictions than using satellite precipitation products. Regarding soil moisture accounting in hydrological modeling, the results show that including soil moisture in the parameter estimation can improve the predictive performance of hydrological models when the model is forced with satellite precipitation product. Also, soil moisture datasets derived from Sentinel-1 offer better consistency in hydrological modeling of river streamflow simulation.
Plan de classement
Hydrologie [062] ; Télédétection [126]
Description Géographique
ESPAGNE ; ITALIE ; FRANCE ; TUNISIE ; ALGERIE ; ZONE MEDITERRANEENNE
Localisation
Fonds IRD [F B010095901]
Identifiant IRD
fdi:010095901
Contact
  • Coordonnées :
    Mission Science Ouverte (MSO)
    IRD - Délégation régionale Île-de-France & Ouest
    Campus Condorcet - Hôtel à projets
    8 cours des Humanités - 93322 Aubervilliers Cedex
    Horizon Pleins textes
    Aide
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