Publications des scientifiques de l'IRD

Lievens H., De Lannoy G. J. M., Al Bitar A., Drusch M., Dumedah G., Franssen H. J. H., Kerr Y., Tomer S. K., Martens B., Merlin Olivier, Pan M., Roundy J. K., Vereecken H., Walker J. P., Wood E. F., Verhoest N. E. C., Pauwels V. R. N. (2016). Assimilation of SMOS soil moisture and brightness temperature products into a land surface model. Remote Sensing of Environment, 180 (No Spécial), p. 292-304. ISSN 0034-4257.

Titre du document
Assimilation of SMOS soil moisture and brightness temperature products into a land surface model
Année de publication
2016
Type de document
Article référencé dans le Web of Science WOS:000376801000023
Auteurs
Lievens H., De Lannoy G. J. M., Al Bitar A., Drusch M., Dumedah G., Franssen H. J. H., Kerr Y., Tomer S. K., Martens B., Merlin Olivier, Pan M., Roundy J. K., Vereecken H., Walker J. P., Wood E. F., Verhoest N. E. C., Pauwels V. R. N.
Source
Remote Sensing of Environment, 2016, 180 (No Spécial), p. 292-304 ISSN 0034-4257
The Soil Moisture and Ocean Salinity (SMOS) mission has the potential to improve the predictive skill of land surface models through the assimilation of its observations. Several alternate products can be distinguished: the observed brightness temperature (TB) data at coarse scale, indirect estimates of soil moisture (SM) through the inversion of the coarse-scale TB observations, and fine-scale soil moisture through the a priori downscaling of coarse-scale soil moisture. The SMOS TB products include observations over a large range of incidence angles at both H- and V-polarizations, which allows the merit of assimilating the full set of multi-angular/polarization observations, as opposed to specific sub-sets of observations, to be assessed. This study investigates the performance of various observation scenarios with respect to soil moisture and streamflow predictions in the Murray Darling Basin. The observations are assimilated into the Variable Infiltration Capacity (VIC) model, coupled to the Community Microwave Emission Modeling (CMEM) platform, using the Ensemble Kalman filter. The assimilation of these various observation products is assessed under similar realistic assimilation settings, without optimization, and validated by comparison of the modeled soil moisture and streamflow to in situ measurements across the basin. The best results are achieved from assimilation of the coarse-scale SM observations. The reduced improvement using downscaled SM is probably due to a lower number of observations, as a result of cloud cover effects on the downscaling method. The assimilation of TB was found to be a promising alternative, which led to improvements in soil moisture prediction approaching those of the coarse-scale SM assimilation.
Plan de classement
Hydrologie [062] ; Etudes, transformation, conservation du milieu naturel [082] ; Télédétection [126]
Description Géographique
AUSTRALIE
Localisation
Fonds IRD [F B010066939]
Identifiant IRD
fdi:010066939
Contact