Publications des scientifiques de l'IRD

Dumedah G., Walker J. P., Merlin Olivier. (2015). Root-zone soil moisture estimation from assimilation of downscaled Soil Moisture and Ocean Salinity data. Advances in Water Resources, 84, p. 14-22. ISSN 0309-1708.

Titre du document
Root-zone soil moisture estimation from assimilation of downscaled Soil Moisture and Ocean Salinity data
Année de publication
2015
Type de document
Article référencé dans le Web of Science WOS:000362305900003
Auteurs
Dumedah G., Walker J. P., Merlin Olivier
Source
Advances in Water Resources, 2015, 84, p. 14-22 ISSN 0309-1708
The crucial role of root-zone soil moisture is widely recognized in land-atmosphere interaction, with direct practical use in hydrology, agriculture and meteorology. But it is difficult to estimate the root-zone soil moisture accurately because of its space-time variability and its nonlinear relationship with surface soil moisture. Typically, direct satellite observations at the surface are extended to estimate the root-zone soil moisture through data assimilation. But the results suffer from low spatial resolution of the satellite observation. While advances have been made recently to downscale the satellite soil moisture from Soil Moisture and Ocean Salinity (SMOS) mission using methods such as the Disaggregation based on Physical And Theoretical scale Change (DisPATCh), the assimilation of such data into high spatial resolution land surface models has not been examined to estimate the root-zone soil moisture. Consequently, this study assimilates the 1-km DisPATCh surface soil moisture into the Joint UK Land Environment Simulator (JULES) to better estimate the root-zone soil moisture. The assimilation is demonstrated using the advanced Evolutionary Data Assimilation (EDA) procedure for the Yanco area in south eastern Australia. When evaluated using in-situ OzNet soil moisture, the open loop was found to be 95% as accurate as the updated output, with the updated estimate improving the DisPATCh data by 14%, all based on the root mean square error (RMSE). Evaluation of the root-zone soil moisture with in-situ OzNet data found the updated output to improve the open loop estimate by 34% for the 0-30 cm soil depth, 59% for the 30-60 cm soil depth, and 63% for the 60-90 cm soil depth, based on RMSE. The increased performance of the updated output over the open loop estimate is associated with (i) consistent estimation accuracy across the three soil depths for the updated output, and (ii) the deterioration of the open loop output for deeper soil depths. Thus, the findings point to a combined positive impact from the DisPATCh data and the EDA procedure, which together provide an improved soil moisture with consistent accuracy both at the surface and at the root-zone. Crown Copyright (C) 2015 Published by Elsevier Ltd. All rights reserved.
Plan de classement
Hydrologie [062] ; Bioclimatologie [072] ; Télédétection [126]
Description Géographique
AUSTRALIE
Localisation
Fonds IRD [F B010065363]
Identifiant IRD
fdi:010065363
Contact