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Article Dans Une Revue Remote Sensing Année : 2019

SMOS Neural Network Soil Moisture Data Assimilation in a Land Surface Model and Atmospheric Impact

Résumé

The assimilation of Soil Moisture and Ocean Salinity (SMOS) data into the ECMWF (European Centre for Medium Range Weather Forecasts) H-TESSEL (Hydrology revised-Tiled ECMWF Scheme for Surface Exchanges over Land) model is presented. SMOS soil moisture (SM) estimates have been produced specifically by training a neural network with SMOS brightness temperatures as input and H-TESSEL model SM simulations as reference. This can help the assimilation of SMOS information in several ways: (1) the neural network soil moisture (NNSM) data have a similar climatology to the model, (2) no global bias is present with respect to the model even if local biases can remain. Experiments performing joint data assimilation (DA) of NNSM, 2 m air temperature and relative humidity or NNSM-only DA are discussed. The resulting SM was evaluated against a large number of in situ measurements of SM obtaining similar results to those of the model with no assimilation, even if significant differences were found from site to site. In addition, atmospheric forecasts initialized with H-TESSEL runs (without DA) or with the analysed SM were compared to measure of the impact of the satellite information. Although NNSM DA has an overall neutral impact in the forecast in the Tropics, a significant positive impact was found in other areas and periods, especially in regions with limited in situ information. The joint NNSM, T 2m and RH 2m DA improves the forecast for all the seasons in the Southern Hemisphere. The impact is mostly due to T 2m and RH 2m but SMOS NN DA alone also improves the forecast in July-September. In the Northern Hemisphere, the joint NNSM, T 2m and RH 2m DA improves the forecast in April-September, while NNSM alone has a significant positive effect in July-September. Furthermore, forecasting skill maps show that SMOS NNSM improves the forecast in North America and in Northern Asia for up to 72 h lead time.
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Dates et versions

hal-02355077 , version 1 (08-11-2019)

Identifiants

Citer

Nemesio Rodriguez‐fernandez, Patricia de Rosnay, Clément Albergel, Philippe Richaume, Filipe Aires, et al.. SMOS Neural Network Soil Moisture Data Assimilation in a Land Surface Model and Atmospheric Impact. Remote Sensing, 2019, 11 (11), pp.1334. ⟨10.3390/rs11111334⟩. ⟨hal-02355077⟩
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