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Estimating the root-zone soil moisture from the combined use of time series of surface soil moisture and SVAT modelling

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HAL Id: hal-02697688

https://hal.inrae.fr/hal-02697688

Submitted on 1 Jun 2020

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Estimating the root-zone soil moisture from the

combined use of time series of surface soil moisture and SVAT modelling

Jean-Pierre Wigneron, J.C. Calvet, Albert Olioso, Andre Chanzy, Patrick Bertuzzi

To cite this version:

Jean-Pierre Wigneron, J.C. Calvet, Albert Olioso, Andre Chanzy, Patrick Bertuzzi. Estimating the root-zone soil moisture from the combined use of time series of surface soil moisture and SVAT mod- elling. Physics and Chemistry of the Earth, Elsevier, 1999, 24 (7), pp.837-843. �hal-02697688�

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