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  4. Assimilation of snow depth data from Sentinel-1 to improve the hydrological model of the Borgne catchment (VS)
 
master thesis

Assimilation of snow depth data from Sentinel-1 to improve the hydrological model of the Borgne catchment (VS)

Hurni, Max
March 11, 2021

Since 2013, Crealp (Centre de Recherche sur l’Environnement Alpin) is operating a realtime flood forecasting system for the upper Rhone river basin. The scarcity of meteorological input data at high elevation leads to model uncertainties. In this project, possible improvements of the sub-model of the Borgne catchment were tested and compared to the operational model and a newly calibrated model using the discharge measurement of the Grande Dixence network. First, a new snowmelt model considering measured solar radiation was tested. Second, the Sentinel-1 derived snow depth product by Lievens et al. (2019) was assimilated in the hydrological model during three winters between 2017 and 2019. The integration of solar radiation showed a promising increase of performance, especially for high elevation catchments. The assimilation of snow data led to contrasting results: some configurations showing a good improvement and some others are less convincing. The differences between modelled and measured water volumes and the validation with MODIS snow cover data led to the conclusion that non-assimilated models underestimate the snowpack, while the assimilated models tend to an overestimation. In the end, some ideas for subsequent steps are given in the outlook.

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Type
master thesis
Author(s)
Hurni, Max
Advisors
De Cesare, Giovanni  
Date Issued

2021-03-11

EPFL units
SIE-S  
PL-LCH  
Section
SIE-S  
Available on Infoscience
July 12, 2022
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/189169
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