Assimilation of Sentinel-1 Backscatter into a Land Surface Model with River Routing and Its Impact on Streamflow Simulations in Two Belgian Catchments

Accurate streamflow simulations rely on good estimates of the catchment-scale soil moisture distribution. Here, we evaluated the potential of Sentinel-1 backscatter data assimilation (DA) to improve soil moisture and streamflow estimates. Our DA system consisted of the Noah-MP land surface model coupled to the HyMAP river routing model and the water cloud model as a backscatter observation operator. The DA system was set up at 0.018 resolution for two con-trasting catchments in Belgium: (i) the Demer catchment dominated by agriculture and (ii) the Ourthe catchment domi-nated by mixed forests.... Mehr ...

Verfasser: Bechtold, Michel
Modanesi, Sara
Lievens, Hans
Baguis, Pierre
Brangers, Isis
Carrassi, Alberto
Getirana, Augusto
Gruber, Alexander
Heyvaert, Zdenko
Massari, Christian
Scherrer, Samuel
Vannitsem, Stéphane
De Lannoy, Gabrielle
Dokumenttyp: Artikel
Erscheinungsdatum: 2023
Schlagwörter: Streamflow / Hydrology / Soil moisture / Radars/Radar observation / Data assimilation / Land surface model
Sprache: Englisch
Permalink: https://search.fid-benelux.de/Record/base-28876136
Datenquelle: BASE; Originalkatalog
Powered By: BASE
Link(s) : https://hdl.handle.net/11585/958025

Accurate streamflow simulations rely on good estimates of the catchment-scale soil moisture distribution. Here, we evaluated the potential of Sentinel-1 backscatter data assimilation (DA) to improve soil moisture and streamflow estimates. Our DA system consisted of the Noah-MP land surface model coupled to the HyMAP river routing model and the water cloud model as a backscatter observation operator. The DA system was set up at 0.018 resolution for two con-trasting catchments in Belgium: (i) the Demer catchment dominated by agriculture and (ii) the Ourthe catchment domi-nated by mixed forests. We present the results of two experiments with an ensemble Kalman filter updating either soil moisture only or soil moisture and leaf area index (LAI). The DA experiments covered the period from January 2015 through August 2021 and were evaluated with independent rainfall error estimates based on station data, LAI from optical remote sensing, soil moisture retrievals from passive microwave observations, and streamflow measurements. Our results indicate that the assimilation of Sentinel-1 backscatter observations can partly correct errors in surface soil moisture due to rainfall errors and overall improve surface soil moisture estimates. However, updating soil moisture and LAI simulta-neously did not bring any benefit over updating soil moisture only. Our results further indicate that streamflow estimates can be improved through Sentinel-1 DA in a catchment with strong soil moisture-runoff coupling, as observed for the Ourthe catchment, suggesting that there is potential for Sentinel-1 DA even for forested catchments.