DocumentCode :
889723
Title :
High-Resolution 3-D Flood Information From Radar Imagery for Flood Hazard Management
Author :
Schumann, Guy ; Hostache, Renaud ; Puech, Christian ; Hoffmann, Lucien ; Matgen, Patrick ; Pappenberger, Florian ; Pfister, Laurent
Author_Institution :
Public Res. Centre-Gabriel Lippmann, Belvaux
Volume :
45
Issue :
6
fYear :
2007
fDate :
6/1/2007 12:00:00 AM
Firstpage :
1715
Lastpage :
1725
Abstract :
This paper presents a remote-sensing-based steady-state flood inundation model to improve preventive flood-management strategies and flood disaster management. The Regression and Elevation-based Flood Information eXtraction (REFIX) model is based on regression analysis and uses a remotely sensed flood extent and a high-resolution floodplain digital elevation model to compute flood depths for a given flood event. The root mean squared error of the REFIX, compared to ground-surveyed high water marks, is 18 cm for the January 2003 flood event on the River Alzette floodplain (G.D. of Luxembourg), on which the model is developed. Applying the same methodology on a reach of the River Mosel, France, shows that for some more complex river configurations (in this case, a meandering river reach that contains a number of hydraulic structures), piecewise regression is required to yield more accurate flood water-line estimations. A comparison with a simulation from the Hydrologic Engineering Centers River Analysis System hydraulic flood model, calibrated on the same events, shows that, for both events, the REFIX model approximates the water line reliably
Keywords :
floods; geophysical signal processing; hydrological techniques; radar imaging; remote sensing by radar; rivers; AD 2003 01; France; Hydrologic Engineering Centers River Analysis System hydraulic flood model; Luxembourg; River Alzette; River Mosel; flood disaster management; flood hazard management; flood management strategy; flood water-line estimations; radar imagery; regression and elevation-based flood information extraction regression analysis; remote-sensing; steady-state flood inundation model; Data mining; Disaster management; Floods; Hazards; Radar imaging; Radar remote sensing; Regression analysis; Remote sensing; Rivers; Steady-state; 1-D hydraulic model; Flood information mapping; SAR data uncertainty; light detecting and ranging (lidar) digital elevation model (DEM); regression analysis; synthetic aperture radar (SAR);
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2006.888103
Filename :
4215088
Link To Document :
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