3.8 Article

Evaluating uncertain flood inundation predictions with uncertain remotely sensed water stages

期刊

出版社

TAYLOR & FRANCIS LTD
DOI: 10.1080/15715124.2008.9635347

关键词

Remote sensing-derived water stages; non error-free data; flood inundation model; extended GLUE philosophy; model uncertainty

资金

  1. 'Ministere de la Culture, de l'Enseignement Superieur et de la Recherche' of Luxembourg
  2. National Research Fund (FNR) of the G.D. of Luxembourg
  3. STEREO II research programme for Earth Observation of the Belgian Federal Science Policy Office (BELSPO)
  4. Flood Risk Management Research Consortium, FRMRC
  5. Engineering and Physical Sciences Research Council [GR/S76304]
  6. Natural Environment Research Council
  7. DEFRA/EA Joint Research Programme on Flood and Coastal Defence, UKWIR
  8. Scottish Executive
  9. Rivers Agency (N.I.)
  10. PREVIEW project
  11. European Commission

向作者/读者索取更多资源

On January 2 2003 the Advanced Synthetic Aperture Radar (ASAR) instrument onboard ENVISAT captured a high magnitude flood event on a reach of the Alzette River (G. D. of Luxembourg) at the time of flood peak. This opportunity enables hydraulic analyses with spatially distributed information. This study investigates the utility of uncertain (i.e. non error-free) remotely sensed water stages to evaluate uncertain flood inundation predictions. A procedure to obtain distributed water stage data consists of an overlay operation of satellite radar-extracted flood boundaries with a LiDAR DEM followed by integration of flood detection uncertainties using minimum and maximum water stage values at each modelled river cross section. Applying the concept of the extended GLUE methodology, behavioural models are required to fall within the uncertainty range of remotely sensed water stages. It is shown that in order to constrain model parameter uncertainty and at the same time increase parameter identifiability as much as possible, models need to satisfy the behavioural criterion at all locations. However, a clear difference between the parameter identifiability and the final model uncertainty estimation exists due to 'secondary' effects such as channel conveyance. From this, it can be argued that it is necessary not only to evaluate models at a high number of locations using observational error ranges but also to examine where the model would require additional degrees of freedom to generate low model uncertainty at every location. Remote sensing offers this possibility, as it provides highly distributed evaluation data, which are however not error-free, and therefore an approach like the extended GLUE should be adopted in model evaluation.

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