Building a multimodel flood prediction system with the TIGGE archive

Zsótér, Ervin and Pappenberger, Florian and Smith, Paul and Emerton, Rebecca Elizabeth and Dutra, Emanuel and Wetterhall, Fredrik and Richardson, David and Bogner, Konrad and Balsamo, Gianpaolo (2016) Building a multimodel flood prediction system with the TIGGE archive. Journal of Hydrometeorology, 17 (11). pp. 2923-2940. ISSN 1525-755X

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Abstract

In the last decade operational probabilistic ensemble flood forecasts have become common in supporting decision-making processes leading to risk reduction. Ensemble forecasts can assess uncertainty, but they are limited to the uncertainty in a specific modeling system. Many of the current operational flood prediction systems use a multimodel approach to better represent the uncertainty arising from insufficient model structure. This study presents a multimodel approach to building a global flood prediction system using multiple atmospheric reanalysis datasets for river initial conditions and multiple TIGGE forcing inputs to the ECMWF land surface model. A sensitivity study is carried out to clarify the effect of using archive ensemble meteorological predictions and uncoupled land surface models. The probabilistic discharge forecasts derived from the different atmospheric models are compared with those from the multimodel combination. The potential for further improving forecast skill by bias correction and Bayesian model averaging is examined. The results show that the impact of the different TIGGE input variables in the HTESSEL/Catchment-Based Macroscale Floodplain model (CaMa-Flood) setup is rather limited other than for precipitation. This provides a sufficient basis for evaluation of the multimodel discharge predictions. The results also highlight that the three applied reanalysis datasets have different error characteristics that allow for large potential gains with a multimodel combination. It is shown that large improvements to the forecast performance for all models can be achieved through appropriate statistical postprocessing (bias and spread correction). A simple multimodel combination generally improves the forecasts, while a more advanced combination using Bayesian model averaging provides further benefits.

Item Type:
Journal Article
Journal or Publication Title:
Journal of Hydrometeorology
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/1900/1902
Subjects:
?? performanceriversrunoffstatistical techniquesatmospheric science ??
ID Code:
203279
Deposited By:
Deposited On:
15 Sep 2023 15:45
Refereed?:
Yes
Published?:
Published
Last Modified:
16 Jul 2024 00:08