Comparison of Three Radar-Based Precipitation Nowcasts for the Extreme July 2021 Flooding Event in Germany

Author:

Saadi Mohamed123ORCID,Furusho-Percot Carina124,Belleflamme Alexandre12,Trömel Silke56,Kollet Stefan12,Reinoso-Rondinel Ricardo578

Affiliation:

1. a Institute of Bio- and Geosciences (IBG-3, Agrosphere), Forschungszentrum Jülich, Jülich, Germany

2. b Centre for High-Performance Scientific Computing in Terrestrial Systems, Geoverbund ABC/J, Jülich, Germany

3. c Institut de Mécanique des Fluides de Toulouse, Université de Toulouse, CNRS-INPT-UPS, Toulouse, France

4. d U.S. 1116 AGROCLIM, INRAE Centre de Recherche PACA, Avignon, France

5. e Institute for Geosciences, Department of Meteorology, Universität Bonn, Bonn, Germany

6. f Laboratory for Clouds and Precipitation Exploration, Geoverbund ABC/J, Bonn, Germany

7. g Faculty of Engineering Science, Department of Civil Engineering, Katholieke Universiteit Leuven, Leuven, Belgium

8. h Department of Meteorological Observations and Research, Royal Meteorological Institute of Belgium, Brussels, Belgium

Abstract

Abstract Quantitative precipitation nowcasts (QPN) can improve the accuracy of flood forecasts, especially for lead times up to 12 h, but their evaluation depends on a variety of factors, namely, the choice of the hydrological model and the benchmark. We tested three precipitation nowcasting techniques based on radar observations for the disastrous mid-July 2021 event in seven German catchments (140–1670 km2). Two deterministic [advection-based and spectral prognosis (S-PROG)] and one probabilistic [Short-Term Ensemble Prediction System (STEPS)] QPN with a maximum lead time of 3 h were used as input to two hydrological models: a physically based, 3D-distributed model (ParFlowCLM) and a conceptual, lumped model (GR4H). We quantified the hydrological added value of QPN compared with hydrological persistence and zero-precipitation nowcasts as benchmarks. For the 14 July 2021 event, we obtained the following key results. 1) According to the quality of the forecasted hydrographs, exploiting QPN improved the lead times by up to 4 h (8 h) compared with adopting zero-precipitation nowcasts (hydrological persistence) as a benchmark. Using a skill-based approach, obtained improvements were up to 7–12 h depending on the benchmark. 2) The three QPN techniques obtained similar performances regardless of the applied hydrological model. 3) Using zero-precipitation nowcasts instead of hydrological persistence as benchmark reduced the added value of QPN. These results highlight the need for combining a skill-based approach with an analysis of the quality of forecasted hydrographs to rigorously estimate the added value of QPN.

Funder

Deutsche Forschungsgemeinschaft

Publisher

American Meteorological Society

Subject

Atmospheric Science

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