A dynamic river network method for the prediction of floods using a parsimonious rainfall-runoff model

Author:

Tsegaw Aynalem Tassachew1,Skaugen Thomas2,Alfredsen Knut1,Muthanna Tone M.1

Affiliation:

1. Civil and Environmental Engineering, Norwegian University of Science and Technology, SP Andersen Vei 5, Trondheim 7491, Norway

2. Hydrology Department, Norwegian Water Resources and Energy Directorate (NVE), PO Box 5091, Oslo 0301, Norway

Abstract

Abstract Floods are one of the major climate-related hazards and cause casualties and substantial damage. Accurate and timely flood forecasting and design flood estimation are important to protect lives and property. The Distance Distribution Dynamic (DDD) is a parsimonious rainfall-runoff model which is being used for flood forecasting at the Norwegian flood forecasting service. The model, like many other models, underestimates floods in many cases. To improve the flood peak prediction, we propose a dynamic river network method into the model. The method is applied for 15 catchments in Norway and tested on 91 flood peaks. The performance of DDD in terms of KGE and BIAS is identical with and without dynamic river network, but the relative error (RE) and mean absolute relative error (MARE) of the simulated flood peaks are improved significantly with the method. The 0.75 and 0.25 quantiles of the RE are reduced from 41% to 23% and from 22% to 1%, respectively. The MARE is reduced from 32.9% to 15.7%. The study results also show that the critical support area is smaller in steep and bare mountain catchments than flat and forested catchments.

Funder

Research Council of Norway

Publisher

IWA Publishing

Subject

Water Science and Technology

Reference81 articles.

1. Rethinking hyporheic flow and transient storage to advance understanding of stream-catchment connections;Water Resources Research,2011

2. Flood frequency estimation by continuous simulation for a catchment treated as ungauged (with uncertainty);Water Resources Research,2002

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