Forecasting the Ensemble Hydrograph of the Reservoir Inflow based on Post-Processed TIGGE Precipitation Forecasts in a Coupled Atmospheric-Hydrological System

Author:

Tanhapour Mitra1ORCID,Soltani Jaber1ORCID,Malekmohammadi Bahram2ORCID,Hlavcova Kamila3,Kohnova Silvia3ORCID,Petrakova Zora4,Lotfi Saeed5

Affiliation:

1. Department of Water Engineering, College of Aburaihan, University of Tehran, Tehran 3391653755, Iran

2. Graduate Faculty of Environment, University of Tehran, Tehran 1417853111, Iran

3. Department of Land and Water Resources Management, Faculty of Civil Engineering, Slovak University of Technology, 81005 Bratislava, Slovakia

4. Institute for Forensic Engineering, Faculty of Civil Engineering, Slovak University of Technology, 81005 Bratislava, Slovakia

5. Policy Making on Water Allocation, Iran Water Resources Management Company, Tehran 1415855641, Iran

Abstract

The quality of precipitation forecasting is critical for more accurate hydrological forecasts, especially flood forecasting. The use of numerical weather prediction (NWP) models has attracted much attention due to their impact on increasing the flood lead time. It is vital to post-process raw precipitation forecasts because of their significant bias when they feed hydrological models. In this research, ensemble precipitation forecasts (EPFs) of three NWP models (National Centers for Environmental Prediction (NCEP), United Kingdom Meteorological Office (UKMO) (Exeter, UK), and Korea Meteorological Administration (KMA) (SEOUL, REPUBLIC OF KOREA)) were investigated for six historical storms leading to heavy floods in the Dez basin, Iran. To post-process EPFs, the raw output of every single NWP model was corrected using regression models. Then, two proposed models, the Group Method of Data Handling (GMDH) deep learning model and the Weighted Average–Weighted Least Square Regression (WA-WLSR) model, were employed to construct a multi-model ensemble (MME) system. The ensemble reservoir inflow was simulated using the HBV hydrological model under the two modeling approaches involving deterministic forecasts (simulation using observed precipitation data as input) and ensemble forecasts (simulation using post-processed EPFs as input). The results demonstrated that both GMDH and WA-WLSR models had a positive impact on improving the forecast skill of the NWP models, but more accurate results were obtained by the WA-WLSR model. Ensemble forecasts outperformed coupled atmospheric–hydrological modeling in comparison with deterministic forecasts to simulate inflow hydrographs. Our proposed approach lends itself to quantifying uncertainty of ensemble forecasts in hydrometeorological the models, making it possible to have more reliable strategies for extreme-weather event management.

Funder

Slovak Research and Development Agency

VEGA Grant Agency

Publisher

MDPI AG

Subject

Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry

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