Water Practice and Technology (Nov 2023)

Development of flood forecasting and warning system using hybrid approach of ensemble and hydrological model for Dharoi Dam

  • Anant Patel,
  • S. M. Yadav

DOI
https://doi.org/10.2166/wpt.2023.178
Journal volume & issue
Vol. 18, no. 11
pp. 2862 – 2883

Abstract

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The most frequent natural disaster is flooding. Advanced forecasting systems are lacking in developing countries. The majority of urban areas are located close to flood plains for rivers. Accurate flood forecasting is necessary for reservoir planning and flood management. The Sabarmati River's atmospheric-hydrologic ensemble flood forecasting model has been developed using TIGGE data. Precipitation can be reliably predicted by TIGGE's global ensemble numerical weather prediction (NWP) systems. By using NWP data, flood forecasting systems may be extended from hours to days. Ensemble weather forecasts are produced using the European Centre for Medium-Range Weather Forecasts and National Centers for Environmental Prediction together with 5-day lead times from TIGGE. The flood occurrences from 2015, 2017, and 2020 were used for the calibration and validation of the ensemble flood forecasting model. Bias was corrected using Bayesian model averaging (BMA), heterogeneous extended linear regression, censored non-homogeneous linear regression (cNLR), and other statistical downscaling techniques. Forecasted and downscaled precipitation data were checked using the Brier score and rank likelihood score. For cNLR, Brier's score performed admirably. The specificity vs. sensitivity performance of the cNLR and BMA approaches is 91.87 and 91.82%, respectively, according to receiver operating characteristic and area under the curve diagrams. Models with the hybrid hydrologic coupling approach accurately predict floods. Users may predict peak time and peak discharge hazard likelihood with reliability using peak time and flood warning probability distributions. HIGHLIGHTS Novel ensemble approach was proposed to predict reservoir inflow using the complex and dynamic rainfall–runoff model.; Spatial, hydrological, and meteorological data were used as input for the semi-distributed hydrological model.; Post-processing of ensemble data and combining the runoff results of the semi-distributed models to boost the overall efficiency.; Improved flood forecasting and warning based on ensemble model.;

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