4.5 Article

Hydrological modelling of largest braided river of India using MIKE Hydro River software with rainfall runoff, hydrodynamic and snowmelt modules

期刊

JOURNAL OF WATER AND CLIMATE CHANGE
卷 14, 期 4, 页码 1314-1338

出版社

IWA PUBLISHING
DOI: 10.2166/wcc.2023.484

关键词

Brahmaputra River; hydrodynamic; hydrological model; MIKE Hydro River; rainfall-runoff; RS/GIS; snowmelt

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This study analyzed and calibrated a mathematical model using TRMM/GFS rainfall, PET, and snowmelt data to simulate the discharge of the Brahmaputra River. The model performed well and can be used for flood forecasting, water resource management, and planning.
The Brahmaputra River is one of the world's largest river systems, India's largest braided river, and its springtime runoff and downstream streamflow are mostly due to snowmelt processes. This study analysed and used TRMM/GFS rainfall, PET, and snowmelt data as inputs to a RR model, which is based on the MIKE Hydro River NAM software package. The mathematical model was calibrated against the available observed discharge data for the sub-catchments. The model performed reasonably well and simulated discharge in good agreement with observed discharge in terms of timing, rate, volume, and shape of the hydrograph. During the calibration procedure, the optimum values of the nine RR-NAM parameters are obtained. The performance of each model has been checked against measured discharge using a coefficient of determination (R-2). It is observed that the value of R-2 varies from 0.6 to 0.86. This is deemed acceptable for the purposes of this study. In addition to R-2, the overall Water Balance error is also checked. The WBL error is less than 6%. Despite the inherent uncertainties in hydrological modelling, it is determined that the calibrated RR-NAM model can be utilized for the Brahmaputra basin's Flood Forecasting and Early Warning System design, as well as water resource management and planning.

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