Litcius/Paper detail

Hydrologic Regionalization under Data Scarcity: Implications for Streamflow Prediction

Jeeban Panthi, Rocky Talchabhadel, Ganesh R. Ghimire, Sanjib Sharma, Piyush Dahal, Rupesh Baniya, Thomas B. Boving, Soni M. Pradhanang, Binod Parajuli

2021Journal of Hydrologic Engineering17 citationsDOIOpen Access PDF

Abstract

Continuous streamflow prediction is crucial in many applications of water resources planning and management. However, streamflow prediction is challenging, particularly in data-scarce regions. This paper demonstrates an approach to regionalize the flow duration curve for predicting daily streamflow in the data-scare region of the central Himalayas. We developed a regression-based model to estimate streamflow at various segments of a flow duration curve by incorporating basin characteristics and climate variables. This study analyzes the sensitivities of proximity and characteristics between the donor (gauged) and receptor (ungauged) basins for time-series streamflow prediction. Our results show that regionalization techniques perform better in low to medium flows over high flows. Our findings are significant in the central Himalayan regional context to inform operational and management decisions in water sector projects like hydropower plants, which generally rely on low-to-medium streamflow information. Although the quantitative results are region-specific, the approach and insights are generalizable to the Himalayan region.

Topics & Concepts

StreamflowHydropowerContext (archaeology)Water resourcesEnvironmental scienceStructural basinHydrology (agriculture)Drainage basinClimate changeGeographyGeologyEcologyOceanographyBiologyCartographyArchaeologyGeotechnical engineeringPaleontologyHydrology and Watershed Management StudiesFlood Risk Assessment and ManagementHydrological Forecasting Using AI