Publications

Mehboob, MS; Kim, Y; Lee, J; Eidhammer, T (2022). Quantifying the sources of uncertainty for hydrological predictions with WRF-Hydro over the snow-covered region in the Upper Indus Basin, Pakistan. JOURNAL OF HYDROLOGY, 614, 128500.

Abstract
Conceptual snowmelt runoff hydrological models involve uncertainties originating from various sources. For example, uncertainties related to the structure of hydrological models, robustness, parameters, calibration ap-proaches, and input and output datasets may lead to considerably uncertain hydrological predictions. Quanti-fying such uncertainties is an essential engineering and scientific endeavor. In this study, the newly developed Weather Research and Forecasting Model Hydrological Glacier (WRF-Hydro/Glacier) modeling framework was applied over the snow-fed Astore catchment in the Upper Indus Basin; the hydrological processes were simulated more effectively, while demonstrating their uncertainties as well as the overall model robustness. Three pre-cipitation datasets were used for calibrating and validating the WRF-Hydro/Glacier. The model parameters with different meteorological forcings were robust for simulating the hydrological processes in Astore. Furthermore, the uncertainty contributed by the optimized parameters and precipitation inputs was segregated to simulate the daily streamflow, snow-cover area (SCA), and evapotranspiration (ET). For streamflow, the optimized parame-ters were the primary source of uncertainty; for SCA and ET, the optimized parameters were a major source of uncertainty in spring and summer, whereas input precipitation was the key uncertainty in fall and winter. Overall, the robustness of the WRF-Hydro/Glacier was demonstrated using multiple optimized parameters from satellite-based precipitation datasets, while also demonstrating the uncertainties in the prediction of hydrological processes in Astore.

DOI:
10.1016/j.jhydrol.2022.128500

ISSN:
1879-2707