Impact of snow distribution modelling for runoff predictions

Author:

Clemenzi Ilaria1ORCID,Gustafsson David1,Marchand Wolf-Dietrich2,Norell Björn3,Zhang Jie4,Pettersson Rickard4,Allan Pohjola Veijo4

Affiliation:

1. a Swedish Meteorological and Hydrological Institute, Norrkoping, Sweden

2. b Norwegian Water Resources and Energy Directorate (NVE), Trondheim, Norway

3. c Vattenregleringsföretagen, Östersund, Sweden

4. d Department of Earth Sciences, Uppsala University, Uppsala, Sweden

Abstract

AbstractSnow in the mountains is essential for the water cycle in cold regions. The complexity of the snow processes in such an environment makes it challenging for accurate snow and runoff predictions. Various snow modelling approaches have been developed, especially to improve snow predictions. In this study, we compared the ability to improve runoff predictions in the Överuman Catchment, Northern Sweden, using different parametric representations of snow distribution. They included a temperature-based method, a snowfall distribution (SF) function based on wind characteristics and a snow depletion curve (DC). Moreover, we assessed the benefit of using distributed snow observations in addition to runoff in the hydrological model calibration. We found that models with the SF function based on wind characteristics better predicted the snow water equivalent (SWE) close to the peak of accumulation than models without this function. For runoff predictions, models with the SF function and the DC showed good performances (median Nash–Sutcliffe efficiency equal to 0.71). Despite differences among the calibration criteria for the different snow process representations, snow observations in model calibration added values for SWE and runoff predictions.

Funder

Energimyndigheten

Publisher

IWA Publishing

Subject

Water Science and Technology

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