Abstract
Abstract. Subgrid variability introduces non-negligible scale effects on the grid-based representation of snow. This heterogeneity is even more evident in semiarid regions, where the high variability of the climate produces various accumulation melting cycles throughout the year and a large spatial heterogeneity of the snow cover. This variability in a watershed can often be represented by snow accumulation–depletion curves (ADCs). In this study, terrestrial photography (TP) of a cell-sized area (30 × 30 m) was used to define local snow ADCs at a Mediterranean site. Snow-cover fraction (SCF) and snow-depth (h) values obtained with this technique constituted the two datasets used to define ADCs. A flexible sigmoid function was selected to parameterize snow behaviour on this subgrid scale. It was then fitted to meet five different snow patterns in the control area: one for the accumulation phase and four for the melting phase in a cycle within the snow season. Each pattern was successfully associated with the snow conditions and previous evolution. The resulting ADCs were associated to certain physical features of the snow, which were used to incorporate them in the point snow model formulated by Herrero et al. (2009) by means of a decision tree. The final performance of this model was tested against field observations recorded over four hydrological years (2009–2013). The calibration and validation of this ADC snow model was found to have a high level of accuracy, with global RMSE values of 105.8 mm for the average snow depth and 0.21 m2 m−2 for the snow-cover fraction in the control area. The use of ADCs on the cell scale proposed in this research provided a sound basis for the extension of point snow models to larger areas by means of a gridded distributed calculation.
Highlights
Subgrid variability plays a crucial role in grid-based distributed hydrological modelling
The use of terrestrial photography permitted a continuous monitoring of the snow distribution that can be adapted to both the spatial and temporal small-scale effects of the physical processes governing the accumulation–melting cycles
terrestrial photography (TP) economically monitored the evolution of Snow-cover fraction (SCF) and h over a 30 × 30 m control area in order to study the subgrid variability of the snow, which cannot be captured by other more conventional remote sensors
Summary
Subgrid variability plays a crucial role in grid-based distributed hydrological modelling. The scale issue introduced when a point model is applied to a gridded area conditions the accuracy of the processes represented (Blöschl, 1999). This is especially important in physical modelling because of the non-linearity usually found in natural systems, which does not allow the assumption of homogeneity within each grid cell. This is the case of snow models based on energy and water balance (Anderson, 1976; Herrero et al, 2009; Tarboton and Luce, 1996; Wigmosta et al, 1994).
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