Evaluation of SNODAS snow depth and snow water equivalent estimates for the Colorado Rocky Mountains, USA
نویسندگان
چکیده
The National Weather Service’s Snow Data Assimilation (SNODAS) program provides daily, gridded estimates of snow depth, snow water equivalent (SWE), and related snow parameters at a 1-km resolution for the conterminous USA. In this study, SNODAS snow depth and SWE estimates were compared with independent, ground-based snow survey data in the Colorado Rocky Mountains to assess SNODAS accuracy at the 1-km scale. Accuracy also was evaluated at the basin scale by comparing SNODAS model output to snowmelt runoff in 31 headwater basins with US Geological Survey stream gauges. Results from the snow surveys indicated that SNODAS performed well in forested areas, explaining 72% of the variance in snow depths and 77% of the variance in SWE. However, SNODAS showed poor agreement with measurements in alpine areas, explaining 16% of the variance in snow depth and 30% of the variance in SWE. At the basin scale, snowmelt runoff was moderately correlated (R = 0.52) with SNODAS model estimates. A simple method for adjusting SNODAS SWE estimates in alpine areas was developed that uses relations between prevailing wind direction, terrain, and vegetation to account for wind redistribution of snow in alpine terrain. The adjustments substantially improved agreement between measurements and SNODAS estimates, with the R of measured SWE values against SNODAS SWE estimates increasing from 0.42 to 0.63 and the root mean square error decreasing from 12 to 6 cm. Results from this study indicate that SNODAS can provide reliable data for input to moderate-scale to large-scale hydrologic models, which are essential for creating accurate runoff forecasts. Refinement of SNODAS SWE estimates for alpine areas to account for wind redistribution of snow could further improve model performance. Published 2011. This article is a US Government work and is in the public domain in the USA.
منابع مشابه
Independent Evaluation of the SNODAS Snow Depth Product Using Regional Scale Lidar-Derived Measurements
Repeated Light Detection and Ranging (LiDAR) surveys are quickly becoming the de facto method for measuring spatial variability of montane snowpacks at high resolution. This study examines the potential of a 750 km LiDAR-derived dataset of snow depths, collected during the 2007 northern Colorado Cold Lands Processes Experi5 ment (CLPX-2), as a validation source for an operational hydrologic sno...
متن کاملToward an improved NASA AMSR-E SWE product: Validation and refinement
The knowledge of snow storage plays a fundamental role for many reasons. For example, in many regions of the world the majority of total annual precipitation occurs as snowfall and melting snow represents a major source of fresh water. Improved estimates of snow storage will benefit regional-scale hydrological models and general circulation models (GCMs) and will lead to better simulations of l...
متن کاملتهیه نقشه رقومی آب معادل برف با استفاده از پارامترهای ژئومرفومتری و روش شبکه عصبی مصنوعی (مطالعه موردی: حوزه آبخیز سخوید)
Although a small portion of the Earth's surface is covered by the mountains, but it has a large impact on watershed hydrological perspective Because of the water crisis in arid and semi-arid regions of Iran, monitoring of the amount of snow in these areas is very important. Usually, access to the spatial distribution of snow water equivalent is limited to small scale using sampled data. However...
متن کاملEstimating the spatial distribution of snow water equivalent in the world's mountains
Estimating the spatial distribution of snow water equivalent (SWE) in mountainous terrain is currently the most important unsolved problem in snow hydrology. Several methods can estimate the amount of snow throughout a mountain range: (1) Spatial interpolation from surface sensors constrained by remotely sensed snow extent provides a consistent answer, with uncertainty related to extrapolation ...
متن کاملGPS snow sensing: results from the EarthScope Plate Boundary Observatory
Accurate measurements of snowpack are needed both by scientists to model climate and by water supply managers to predict/mitigate drought and flood conditions. Existing in situ snow sensors/networks lack the necessary spatial and temporal sensitivity. Satellite measurements currently assess snow cover rather than snow depth. Existing GPS networks are a potential source of new snow data for clim...
متن کامل