Assessment of a multiresolution snow reanalysis framework: a multidecadal reanalysis case over the upper Yampa River basin, Colorado
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Published:2018-07-02
Issue:7
Volume:22
Page:3575-3587
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ISSN:1607-7938
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Container-title:Hydrology and Earth System Sciences
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language:en
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Short-container-title:Hydrol. Earth Syst. Sci.
Author:
Baldo Elisabeth,Margulis Steven A.
Abstract
Abstract. A multiresolution (MR) approach was successfully implemented in the context
of a data assimilation (DA) framework to efficiently estimate snow water
equivalent (SWE) over a large head water catchment in the Colorado River basin (CRB), while decreasing computational constraints by 60 %. A total of
31 years of fractional snow cover area (fSCA) images derived from Landsat TM,
ETM+, and OLI sensor measurements were assimilated to generate two SWE
reanalysis datasets, a baseline case at a uniform 90 m spatial resolution
and another using the MR approach. A comparison of the two showed negligible
differences in terms of snow accumulation, melt, and timing for the posterior
estimates (in terms of both ensemble median and coefficient of variation).
The MR approach underestimated the baseline peak SWE by less than 2 % and
underestimated day of peak and duration of the accumulation season by a day on average. The
largest differences were, by construct, limited primarily to areas of low
complexity, where shallow snowpacks tend to exist. The MR approach should
allow for more computationally efficient implementations of snow data
assimilation applications over large-scale mountain ranges, with accuracies
similar to those that would be obtained using ∼ 100 m simulations.
Such uniform resolution applications are generally infeasible due to the
computationally expensive nature of ensemble-based DA frameworks.
Funder
National Aeronautics and Space Administration National Science Foundation
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
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