Improving gridded snow water equivalent products in British Columbia, Canada: multi-source data fusion by neural network models
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Published:2018-03-12
Issue:3
Volume:12
Page:891-905
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ISSN:1994-0424
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Container-title:The Cryosphere
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language:en
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Short-container-title:The Cryosphere
Author:
Snauffer Andrew M.ORCID, Hsieh William W., Cannon Alex J.ORCID, Schnorbus Markus A.
Abstract
Abstract. Estimates of surface snow water equivalent (SWE) in mixed alpine environments
with seasonal melts are particularly difficult in areas of high vegetation
density, topographic relief, and snow accumulations. These three confounding
factors dominate much of the province of British Columbia (BC), Canada. An
artificial neural network (ANN) was created using as predictors six gridded
SWE products previously evaluated for BC. Relevant spatiotemporal covariates
were also included as predictors, and observations from manual snow surveys
at stations located throughout BC were used as target data. Mean absolute
errors (MAEs) and interannual correlations for April surveys were found using
cross-validation. The ANN using the three best-performing SWE products (ANN3)
had the lowest mean station MAE across the province. ANN3 outperformed each
product as well as product means and multiple linear regression (MLR) models
in all of BC's five physiographic regions except for the BC Plains.
Subsequent comparisons with predictions generated by the Variable
Infiltration Capacity (VIC) hydrologic model found ANN3 to better estimate
SWE over the VIC domain and within most regions. The superior performance of
ANN3 over the individual products, product means, MLR, and VIC was found to
be statistically significant across the province.
Funder
Natural Sciences and Engineering Research Council of Canada
Publisher
Copernicus GmbH
Subject
Earth-Surface Processes,Water Science and Technology
Reference54 articles.
1. Anderton, S., White, S., and Alvera, B.: Evaluation of spatial variability in
snow water equivalent for a high mountain catchment, Hydrol. Process.,
18, 435–453, 2004. a 2. Aschbacher, J.: Land surface studies and atmospheric effects by satellite
microwave radiometry, PhD thesis, University of Innsbruck, Innsbruck,
Austria, 1989. a, b 3. Balsamo, G., Albergel, C., Beljaars, A., Boussetta, S., Brun, E., Cloke, H.,
Dee, D., Dutra, E., Muñoz-Sabater, J., Pappenberger, F., de Rosnay, P.,
Stockdale, T., and Vitart, F.: ERA-Interim/Land: a global land surface
reanalysis data set, Hydrol. Earth Syst. Sci., 19, 389–407,
https://doi.org/10.5194/hess-19-389-2015, 2015. a 4. Binaghi, E., Pedoia, V., Guidali, A., and Guglielmin, M.: Snow cover
thickness estimation using radial basis function networks, The Cryosphere, 7,
841–854, https://doi.org/10.5194/tc-7-841-2013, 2013. a 5. Bishop, C. M.: Neural Networks for Pattern Recognition, Oxford University
Press, 1995. a
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