Role of forcing uncertainty and background model error characterization in snow data assimilation

Accurate specification of the model error covariances in data assimilation systems is a challenging issue. Ensemble land data assimilation methods rely on stochastic perturbations of input forcing and model prognostic fields for developing representations of input model error covariances. This ar...

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Main Authors: S. V. Kumar, J. Dong, C. D. Peters-Lidard, D. Mocko, B. Gómez
Format: Article
Language:English
Published: Copernicus Publications 2017-06-01
Series:Hydrology and Earth System Sciences
Online Access:http://www.hydrol-earth-syst-sci.net/21/2637/2017/hess-21-2637-2017.pdf
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spelling doaj-a5207dc3cbd24060a070e61f6d2687ce2020-11-24T22:24:23ZengCopernicus PublicationsHydrology and Earth System Sciences1027-56061607-79382017-06-01212637264710.5194/hess-21-2637-2017Role of forcing uncertainty and background model error characterization in snow data assimilationS. V. Kumar0J. Dong1C. D. Peters-Lidard2D. Mocko3D. Mocko4B. Gómez5Hydrological Sciences Laboratory, NASA Goddard Space Flight Center, Greenbelt, MD, USA I.M. Systems Group Inc., Environmental Modeling Center, NOAA NCEP, College Park, MD, USAHydrosphere, Biosphere and Geophysics, Earth Science Division, NASA Goddard Space Flight Center, Greenbelt, MD, USAScience Applications International Corporation, McLean, VA, USAHydrological Sciences Laboratory, NASA Goddard Space Flight Center, Greenbelt, MD, USA Research to Operations, Met Office, Exeter, UKAccurate specification of the model error covariances in data assimilation systems is a challenging issue. Ensemble land data assimilation methods rely on stochastic perturbations of input forcing and model prognostic fields for developing representations of input model error covariances. This article examines the limitations of using a single forcing dataset for specifying forcing uncertainty inputs for assimilating snow depth retrievals. Using an idealized data assimilation experiment, the article demonstrates that the use of hybrid forcing input strategies (either through the use of an ensemble of forcing products or through the added use of the forcing climatology) provide a better characterization of the background model error, which leads to improved data assimilation results, especially during the snow accumulation and melt-time periods. The use of hybrid forcing ensembles is then employed for assimilating snow depth retrievals from the AMSR2 instrument over two domains in the continental USA with different snow evolution characteristics. Over a region near the Great Lakes, where the snow evolution tends to be ephemeral, the use of hybrid forcing ensembles provides significant improvements relative to the use of a single forcing dataset. Over the Colorado headwaters characterized by large snow accumulation, the impact of using the forcing ensemble is less prominent and is largely limited to the snow transition time periods. The results of the article demonstrate that improving the background model error through the use of a forcing ensemble enables the assimilation system to better incorporate the observational information.http://www.hydrol-earth-syst-sci.net/21/2637/2017/hess-21-2637-2017.pdf
collection DOAJ
language English
format Article
sources DOAJ
author S. V. Kumar
J. Dong
C. D. Peters-Lidard
D. Mocko
D. Mocko
B. Gómez
spellingShingle S. V. Kumar
J. Dong
C. D. Peters-Lidard
D. Mocko
D. Mocko
B. Gómez
Role of forcing uncertainty and background model error characterization in snow data assimilation
Hydrology and Earth System Sciences
author_facet S. V. Kumar
J. Dong
C. D. Peters-Lidard
D. Mocko
D. Mocko
B. Gómez
author_sort S. V. Kumar
title Role of forcing uncertainty and background model error characterization in snow data assimilation
title_short Role of forcing uncertainty and background model error characterization in snow data assimilation
title_full Role of forcing uncertainty and background model error characterization in snow data assimilation
title_fullStr Role of forcing uncertainty and background model error characterization in snow data assimilation
title_full_unstemmed Role of forcing uncertainty and background model error characterization in snow data assimilation
title_sort role of forcing uncertainty and background model error characterization in snow data assimilation
publisher Copernicus Publications
series Hydrology and Earth System Sciences
issn 1027-5606
1607-7938
publishDate 2017-06-01
description Accurate specification of the model error covariances in data assimilation systems is a challenging issue. Ensemble land data assimilation methods rely on stochastic perturbations of input forcing and model prognostic fields for developing representations of input model error covariances. This article examines the limitations of using a single forcing dataset for specifying forcing uncertainty inputs for assimilating snow depth retrievals. Using an idealized data assimilation experiment, the article demonstrates that the use of hybrid forcing input strategies (either through the use of an ensemble of forcing products or through the added use of the forcing climatology) provide a better characterization of the background model error, which leads to improved data assimilation results, especially during the snow accumulation and melt-time periods. The use of hybrid forcing ensembles is then employed for assimilating snow depth retrievals from the AMSR2 instrument over two domains in the continental USA with different snow evolution characteristics. Over a region near the Great Lakes, where the snow evolution tends to be ephemeral, the use of hybrid forcing ensembles provides significant improvements relative to the use of a single forcing dataset. Over the Colorado headwaters characterized by large snow accumulation, the impact of using the forcing ensemble is less prominent and is largely limited to the snow transition time periods. The results of the article demonstrate that improving the background model error through the use of a forcing ensemble enables the assimilation system to better incorporate the observational information.
url http://www.hydrol-earth-syst-sci.net/21/2637/2017/hess-21-2637-2017.pdf
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