Retrieval of Land Surface Model State Variables through Assimilating Screen Level Humidity and Temperature Measurements

© 2016 Diandong Ren and Ming Xue. This study demonstrates successful variational retrieval of land surface states by assimilating screen level atmospheric measurements of specific humidity and air temperature. To this end, the land surface scheme is first validated against the Oklahoma Atmospheric S...

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Main Authors: Ren, Diandong, Xue, M.
Format: Journal Article
Published: 2016
Online Access:http://hdl.handle.net/20.500.11937/9170
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author Ren, Diandong
Xue, M.
author_facet Ren, Diandong
Xue, M.
author_sort Ren, Diandong
building Curtin Institutional Repository
collection Online Access
description © 2016 Diandong Ren and Ming Xue. This study demonstrates successful variational retrieval of land surface states by assimilating screen level atmospheric measurements of specific humidity and air temperature. To this end, the land surface scheme is first validated against the Oklahoma Atmospheric Surface Layer Instrumentation System measurements with necessary refinements to the forward model implemented. The retrieval scheme involves a 1D land surface-Atmosphere model, the corresponding adjoint codes, and a cost function that measures residuals between observed and modeled screen level atmospheric temperature and specific humidity. The retrieval scheme is robust when subjected to observational errors with magnitudes comparable to instrument accuracy and for initial guess errors larger than typical model forecast errors. Using varying assimilation window lengths centered on different periods of a day, the sampling strategy is assessed. The daytime observations are more informative compared to nocturnal observations. An assimilation window as narrow as four hours, if centered on local noon, contains comparable information to an expanded window covering the whole day. There exists an optimal assimilation window length resulting from the contest between degrading forecast accuracy and increasing information content. For an assimilation window less than two days, the "optimal" assimilation window length is inversely proportional to the data ingesting frequency.
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spelling curtin-20.500.11937-91702017-09-13T14:49:27Z Retrieval of Land Surface Model State Variables through Assimilating Screen Level Humidity and Temperature Measurements Ren, Diandong Xue, M. © 2016 Diandong Ren and Ming Xue. This study demonstrates successful variational retrieval of land surface states by assimilating screen level atmospheric measurements of specific humidity and air temperature. To this end, the land surface scheme is first validated against the Oklahoma Atmospheric Surface Layer Instrumentation System measurements with necessary refinements to the forward model implemented. The retrieval scheme involves a 1D land surface-Atmosphere model, the corresponding adjoint codes, and a cost function that measures residuals between observed and modeled screen level atmospheric temperature and specific humidity. The retrieval scheme is robust when subjected to observational errors with magnitudes comparable to instrument accuracy and for initial guess errors larger than typical model forecast errors. Using varying assimilation window lengths centered on different periods of a day, the sampling strategy is assessed. The daytime observations are more informative compared to nocturnal observations. An assimilation window as narrow as four hours, if centered on local noon, contains comparable information to an expanded window covering the whole day. There exists an optimal assimilation window length resulting from the contest between degrading forecast accuracy and increasing information content. For an assimilation window less than two days, the "optimal" assimilation window length is inversely proportional to the data ingesting frequency. 2016 Journal Article http://hdl.handle.net/20.500.11937/9170 10.1155/2016/1905076 unknown
spellingShingle Ren, Diandong
Xue, M.
Retrieval of Land Surface Model State Variables through Assimilating Screen Level Humidity and Temperature Measurements
title Retrieval of Land Surface Model State Variables through Assimilating Screen Level Humidity and Temperature Measurements
title_full Retrieval of Land Surface Model State Variables through Assimilating Screen Level Humidity and Temperature Measurements
title_fullStr Retrieval of Land Surface Model State Variables through Assimilating Screen Level Humidity and Temperature Measurements
title_full_unstemmed Retrieval of Land Surface Model State Variables through Assimilating Screen Level Humidity and Temperature Measurements
title_short Retrieval of Land Surface Model State Variables through Assimilating Screen Level Humidity and Temperature Measurements
title_sort retrieval of land surface model state variables through assimilating screen level humidity and temperature measurements
url http://hdl.handle.net/20.500.11937/9170