Adaptive Localization for Satellite Radiance Observations in an Ensemble Kalman Filter

Abstract Localization is essential to effectively assimilate satellite radiances in ensemble Kalman filters. However, the vertical location and separation from a model grid point variable for a radiance observation are not well defined, which results in complexities when localizing the impact of rad...

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Main Authors: Lili Lei, Jeffrey S. Whitaker, Jeffrey L. Anderson, Zhemin Tan
Format: Article
Language:English
Published: American Geophysical Union (AGU) 2020-08-01
Series:Journal of Advances in Modeling Earth Systems
Subjects:
Online Access:https://doi.org/10.1029/2019MS001693
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spelling doaj-f9972f6990d14417a8571945b741d1872020-11-25T03:41:47ZengAmerican Geophysical Union (AGU)Journal of Advances in Modeling Earth Systems1942-24662020-08-01128n/an/a10.1029/2019MS001693Adaptive Localization for Satellite Radiance Observations in an Ensemble Kalman FilterLili Lei0Jeffrey S. Whitaker1Jeffrey L. Anderson2Zhemin Tan3Key Laboratory of Mesoscale Severe Weather, Ministry of Education Nanjing University Nanjing ChinaNOAA/Earth System Research Laboratory/Physical Sciences Division Boulder CO USANational Center for Atmospheric Research Boulder CO USAKey Laboratory of Mesoscale Severe Weather, Ministry of Education Nanjing University Nanjing ChinaAbstract Localization is essential to effectively assimilate satellite radiances in ensemble Kalman filters. However, the vertical location and separation from a model grid point variable for a radiance observation are not well defined, which results in complexities when localizing the impact of radiance observations. An adaptive method is proposed to estimate an effective vertical localization independently for each assimilated channel of every satellite platform. It uses sample correlations between ensemble priors of observations and state variables from a cycling data assimilation to estimate the localization function that minimizes the sampling error. The estimated localization functions are approximated by three localization parameters: the localization width, maximum value, and vertical location of the radiance observations. Adaptively estimated localization parameters are used in assimilation experiments with the National Centers for Environmental Prediction (NCEP) Global Forecast System (GFS) model and the National Oceanic and Atmospheric Administration (NOAA) operational ensemble Kalman filter (EnKF). Results show that using the adaptive localization width and vertical location for radiance observations is more beneficial than also including the maximum localization value. The experiment using the adaptively estimated localization width and vertical location performs better than the default Gaspari and Cohn (GC) experiment, and produces similar errors to the optimal GC experiment. The adaptive localization parameters can be computed during the assimilation procedure, so the computational cost needed to tune the optimal GC localization width is saved.https://doi.org/10.1029/2019MS001693radiance observationensemble Kalman filteradaptive localization
collection DOAJ
language English
format Article
sources DOAJ
author Lili Lei
Jeffrey S. Whitaker
Jeffrey L. Anderson
Zhemin Tan
spellingShingle Lili Lei
Jeffrey S. Whitaker
Jeffrey L. Anderson
Zhemin Tan
Adaptive Localization for Satellite Radiance Observations in an Ensemble Kalman Filter
Journal of Advances in Modeling Earth Systems
radiance observation
ensemble Kalman filter
adaptive localization
author_facet Lili Lei
Jeffrey S. Whitaker
Jeffrey L. Anderson
Zhemin Tan
author_sort Lili Lei
title Adaptive Localization for Satellite Radiance Observations in an Ensemble Kalman Filter
title_short Adaptive Localization for Satellite Radiance Observations in an Ensemble Kalman Filter
title_full Adaptive Localization for Satellite Radiance Observations in an Ensemble Kalman Filter
title_fullStr Adaptive Localization for Satellite Radiance Observations in an Ensemble Kalman Filter
title_full_unstemmed Adaptive Localization for Satellite Radiance Observations in an Ensemble Kalman Filter
title_sort adaptive localization for satellite radiance observations in an ensemble kalman filter
publisher American Geophysical Union (AGU)
series Journal of Advances in Modeling Earth Systems
issn 1942-2466
publishDate 2020-08-01
description Abstract Localization is essential to effectively assimilate satellite radiances in ensemble Kalman filters. However, the vertical location and separation from a model grid point variable for a radiance observation are not well defined, which results in complexities when localizing the impact of radiance observations. An adaptive method is proposed to estimate an effective vertical localization independently for each assimilated channel of every satellite platform. It uses sample correlations between ensemble priors of observations and state variables from a cycling data assimilation to estimate the localization function that minimizes the sampling error. The estimated localization functions are approximated by three localization parameters: the localization width, maximum value, and vertical location of the radiance observations. Adaptively estimated localization parameters are used in assimilation experiments with the National Centers for Environmental Prediction (NCEP) Global Forecast System (GFS) model and the National Oceanic and Atmospheric Administration (NOAA) operational ensemble Kalman filter (EnKF). Results show that using the adaptive localization width and vertical location for radiance observations is more beneficial than also including the maximum localization value. The experiment using the adaptively estimated localization width and vertical location performs better than the default Gaspari and Cohn (GC) experiment, and produces similar errors to the optimal GC experiment. The adaptive localization parameters can be computed during the assimilation procedure, so the computational cost needed to tune the optimal GC localization width is saved.
topic radiance observation
ensemble Kalman filter
adaptive localization
url https://doi.org/10.1029/2019MS001693
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AT jeffreyswhitaker adaptivelocalizationforsatelliteradianceobservationsinanensemblekalmanfilter
AT jeffreylanderson adaptivelocalizationforsatelliteradianceobservationsinanensemblekalmanfilter
AT zhemintan adaptivelocalizationforsatelliteradianceobservationsinanensemblekalmanfilter
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