Exploring the limits of variational passive microwave retrievals

2017 Summer. Includes bibliographical references. Passive microwave observations from satellite platforms constitute one of the most important data records of the global observing system. Operational since the late 1970s, passive microwave data underpin climate records of precipitation, sea ice exte...

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Main Author: Duncan, David Ian
Other Authors: Kummerow, Christian D., Boukabara, Sid-Ahmed, O'Dell, Christopher W., Reising, Steven C., Rutledge, Steven A., Schumacher, Russ S.
Format: Text
Language:English
Published: Colorado State University. Libraries 2017
Subjects:
Online Access:https://hdl.handle.net/10217/183906
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spelling ftcolostateunidc:oai:mountainscholar.org:10217/183906 2023-06-11T04:16:34+02:00 Exploring the limits of variational passive microwave retrievals Duncan, David Ian Kummerow, Christian D. Boukabara, Sid-Ahmed O'Dell, Christopher W. Reising, Steven C. Rutledge, Steven A. Schumacher, Russ S. 2017-09-14T16:04:29Z born digital doctoral dissertations application/pdf https://hdl.handle.net/10217/183906 English eng eng Colorado State University. Libraries 2000-2019 - CSU Theses and Dissertations Duncan_colostate_0053A_14270.pdf https://hdl.handle.net/10217/183906 Copyright and other restrictions may apply. User is responsible for compliance with all applicable laws. For information about copyright law, please see https://libguides.colostate.edu/copyright. remote sensing variational methods satellite meteorology passive microwave Text 2017 ftcolostateunidc 2023-05-04T17:39:51Z 2017 Summer. Includes bibliographical references. Passive microwave observations from satellite platforms constitute one of the most important data records of the global observing system. Operational since the late 1970s, passive microwave data underpin climate records of precipitation, sea ice extent, water vapor, and more, and contribute significantly to numerical weather prediction via data assimilation. Detailed understanding of the observation errors in these data is key to maximizing their utility for research and operational applications alike. However, the treatment of observation errors in this data record has been lacking and somewhat divergent when considering the retrieval and data assimilation communities. In this study, some limits of passive microwave imager data are considered in light of more holistic treatment of observation errors. A variational retrieval, named the CSU 1DVAR, was developed for microwave imagers and applied to the GMI and AMSR2 sensors for ocean scenes. Via an innovative method to determine forward model error, this retrieval accounts for error covariances across all channels used in the iteration. This improves validation in more complex scenes such as high wind speed and persistently cloudy regimes. In addition, it validates on par with a benchmark dataset without any tuning to in-situ observations. The algorithm yields full posterior error diagnostics and its physical forward model is applicable to other sensors, pending intercalibration. This retrieval is used to explore the viability of retrieving parameters at the limits of the available information content from a typical microwave imager. Retrieval of warm rain, marginal sea ice, and falling snow are explored with the variational retrieval. Warm rain retrieval shows some promise, with greater sensitivity than operational GPM algorithms due to leveraging CloudSat data and accounting for drop size distribution variability. Marginal sea ice is also detected with greater sensitivity than a standard operational ... Text Sea ice Digital Collections of Colorado (Colorado State University)
institution Open Polar
collection Digital Collections of Colorado (Colorado State University)
op_collection_id ftcolostateunidc
language English
topic remote sensing
variational methods
satellite meteorology
passive microwave
spellingShingle remote sensing
variational methods
satellite meteorology
passive microwave
Duncan, David Ian
Exploring the limits of variational passive microwave retrievals
topic_facet remote sensing
variational methods
satellite meteorology
passive microwave
description 2017 Summer. Includes bibliographical references. Passive microwave observations from satellite platforms constitute one of the most important data records of the global observing system. Operational since the late 1970s, passive microwave data underpin climate records of precipitation, sea ice extent, water vapor, and more, and contribute significantly to numerical weather prediction via data assimilation. Detailed understanding of the observation errors in these data is key to maximizing their utility for research and operational applications alike. However, the treatment of observation errors in this data record has been lacking and somewhat divergent when considering the retrieval and data assimilation communities. In this study, some limits of passive microwave imager data are considered in light of more holistic treatment of observation errors. A variational retrieval, named the CSU 1DVAR, was developed for microwave imagers and applied to the GMI and AMSR2 sensors for ocean scenes. Via an innovative method to determine forward model error, this retrieval accounts for error covariances across all channels used in the iteration. This improves validation in more complex scenes such as high wind speed and persistently cloudy regimes. In addition, it validates on par with a benchmark dataset without any tuning to in-situ observations. The algorithm yields full posterior error diagnostics and its physical forward model is applicable to other sensors, pending intercalibration. This retrieval is used to explore the viability of retrieving parameters at the limits of the available information content from a typical microwave imager. Retrieval of warm rain, marginal sea ice, and falling snow are explored with the variational retrieval. Warm rain retrieval shows some promise, with greater sensitivity than operational GPM algorithms due to leveraging CloudSat data and accounting for drop size distribution variability. Marginal sea ice is also detected with greater sensitivity than a standard operational ...
author2 Kummerow, Christian D.
Boukabara, Sid-Ahmed
O'Dell, Christopher W.
Reising, Steven C.
Rutledge, Steven A.
Schumacher, Russ S.
format Text
author Duncan, David Ian
author_facet Duncan, David Ian
author_sort Duncan, David Ian
title Exploring the limits of variational passive microwave retrievals
title_short Exploring the limits of variational passive microwave retrievals
title_full Exploring the limits of variational passive microwave retrievals
title_fullStr Exploring the limits of variational passive microwave retrievals
title_full_unstemmed Exploring the limits of variational passive microwave retrievals
title_sort exploring the limits of variational passive microwave retrievals
publisher Colorado State University. Libraries
publishDate 2017
url https://hdl.handle.net/10217/183906
genre Sea ice
genre_facet Sea ice
op_relation 2000-2019 - CSU Theses and Dissertations
Duncan_colostate_0053A_14270.pdf
https://hdl.handle.net/10217/183906
op_rights Copyright and other restrictions may apply. User is responsible for compliance with all applicable laws. For information about copyright law, please see https://libguides.colostate.edu/copyright.
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