Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data

The retrieval of Earth surface parameter using GNSS reflectometry techniques has become a valuable source for Earth observation. Typical parameters can be found over the open ocean (sea state, oceanwind), over land (soil moisture, inundation areas) or over sea ice (for example its extent andconcentr...

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Main Authors: Semmling, Maximilian, Wickert, Jens, Hoque, Mohammed Mainul, Divine, Dmitry, Gerland, Sebastian, Spreen, Gunnar
Format: Conference Object
Language:English
Published: 2022
Subjects:
Online Access:https://elib.dlr.de/188038/
https://elib.dlr.de/188038/1/s2_mosaic_semmling_et_al.pdf
id ftdlr:oai:elib.dlr.de:188038
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spelling ftdlr:oai:elib.dlr.de:188038 2024-05-19T07:36:01+00:00 Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data Semmling, Maximilian Wickert, Jens Hoque, Mohammed Mainul Divine, Dmitry Gerland, Sebastian Spreen, Gunnar 2022 application/pdf https://elib.dlr.de/188038/ https://elib.dlr.de/188038/1/s2_mosaic_semmling_et_al.pdf en eng https://elib.dlr.de/188038/1/s2_mosaic_semmling_et_al.pdf Semmling, Maximilian und Wickert, Jens und Hoque, Mohammed Mainul und Divine, Dmitry und Gerland, Sebastian und Spreen, Gunnar (2022) Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data. 1st Workshop on Data Science for GNSS Remote Sensing (D4G), 2022-06-13 - 2022-06-15, Potsdam, Deutschland. Weltraumwetterbeobachtung Konferenzbeitrag NonPeerReviewed 2022 ftdlr 2024-04-25T01:02:02Z The retrieval of Earth surface parameter using GNSS reflectometry techniques has become a valuable source for Earth observation. Typical parameters can be found over the open ocean (sea state, oceanwind), over land (soil moisture, inundation areas) or over sea ice (for example its extent andconcentration). The compactness of passive GNSS receiver instrumentation is a crucial advantage forthe versatile application scenarios of GNSS reflectometry techniques. We demonstrate here the estimation sea-ice permittivity based on the fusion GNSS and ancillary data. In the given scenario, GNSS observations were performed on the German research icebreaker Polarstern during its one year drift with the Arctic sea ice as part of the MOSAiC expedition (Multidisciplinary drifting Observatory for the Study of Arctic Climate). A dedicated GORS type (GNSS OccultationReflectometry Scatterometry) receiver was used with three antenna links attached: up-looking master link with right-handed polarization and two side-looking slave links (dual-polarization, leftand right-handed). Coherent samples (in-phase and quadrature) of the respective links are provided by the receiver. The processing steps comprise, at first, the separation of the GNSS multipath signal into direct and reflected contributions using the right- and left-handed slave-link samples. Two steps of data fusion follow, first, combining the separated signal power estimates to obtain reflectivity time series and, second, adding geo-reference to the obtained time series defining specular point and elevation angle. The geo-referencing involves: standard point position data of the GORS receiver and broadcast orbit data of the GNSS satellites (available at the IGS). Additionally, attitude data from the ship's inertial navigation system is used for event masking to assure satellite visibility and account for shadowing of the ship structure. Sea-ice permittivity is finally inverted from the referenced and masked reflectivity time series. For this purpose, the data fusion scheme is ... Conference Object Arctic Icebreaker Sea ice German Aerospace Center: elib - DLR electronic library
institution Open Polar
collection German Aerospace Center: elib - DLR electronic library
op_collection_id ftdlr
language English
topic Weltraumwetterbeobachtung
spellingShingle Weltraumwetterbeobachtung
Semmling, Maximilian
Wickert, Jens
Hoque, Mohammed Mainul
Divine, Dmitry
Gerland, Sebastian
Spreen, Gunnar
Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data
topic_facet Weltraumwetterbeobachtung
description The retrieval of Earth surface parameter using GNSS reflectometry techniques has become a valuable source for Earth observation. Typical parameters can be found over the open ocean (sea state, oceanwind), over land (soil moisture, inundation areas) or over sea ice (for example its extent andconcentration). The compactness of passive GNSS receiver instrumentation is a crucial advantage forthe versatile application scenarios of GNSS reflectometry techniques. We demonstrate here the estimation sea-ice permittivity based on the fusion GNSS and ancillary data. In the given scenario, GNSS observations were performed on the German research icebreaker Polarstern during its one year drift with the Arctic sea ice as part of the MOSAiC expedition (Multidisciplinary drifting Observatory for the Study of Arctic Climate). A dedicated GORS type (GNSS OccultationReflectometry Scatterometry) receiver was used with three antenna links attached: up-looking master link with right-handed polarization and two side-looking slave links (dual-polarization, leftand right-handed). Coherent samples (in-phase and quadrature) of the respective links are provided by the receiver. The processing steps comprise, at first, the separation of the GNSS multipath signal into direct and reflected contributions using the right- and left-handed slave-link samples. Two steps of data fusion follow, first, combining the separated signal power estimates to obtain reflectivity time series and, second, adding geo-reference to the obtained time series defining specular point and elevation angle. The geo-referencing involves: standard point position data of the GORS receiver and broadcast orbit data of the GNSS satellites (available at the IGS). Additionally, attitude data from the ship's inertial navigation system is used for event masking to assure satellite visibility and account for shadowing of the ship structure. Sea-ice permittivity is finally inverted from the referenced and masked reflectivity time series. For this purpose, the data fusion scheme is ...
format Conference Object
author Semmling, Maximilian
Wickert, Jens
Hoque, Mohammed Mainul
Divine, Dmitry
Gerland, Sebastian
Spreen, Gunnar
author_facet Semmling, Maximilian
Wickert, Jens
Hoque, Mohammed Mainul
Divine, Dmitry
Gerland, Sebastian
Spreen, Gunnar
author_sort Semmling, Maximilian
title Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data
title_short Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data
title_full Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data
title_fullStr Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data
title_full_unstemmed Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data
title_sort data fusion to estimate sea-ice permittivity: a gnss processor for 1-year mosaic data
publishDate 2022
url https://elib.dlr.de/188038/
https://elib.dlr.de/188038/1/s2_mosaic_semmling_et_al.pdf
genre Arctic
Icebreaker
Sea ice
genre_facet Arctic
Icebreaker
Sea ice
op_relation https://elib.dlr.de/188038/1/s2_mosaic_semmling_et_al.pdf
Semmling, Maximilian und Wickert, Jens und Hoque, Mohammed Mainul und Divine, Dmitry und Gerland, Sebastian und Spreen, Gunnar (2022) Data Fusion to estimate sea-ice permittivity: a GNSS processor for 1-year MOSAiC data. 1st Workshop on Data Science for GNSS Remote Sensing (D4G), 2022-06-13 - 2022-06-15, Potsdam, Deutschland.
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