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Arctic Sea Ice Property Retrieval from Synthetic Aperture Radar with Deep Learning Models

Kortum, Karl (2024) Arctic Sea Ice Property Retrieval from Synthetic Aperture Radar with Deep Learning Models. Dissertation, Universität Bremen. doi: 10.26092/elib/2885.

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Offizielle URL: https://doi.org/10.26092/elib/2885

Kurzfassung

Current climate models are not capturing the feedback mechanisms driving the accelerated warming of the Arctic. A central challenge is the sparsity of observations. Satellite-borne synthetic aperture radar (SAR) instruments have the capability of monitoring Earth's sea ice masses at high resolution, unhampered by cloud coverage or the Arctic night. The measurements are made at scales of 10's of metres whilst still covering the Arctic in a matter of days. However, interpreting the radar signal to retrieve relevant sea ice information is difficult because of the complex interactions of the ice with the electromagnetic radar signal. Conventional neural network algorithms leverage contextual image data to make accurate predictions of surface ice properties comparable to those made by human experts. They are, however, dependent on large amounts of high-quality ground truth that is rare in these regions. Thus, the full potential of the SAR data is yet to be unlocked. With the advent of the MOSAiC mission, large timeseries of SAR data and near-coincident ground measurements were acquired for the first time. This thesis uses the unique opportunity provided by these data to analyse the behaviour of deep learning models. Seven months of data from the campaign is classified and analysed, using newly developed techniques to enable robust predictions across the timeseries. Core features are identified to facilitate robust and high-resolution classification. The final challenge of ground truth sparsity is then overcome using innovative network configurations that enable the training of 99.99%$ of the model parameters without any ground truth data. The techniques open up sea ice property retrieval to big data technologies, relying only on the abundantly available SAR data. These techniques enable the extrapolation of sparse reference data to a large space of sea ice conditions and enable high resolution mapping of the Earth's region most affected by human-made climate change

elib-URL des Eintrags:https://elib.dlr.de/203986/
Dokumentart:Hochschulschrift (Dissertation)
Titel:Arctic Sea Ice Property Retrieval from Synthetic Aperture Radar with Deep Learning Models
Autoren:
AutorenInstitution oder E-Mail-AdresseAutoren-ORCID-iDORCID Put Code
Kortum, Karlkarl.kortum (at) dlr.de / University of Bremen, Institute of Environmental Physics (IUP), Bremen, Germanyhttps://orcid.org/0000-0002-8418-6484NICHT SPEZIFIZIERT
Datum:2024
Erschienen in:Staats- und Universitätsbibliothek Bremen
Open Access:Ja
DOI:10.26092/elib/2885
Seitenanzahl:176
Status:veröffentlicht
Stichwörter:Oceanography; SAR; Synthetic Aperture Radar; Arctic Sea Ice; Sea Ice; Deep Learning; Machine Learning; Physics-informed Neural Networks; Altimetry
Institution:Universität Bremen
Abteilung:Fachbereich 01: Physik/Elektrotechnik (FB 01); Institut für Umweltpysik (IUP)
HGF - Forschungsbereich:Luftfahrt, Raumfahrt und Verkehr
HGF - Programm:Raumfahrt
HGF - Programmthema:Erdbeobachtung
DLR - Schwerpunkt:Raumfahrt
DLR - Forschungsgebiet:R EO - Erdbeobachtung
DLR - Teilgebiet (Projekt, Vorhaben):R - SAR-Methoden
Standort: Bremen , Oberpfaffenhofen
Institute & Einrichtungen:Institut für Methodik der Fernerkundung > SAR-Signalverarbeitung
Hinterlegt von: Kaps, Ruth
Hinterlegt am:25 Jul 2024 13:26
Letzte Änderung:25 Jul 2024 13:26

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