Sea ice remote sensing using spaceborne global navigation satellite system reflectometry

In this research, the application of spaceborne Global Navigation Satellite System- Reflectometry (GNSS-R) delay-Doppler maps (DDMs) for sea ice remote sensing is investigated. Firstly, a scheme is presented for detecting sea ice from TechDemoSat-1 (TDS-1) DDMs. Less spreading along delay and Dopple...

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Main Author: Yan, Qingyun
Format: Thesis
Language:English
Published: Memorial University of Newfoundland 2019
Subjects:
Online Access:https://research.library.mun.ca/14413/
https://research.library.mun.ca/14413/1/thesis.pdf
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spelling ftmemorialuniv:oai:research.library.mun.ca:14413 2023-10-01T03:59:21+02:00 Sea ice remote sensing using spaceborne global navigation satellite system reflectometry Yan, Qingyun 2019-12 application/pdf https://research.library.mun.ca/14413/ https://research.library.mun.ca/14413/1/thesis.pdf en eng Memorial University of Newfoundland https://research.library.mun.ca/14413/1/thesis.pdf Yan, Qingyun <https://research.library.mun.ca/view/creator_az/Yan=3AQingyun=3A=3A.html> (2019) Sea ice remote sensing using spaceborne global navigation satellite system reflectometry. Doctoral (PhD) thesis, Memorial University of Newfoundland. thesis_license Thesis NonPeerReviewed 2019 ftmemorialuniv 2023-09-03T06:49:45Z In this research, the application of spaceborne Global Navigation Satellite System- Reflectometry (GNSS-R) delay-Doppler maps (DDMs) for sea ice remote sensing is investigated. Firstly, a scheme is presented for detecting sea ice from TechDemoSat-1 (TDS-1) DDMs. Less spreading along delay and Doppler axes is observed in the DDMs of sea ice relative to those of seawater. This enables us to distinguish sea ice from seawater through studying the values of various DDM observables, which describe the extent of DDM spreading. Secondly, three machine learning-based methods, specifically neural networks (NNs), convolutional neural networks (CNNs) and support vector machine (SVM), are developed for detecting sea ice and retrieving sea ice concentration (SIC) from TDS-1 data. For these three methods, the architectures with different outputs (i.e. category labels and SIC values) are separately devised for sea ice detection (classification problem) and SIC retrieval (regression problem) purposes. In the training phase, different designs of input that include the cropped DDM (40-by-20), the full-size DDM (128-by-20), and the feature selection (FS) (1-by-20) are tested. The SIC data obtained by Nimbus-7 SMMR and DMSP SSM/I-SSMIS sensors are used as the target data, which are also regarded as ground-truth data in this work. In the experimental stage, CNN output resulted from inputting full-size DDM data shows better accuracy than that of the NN-based method. Besides, performance of both CNNs and NNs is enhanced with the cropped DDMs. It is found that when DDM data are adequately preprocessed CNNs and NNs share similar accuracy. Further comparison is made between NN and SVM with FS. The SVM algorithm demonstrates improved accuracy compared with the NN method. In addition, the designed FS is proven to be effective for both SVM- and NN-based approaches. Lastly, a reflectivity ( Thesis Sea ice Memorial University of Newfoundland: Research Repository
institution Open Polar
collection Memorial University of Newfoundland: Research Repository
op_collection_id ftmemorialuniv
language English
description In this research, the application of spaceborne Global Navigation Satellite System- Reflectometry (GNSS-R) delay-Doppler maps (DDMs) for sea ice remote sensing is investigated. Firstly, a scheme is presented for detecting sea ice from TechDemoSat-1 (TDS-1) DDMs. Less spreading along delay and Doppler axes is observed in the DDMs of sea ice relative to those of seawater. This enables us to distinguish sea ice from seawater through studying the values of various DDM observables, which describe the extent of DDM spreading. Secondly, three machine learning-based methods, specifically neural networks (NNs), convolutional neural networks (CNNs) and support vector machine (SVM), are developed for detecting sea ice and retrieving sea ice concentration (SIC) from TDS-1 data. For these three methods, the architectures with different outputs (i.e. category labels and SIC values) are separately devised for sea ice detection (classification problem) and SIC retrieval (regression problem) purposes. In the training phase, different designs of input that include the cropped DDM (40-by-20), the full-size DDM (128-by-20), and the feature selection (FS) (1-by-20) are tested. The SIC data obtained by Nimbus-7 SMMR and DMSP SSM/I-SSMIS sensors are used as the target data, which are also regarded as ground-truth data in this work. In the experimental stage, CNN output resulted from inputting full-size DDM data shows better accuracy than that of the NN-based method. Besides, performance of both CNNs and NNs is enhanced with the cropped DDMs. It is found that when DDM data are adequately preprocessed CNNs and NNs share similar accuracy. Further comparison is made between NN and SVM with FS. The SVM algorithm demonstrates improved accuracy compared with the NN method. In addition, the designed FS is proven to be effective for both SVM- and NN-based approaches. Lastly, a reflectivity (
format Thesis
author Yan, Qingyun
spellingShingle Yan, Qingyun
Sea ice remote sensing using spaceborne global navigation satellite system reflectometry
author_facet Yan, Qingyun
author_sort Yan, Qingyun
title Sea ice remote sensing using spaceborne global navigation satellite system reflectometry
title_short Sea ice remote sensing using spaceborne global navigation satellite system reflectometry
title_full Sea ice remote sensing using spaceborne global navigation satellite system reflectometry
title_fullStr Sea ice remote sensing using spaceborne global navigation satellite system reflectometry
title_full_unstemmed Sea ice remote sensing using spaceborne global navigation satellite system reflectometry
title_sort sea ice remote sensing using spaceborne global navigation satellite system reflectometry
publisher Memorial University of Newfoundland
publishDate 2019
url https://research.library.mun.ca/14413/
https://research.library.mun.ca/14413/1/thesis.pdf
genre Sea ice
genre_facet Sea ice
op_relation https://research.library.mun.ca/14413/1/thesis.pdf
Yan, Qingyun <https://research.library.mun.ca/view/creator_az/Yan=3AQingyun=3A=3A.html> (2019) Sea ice remote sensing using spaceborne global navigation satellite system reflectometry. Doctoral (PhD) thesis, Memorial University of Newfoundland.
op_rights thesis_license
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