Quantifying Threedimensional Fabric in Tills using X-ray Microcomputed Tomography

PhD Deforming subglacial tills have a significant influence on the dynamics of many glaciers and ice sheets; however, due to their inaccessibility and spatial/temporal heterogeneity, laws defining their behaviour and rheology are still contentious. A lack of analytical and theoretical continuity bet...

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Main Author: Groves JWE
Format: Thesis
Language:English
Published: Queen Mary University of London 2019
Subjects:
Online Access:https://qmro.qmul.ac.uk/xmlui/handle/123456789/55423
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spelling ftqueenmaryuniv:oai:qmro.qmul.ac.uk:123456789/55423 2023-05-15T16:41:19+02:00 Quantifying Threedimensional Fabric in Tills using X-ray Microcomputed Tomography Groves JWE 24/01/2019 https://qmro.qmul.ac.uk/xmlui/handle/123456789/55423 en eng Queen Mary University of London https://qmro.qmul.ac.uk/xmlui/handle/123456789/55423 The copyright of this thesis rests with the author and no quotation from it or information derived from it may be published without the prior written consent of the author Electronic Engineering and Computer Science deep learning architectures human action recognition Thesis 2019 ftqueenmaryuniv 2022-09-25T20:18:07Z PhD Deforming subglacial tills have a significant influence on the dynamics of many glaciers and ice sheets; however, due to their inaccessibility and spatial/temporal heterogeneity, laws defining their behaviour and rheology are still contentious. A lack of analytical and theoretical continuity between exposed relict tills, those under active ice and physical and numerical models using artificial analogues is partly responsible for this. Particle fabric, the 3D orientation of individual particles, could provide a quantitative link between such approaches; however, inconsistencies and weaknesses in data collection, presentation and interpretation have led to conflicting laws governing particle dynamics and therefore subglacial till behaviour. X-ray μCT provides 3D volumetric density maps of till samples at μm-scale, allowing for the extraction of true 3D properties for large particle populations (n>5000). Typically, such investigations have used sorted or artificial sands locked in resin to simplify particle identification; natural sediments however, are compositionally and lithologically heterogenous and require a supervised approach. Machine-learning protocols are presented and tested alongside a novel method which quantifies the best possible representation of particles within a sample. A mean accuracy of 85% is achieved. By applying these protocols to samples taken from a variety of active and relict glacier/ice sheet margins, a large database of particle properties (n>280k), including orientation, shape, size, 3D position and other experimental metrics has been created. Particle fabrics generated using X-ray μCT are much weaker and subtler than those obtained through other methods; therefore a detailed investigation into presentation, statistical significance and contextual interpretation of fabric data is conducted. The role of particle properties, particularly size and shape is shown to be an important controller of fabric in tills and must be carefully considered. By applying targeted analysis ... Thesis Ice Sheet Queen Mary University of London: Queen Mary Research Online (QMRO)
institution Open Polar
collection Queen Mary University of London: Queen Mary Research Online (QMRO)
op_collection_id ftqueenmaryuniv
language English
topic Electronic Engineering and Computer Science
deep learning architectures
human action recognition
spellingShingle Electronic Engineering and Computer Science
deep learning architectures
human action recognition
Groves JWE
Quantifying Threedimensional Fabric in Tills using X-ray Microcomputed Tomography
topic_facet Electronic Engineering and Computer Science
deep learning architectures
human action recognition
description PhD Deforming subglacial tills have a significant influence on the dynamics of many glaciers and ice sheets; however, due to their inaccessibility and spatial/temporal heterogeneity, laws defining their behaviour and rheology are still contentious. A lack of analytical and theoretical continuity between exposed relict tills, those under active ice and physical and numerical models using artificial analogues is partly responsible for this. Particle fabric, the 3D orientation of individual particles, could provide a quantitative link between such approaches; however, inconsistencies and weaknesses in data collection, presentation and interpretation have led to conflicting laws governing particle dynamics and therefore subglacial till behaviour. X-ray μCT provides 3D volumetric density maps of till samples at μm-scale, allowing for the extraction of true 3D properties for large particle populations (n>5000). Typically, such investigations have used sorted or artificial sands locked in resin to simplify particle identification; natural sediments however, are compositionally and lithologically heterogenous and require a supervised approach. Machine-learning protocols are presented and tested alongside a novel method which quantifies the best possible representation of particles within a sample. A mean accuracy of 85% is achieved. By applying these protocols to samples taken from a variety of active and relict glacier/ice sheet margins, a large database of particle properties (n>280k), including orientation, shape, size, 3D position and other experimental metrics has been created. Particle fabrics generated using X-ray μCT are much weaker and subtler than those obtained through other methods; therefore a detailed investigation into presentation, statistical significance and contextual interpretation of fabric data is conducted. The role of particle properties, particularly size and shape is shown to be an important controller of fabric in tills and must be carefully considered. By applying targeted analysis ...
format Thesis
author Groves JWE
author_facet Groves JWE
author_sort Groves JWE
title Quantifying Threedimensional Fabric in Tills using X-ray Microcomputed Tomography
title_short Quantifying Threedimensional Fabric in Tills using X-ray Microcomputed Tomography
title_full Quantifying Threedimensional Fabric in Tills using X-ray Microcomputed Tomography
title_fullStr Quantifying Threedimensional Fabric in Tills using X-ray Microcomputed Tomography
title_full_unstemmed Quantifying Threedimensional Fabric in Tills using X-ray Microcomputed Tomography
title_sort quantifying threedimensional fabric in tills using x-ray microcomputed tomography
publisher Queen Mary University of London
publishDate 2019
url https://qmro.qmul.ac.uk/xmlui/handle/123456789/55423
genre Ice Sheet
genre_facet Ice Sheet
op_relation https://qmro.qmul.ac.uk/xmlui/handle/123456789/55423
op_rights The copyright of this thesis rests with the author and no quotation from it or information derived from it may be published without the prior written consent of the author
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