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Characterising sediment thickness beneath a Greenlandic outlet glacier using distributed acoustic sensing: preliminary observations and progress towards an efficient machine learning approach

Authors :
Adam D. Booth
Poul Christoffersen
Andrew Pretorius
Joseph Chapman
Bryn Hubbard
Emma C. Smith
Sjoerd de Ridder
Andy Nowacki
Bradley Paul Lipovsky
Marine Denolle
Source :
Annals of Glaciology. :1-4
Publication Year :
2023
Publisher :
Cambridge University Press (CUP), 2023.

Abstract

Distributed Acoustic Sensing (DAS) is increasingly recognised as a valuable tool for glaciological seismic applications, although analysing the large data volumes generated in acquisitions poses computational challenges. We show the potential of active-source DAS to image and characterise subglacial sediment beneath a fast-flowing Greenlandic outlet glacier, estimating the thickness of sediment layers to be 20–30 m. However, the lack of subglacial velocity constraint limits the accuracy of this estimate. Constraint could be provided by analysing cryoseismic events in a counterpart 3-day record of passive seismicity through, for example, seismic tomography, but locating them within the 9 TB data volume is computationally inefficient. We describe experiments with data compression using the frequency-wavenumber (f-k) transform ahead of training a convolutional neural network, that provides a ~300-fold improvement in efficiency. In combining active and passive-source and our machine learning framework, the potential of large DAS datasets could be unlocked for a range of future applications.

Subjects

Subjects :
Earth-Surface Processes

Details

ISSN :
17275644 and 02603055
Database :
OpenAIRE
Journal :
Annals of Glaciology
Accession number :
edsair.doi...........f46f8893794b2aa773d3d68f1dc1e310
Full Text :
https://doi.org/10.1017/aog.2023.15