Unsupervised deep machine learning methods to discriminate icequakes in seismological data from Neumayer Station, Antarctica
Unsupervised machine learning methods are gaining attention in the seismological community as more and larger datasets of continuous waveforms are collected, since they tackle the chal- lenging task of learning without using hand-labelled data. In this thesis, we present some neural network approach...
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2024
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ftsubbremen:oai:media.suub.uni-bremen.de:Publications/elib/7970 2024-06-23T07:47:50+00:00 Unsupervised deep machine learning methods to discriminate icequakes in seismological data from Neumayer Station, Antarctica Kinzel, Louisa Maaß, Peter Fromm, Tanja Schlindwein, Vera Stark, Hans-Georg 2024-03-05 application/pdf https://media.suub.uni-bremen.de/handle/elib/7970 https://doi.org/10.26092/elib/3013 https://nbn-resolving.org/urn:nbn:de:gbv:46-elib79700 eng eng Universität Bremen Fachbereich 03: Mathematik/Informatik (FB 03) https://media.suub.uni-bremen.de/handle/elib/7970 https://doi.org/10.26092/elib/3013 doi:10.26092/elib/3013 urn:nbn:de:gbv:46-elib79700 info:eu-repo/semantics/openAccess CC BY 4.0 (Attribution) https://creativecommons.org/licenses/by/4.0/ deep learning seismology icequakes contrastive learning 500 500 Science ddc:500 Dissertation doctoralThesis 2024 ftsubbremen https://doi.org/10.26092/elib/3013 2024-05-29T06:29:28Z Unsupervised machine learning methods are gaining attention in the seismological community as more and larger datasets of continuous waveforms are collected, since they tackle the chal- lenging task of learning without using hand-labelled data. In this thesis, we present some neural network approaches to the task of unsupervised learning, and apply them to discriminate and cluster different seismological events, including icequakes and earthquakes. We focus mainly on contrastive learning, which has recently been showing great success in the field of computer vision and other domains, and we transfer these methods to the domain of seismology. We implemented and tested data augmentation strategies for seismological data, and applied the contrastive learning method SimCLR as well as the deep clustering method DEC. For this pur- pose, we created and partially labelled different datasets containing various waveforms including many icequakes detected by an STA/LTA algorithm on continuous waveform recordings from the geophysical obervatory at Neumayer station, Antarctica. We demonstrate the effectiveness of our approach using quantitative evaluation on the labelled dataset as well as qualitative evaluation of the clustering on a larger unlabelled dataset. Doctoral or Postdoctoral Thesis Antarc* Antarctica Media SuUB Bremen (Staats- und Universitätsbibliothek Bremen) Neumayer Neumayer Station |
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Open Polar |
collection |
Media SuUB Bremen (Staats- und Universitätsbibliothek Bremen) |
op_collection_id |
ftsubbremen |
language |
English |
topic |
deep learning seismology icequakes contrastive learning 500 500 Science ddc:500 |
spellingShingle |
deep learning seismology icequakes contrastive learning 500 500 Science ddc:500 Kinzel, Louisa Unsupervised deep machine learning methods to discriminate icequakes in seismological data from Neumayer Station, Antarctica |
topic_facet |
deep learning seismology icequakes contrastive learning 500 500 Science ddc:500 |
description |
Unsupervised machine learning methods are gaining attention in the seismological community as more and larger datasets of continuous waveforms are collected, since they tackle the chal- lenging task of learning without using hand-labelled data. In this thesis, we present some neural network approaches to the task of unsupervised learning, and apply them to discriminate and cluster different seismological events, including icequakes and earthquakes. We focus mainly on contrastive learning, which has recently been showing great success in the field of computer vision and other domains, and we transfer these methods to the domain of seismology. We implemented and tested data augmentation strategies for seismological data, and applied the contrastive learning method SimCLR as well as the deep clustering method DEC. For this pur- pose, we created and partially labelled different datasets containing various waveforms including many icequakes detected by an STA/LTA algorithm on continuous waveform recordings from the geophysical obervatory at Neumayer station, Antarctica. We demonstrate the effectiveness of our approach using quantitative evaluation on the labelled dataset as well as qualitative evaluation of the clustering on a larger unlabelled dataset. |
author2 |
Maaß, Peter Fromm, Tanja Schlindwein, Vera Stark, Hans-Georg |
format |
Doctoral or Postdoctoral Thesis |
author |
Kinzel, Louisa |
author_facet |
Kinzel, Louisa |
author_sort |
Kinzel, Louisa |
title |
Unsupervised deep machine learning methods to discriminate icequakes in seismological data from Neumayer Station, Antarctica |
title_short |
Unsupervised deep machine learning methods to discriminate icequakes in seismological data from Neumayer Station, Antarctica |
title_full |
Unsupervised deep machine learning methods to discriminate icequakes in seismological data from Neumayer Station, Antarctica |
title_fullStr |
Unsupervised deep machine learning methods to discriminate icequakes in seismological data from Neumayer Station, Antarctica |
title_full_unstemmed |
Unsupervised deep machine learning methods to discriminate icequakes in seismological data from Neumayer Station, Antarctica |
title_sort |
unsupervised deep machine learning methods to discriminate icequakes in seismological data from neumayer station, antarctica |
publisher |
Universität Bremen |
publishDate |
2024 |
url |
https://media.suub.uni-bremen.de/handle/elib/7970 https://doi.org/10.26092/elib/3013 https://nbn-resolving.org/urn:nbn:de:gbv:46-elib79700 |
geographic |
Neumayer Neumayer Station |
geographic_facet |
Neumayer Neumayer Station |
genre |
Antarc* Antarctica |
genre_facet |
Antarc* Antarctica |
op_relation |
https://media.suub.uni-bremen.de/handle/elib/7970 https://doi.org/10.26092/elib/3013 doi:10.26092/elib/3013 urn:nbn:de:gbv:46-elib79700 |
op_rights |
info:eu-repo/semantics/openAccess CC BY 4.0 (Attribution) https://creativecommons.org/licenses/by/4.0/ |
op_doi |
https://doi.org/10.26092/elib/3013 |
_version_ |
1802638027671994368 |