Clustering earthquake signals and background noises in continuous seismic data with unsupervised deep learning

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作者
Léonard Seydoux
Randall Balestriero
Piero Poli
Maarten de Hoop
Michel Campillo
Richard Baraniuk
机构
[1] Université Grenoble-Alpes,ISTerre, équipe Ondes et Structures
[2] UMR CNRS 5375,Electrical and Computational Engineering
[3] 1381 Rue de la Piscine,Computational and Applied Mathematics
[4] Rice University,undefined
[5] 6100 Main MS-134,undefined
[6] Rice University,undefined
[7] 6100 Main MS-134,undefined
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摘要
The continuously growing amount of seismic data collected worldwide is outpacing our abilities for analysis, since to date, such datasets have been analyzed in a human-expert-intensive, supervised fashion. Moreover, analyses that are conducted can be strongly biased by the standard models employed by seismologists. In response to both of these challenges, we develop a new unsupervised machine learning framework for detecting and clustering seismic signals in continuous seismic records. Our approach combines a deep scattering network and a Gaussian mixture model to cluster seismic signal segments and detect novel structures. To illustrate the power of the framework, we analyze seismic data acquired during the June 2017 Nuugaatsiaq, Greenland landslide. We demonstrate the blind detection and recovery of the repeating precursory seismicity that was recorded before the main landslide rupture, which suggests that our approach could lead to more informative forecasting of the seismic activity in seismogenic areas.
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