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  Automated Detection and Machine Learning‐Based Classification of Seismic Tremors Associated With a Non‐Volcanic Gas Emission (Mefite d’Ansanto, Southern Italy)

Panebianco, S., Satriano, C., Vivone, G., Picozzi, M., Strollo, A., Stabile, T. A. (2024): Automated Detection and Machine Learning‐Based Classification of Seismic Tremors Associated With a Non‐Volcanic Gas Emission (Mefite d’Ansanto, Southern Italy). - Geochemistry Geophysics Geosystems (G3), 25, 2, e2023GC011286.
https://doi.org/10.1029/2023GC011286

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Panebianco, S.1, Author
Satriano, C.1, Author
Vivone, G.1, Author
Picozzi, M.1, Author
Strollo, Angelo2, Author              
Stabile, T. A.1, Author
Affiliations:
1External Organizations, ou_persistent22              
22.4 Seismology, 2.0 Geophysics, Departments, GFZ Publication Database, Deutsches GeoForschungsZentrum, ou_30023              

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 Abstract: A major aim in the study of crustal fluids is the development of automatic methodologies for monitoring deep‐source, non‐volcanic gas emissions’ spatio‐temporal evolution. Crustal fluids play a significant role in the generation of large earthquakes and the characterization of their emissions on the surface can be essential for better understanding crustal processes generating earthquakes. We investigate seismic tremors recorded over 4 days in 2019 at the Mefite d’Ansanto (southern Apennines, Italy) that is located at the northern end of the fault system that generated the Mw 6.9 1980 Irpinia Earthquake. The Mefite d’Ansanto is hypothesized to be the largest natural, non‐volcanic, CO2‐rich gas emission on Earth. The seismic tremor is studied by employing a dense temporary seismic network and an automated detection algorithm based on non‐parametric statistics of the recorded signal amplitudes. We extracted signal characteristics (RMS amplitude and statistical moments of amplitudes both in time and frequency domains) for use in the subsequent supervised machine‐learning classification of the target tremor and accidently detected anthropogenic and background noise. The data set is used for the training and optimization of station‐based KNN (k‐Nearest‐Neighbors) binary classifiers obtaining good classification performances with a median overall accuracy across all stations of 92.8%. The classified tremor displayed common features at all stations: variable duration (16 s to 30–40 min), broad peak frequency (4–20 Hz) with varying amplitudes, and two types of signals: (a) long‐duration, high‐amplitude tremor and (b) pulsating tremor. Higher tremor amplitudes recorded at stations closer to local bubbling and pressurized vents suggest multiple local tremor sources.

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 Dates: 2024-02-052024
 Publication Status: Finally published
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 Identifiers: DOI: 10.1029/2023GC011286
GFZPOF: p4 T3 Restless Earth
GFZPOFWEITERE: p4 MESI
OATYPE: Gold Open Access
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Title: Geochemistry Geophysics Geosystems (G3)
Source Genre: Journal, SCI, Scopus, oa , OA seit 15. September 2021
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Pages: - Volume / Issue: 25 (2) Sequence Number: e2023GC011286 Start / End Page: - Identifier: CoNE: https://gfzpublic.gfz-potsdam.de/cone/journals/resource/journals159
Publisher: American Geophysical Union (AGU)
Publisher: Wiley