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  5. Identifying the Fingerprint of a Volcano in the Background Seismic Noise from Machine Learning-Based Approach
 
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Identifying the Fingerprint of a Volcano in the Background Seismic Noise from Machine Learning-Based Approach

Author(s)
Rincon-Yanez, Diego  
De Lauro, Enza  
Petrosino, Simona  
Istituto Nazionale di Geofisica e Vulcanologia (INGV), Sezione OV, Napoli, Italia  
Senatore, Sabrina  
Falanga, Mariarosaria  
Language
English
Obiettivo Specifico
4V. Processi pre-eruttivi
Status
Published
JCR Journal
JCR Journal
Peer review journal
Yes
Journal
Applied Sciences  
Issue/vol(year)
/12 (2022)
ISSN
2076-3417
Publisher
MDPI
Pages (printed)
6835
Date Issued
July 6, 2022
DOI
10.3390/app12146835
Alternative Location
https://www.mdpi.com/2076-3417/12/14/6835
URI
https://www.earth-prints.org/handle/2122/15676
Subjects
04.08. Volcanology  
05.04. Instrumentation and techniques of general interest  
05.06. Methods  
Subjects

seismic noise

Neapolitan volcanoes

Colima volcano

multi-layer perceptro...

convolutional neural ...

Abstract
This work is devoted to the analysis of the background seismic noise acquired at the volcanoes (Campi Flegrei caldera, Ischia island, and Vesuvius) belonging to the Neapolitan volcanic district (Italy), and at the Colima volcano (Mexico). Continuous seismic acquisition is a complex mixture of volcanic transients and persistent volcanic and/or hydrothermal tremor, anthropogenic/ambient noise, oceanic loading, and meteo-marine contributions. The analysis of the background noise in a stationary volcanic phase could facilitate the identification of relevant waveforms often masked by microseisms and ambient noise. To address this issue, our approach proposes a machine learning (ML) modeling to recognize the “fingerprint” of a specific volcano by analyzing the background seismic noise from the continuous seismic acquisition. Specifically, two ML models, namely multi-layer perceptrons and convolutional neural network were trained to recognize one volcano from another based on the acquisition noise. Experimental results demonstrate the effectiveness of the two models in recognizing the noisy background signal, with promising performance in terms of accuracy, precision, recall, and F1 score. These results suggest that persistent volcanic signals share the same source information, as well as transient events, revealing a common generation mechanism but in different regimes. Moreover, assessing the dynamic state of a volcano through its background noise and promptly identifying any anomalies, which may indicate a change in its dynamics, can be a practical tool for real-time monitoring.
Type
article
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applsci-12-06835.pdf

Description
Open Access published article
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Format

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