Seismic clusters and fluids diffusion: a lesson from the 2018 Molise (Southern Italy) earthquake sequence

Abstract The identification of seismic clusters is essential for many applications of statistical analysis and seismicity forecasting: uncertainties in cluster identification leads to uncertainties in results. However, there are several methods to identify clusters, and their results are not always...

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Main Authors: Stefania Gentili, Piero Brondi, Giuliana Rossi, Monica Sugan, Giuseppe Petrillo, Jiancang Zhuang, Stefano Campanella
Format: Article
Language:English
Published: SpringerOpen 2024-12-01
Series:Earth, Planets and Space
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Online Access:https://doi.org/10.1186/s40623-024-02096-3
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author Stefania Gentili
Piero Brondi
Giuliana Rossi
Monica Sugan
Giuseppe Petrillo
Jiancang Zhuang
Stefano Campanella
author_facet Stefania Gentili
Piero Brondi
Giuliana Rossi
Monica Sugan
Giuseppe Petrillo
Jiancang Zhuang
Stefano Campanella
author_sort Stefania Gentili
collection DOAJ
description Abstract The identification of seismic clusters is essential for many applications of statistical analysis and seismicity forecasting: uncertainties in cluster identification leads to uncertainties in results. However, there are several methods to identify clusters, and their results are not always compatible. We tested different approaches to analyze the clustering: a traditional window-based approach, a complex network-based technique (nearest neighbor—NN), and a novel approach based on fractal analysis. The case study is the increase in seismicity observed in Molise, Southern Italy, from April to November 2018. To analyze the seismicity in detail with the above-mentioned methods, an improved template-matching catalog was created. A stochastic declustering method based on the Epidemic Type Aftershock Sequence (ETAS) model was also applied to add probabilistic information. We explored how the significant discrepancies in these methods’ results affect the result of NExt STrOng Related Earthquake (NESTORE) algorithm—a method to forecast strong aftershocks during an ongoing cluster—previously successfully applied to the whole Italian territory. We performed a further analysis of the spatio-temporal pattern of seismicity in Molise, using the Principal Component Analysis (PCA), the ETAS algorithm, as well as other analyses, aimed at detecting possible migration and diffusion signals. We found a relative quiescence of several months between the main events of April and August, the tendency of the events to propagate upwards, and a migration of the seismicity consistent with a fluid-driven mechanism. We hypothesize that these features indicate the presence of fluids, which are also responsible for the long duration of the sequence and the discrepancies in cluster identification methods’ results. Such results add to the other pieces of evidence of the importance of the fluid presence in controlling the seismicity in the Apennines. Moreover, this study highlights the importance of refined methods to identify clusters and encourages further detailed analyses when different methods supply very different results. Graphical Abstract
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spelling doaj-art-e9ada44ffe8b4399940bf78cfd15cdf62025-08-20T02:20:42ZengSpringerOpenEarth, Planets and Space1880-59812024-12-0176112310.1186/s40623-024-02096-3Seismic clusters and fluids diffusion: a lesson from the 2018 Molise (Southern Italy) earthquake sequenceStefania Gentili0Piero Brondi1Giuliana Rossi2Monica Sugan3Giuseppe Petrillo4Jiancang Zhuang5Stefano Campanella6National Institute of Oceanography and Applied Geophysics - OGSNational Institute of Oceanography and Applied Geophysics - OGSNational Institute of Oceanography and Applied Geophysics - OGSNational Institute of Oceanography and Applied Geophysics - OGSThe Institute of Statistical Mathematics, ISMThe Institute of Statistical Mathematics, ISMNational Institute of Oceanography and Applied Geophysics - OGSAbstract The identification of seismic clusters is essential for many applications of statistical analysis and seismicity forecasting: uncertainties in cluster identification leads to uncertainties in results. However, there are several methods to identify clusters, and their results are not always compatible. We tested different approaches to analyze the clustering: a traditional window-based approach, a complex network-based technique (nearest neighbor—NN), and a novel approach based on fractal analysis. The case study is the increase in seismicity observed in Molise, Southern Italy, from April to November 2018. To analyze the seismicity in detail with the above-mentioned methods, an improved template-matching catalog was created. A stochastic declustering method based on the Epidemic Type Aftershock Sequence (ETAS) model was also applied to add probabilistic information. We explored how the significant discrepancies in these methods’ results affect the result of NExt STrOng Related Earthquake (NESTORE) algorithm—a method to forecast strong aftershocks during an ongoing cluster—previously successfully applied to the whole Italian territory. We performed a further analysis of the spatio-temporal pattern of seismicity in Molise, using the Principal Component Analysis (PCA), the ETAS algorithm, as well as other analyses, aimed at detecting possible migration and diffusion signals. We found a relative quiescence of several months between the main events of April and August, the tendency of the events to propagate upwards, and a migration of the seismicity consistent with a fluid-driven mechanism. We hypothesize that these features indicate the presence of fluids, which are also responsible for the long duration of the sequence and the discrepancies in cluster identification methods’ results. Such results add to the other pieces of evidence of the importance of the fluid presence in controlling the seismicity in the Apennines. Moreover, this study highlights the importance of refined methods to identify clusters and encourages further detailed analyses when different methods supply very different results. Graphical Abstracthttps://doi.org/10.1186/s40623-024-02096-3Seismic cluster identificationTemplate-matchingMachine-learningNearest neighbor methodFractalsStochastic declustering
spellingShingle Stefania Gentili
Piero Brondi
Giuliana Rossi
Monica Sugan
Giuseppe Petrillo
Jiancang Zhuang
Stefano Campanella
Seismic clusters and fluids diffusion: a lesson from the 2018 Molise (Southern Italy) earthquake sequence
Earth, Planets and Space
Seismic cluster identification
Template-matching
Machine-learning
Nearest neighbor method
Fractals
Stochastic declustering
title Seismic clusters and fluids diffusion: a lesson from the 2018 Molise (Southern Italy) earthquake sequence
title_full Seismic clusters and fluids diffusion: a lesson from the 2018 Molise (Southern Italy) earthquake sequence
title_fullStr Seismic clusters and fluids diffusion: a lesson from the 2018 Molise (Southern Italy) earthquake sequence
title_full_unstemmed Seismic clusters and fluids diffusion: a lesson from the 2018 Molise (Southern Italy) earthquake sequence
title_short Seismic clusters and fluids diffusion: a lesson from the 2018 Molise (Southern Italy) earthquake sequence
title_sort seismic clusters and fluids diffusion a lesson from the 2018 molise southern italy earthquake sequence
topic Seismic cluster identification
Template-matching
Machine-learning
Nearest neighbor method
Fractals
Stochastic declustering
url https://doi.org/10.1186/s40623-024-02096-3
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