Earthquakes prediction is considered the holy grail of seismology. After almost a century of efforts without convincing results, the recent raise of machine learning (ML) methods in conjunction with the deployment of dense seismic networks has boosted new hope in this field. Even if large earthquakes still occur unanticipated, recent laboratory, field, and theoretical studies support the existence of a preparatory phase preceding earthquakes, where small and stable ruptures progres- sively develop into an unstable and confined zone around the future hypocenter. The problem of recognizing the preparatory phase of earthquakes is of critical importance for mitigating seismic risk for both natural and induced events. Here, we focus on the induced seismicity at The Geysers geothermal field in California. We address the preparatory phase of M~4 earthquakes identification problem by developing a ML approach based on features computed from catalogues, which are used to train a recurrent neural network (RNN). We show that RNN successfully reveal the preparation of M~4 earthquakes. These results confirm the potential of monitoring induced microseismicity and should encourage new research also in predictability of natural earthquakes.

Forecasting the Preparatory Phase of Induced Earthquakes by Recurrent Neural Network / Picozzi, Matteo; Iaccarino, Antonio Giovanni. - In: FORECASTING. - ISSN 2571-9394. - 3:1(2021), pp. 17-36. [10.3390/forecast3010002]

Forecasting the Preparatory Phase of Induced Earthquakes by Recurrent Neural Network

Picozzi, Matteo
Primo
Conceptualization
;
Iaccarino, Antonio Giovanni
Secondo
Membro del Collaboration Group
2021

Abstract

Earthquakes prediction is considered the holy grail of seismology. After almost a century of efforts without convincing results, the recent raise of machine learning (ML) methods in conjunction with the deployment of dense seismic networks has boosted new hope in this field. Even if large earthquakes still occur unanticipated, recent laboratory, field, and theoretical studies support the existence of a preparatory phase preceding earthquakes, where small and stable ruptures progres- sively develop into an unstable and confined zone around the future hypocenter. The problem of recognizing the preparatory phase of earthquakes is of critical importance for mitigating seismic risk for both natural and induced events. Here, we focus on the induced seismicity at The Geysers geothermal field in California. We address the preparatory phase of M~4 earthquakes identification problem by developing a ML approach based on features computed from catalogues, which are used to train a recurrent neural network (RNN). We show that RNN successfully reveal the preparation of M~4 earthquakes. These results confirm the potential of monitoring induced microseismicity and should encourage new research also in predictability of natural earthquakes.
2021
Forecasting the Preparatory Phase of Induced Earthquakes by Recurrent Neural Network / Picozzi, Matteo; Iaccarino, Antonio Giovanni. - In: FORECASTING. - ISSN 2571-9394. - 3:1(2021), pp. 17-36. [10.3390/forecast3010002]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/837003
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