High-resolution monitoring of hydraulically induced acoustic emission activities using neural phase picking and matched filter analysis

Abstract Monitoring the activities of very small seismic events or acoustic emissions (AEs) by estimating their hypocenters is useful in investigating fracturing processes in laboratory experiments. Here, we proposed an analysis procedure to develop high-quality AE event catalogs using deep learning...

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Main Authors: Makoto Naoi, Shiro Hirano, Youqing Chen
Format: Article
Language:English
Published: SpringerOpen 2025-03-01
Series:Progress in Earth and Planetary Science
Subjects:
Online Access:https://doi.org/10.1186/s40645-025-00696-5
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author Makoto Naoi
Shiro Hirano
Youqing Chen
author_facet Makoto Naoi
Shiro Hirano
Youqing Chen
author_sort Makoto Naoi
collection DOAJ
description Abstract Monitoring the activities of very small seismic events or acoustic emissions (AEs) by estimating their hypocenters is useful in investigating fracturing processes in laboratory experiments. Here, we proposed an analysis procedure to develop high-quality AE event catalogs using deep learning and similar waveform searches from the continuous records of AE sensors. The proposed routine comprised the following five steps: 1) automatically developing catalogs using a conventional procedure, where the short-term average-to-long-term average ratio detects transient signals, and arrival times are identified using an autoregressive model and the Akaike information criterion; 2) training a deep learning model for arrival time reading (neural phase picker) using datasets based on the Step 1 catalog; 3) reproducing the AE catalog by applying the trained neural phase picker to continuous waveform records; 4) applying template matching to continuous waveform records based on the template events listed in the catalog in Step 3; and 5) determining the precise hypocenters of template events and newly detected events in Step 4 using a relative location method based on the cross-correlation travel time reading technique. We applied this procedure to continuous AE waveforms recorded at 10 MHz sampling during hydraulic fracturing experiments, resulting in a catalog with 10 times the number of events compared to the Step 1 catalog. This reproduced catalog revealed new aspects of the fracturing process, such as the propagating fracture front and tremor-like AE activity. The proposed procedure eliminates the need for manual labeling, thereby facilitating a fully automated analysis of the observed continuous records. This technique is expected to enhance our understanding of AE sensor records in laboratory experiments.
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spelling doaj-art-dd4ebeb4e66d41169d3732a141b3418b2025-08-20T03:39:57ZengSpringerOpenProgress in Earth and Planetary Science2197-42842025-03-0112112210.1186/s40645-025-00696-5High-resolution monitoring of hydraulically induced acoustic emission activities using neural phase picking and matched filter analysisMakoto Naoi0Shiro Hirano1Youqing Chen2Department of Earth and Planetary Sciences, Faculty of Science, Hokkaido UniversityDepartment of Global Environment and Disaster Prevention Sciences, Faculty of Science and Technology, Hirosaki UniversityDepartment of Energy Science and Technology, Graduate School of Energy Science, Kyoto UniversityAbstract Monitoring the activities of very small seismic events or acoustic emissions (AEs) by estimating their hypocenters is useful in investigating fracturing processes in laboratory experiments. Here, we proposed an analysis procedure to develop high-quality AE event catalogs using deep learning and similar waveform searches from the continuous records of AE sensors. The proposed routine comprised the following five steps: 1) automatically developing catalogs using a conventional procedure, where the short-term average-to-long-term average ratio detects transient signals, and arrival times are identified using an autoregressive model and the Akaike information criterion; 2) training a deep learning model for arrival time reading (neural phase picker) using datasets based on the Step 1 catalog; 3) reproducing the AE catalog by applying the trained neural phase picker to continuous waveform records; 4) applying template matching to continuous waveform records based on the template events listed in the catalog in Step 3; and 5) determining the precise hypocenters of template events and newly detected events in Step 4 using a relative location method based on the cross-correlation travel time reading technique. We applied this procedure to continuous AE waveforms recorded at 10 MHz sampling during hydraulic fracturing experiments, resulting in a catalog with 10 times the number of events compared to the Step 1 catalog. This reproduced catalog revealed new aspects of the fracturing process, such as the propagating fracture front and tremor-like AE activity. The proposed procedure eliminates the need for manual labeling, thereby facilitating a fully automated analysis of the observed continuous records. This technique is expected to enhance our understanding of AE sensor records in laboratory experiments.https://doi.org/10.1186/s40645-025-00696-5Hydraulic fracturingAcoustic emissionsNeural phase pickerMatched filter analysis
spellingShingle Makoto Naoi
Shiro Hirano
Youqing Chen
High-resolution monitoring of hydraulically induced acoustic emission activities using neural phase picking and matched filter analysis
Progress in Earth and Planetary Science
Hydraulic fracturing
Acoustic emissions
Neural phase picker
Matched filter analysis
title High-resolution monitoring of hydraulically induced acoustic emission activities using neural phase picking and matched filter analysis
title_full High-resolution monitoring of hydraulically induced acoustic emission activities using neural phase picking and matched filter analysis
title_fullStr High-resolution monitoring of hydraulically induced acoustic emission activities using neural phase picking and matched filter analysis
title_full_unstemmed High-resolution monitoring of hydraulically induced acoustic emission activities using neural phase picking and matched filter analysis
title_short High-resolution monitoring of hydraulically induced acoustic emission activities using neural phase picking and matched filter analysis
title_sort high resolution monitoring of hydraulically induced acoustic emission activities using neural phase picking and matched filter analysis
topic Hydraulic fracturing
Acoustic emissions
Neural phase picker
Matched filter analysis
url https://doi.org/10.1186/s40645-025-00696-5
work_keys_str_mv AT makotonaoi highresolutionmonitoringofhydraulicallyinducedacousticemissionactivitiesusingneuralphasepickingandmatchedfilteranalysis
AT shirohirano highresolutionmonitoringofhydraulicallyinducedacousticemissionactivitiesusingneuralphasepickingandmatchedfilteranalysis
AT youqingchen highresolutionmonitoringofhydraulicallyinducedacousticemissionactivitiesusingneuralphasepickingandmatchedfilteranalysis