Anikiev, Denis and Waheed, Umair bin and Staněk, František and Alexandrov, Dmitry and Hao, Qi and Iqbal, Naveed and Eisner, Leo (2022) Traveltime-based microseismic event location using artificial neural network. Frontiers in Earth Science, 10. ISSN 2296-6463
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Abstract
Location of earthquakes is a primary task in seismology and microseismic monitoring, essential for almost any further analysis. Earthquake hypocenters can be determined by the inversion of arrival times of seismic waves observed at seismic stations, which is a non-linear inverse problem. Growing amounts of seismic data and real-time processing requirements imply the use of robust machine learning applications for characterization of seismicity. Convolutional neural networks have been proposed for hypocenter determination assuming training on previously processed seismic event catalogs. We propose an alternative machine learning approach, which does not require any pre-existing observations, except a velocity model. This is particularly important for microseismic monitoring when labeled seismic events are not available due to lack of seismicity before monitoring commenced (e.g., induced seismicity). The proposed algorithm is based on a feed-forward neural network trained on synthetic arrival times. Once trained, the neural network can be deployed for fast location of seismic events using observed P-wave (or S-wave) arrival times. We benchmark the neural network method against the conventional location technique and show that the new approach provides the same or better location accuracy. We study the sensitivity of the proposed method to the training dataset, noise in the arrival times of the detected events, and the size of the monitoring network. Finally, we apply the method to real microseismic monitoring data and show that it is able to deal with missing arrival times in efficient way with the help of fine tuning and early stopping. This is achieved by re-training the neural network for each individual set of picked arrivals. To reduce the training time we used previously determined weights and fine tune them. This allows us to obtain hypocenter locations in near real-time.
Item Type: | Article |
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Subjects: | Academic Digital Library > Geological Science |
Depositing User: | Unnamed user with email info@academicdigitallibrary.org |
Date Deposited: | 24 Feb 2023 06:18 |
Last Modified: | 26 Feb 2024 04:24 |
URI: | http://publications.article4sub.com/id/eprint/774 |