Earthquake monitoring using deep learning with a case study of the Kahramanmaras Turkey earthquake aftershock sequence

Author:

Li Wei,Chakraborty Megha,Köhler Jonas,Quinteros-Cartaya ClaudiaORCID,Rümpker GeorgORCID,Srivastava NishthaORCID

Abstract

Abstract. Seismic phase picking and magnitude estimation are fundamental aspects of earthquake monitoring and seismic event analysis. Accurate phase picking allows for precise characterization of seismic wave arrivals, contributing to a better understanding of earthquake events. Likewise, accurate magnitude estimation provides crucial information about an earthquake's size and potential impact. Together, these components enhance our ability to monitor seismic activity effectively. In this study, we explore the application of deep-learning techniques for earthquake detection and magnitude estimation using continuous seismic recordings. Our approach introduces DynaPicker, which leverages dynamic convolutional neural networks to detect seismic body-wave phases in continuous seismic data. We demonstrate the effectiveness of DynaPicker using various open-source seismic datasets, including both window-format and continuous recordings. We evaluate its performance in seismic phase identification and arrival-time picking, as well as its robustness in classifying seismic phases using low-magnitude seismic data in the presence of noise. Furthermore, we integrate the phase arrival-time information into a previously published deep-learning model for magnitude estimation. We apply this workflow to continuous recordings of aftershock sequences following the Turkey earthquake. The results of this case study showcase the reliability of our approach in earthquake detection, phase picking, and magnitude estimation, contributing valuable insights to seismic event analysis.

Funder

Bundesministerium für Bildung und Forschung

Publisher

Copernicus GmbH

Reference44 articles.

1. Agarap, A. F.: Deep learning using rectified linear units (relu), arXiv [preprint], arXiv:1803.08375, https://doi.org/10.48550/arXiv.1803.08375, 2018. a

2. Akazawa, T.: A technique for automatic detection of onset time of P-and S-phases in strong motion records, in: Proc. of the 13th World Conf. on Earthquake Engineering, vol. 786, p. 786, Vancouver, Canada, https://www.iitk.ac.in/nicee/wcee/article/13_786.pdf (last access: May 2023), 1–4 August 2004, Vancouver B.C., Canada, 2004. a, b

3. Allen, R. V.: Automatic earthquake recognition and timing from single traces, B. Seismol. Soc. Am., 68, 1521–1532, 1978. a

4. Bogazici University Kandilli Observatory and Earthquake Research Institute National Earthquake Monitoring Center: http://www.koeri.boun.edu.tr/sismo/2/latest-earthquakes/automatic-solutions/, last access: May 2023. a

5. California Institute of Technology (Caltech): Southern California Seismic Network, https://scedc.caltech.edu/data/deeplearning.html, last access: May 2023. a

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