利用深度学习监测地震,以土耳其卡赫拉曼马拉什地震余震序列为例

IF 3.2 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
Solid Earth Pub Date : 2024-02-09 DOI:10.5194/se-15-197-2024
Wei Li, Megha Chakraborty, Jonas Köhler, Claudia Quinteros-Cartaya, Georg Rümpker, Nishtha Srivastava
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引用次数: 0

摘要

摘要地震相位选取和震级估计是地震监测和地震事件分析的基本环节。准确的相位选取可精确描述地震波到达的特征,有助于更好地理解地震事件。同样,准确的震级估算可提供有关地震规模和潜在影响的重要信息。这些要素结合在一起,增强了我们有效监测地震活动的能力。在本研究中,我们探索了利用连续地震记录进行地震检测和震级估计的深度学习技术应用。我们的方法引入了 DynaPicker,它利用动态卷积神经网络检测连续地震数据中的地震体波相位。我们使用各种开源地震数据集(包括窗口格式和连续记录)演示了 DynaPicker 的有效性。我们评估了 DynaPicker 在地震波相位识别和到达时间选取方面的性能,以及在有噪声的情况下使用低震级地震数据进行地震波相位分类的鲁棒性。此外,我们还将相位到达时间信息整合到之前发布的深度学习模型中,用于震级估计。我们将这一工作流程应用于土耳其地震后余震序列的连续记录。这一案例研究的结果展示了我们的方法在地震检测、相位拾取和震级估计方面的可靠性,为地震事件分析提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Earthquake monitoring using deep learning with a case study of the Kahramanmaras Turkey earthquake aftershock sequence
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.
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来源期刊
Solid Earth
Solid Earth GEOCHEMISTRY & GEOPHYSICS-
CiteScore
6.90
自引率
8.80%
发文量
78
审稿时长
4.5 months
期刊介绍: Solid Earth (SE) is a not-for-profit journal that publishes multidisciplinary research on the composition, structure, dynamics of the Earth from the surface to the deep interior at all spatial and temporal scales. The journal invites contributions encompassing observational, experimental, and theoretical investigations in the form of short communications, research articles, method articles, review articles, and discussion and commentaries on all aspects of the solid Earth (for details see manuscript types). Being interdisciplinary in scope, SE covers the following disciplines: geochemistry, mineralogy, petrology, volcanology; geodesy and gravity; geodynamics: numerical and analogue modeling of geoprocesses; geoelectrics and electromagnetics; geomagnetism; geomorphology, morphotectonics, and paleoseismology; rock physics; seismics and seismology; critical zone science (Earth''s permeable near-surface layer); stratigraphy, sedimentology, and palaeontology; rock deformation, structural geology, and tectonics.
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