A semblance-based microseismic event detector for DAS data

IF 2.8 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Juan Porras, Davide Pecci, Gian Maria Bocchini, Sonja Gaviano, Michele De Solda, Katinka Tuinstra, Federica Lanza, Andrea Tognarelli, Eusebio Stucchi, Francesco Grigoli
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Abstract

Summary Distributed Acoustic Sensing (DAS) is becoming increasingly popular in microseismic monitoring operations. This data acquisition technology converts fiber-optic cables into dense arrays of seismic sensors that can sample the seismic wavefield produced by active or passive sources with a high spatial density, over distances ranging from a few hundred meters to tens of kilometers. However, standard microseismic data analysis procedures have several limitations when dealing with the high spatial (inter-sensor spacing up to sub-meter scale) sampling rates of DAS systems. Here we propose a semblance-based seismic event detection method that fully exploits the high spatial sampling of the DAS data. The detector identifies seismic events by computing waveform coherence of the seismic wavefield along geometrical hyperbolic trajectories for different curvatures and positions of the vertex, which are completely independent from external information (i.e. velocity models). The method detects a seismic event when the coherence values overcome a given threshold and satisfies our clustering criteria. We first validate our method on synthetic data and then apply it to real data from the FORGE geothermal experiment in Utah, USA. Our method detects about two times the number of events obtained with a standard method when applied to 24h of data.
基于形似的 DAS 数据微地震事件检测器
摘要 分布式声学传感(DAS)在微地震监测作业中越来越受欢迎。这种数据采集技术将光纤电缆转换成密集的地震传感器阵列,可以对主动源或被动源产生的地震波场进行高空间密度采样,采样距离从几百米到几十公里不等。然而,标准的微地震数据分析程序在处理 DAS 系统的高空间(传感器间距达到亚米级)采样率时存在一些限制。在此,我们提出一种基于形似的地震事件检测方法,充分利用 DAS 数据的高空间采样率。该检测器通过计算不同曲率和顶点位置的几何双曲线轨迹上地震波场的波形相干性来识别地震事件,这些波形相干性与外部信息(即速度模型)完全无关。当相干值超过给定阈值并满足我们的聚类标准时,该方法就能检测到地震事件。我们首先在合成数据上验证了我们的方法,然后将其应用于美国犹他州 FORGE 地热实验的真实数据。当应用于 24 小时的数据时,我们的方法检测到的事件数量大约是标准方法的两倍。
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来源期刊
Geophysical Journal International
Geophysical Journal International 地学-地球化学与地球物理
CiteScore
5.40
自引率
10.70%
发文量
436
审稿时长
3.3 months
期刊介绍: Geophysical Journal International publishes top quality research papers, express letters, invited review papers and book reviews on all aspects of theoretical, computational, applied and observational geophysics.
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