Thousands of Induced Earthquakes per Month in West Texas Detected Using EQCCT

Yangkang Chen, Alexandros Savvaidis, O.M. Saad, Daniel Siervo, Guo-Chin Dino Huang, Yunfeng Chen, I. Grigoratos, Sergey Fomel, Caroline Breton
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Abstract

West Texas has been a seismically active region in the past decade due to the injection of industrial wastewater and hydrocarbon exploitation. The newly founded Texas seismological network has provided a catalog that characterizes the intense seismicity down to a magnitude of 1.5 Ml. However, there are numerous small-magnitude events (Ml < 1.0) occurring every day that are not analyzed and reported, due to the prohibitively high workload to manually verify the picks from automatic picking methods. We propose to apply an advanced deep learning method, the earthquake compact convolutional transformer (EQCCT), to unleash our power in analyzing hundreds of small earthquakes per day in West Texas. The EQCCT method is embedded in an integrated-detection-and-location framework to output a highly complete earthquake catalog, given a list of available seismic stations, in a seamless way. The EQCCT has enabled us to detect and locate 50-times more earthquakes (mostly smaller than magnitude 1) than we previously could. We applied the EQCCT-embedded detection and location workflow to the Culberson and Mentone earthquake zone (CMEZ) in West Texas and detected thousands of earthquakes per month for consecutively three months. Further relocation of the new catalog revealed an unprecedentedly high-resolution and precise depiction of shallow and deep basement-rooted faults. The highly complete catalog also offers significant insights into the seismo-tectonic status of the CMEZ. Association with nearby injection activities also revealed a strong correlation between the rate of injected fluid volume and the number of small earthquakes.
使用 EQCCT 检测到得克萨斯州西部每月发生数千次诱发地震
在过去十年中,由于工业废水的注入和碳氢化合物的开采,德克萨斯州西部一直是地震活跃地区。新成立的德克萨斯州地震学网络提供了一份目录,描述了震级低至 1.5 Ml 的强烈地震。然而,每天都有大量小震级事件(震级小于 1.0)发生,但却没有得到分析和报告,原因是人工验证自动选取方法的选取结果工作量太大,令人望而却步。我们建议应用一种先进的深度学习方法--地震紧凑卷积变换器(EQCCT),以释放我们分析西得克萨斯州每天数百次小地震的能力。EQCCT 方法被嵌入到一个综合检测和定位框架中,在给出可用地震台站列表的情况下,以无缝方式输出高度完整的地震目录。EQCCT 使我们能够探测和定位的地震(大部分小于 1 级)比以前多 50 倍。我们将 EQCCT 嵌入式探测和定位工作流程应用于德克萨斯州西部的库尔伯森和门通地震带(CMEZ),连续三个月每月探测到数千次地震。对新目录的进一步重新定位揭示了对浅层和深层基底断层前所未有的高分辨率和精确描述。高度完整的目录还为了解 CMEZ 的地震构造状况提供了重要依据。与附近注入活动的关联还揭示了注入流体量速率与小地震数量之间的密切联系。
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