OKSP: A Novel Deep Learning Automatic Event Detection Pipeline for Seismic Monitoring in Costa Rica

Leonardo van der Laat, Ronald J.L. Baldares, E. Chaves, E. Meneses
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Abstract

Small magnitude earthquakes are the most abundant but the most difficult to locate robustly and well due to their low amplitudes and high frequencies usually obscured by heterogeneous noise sources. They highlight crucial information about the stress state and the spatio-temporal behavior of fault systems during the earthquake cycle, therefore, its full characterization is then crucial for improving earthquake hazard assessment. Modern deep learning algorithms along with the increasing computational power and efficiency are exploiting the continuously growing seismological databases, worldwide, allowing scientists to improve the completeness for earthquake catalogs, systematically detecting and locating smaller magnitude earthquakes and reducing the errors introduced mainly by human intervention through traditional approaches in seismological observatories. In this work, we introduce OKSP, a novel deep learning automatic earthquake detection pipeline for seismic monitoring in Costa Rica. Using Kabré supercomputer from the Costa Rica High Technology Center, we applied OKSP to the day before and the first 5 days following the Puerto Armuelles, M6.5, earthquake that occurred on 26 June, 2019, along the Costa Rica-Panama border and found 1100 more earthquakes previously unidentified by the Volcanological and Seismological Observatory of Costa Rica. From these events, a total of 23 earthquakes with magnitudes below 1.0 occurred a day to hours prior to the mainshock, shedding light about the rupture initiation and earthquake interaction leading to the occurrence of this productive seismic sequence. Our observations show that for the study period, the model was 100% exhaustive and 82% precise, resulting in an F1 score of 0.90. This effort represents the very first attempt for automatically detecting earthquakes in Costa Rica using deep learning methods and demonstrates that, in the near future, earthquake monitoring routines will be carried out entirely by AI algorithms.
OKSP:一种新的哥斯达黎加地震监测深度学习自动事件检测管道
小震级地震是最丰富的,但由于其低振幅和高频率通常被非均匀噪声源所掩盖,因此最难以可靠和准确地定位。他们强调了地震周期中断层系统的应力状态和时空行为的关键信息,因此,断层系统的全面表征对于改进地震危险性评估至关重要。随着计算能力和效率的提高,现代深度学习算法正在利用世界范围内不断增长的地震数据库,使科学家能够提高地震目录的完整性,系统地检测和定位小震级地震,并减少主要由人为干预通过传统方法引入的误差在地震观测站。在这项工作中,我们介绍了一种新的用于哥斯达黎加地震监测的深度学习自动地震检测管道OKSP。利用哥斯达黎加高科技中心的kabr超级计算机,我们将OKSP应用于2019年6月26日哥斯达黎加-巴拿马边境发生的6.5级阿穆埃莱斯港地震的前一天和之后的前5天,发现了哥斯达黎加火山和地震观测站之前未发现的1100多起地震。从这些事件中,总共有23次震级在1.0以下的地震发生在主震前一天到几个小时,揭示了导致这一生产地震序列发生的破裂起始和地震相互作用。我们的观察表明,在研究期间,该模型是100%详尽和82%精确的,导致F1得分为0.90。这项工作代表了哥斯达黎加首次使用深度学习方法自动检测地震,并表明,在不久的将来,地震监测程序将完全由人工智能算法执行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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