Real-Time Detection of Volcanic Unrest and Eruption at Axial Seamount Using Machine Learning

Kaiwen Wang, F. Waldhauser, D. Schaff, M. Tolstoy, William S. D. Wilcock, Yen Joe Tan
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Abstract

Axial Seamount, an extensively instrumented submarine volcano, lies at the intersection of the Cobb–Eickelberg hot spot and the Juan de Fuca ridge. Since late 2014, the Ocean Observatories Initiative (OOI) has operated a seven-station cabled ocean bottom seismometer (OBS) array that captured Axial’s last eruption in April 2015. This network streams data in real-time, facilitating seismic monitoring and analysis for volcanic unrest detection and eruption forecasting. In this study, we introduce a machine learning (ML)-based real-time seismic monitoring framework for Axial Seamount. Combining both supervised and unsupervised ML and double-difference techniques, we constructed a comprehensive, high-resolution earthquake catalog while effectively discriminating between various seismic and acoustic events. These events include earthquakes generated by different physical processes, acoustic signals of lava–water interaction, and oceanic sources such as whale calls. We first built a labeled ML-based earthquake catalog that extends from November 2014 to the end of 2021 and then implemented real-time monitoring and seismic analysis starting in 2022. With the rapid determination of high-resolution earthquake locations and the capability to track potential precursory signals and coeruption indicators of magma outflow, this system may improve eruption forecasting by providing short-term constraints on Axial’s next eruption. Furthermore, our work demonstrates an effective application that integrates unsupervised learning for signal discrimination in real-time operation, which could be adapted to other regions for volcanic unrest detection and enhanced eruption forecasting.
利用机器学习实时检测轴心海山的火山骚动和喷发
轴心海山(Axial Seamount)位于科布-艾克尔伯格(Cobb-Eickelberg)热点和胡安-德富卡海脊(Juan de Fuca ridge)的交汇处,是一座拥有大量仪器的海底火山。自2014年底以来,海洋观测站计划(OOI)运行了一个七站电缆海底地震仪(OBS)阵列,该阵列捕捉到了2015年4月轴心的最后一次喷发。该网络实时传输数据流,为火山动荡探测和喷发预报的地震监测和分析提供了便利。在本研究中,我们为轴心海隆引入了基于机器学习(ML)的实时地震监测框架。结合监督和非监督 ML 以及双差分技术,我们构建了一个全面、高分辨率的地震目录,同时有效区分了各种地震和声学事件。这些事件包括由不同物理过程产生的地震、熔岩与水相互作用的声学信号以及鲸鱼叫声等海洋信号源。我们首先建立了从 2014 年 11 月到 2021 年底的基于 ML 的标注地震目录,然后从 2022 年开始实施实时监测和地震分析。该系统能够快速确定高分辨率地震位置,并跟踪岩浆流出的潜在前兆信号和裹挟指标,从而为轴心火山的下一次喷发提供短期约束,从而改进喷发预测。此外,我们的工作还展示了一种有效的应用,它在实时操作中整合了信号辨别的无监督学习,可适用于其他地区的火山动乱探测和增强型喷发预报。
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