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首页> 外文期刊>Journal of Volcanology and Geothermal Research >Understanding the timing of eruption end using a machine learning approach to classification of seismic time series
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Understanding the timing of eruption end using a machine learning approach to classification of seismic time series

机译:了解爆发端的时序使用机器学习方法来分类地震时间序列

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The timing and processes that govern the end of volcanic eruptions are not yet fully understood, and there currently exists no systematic definition for the end of a volcanic eruption. Currently, end of eruption is established either by generic criteria (typically 90days after the end of visual signals of eruption) or criteria specific to a given volcano. We explore the application of supervised machine learning classification methods: Support Vector Machine, Logistic Regression, Random Forest and Gaussian Process Classifiers and define a decisiveness index D to evaluate the consistency of the classifications obtained by these models. We apply these methods to seismic time series from two volcanoes chosen because they display contrasting styles of eruption: Telica (Nicaragua) and Nevado del Ruiz (Colombia). We find that, for both volcanic systems, the end-date we obtain by classification of seismic data is 2-4 months later than end-dates defined by the last occurrence of visual eruption (such as ash emission). This finding is in agreement with previous, general definitions of eruption end and is consistent across models. Our classifications have a higher correspondence of eruptive activity with visual activity than with database records of eruption start and end. We analyze the relative importance of the different features of seismic activity used in our models (e.g. peak event amplitude, daily event counts) and find little consistency between the two volcanic systems in terms of the most important features which determine whether activity is eruptive or non-eruptive. These initial results look promising and our approach may offer a robust tool to help determine when an eruption has ended in the absence of visual confirmation. (C) 2020 Elsevier B.V. All rights reserved.
机译:尚未完全理解管理火山爆发结束的时序和过程,目前没有对火山爆发结束的系统定义。目前,爆发结束是通过通用标准建立(通常在爆发的视觉信号结束后90天)或特定于给定火山的标准。我们探讨了监督机器学习分类方法的应用:支持向量机,逻辑回归,随机森林和高斯过程分类器,并定义判断性指数D,以评估这些模型所获得的分类的一致性。我们将这些方法应用于选定的两座火山的地震时间序列,因为它们展示了爆发的对比样式:Telica(尼加拉瓜)和尼沃达德德·鲁瑞斯(哥伦比亚)。我们发现,对于火山系统来说,通过地震数据分类获得的结束日期是2-4个月之后,而不是由最后一次发生视觉爆发(如灰烬发射)定义的终点日期。这一发现与先前的爆发结束的一般定义一致,并且跨模型一致。我们的分类与视觉活动的爆发活动的对应关系比爆发的数据库记录开始和结束。我们分析了我们模型中使用的地震活动的不同特征的相对重要性(例如,峰值事件幅度,日常事件计数),并且在最重要的特征方面,两种火山系统之间的一致一致性,这些特征决定了是否发生了爆发或非 - 破产。这些初始结果看起来很有希望,我们的方法可以提供强大的工具,以帮助确定在没有视觉确认的情况下爆发的何时已经结束。 (c)2020 Elsevier B.v.保留所有权利。

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