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Monitoring activity regimes using pattern recognition of volcanic tremor data. Case studies from Mt. Etna

机译:使用火山震颤数据的模式识别监测活动制度。来自埃特纳火山的案例研究

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摘要

The monitoring of the seismic background signal – commonly referred to as volcanic tremor - has become a key tool for volcanic surveillance, particularly when field surveys are unsafe and/or visual observations are hampered by bad weather conditions. It is by now widely accepted that changes in the state of activity of the volcano show up in the volcanic tremor signature, such as amplitude and frequency content. Hence, the analysis of the characteristics of volcanic tremor leads us to pass from a mere monoparametric vision of the data to a multivariate one, which can be tackled with modern concepts of multivariate statistics and pattern recognition. For this purpose we apply a recently developed software package, which combines various concepts of unsupervised classification, in particular cluster analysis and Kohonen maps. Unsupervised classification is based on a suitable definition of similarity between patterns rather than on a-priori knowledge of their class membership. It aims at the identification of heterogeneities within a multivariate data set, thus permitting to focalize critical periods where significant changes in signal characteristics are encountered. In particular we exploit the flexibility of the software, as it allows a synoptical representation combining the results obtained with the Kohonen Maps and Cluster Analysis (Figs. 1, 2). For clustering we focus on Fuzzy Cluster Analysis, expressing the class membership of a pattern by a vector rather than a single value or ID. In so doing, we can effectively distinguish between phases in which volcanic tremor characteristics change rapidly and those where changes are smoother. The comparison of the time development of tremor characteristics obtained from other disciplines (such as volcanology, petrology) is intriguing, as it furnishes background information about the physical reasons of changes in tremor features. Particular attention is devoted to transitions from pre-eruptive to eruptive activity, such as the onset of Strombolian activity, often heralding episodes of lava fountaining. We investigate possible differences in the regimes of seismic radiation prior to summit (Strombolian or lava fountaining) and flank activity (opening of fissures, short-lived lava fountaining, lava flow emission) observed in 2007 and 2008, and compare them to changes in the patterns of eruptive activity based on field and other observations available for these years. We also discuss a possible near-real time application of these techniques, which may offer interesting perspectives to monitoring and early warning.
机译:地震本底信号的监视(通常称为火山震颤)已成为进行火山监视的重要工具,尤其是在野外调查不安全和/或恶劣天气条件下妨碍视觉观察的情况下。到现在为止,已经被广泛接受的是,火山活动状态的变化出现在火山震颤特征中,例如振幅和频率含量。因此,对火山震颤特征的分析使我们从单纯的数据单参数视野转变为多元数据视野,这可以用现代的多元统计和模式识别概念来解决。为此,我们使用了最近开发的软件包,该软件包结合了无监督分类的各种概念,尤其是聚类分析和Kohonen映射。无监督分类基于模式之间相似性的适当定义,而不是基于其类成员的先验知识。它旨在识别多变量数据集内的异质性,从而使重点关注遇到信号特征发生重大变化的关键时期。特别是,我们利用了软件的灵活性,因为它允许将与Kohonen映射和聚类分析(图1、2)获得的结果结合起来进行光学表示。对于聚类,我们专注于模糊聚类分析,它通过向量而不是单个值或ID来表达模式的类成员。这样,我们可以有效地区分火山震颤特征快速变化的阶段和变化较为平稳的阶段。从其他学科(如火山学,岩石学)获得的震颤特征随时间变化的比较很有趣,因为它提供了有关震颤特征变化的物理原因的背景信息。特别注意的是从喷发前活动到喷发活动的过渡,例如Strombolian活动的开始,通常预示着熔岩喷泉的发作。我们调查了在2007年和2008年观测到的山顶(斯特伦伯利山或熔岩喷泉)和侧面活动(裂隙打开,短时熔岩喷泉,熔岩流发射)之前的地震辐射体制可能存在的差异,并将其与下半年的变化进行比较。这些年来基于野外观测和其他观测得到的火山喷发活动模式。我们还将讨论这些技术的可能的近实时应用,这可能为监视和预警提供有趣的观点。

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