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ST-HASSET for volcanic hazard assessment: A Python tool for evaluating the evolution of unrest indicators

机译:ST-HASSET用于火山危害评估:一种用于评估动荡指标演变的Python工具

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Short-term hazard assessment is an important part of the volcanic management cycle, above all at the onset of an episode of volcanic agitation (unrest). For this reason, one of the main tasks of modern volcanology is to use monitoring data to identify and analyse precursory signals and so determine where and when an eruption might occur. This work follows from Sobradelo and Marti [Short-term volcanic hazard assessment through Bayesian inference: retrospective application to the Pinatubo 1991 volcanic crisis. Journal of Volcanology and Geothermal Research 290, 111, 2015] who defined the principle for a new methodology for conducting short-term hazard assessment in unrest volcanoes. Using the same case study, the eruption on Pinatubo (15 June 1991), this work introduces a new free Python tool, ST-HASSET, for implementing Sobradelo and Marti (2015) methodology in the time evolution of unrest indicators in the volcanic short-term hazard assessment. Moreover, this tool is designed for complementing long-term hazard assessment with continuous monitoring data when the volcano goes into unrest. It is based on Bayesian inference and transforms different pre-eruptive monitoring parameters into a common probabilistic scale for comparison among unrest episodes from the same volcano or from similar ones. This allows identifying common pre-eruptive behaviours and patterns. ST-HASSET is especially designed to assist experts and decision makers as a crisis unfolds, and allows detecting sudden changes in the activity of a volcano. Therefore, it makes an important contribution to the analysis and interpretation of relevant data for understanding the evolution of volcanic unrest. (C) 2016 Elsevier Ltd. All rights reserved.
机译:短期危害评估是火山管理周期的重要组成部分,尤其是在发生火山爆发(动荡)时。因此,现代火山学的主要任务之一是使用监视数据来识别和分析前兆信号,从而确定可能在何时何地发生喷发。这项工作来自Sobradelo和Marti [通过贝叶斯推断进行的短期火山灾害评估:追溯到1991年Pinatubo火山危机的应用。火山与地热研究杂志290,111,2015],他为在动荡的火山中进行短期危害评估的新方法定义了原理。使用相同的案例研究,在Pinatubo上喷发(1991年6月15日),该工作引入了一个新的免费Python工具ST-HASSET,用于在火山短时动荡指标的时间演变中实施Sobradelo和Marti(2015)方法。长期危害评估。此外,该工具旨在在火山爆发时用连续的监测数据补充长期危害评估。它基于贝叶斯推论,并将不同的喷发前监测参数转换为通用的概率标度,以便在同一火山或相似火山的动荡发作之间进行比较。这允许识别常见的喷发前行为和模式。 ST-HASSET专门设计用于在危机发生时协助专家和决策者,并允许检测火山活动的突然变化。因此,它对有关数据的分析和解释,为理解火山爆发的演变做出了重要贡献。 (C)2016 Elsevier Ltd.保留所有权利。

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