From the detection of monitoring anomalies to the probabilistic forecast of the evolution of volcanic unrest: an entropy-based approach

IF 3.6 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Warner Marzocchi, Laura Sandri, Salvatore Ferrara, Jacopo Selva
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Abstract

Owing to the current lack of plausible and exhaustive physical pre-eruptive models, often volcanologists rely on the observation of monitoring anomalies to track the evolution of volcanic unrest episodes. Taking advantage from the work made in the development of Bayesian Event Trees (BET), here we formalize an entropy-based model to translate the observation of anomalies into probability of a specific volcanic event of interest. The model is quite general and it could be used as a stand-alone eruption forecasting tool or to set up conditional probabilities for methodologies like the BET and of the Bayesian Belief Network (BBN). The proposed model has some important features worth noting: (i) it is rooted in a coherent logic, which gives a physical sense to the heuristic information of volcanologists in terms of entropy; (ii) it is fully transparent and can be established in advance of a crisis, making the results reproducible and revisable, providing a transparent audit trail that reduces the overall degree of subjectivity in communication with civil authorities; (iii) it can be embedded in a unified probabilistic framework, which provides an univocal taxonomy of different kinds of uncertainty affecting the forecast and handles these uncertainties in a formal way. Finally, for the sake of example, we apply the procedure to track the evolution of the 1982–1984 phase of unrest at Campi Flegrei.

Abstract Image

从检测监测异常到火山动荡演变的概率预测:基于熵的方法
由于目前缺乏可信和详尽的火山爆发前物理模型,火山学家通常依靠观测监测异常现象来跟踪火山动乱事件的演变。利用贝叶斯事件树(BET)开发工作的优势,我们在此正式建立了一个基于熵的模型,将对异常现象的观测转化为特定火山事件的概率。该模型非常通用,可用作独立的火山爆发预报工具,或为贝叶斯事件树(BET)和贝叶斯信念网络(BBN)等方法设定条件概率。建议的模型有一些值得注意的重要特点:(i) 它植根于一个连贯的逻辑中,从熵的角度为火山学家的启发式信息提供了物理意义;(ii) 它是完全透明的,可以在危机发生之前建立,使结果可重复、可修改,提供了一个透明的审计线索,减少了与民政部门沟通时的主观性;(iii) 它可以嵌入一个统一的概率框架中,为影响预测的各种不确定性提供一个统一的分类,并以正式的方式处理这些不确定性。最后,为了举例说明,我们将该程序用于跟踪 1982-1984 年坎皮弗莱格雷骚乱阶段的演变。
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来源期刊
Bulletin of Volcanology
Bulletin of Volcanology 地学-地球科学综合
CiteScore
6.40
自引率
20.00%
发文量
89
审稿时长
4-8 weeks
期刊介绍: Bulletin of Volcanology was founded in 1922, as Bulletin Volcanologique, and is the official journal of the International Association of Volcanology and Chemistry of the Earth’s Interior (IAVCEI). The Bulletin of Volcanology publishes papers on volcanoes, their products, their eruptive behavior, and their hazards. Papers aimed at understanding the deeper structure of volcanoes, and the evolution of magmatic systems using geochemical, petrological, and geophysical techniques are also published. Material is published in four sections: Review Articles; Research Articles; Short Scientific Communications; and a Forum that provides for discussion of controversial issues and for comment and reply on previously published Articles and Communications.
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