Machine Learning in Volcanology: A Review

R. Carniel, S. Guzmán
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引用次数: 16

Abstract

A volcano is a complex system, and the characterization of its state at any given time is not an easy task. Monitoring data can be used to estimate the probability of an unrest and/or an eruption episode. These can include seismic, magnetic, electromagnetic, deformation, infrasonic, thermal, geochemical data or, in an ideal situation, a combination of them. Merging data of different origins is a non-trivial task, and often even extracting few relevant and information-rich parameters from a homogeneous time series is already challenging. The key to the characterization of volcanic regimes is in fact a process of data reduction that should produce a relatively small vector of features. The next step is the interpretation of the resulting features, through the recognition of similar vectors and for example, their association to a given state of the volcano. This can lead in turn to highlight possible precursors of unrests and eruptions. This final step can benefit from the application of machine learning techniques, that are able to process big data in an efficient way. Other applications of machine learning in volcanology include the analysis and classification of geological, geochemical and petrological “static” data to infer for example, the possible source and mechanism of observed deposits, the analysis of satellite imagery to quickly classify vast regions difficult to investigate on the ground or, again, to detect changes that could indicate an unrest. Moreover, the use of machine learning is gaining importance in other areas of volcanology, not only for monitoring purposes but for differentiating particular geochemical patterns, stratigraphic issues, differentiating morphological patterns of volcanic edifices, or to assess spatial distribution of volcanoes. Machine learning is helpful in the discrimination of magmatic complexes, in distinguishing tectonic settings of volcanic rocks, in the evaluation of correlations of volcanic units, being particularly helpful in tephrochronology, etc. In this chapter we will review the relevant methods and results published in the last decades using machine learning in volcanology, both with respect to the choice of the optimal feature vectors and to their subsequent classification, taking into account both the unsupervised and the supervised approaches.
火山学中的机器学习:综述
火山是一个复杂的系统,在任何给定的时间描述它的状态都不是一件容易的事。监测数据可用于估计动乱和/或爆发事件的可能性。这些数据包括地震、磁、电磁、变形、次声、热、地球化学数据,或者在理想情况下,它们的组合。合并不同来源的数据是一项非常重要的任务,通常甚至从同构时间序列中提取少量相关且信息丰富的参数都已经具有挑战性。事实上,描述火山状态的关键是一个数据简化的过程,这个过程应该产生一个相对较小的特征向量。下一步是对结果特征的解释,通过识别相似的向量,例如,它们与给定火山状态的关联。这反过来又会导致动乱和火山爆发的可能前兆。最后一步可以从机器学习技术的应用中受益,机器学习技术能够以有效的方式处理大数据。机器学习在火山学中的其他应用包括对地质、地球化学和岩石学“静态”数据进行分析和分类,以推断(例如,观察到的沉积物的可能来源和机制),对卫星图像进行分析,以快速对难以在地面上调查的广大地区进行分类,或者再次检测可能表明不稳定的变化。此外,机器学习的使用在火山学的其他领域越来越重要,不仅用于监测目的,而且用于区分特定的地球化学模式,地层问题,区分火山大厦的形态模式,或评估火山的空间分布。机器学习在岩浆复合体的识别、火山岩构造背景的区分、火山单元相关性的评价等方面都很有帮助,在年代学方面尤其有帮助。在本章中,我们将回顾过去几十年在火山学中使用机器学习发表的相关方法和结果,包括最佳特征向量的选择和随后的分类,同时考虑到无监督和有监督的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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