Artificial Intelligence and Machine Learning Tools for Improving Early Warning Systems of Volcanic Eruptions: The Case of Stromboli.

Roberto Longo, Giorgio Lacanna, Lorenzo Innocenti, Maurizio Ripepe
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Abstract

Explosive volcanic blasts can occur suddenly and without any clear precursors. Many volcanoes have erupted in the last years with no evident change in the eruptive parameters and with dramatic consequences for the population living nearby the volcano and the tourists visiting the active areas. In recent years, a big effort has been made to develop Early Warning systems to issue timely alerts to the population. At Stromboli volcano, the development of sensitive instruments to measure the deformation (tilt) of the ground has revealed that the volcano edifice is inflating tens of minutes before the explosion following a recurrent exponential ramp-like pattern. This scale-invariant of ground deformation has allowed the development of a quasi-deterministic Early Warning system which is operative since 2019. In this article we show how Artificial Intelligence and Machine Learning can be successfully applied to improve the efficiency and the sensitivity of Early Warning systems, provided the availability of a comprehensive experimental data set on past explosive events. The approach presented here for the Stromboli case demonstrates promising results also in forecasting the intensity of explosive events, offering valuable insights and new perspectives into the potential risks associated with volcanic activities.

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改进火山爆发预警系统的人工智能和机器学习工具:斯特龙博利案例。
火山爆发可能在没有任何明显前兆的情况下突然发生。过去几年中,许多火山在喷发参数没有明显变化的情况下爆发,给火山附近的居民和前往活跃地区的游客带来了严重后果。近年来,人们一直在努力开发预警系统,以便及时向人们发出警报。在斯特龙博利火山,测量地面变形(倾斜)的灵敏仪器的开发揭示出,在火山爆发前几十分钟,火山口正在按照一种重复的指数斜坡模式膨胀。这种地面变形的规模不变性使得准确定性预警系统得以开发,该系统已于 2019 年投入使用。在这篇文章中,我们展示了如何成功应用人工智能和机器学习来提高预警系统的效率和灵敏度,前提是要有过去爆炸事件的综合实验数据集。本文介绍的斯特龙博利案例方法在预测爆炸事件强度方面也取得了可喜的成果,为火山活动相关的潜在风险提供了宝贵的见解和新的视角。
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