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Short-term detection of volcanic unrest at Mt. Etna by means of a multi-station warning system

机译:短期检测火山爆发。埃特纳火山通过多站预警系统

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Early-warning assessment of a volcanic unrest requires that accurate information from monitoring is continuously gathered before volcanic activity starts. Seismic data are an optimal source of such information, overcoming safety problems due to dangerous conditions for field surveys or cloud cover that may hinder visibility. We designed a multi-station warning system based on the classification of patterns of the background seismic radiation, so-called volcanic tremor, by using Self-Organizing Maps (SOM) and fuzzy clustering. The classifier automatically detects patterns that are typical footprints of volcanic unrest. The issuance of the SOM colors on DEM allows their geographical visualization according to the stations of detection; this spatial location makes it possible to infer areas potentially impacted by eruptive phenomena. Tested at Mt. Etna (Italy), the classifier forecasted in hindsight patterns associated with fast-rising magma (typical of lava fountains) as well as a relatively long lead time of the outburst (lava flows from eruptive fractures). Receiver Operating Characteristics (ROC) curves gave an Area Under the Curve (AUC) ~0.8 indicative of a good detection accuracy that cannot be achieved from a mere random choice.
机译:火山动荡的预警评估要求在火山活动开始之前不断收集来自监测的准确信息。地震数据是此类信息的最佳来源,它可以克服由于野外勘测或云层覆盖的危险情况(可能会影响可见性)而导致的安全问题。我们通过使用自组织映射(SOM)和模糊聚类,基于背景地震辐射的模式分类(所谓的火山震颤),设计了一个多站预警系统。分类器自动检测火山爆发典型足迹的模式。在DEM上发布SOM颜色可以根据检测位置对其进行地理可视化;该空间位置使得可以推断出可能受到喷发现象影响的区域。在山测试。埃特纳火山(意大利),以快速上升的岩浆(典型的熔岩喷泉)以及相对较长的爆发提前时间(火山喷发破裂的熔岩流)相关的后视模式进行预测。接收器工作特性(ROC)曲线给出的曲线下面积(AUC)约为0.8,表明仅凭随机选择就无法实现良好的检测精度。

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