Please use this identifier to cite or link to this item: http://hdl.handle.net/2122/15770
Authors: Langer, Horst* 
Falsaperla, Susanna* 
Spampinato, Salvatore* 
Messina, Alfio* 
Title: Energy threshold changes in volcanic activity at Mt. Etna (Italy) inferred from volcanic tremor
Journal: Scientific Reports 
Series/Report no.: /12 (2022)
Publisher: Springer Nature
Issue Date: 25-Oct-2022
DOI: 10.1038/s41598-022-20766-8
Keywords: Volcanic tremor
Volcano monitoring
Pattern recognition
Self Organizing maps
Fuzzy clustering
Mt. Etna
Subject Classification04.06. Seismology 
04.08. Volcanology 
05.01. Computational geophysics 
Abstract: From the 2010s on, pattern classification has proven an effective method for flagging alerts of volcano unrest before eruptive activity at Mt. Etna, Italy. The analysis has been applied online to volcanic tremor data, and has supported the surveillance activity of the volcano that provides timely information to Civil Protection and other authorities. However, after declaring an alert, no one knows how long the volcano unrest will last and if a climactic eruptive activity will actually begin. These are critical aspects when considering the effects of a prolonged state of alert. An example of longstanding unrest is related to the Christmas Eve eruption in 2018, which was heralded by several months of almost continuous Strombolian activity. Here, we discuss the usage of thresholds to detect conditions leading to paroxysmal activity, and the challenges associated with defining such thresholds, leveraging a dataset of 52 episodes of lava fountains occurring in 2021. We were able to identify conservative settings regarding the thresholds, allowing for an early warning of impending paroxysm in almost all cases (circa 85% for the first 4 months in 2021, and over 90% for the whole year). The chosen thresholds also proved useful to predict that a paroxysmal activity was about to end. Such information provides reliable numbers for volcanologists for their assessments, based on visual information, which may not be available in bad weather or cloudy conditions.
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