A dataset from a multi-station analysis of volcanic tremor at Mt. Etna, Italy, in 2021 (MAVT2021)

Type Dataset Class type Dati Sismologici e Infrasonici (terrestri e marini)

Etna Volcanic Unrest Volcanic Tremor Machine Learning Pattern Classification Identification Of Thresholds


The dataset refers to seismic data analyses with a machine learning method in 2021, during which 52 lava fountain episodes occurred at Mt. Etna, Italy. These lava fountains were short-lived (a few hours-long) phenomena, which stemmed from the Southeast Crater, the youngest of the summit craters of the volcano. Each episode was preceded, accompanied, and followed by variations in the amplitude and frequency content of the background seismic radiation, the so-called volcanic tremor. In this perspective, we refined a machine learning analysis based on pattern classification, which was encompassed in the multi-station warning system by Spampinato et al. (2019). The system flags alerts exploiting the spectral characteristics of the volcanic tremor, continuously acquired by the stations of the Etna permanent seismic network. In its original configuration, which combines Self-Organizing Maps (SOM; Kohonen, 2001) and fuzzy clustering analysis (Zadeh, 1965), the system applied a voting scheme based on the number of stations and their weight for which alert criteria are met. Using the warning information of the original configuration, we exploited the application of thresholds to forecast higher levels of volcanic activity, from unrest to paroxysms. In doing so, we considered the values of the RGB (Red/Green/Blue) color code, which are the results of the pattern classification of the volcanic tremor data. In particular, we focused on the red color (R) which tends towards the value 1 (full red saturation) at the climax of each lava fountain. Here, we provide the log files for the time span from January 1 to December 31, 2021, considering five threshold values of R, i.e., 0.50, 0.52, 0.55, 0.58, and 0.60. For each file we report: the UTC time (yyyymmdd_hh:mm) with increasing step of five minutes; the number of active stations; the value of the alert flag (0= no alert; 1=alert) for each station considered (for example, ECNE) which reached or topped a given value of R (for example, red>0.6).

Acknowledgments This work was designed within the project IMPACT (A multidisciplinary Insight on the kinematics and dynamics of Magmatic Processes at Mt. Etna Aimed at identifying preCursor phenomena and developing early warning sysTems). IMPACT belongs to the Progetti Dipartimentali INGV [DIP7], https://progetti.ingv.it/index.php/it/progetti-dipartimentali/vulcani/impact#informazioni-sul-progetto.

Data and Resources

This dataset has no data

Cite as

Falsaperla S., Langer H., Spampinato S., Messina A. A. (2022). A dataset from a multi-station analysis of volcanic tremor at Mt. Etna, Italy, in 2021 (MAVT2021) (Version 1) [Data set]. Istituto Nazionale di Geofisica e Vulcanologia (INGV). https://doi.org/10.13127/etna/mavt2021

Available data encoding formats zip ascii

Field Value
Version 1
Dataset Identifier (DOI) 10.13127/etna/mavt2021
Acronym MAVT2021
Other Identifier OthId Identifier: ingv_833
OthId Organization: INGV
Dataset Themes TECH
Publisher Istituto Nazionale di Geofisica e Vulcanologia (INGV)
Release Date 2022-07
Modification Date 07-07-2022
Geographical Name Organizational Unit Responsible Competence Area
GeoNames URL Not available
Dataset Languages ITA
Temporal Coverage From 01-01-2021
Rights holder Istituto Nazionale di Geofisica e Vulcanologia (INGV)
ROR 00qps9a02
IPA ingv
Update frequency never
Version Of Not available
Spatial extent {"type": "MultiPolygon","coordinates": [[[ [14.93,37.79], [15.11,37.79], [15.11,37.68], [14.93,37.68], [14.93,37.79] ]]]}
Authors FALSAPERLA Susanna
Istituto Nazionale di Geofisica e Vulcanologia (INGV), Italy
LANGER Horst
Istituto Nazionale di Geofisica e Vulcanologia (INGV), Italy
SPAMPINATO Salvatore
Istituto Nazionale di Geofisica e Vulcanologia (INGV), Italy
MESSINA Alfio Alex
Istituto Nazionale di Geofisica e Vulcanologia (INGV), Italy

Data schema