AWESAM: A Python Module for Automated Volcanic Event Detection Applied to Stromboli
Darius Fenner, Georg Ruempker, Wei Li, Megha Chakraborty, Johannes, Faber, Jonas Koehler, Horst Stoecker, and Nishtha Srivastava

TL;DR
AWESAM is an automated Python tool that detects volcanic events from seismic data, reducing manual effort and enabling large-scale eruption cataloging, demonstrated on Stromboli with high detection accuracy.
Contribution
The paper introduces AWESAM, a novel automated seismic event detection module that operates without extensive training data, improving efficiency and scalability in volcanic monitoring.
Findings
Detects ~95% of eruptions with SNR above 3
Successfully applied to over 290,000 events at Stromboli
Enables derivation of amplitude-frequency relationships
Abstract
Many active volcanoes in the world exhibit Strombolian activity, which is typically characterized by relatively frequent mild events and also by rare and much more destructive major explosions and paroxysms. Detailed analyses of past major and minor events can help to understand the eruptive behavior of the volcano and the underlying physical and chemical processes. Catalogs of volcanic eruptions may be established using continuous seismic recordings at stations in the proximity of volcanoes. However, in many cases, the analysis of the recordings relies heavily on the manual picking of events by human experts. Recently developed Machine Learning-based approaches require large training data sets which may not be available a priori. Here, we propose an alternative automated approach: the Adaptive-Window Volcanic Event Selection Analysis Module (AWESAM). This process of creating event…
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Taxonomy
TopicsSeismology and Earthquake Studies · Seismic Waves and Analysis · Earthquake Detection and Analysis
