Volcanic Precursor Revealed by Machine Learning Offers New Eruption Forecasting Capability
Kaiwen Wang,
Felix Waldhauser,
Maya Tolstoy
et al.
Abstract:Seismicity at active volcanoes provides crucial constraints on the dynamics of magma systems and complex fault activation processes preceding and during an eruption. We characterize time‐dependent spectral features of volcanic earthquakes at Axial Seamount with unsupervised machine learning (ML) methods, revealing mixed frequency signals that rapidly increase in number about 15 hr before eruption onset. The events migrate along pre‐existing fissures, suggesting that they represent brittle crack opening driven … Show more
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