Understanding the timing of eruption end using a machine learning approach to classification of seismic time series
The timing and processes that govern the end of volcanic eruptions are not yet fully understood, and there currently exists no systematic definition for the end of a volcanic eruption. Currently, end of eruption is established either by generic criteria (typically 90 days after the end of visual sig...
Main Authors: | Manley, G, Pyle, D, Mather, T, Rodgers, M, Clifton, D, Stokell, BG, Thompson, G, Londoño, JM, Roman, DC |
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格式: | Journal article |
語言: | English |
出版: |
Elsevier
2020
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