Deep learning of aftershock patterns following large earthquakes
Autor: | Martin Wattenberg, Brendan J. Meade, Fernanda B. Viégas, Phoebe M. R. DeVries |
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Rok vydání: | 2018 |
Předmět: |
geography
Multidisciplinary geography.geographical_feature_category 010504 meteorology & atmospheric sciences Artificial neural network Fault (geology) 010502 geochemistry & geophysics 01 natural sciences Tectonics Shear stress von Mises yield criterion Maximum magnitude Seismology Geology Aftershock 0105 earth and related environmental sciences Physical quantity |
Zdroj: | Nature. 560:632-634 |
ISSN: | 1476-4687 0028-0836 |
DOI: | 10.1038/s41586-018-0438-y |
Popis: | Aftershocks are a response to changes in stress generated by large earthquakes and represent the most common observations of the triggering of earthquakes. The maximum magnitude of aftershocks and their temporal decay are well described by empirical laws (such as Bath’s law1 and Omori’s law2), but explaining and forecasting the spatial distribution of aftershocks is more difficult. Coulomb failure stress change3 is perhaps the most widely used criterion to explain the spatial distributions of aftershocks4–8, but its applicability has been disputed9–11. Here we use a deep-learning approach to identify a static-stress-based criterion that forecasts aftershock locations without prior assumptions about fault orientation. We show that a neural network trained on more than 131,000 mainshock–aftershock pairs can predict the locations of aftershocks in an independent test dataset of more than 30,000 mainshock–aftershock pairs more accurately (area under curve of 0.849) than can classic Coulomb failure stress change (area under curve of 0.583). We find that the learned aftershock pattern is physically interpretable: the maximum change in shear stress, the von Mises yield criterion (a scaled version of the second invariant of the deviatoric stress-change tensor) and the sum of the absolute values of the independent components of the stress-change tensor each explain more than 98 per cent of the variance in the neural-network prediction. This machine-learning-driven insight provides improved forecasts of aftershock locations and identifies physical quantities that may control earthquake triggering during the most active part of the seismic cycle. Neural networks trained on data from about 130,000 aftershocks from around 100 large earthquakes improve predictions of the spatial distribution of aftershocks and suggest physical quantities that may control earthquake triggering. |
Databáze: | OpenAIRE |
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