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2023
DOI: 10.1038/s41598-023-43181-z
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Sharpen data-driven prediction rules of individual large earthquakes with aid of Fourier and Gauss

In Ho Cho

Abstract: Predicting individual large earthquakes (EQs)’ locations, magnitudes, and timing remains unreachable. The author’s prior study shows that individual large EQs have unique signatures obtained from multi-layered data transformations. Via spatio-temporal convolutions, decades-long EQ catalog data are transformed into pseudo-physics quantities (e.g., energy, power, vorticity, and Laplacian), which turn into surface-like information via Gauss curvatures. Using these new features, a rule-learning machine learning ap… Show more

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References 35 publications
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