2024
DOI: 10.1029/2023ea003363
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Data‐Knowledge Driven Hybrid Deep Learning for Earthquake Early Warning

J. Zhu,
S. Li,
J. Song

Abstract: Earthquake early warning (EEW) is of great significance in mitigating seismic disasters. Traditional EEW algorithms, which are knowledge‐driven approaches, rely on seismologists' analysis. The limited intensity measures were extracted by seismologists from P‐wave signals. And there is considerable uncertainty for predicting epicentral distance, magnitude, peak ground acceleration (PGA), and peak ground velocity (PGV). Currently, data‐driven deep learning methods with the strong learning abilities do not consid… Show more

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