Litcius/Paper detail

DeepShake: Shaking Intensity Prediction Using Deep Spatiotemporal RNNs for Earthquake Early Warning

Avoy Datta, Daniel J. Wu, Weiqiang Zhu, Michael MX Cai, William L. Ellsworth

2022Seismological Research Letters36 citationsDOI

Abstract

Abstract We propose a deep spatiotemporal recurrent neural network, DeepShake, to project future shaking intensity directly from current ground-motion observations. DeepShake is a network-based forecasting model, able to predict future shaking intensity at all stations within a network given previously measured ground shaking. The model is not given any a priori knowledge of station locations; instead, it learns wave propagation amplitudes and delays solely from training data. We developed DeepShake with the 35,679 earthquakes from the 2019 Ridgecrest sequence. Tasked with alerting for modified Mercalli intensity (MMI) IV+ shaking on 3568 validation earthquakes at least 5 s in advance, DeepShake achieves an equal error rate of 11.4%. For the Mw 7.1 earthquake that hit Ridgecrest on 5 July 2019, DeepShake was able to provide targeted alerts to all stations inside the network 5 s prior to the arrival of MMI IV+ waveforms. DeepShake demonstrates that deep spatiotemporal neural networks can effectively provide one-step earthquake early warning with reasonable accuracy and latency.

Topics & Concepts

Mercalli intensity scaleArtificial neural networkWarning systemSeismologyIntensity (physics)Ground motionGeologyWaveformA priori and a posterioriEarthquake warning systemComputer scienceArtificial intelligencePeak ground accelerationTelecommunicationsRadarEpistemologyQuantum mechanicsPhysicsPhilosophySeismology and Earthquake StudiesSeismic Waves and Analysisearthquake and tectonic studies