2022
DOI: 10.48550/arxiv.2208.14564
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QuakeFlow: A Scalable Machine-learning-based Earthquake Monitoring Workflow with Cloud Computing

Abstract: Earthquake monitoring workflows are designed to detect earthquake signals and to determine source characteristics from continuous waveform data. Recent developments in deep learning seismology have been used to improve tasks within earthquake monitoring workflows that allow the fast and accurate detection of up to orders of magnitude more small events than are present in conventional catalogs.To facilitate the application of machine-learning algorithms to large-volume seismic records at scale, we developed a c… Show more

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