Feb. 13, 2024, 5:45 a.m. | Cheng Shi Maarten V. de Hoop Ivan Dokmani\'c

cs.LG updates on arXiv.org arxiv.org

Our understanding of regional seismicity from multi-station seismograms relies on the ability to associate arrival phases with their originating earthquakes. Deep-learning-based phase detection now detects small, high-rate arrivals from seismicity clouds, even at negative magnitudes. This new data could give important insight into earthquake dynamics, but it is presents a challenging association task. Existing techniques relying on coarsely approximated, fixed wave speed models fail in this unexplored dense regime where the complexity of unknown wave speed cannot be ignored. We …

association cs.lg data detection dynamics earthquake earthquakes eess.sp fields insight negative physics.geo-ph rate regional small travel understanding

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