地震学
地质学
地震模拟
预警系统
地震位置
波形
地震小区分带
地震预警系统
前震
地震情景
城市地震危险性
地震伤亡估计
地震震级
地震预报
地震灾害
诱发地震
震级(天文学)
余震
计算机科学
雷达
缩放比例
物理
天文
电信
数学
几何学
作者
Xiong Zhang,Miao Zhang,Xiao Tian
摘要
Earthquake early warning systems are required to report earthquake locations and magnitudes as quickly as possible before the damaging S wave arrival to mitigate seismic hazards. Deep learning techniques provide potential for extracting earthquake source information from full seismic waveforms instead of seismic phase picks. We developed a novel deep learning earthquake early warning system that utilizes fully convolutional networks to simultaneously detect earthquakes and estimate their source parameters from continuous seismic waveform streams. The system determines earthquake location and magnitude as soon as one station receives earthquake signals and evolutionarily improves the solutions by receiving continuous data. We apply the system to the 2016 Mw 6.0 earthquake in Central Apennines, Italy and its subsequent sequence. Earthquake locations and magnitudes can be reliably determined as early as four seconds after the earliest P phase, with mean error ranges of 6.8-3.7 km and 0.31-0.23, respectively.
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