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Real-time tsunami data assimilation of S-Net pressure gauge records during the 2016 fukushima earthquake

机译:2016年福岛地震期间S净压力表记录的实时海啸数据同化

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摘要

The 2016 Fukushima earthquake (M 7.4) generated a moderate tsunami, which was recorded by the offshore pressure gauges of the Seafloor Observation Network for Earthquakes and Tsunamis (S-net). We used 28 S-net pressure gauge records for tsunami data assimilation and forecasted the tsunami waveforms at four tide gauges on the Sanriku coast. The S-net raw records were processed using two different methods. In the first method, we removed the tidal components by polynomial fitting and applied a low-pass filter. In the second method, we used a real-time tsunami detection algorithm based on ensemble empirical mode decomposition to extract the tsunami signals, imitating real-time operations for tsunami early warning. The forecast accuracy scores of the two detection methods are 60% and 74%, respectively, for a time window of 35 min, but they improve to 89% and 94% if we neglect the stations with imperfect modeling or insufficient offshore observations. Hence, the tsunami data assimilation approach can be put into practice with the help of the real-time tsunami detection algorithm.
机译:2016年福岛地震(M 7.4)产生了一个适度的海啸,由海底观察网络的海底压力表进行地震和海啸(S-NET)记录。我们使用了28个S净压力表,用于海啸数据同化,并预测了Sanriku海岸的四个潮汐仪表的海啸波形。使用两种不同的方法处理S-Net原始记录。在第一种方法中,我们通过多项式拟合除去潮汐组件并施加了低通滤波器。在第二种方法中,我们使用了基于集合经验模式分解的实时海啸检测算法来提取海啸信号,模仿海啸预警的实时操作。两种检测方法的预测精度分别分别为35分钟的时间窗口为60%和74%,但如果我们忽略具有不完美建模或近海观察不足的电台,它们会提高到89%和94%。因此,可以在实时海啸检测算法的帮助下进行海啸数据同化方法。

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  • 来源
    《Oceanographic Literature Review》 |2021年第9期|1961-1962|共2页
  • 作者

    Y. Wang; K. Satake;

  • 作者单位

    Earthquake Research Institute The University of Tokyo Tokyo Japan;

    Earthquake Research Institute The University of Tokyo Tokyo Japan;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
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