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Predicting Imminence of Analog Megathrust Earthquakes With Machine Learning: Implications for Monitoring Subduction Zones

机译:用机器学习预测模拟巨大地震的植入:监测俯冲区的影响

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Subduction zones are monitored using space geodesy with increasing resolution, with the aim of better capturing the deformation accompanying the seismic cycle. Here, we investigate data characteristics that maximize the performance of a machine learning binary classifier predicting slip-event imminence. We overcome the scarcity of recorded instances from real subduction zones using data from a seismotectonic analog model monitored with a spatially dense, continuously recording onshore geodetic network. We show that a 70-85 km-wide coastal swath recording interseismic deformation gives the most important information on slip imminence. Prediction performances are mainly influenced by the alarm duration (amount of time that we consider an event as imminent), with density of stations and record length playing a secondary role. The techniques developed in this study are most likely applicable in regions of slow earthquakes, where stick-slip-like failures occur at time intervals of months to years.
机译:使用空间大地测量越来越多的分辨率来监测俯冲区域,目的是更好地捕获伴随地震循环的变形。在这里,我们调查了最大化机器学习二进制分类器的性能预测滑动事件侵犯的数据特性。我们使用来自在空间密集的地理型陆地线网络的地震型模拟模型的地震型模拟模型的数据克服了来自真实俯冲区域的记录实例的稀缺。我们展示了70-85公里宽的沿海条纹录音造型变形,给出了关于滑坡最重要的信息。预测性能主要受到报警持续时间的影响(我们认为事件的时间量为即将到来),电台密度和记录长度播放次要角色。本研究中开发的技术最有可能适用于慢地震的区域,其中粘性滑移的故障在几个月到几年的时间间隔发生。

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