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Earthquake forecasting based on data assimilation: sequential Monte Carlo methods for renewal point processes

机译:基于数据同化的地震预报:更新点过程的顺序蒙特卡洛方法

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Data assimilation is routinely employed in meteorology, engineering and computer sciences to optimally combine noisy observations with prior model information for obtaining better estimates of a state, and thus better forecasts, than achieved by ignoring data uncertainties. Earthquake forecasting, too, suffers from measurement errors and partial model information and may thus gain significantly from data assimilation. We present perhaps the first fully implementable data assimilation method for earthquake forecasts generated by a point-process model of seismicity. We test the method on a synthetic and pedagogical example of a renewal process observed in noise, which is relevant for the seismic gap hypothesis, models of characteristic earthquakes and recurrence statistics of large quakes inferred from paleoseismic data records. To address the non-Gaussian statistics of earthquakes, we use sequential Monte Carlo methods, a set of flexible simulation-based methods for recursively estimating arbitrary posterior distributions. We perform extensive numerical simulations to demonstrate the feasibility and benefits of forecasting earthquakes based on data assimilation.
机译:数据同化通常用于气象学,工程学和计算机科学中,以最佳地将嘈杂的观测值与先前的模型信息相结合,以获得比通过忽略数据不确定性获得的更好的状态估计,从而获得更好的预测。地震预报也遭受测量误差和部分模型信息的影响,因此可能会从数据同化中获得显着收益。我们可能会提出第一个完全可行的数据同化方法,用于通过地震活动的点过程模型生成的地震预报。我们在噪声中观察到的更新过程的合成和教学示例中测试了该方法,该示例与地震缝隙假说,特征地震模型以及从古地震数据记录推断出的大地震的复发统计信息有关。为了解决地震的非高斯统计问题,我们使用顺序蒙特卡洛方法,这是一组基于模拟的灵活方法,用于递归估计任意后验分布。我们进行了广泛的数值模拟,以证明基于数据同化的地震预报的可行性和益处。

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