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PreSEIS: A Neural Network-Based Approach to Earthquake Early Warning for Finite Faults

机译:PreSEIS:基于神经网络的有限故障地震预警方法

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摘要

The major challenge in the development of earthquake early warning (EEW) systems is the achievement of a robust performance at largest possible warning time. We have developed a new method for EEW—called PreSEIS (Pre-SEISmic)—that is as quick as methods that are based on single station observations and, at the same time, shows a higher robustness than most other approaches. At regular timesteps after the triggering of the first EEW sensor, PreSEIS estimates the most likely source parameters of an earthquake using the available information on ground motions at different sensors in a seismic network. The approach is based on two-layer feed-forward neural networks to estimate the earthquake hypocenter location, its moment magnitude, and the expansion of the evolving seismic rupture. When applied to the Istanbul Earthquake Rapid Response and Early Warning System (IERREWS), PreSEIS estimates the moment magnitudes of 280 simulated finite faults scenarios (4.5≤M≤7.5) with errors of less than ±0.8 units after 0.5 sec, ±0.5 units after 7.5 sec, and ±0.3 units after 15.0 sec. In the same time intervals, the mean location errors can be reduced from 10 km over 6 km to less than 5 km, respectively. Our analyses show that the uncertainties of the estimated parameters (and thus of the warnings) decrease with time. This reveals a trade-off between the reliability of the warning on the one hand, and the remaining warning time on the other hand. Moreover, the ongoing update of predictions with time allows PreSEIS to handle complex ruptures, in which the largest fault slips do not occur close to the point of rupture initiation. The estimated expansions of the seismic ruptures lead to a clear enhancement of alert maps, which visualize the level and distribution of likely ground shaking in the affected region seconds before seismic waves will arrive.
机译:地震预警(EEW)系统开发中的主要挑战是在最大可能的预警时间实现稳定的性能。我们已经开发了一种用于EEW的新方法,称为PreSEIS(Pre-SEISmic),它与基于单站观测的方法一样快,并且同时显示出比大多数其他方法更高的鲁棒性。在触发第一个EEW传感器之后的常规时间步长,PreSEIS使用地震网络中不同传感器处的地面运动的可用信息来估计地震最可能的震源参数。该方法基于两层前馈神经网络来估计地震震中位置,其矩量以及不断发展的地震破裂的扩展。当应用于伊斯坦布尔地震快速反应和预警系统(IERREWS)时,PreSEIS估计280个模拟有限断层场景(4.5≤M≤7.5)的矩震级,0.5秒后误差小于±0.8单位,0.5秒后小于±0.5单位7.5秒,在15.0秒后为±0.3单位。在相同的时间间隔内,平均位置误差可以从6 km的10 km分别减小到5 km以下。我们的分析表明,估计参数(以及警告的不确定性)的不确定性会随着时间而降低。这揭示了一方面警告的可靠性与另一方面剩余的警告时间之间的权衡。此外,随着时间的推移不断进行预测更新,PreSEIS可以处理复杂的破裂,其中最大的滑动不会在破裂起始点附近发生。地震破裂的估计扩展导致警报图的明显增强,警报图可以在地震波到达之前几秒钟可视化受影响区域中可能发生的地面震动的水平和分布。

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