首页> 外文期刊>Journal of geophysical research. Solid earth: JGR >How 'good' are real-time ground motion predictions from Earthquake Early Warning systems?
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How 'good' are real-time ground motion predictions from Earthquake Early Warning systems?

机译:“良好”是如何从地震预警系统的实时地面运动预测?

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Real-time ground motion alerts, as can be provided by Earthquake Early Warning (EEW) systems, need to be both timely and sufficiently accurate to be useful. Yet how timely and how accurate the alerts of existing EEW algorithms are is often poorly understood. In part, this is because EEW algorithm performance is usually evaluated not in terms of ground motion prediction accuracy and timeliness but in terms of other metrics (e.g., magnitude and location estimation errors), which do not directly reflect the usefulness of the alerts from an end user perspective. Here we attempt to identify a suite of metrics for EEW algorithm performance evaluation that directly quantify an algorithm's ability to identify target sites that will experience ground motion above a critical (user-defined) ground motion threshold. We process 15,553 recordings from 238 earthquakes with M > 5 (mostly from Japan and southern California) in a pseudo-real-time environment and investigate two end-member EEW methods. We use the metrics to highlight both the potential and limitations of the two algorithms and to show under which circumstances useful alerts can be provided. Such metrics could be used by EEW algorithm developers to convincingly demonstrate the added value of new algorithms or algorithm components. They can complement existing performance metrics that quantify other relevant aspects of EEW algorithms (e.g., false event detection rates) for a comprehensive and meaningful EEW performance analysis.
机译:地震早期预警(EEW)系统提供的实时地面运动警报需要及时且足够准确,才能发挥作用。然而,人们往往对现有EEW算法的警报的及时性和准确性知之甚少。这在一定程度上是因为EEW算法的性能通常不是根据地震动预测的准确性和及时性来评估的,而是根据其他指标(例如,震级和位置估计误差)来评估的,这些指标不能从最终用户的角度直接反映警报的有用性。在这里,我们试图为EEW算法性能评估确定一套指标,这些指标直接量化算法识别将经历超过临界(用户定义)地震动阈值的地震动的目标场地的能力。我们在伪实时环境中处理了238次M>5级地震(主要来自日本和南加州)的15553次记录,并研究了两种端元EEW方法。我们使用这些指标来强调这两种算法的潜力和局限性,并显示在何种情况下可以提供有用的警报。EEW算法开发人员可以使用这些指标令人信服地证明新算法或算法组件的附加值。它们可以补充现有的性能指标,量化EEW算法的其他相关方面(例如,错误事件检测率),以进行全面而有意义的EEW性能分析。

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