Real-time prediction of earthquake potential damage: A case study for the January 8, 2022 MS 6.9 Menyuan earthquake in Qinghai, China

Jindong Song , Jingbao Zhu , Yongxiang Wei , Shuilong Li , Shanyou Li
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Abstract

It is critical to determine whether a site has potential damage in real-time after an earthquake occurs, which is a challenge in earthquake disaster reduction. Here, we propose a real-time Earthquake Potential Damage predictor (EPDor) based on predicting peak ground velocities (PGVs) of sites. The EPDor is composed of three parts: (1) predicting the magnitude of an earthquake and PGVs of triggered stations based on the machine learning prediction models; (2) predicting the PGVs at distant sites based on the empirical ground motion prediction equation; (3) generating the PGV map through predicting the PGV of each grid point based on an interpolation process of weighted average based on the predicted values in (1) and (2). We apply the EPDor to the 2022 MS 6.9 Menyuan earthquake in Qinghai Province, China to predict its potential damage. Within the initial few seconds after the first station is triggered, the EPDor can determine directly whether there is potential damage for some sites to a certain degree. Hence, we infer that the EPDor has potential application for future earthquakes. Meanwhile, it also has potential in Chinese earthquake early warning system.

地震潜在危害的实时预测:以2022年1月8日中国青海门源6.9级地震为例
地震发生后,实时确定场地是否存在潜在破坏至关重要,这是地震减灾的一个挑战。在这里,我们提出了一个基于预测场地峰值地面速度(PGV)的实时地震潜在损害预测器(EPDor)。EPDor由三部分组成:(1)基于机器学习预测模型预测地震震级和触发台站的PGV;(2) 基于经验地面运动预测方程来预测远处地点的PGV;(3) 基于基于(1)和(2)中的预测值的加权平均的插值处理,通过预测每个网格点的PGV来生成PGV图。我们将EPDor应用于2022年青海门源6.9级地震,以预测其潜在破坏。在第一个站点触发后的最初几秒钟内,EPDor可以直接确定某些站点是否存在一定程度的潜在损坏。因此,我们推断EPDor对未来的地震有潜在的应用。同时,它在中国地震预警系统中也具有一定的应用潜力。
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