Comparing components for seismic risk modelling using data from the 2019 Le Teil (France) earthquake

K. Trevlopoulos, P. Gehl, C. Negulescu, Helen Crowley, L. Danciu
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Abstract

Abstract. Probabilistic seismic hazard and risk models are essential to improving our awareness of seismic risk, to its management, and to increasing our resilience against earthquake disasters. These models consist of a series of components, which may be evaluated and validated individually, although evaluating and validating these types of models as a whole is challenging due to the lack of recognized procedures. Estimations made with other models, as well as observations of damage from past earthquakes, lend themselves to evaluating the components used to estimate the severity of damage to buildings. Here, we are using a dataset based on emergency post-seismic assessments made after the Le Teil 2019 earthquake, third-party estimations of macroseismic intensity for this seismic event, shake maps, and scenario damage calculations to compare estimations under different modelling assumptions. First we select a rupture model using estimations of ground motion intensity measures and macroseismic intensity. Subsequently, we use scenario damage calculations based on different exposure models, including the aggregated exposure model in the 2020 European Seismic Risk Model (ESRM20), as well as different site models. Moreover, a building-by-building exposure model is used in scenario calculations, which individually models the buildings in the dataset. Lastly, we compare the results of a semi-empirical approach to the estimations made with the scenario calculations. The post-seismic assessments are converted to EMS-98 (Grünthal, 1998) damage grades and then used to estimate the damage for the entirety of the building stock in Le Teil. In general, the scenario calculations estimate lower probabilities for damage grades 3–4 than the estimations made using the emergency post-seismic assessments. An exposure and fragility model assembled herein leads to probabilities for damage grades 3–5 with small differences from the probabilities based on the ESRM20 exposure and fragility model, while the semi-empirical approach leads to lower probabilities. The comparisons in this paper also help us learn lessons on how to improve future testing. An improvement would be the use of damage observations collected directly on the EMS-98 scale or on the damage scale in ESRM20. Advances in testing may also be made by employing methods that inform us about the damage at the scale of a city, such as remote sensing or data-driven learning methods fed by a large number of low-cost seismological instruments spread over the building stock.
利用 2019 年法国 Le Teil 地震的数据比较地震风险建模的组成部分
摘要概率地震灾害和风险模型对于提高我们对地震风险的认识、对地震风险的管理以及增强我们抵御地震灾害的能力至关重要。这些模型由一系列组件组成,可单独进行评估和验证,但由于缺乏公认的程序,对这些类型的模型进行整体评估和验证具有挑战性。利用其他模型进行的估算,以及对过去地震破坏情况的观察,都有助于评估用于估算建筑物破坏严重程度的组成部分。在此,我们使用基于 2019 年 Le Teil 地震后紧急震后评估的数据集、该地震事件的第三方宏观地震烈度估算、震动图和情景破坏计算,来比较不同建模假设下的估算结果。首先,我们使用地动烈度测量和宏观地震烈度估算值来选择破裂模型。随后,我们根据不同的暴露模型(包括 2020 年欧洲地震风险模型 (ESRM20)中的综合暴露模型)以及不同的场地模型进行了情景破坏计算。此外,在情景计算中还使用了逐栋建筑物暴露模型,该模型对数据集中的建筑物进行了单独建模。最后,我们将半经验方法的结果与情景计算的估算结果进行了比较。震后评估结果被转换为 EMS-98 (Grünthal,1998 年)破坏等级,然后用于估算 Le Teil 所有建筑的破坏情况。一般来说,情景计算对 3-4 级破坏等级的概率估计低于使用紧急震后评估进行的估计。本文采用的暴露和脆性模型得出的 3-5 级破坏概率与 ESRM20 暴露和脆性模型得出的概率差异较小,而半经验方法得出的概率较低。本文中的比较还有助于我们吸取教训,改进今后的测试工作。一种改进方法是直接使用 EMS-98 等级或 ESRM20 中的损害等级收集损害观测数据。此外,还可以通过采用能让我们了解城市规模的破坏情况的方法,如遥感或由遍布建筑群的大量低成本地震学仪器提供数据驱动的学习方法,来推进测试工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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