Are Regionally Calibrated Seismicity Models More Informative than Global Models? Insights from California, New Zealand, and Italy

J. Bayona, William H. Savran, P. Iturrieta, M. Gerstenberger, Kenny M. Graham, W. Marzocchi, D. Schorlemmer, M. Werner
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引用次数: 2

Abstract

Earthquake forecasting models express hypotheses about seismogenesis that underpin global and regional probabilistic seismic hazard assessments (PSHAs). An implicit assumption is that the comparatively higher spatiotemporal resolution datasets from which regional models are generated lead to more informative seismicity forecasts than global models, which are however calibrated on greater datasets of large earthquakes. Here, we prospectively assess the ability of the Global Earthquake Activity Rate (GEAR1) model and 19 time-independent regional models to forecast M 4.95+ seismicity in California, New Zealand, and Italy from 2014 through 2021, using metrics developed by the Collaboratory for the Study of Earthquake Predictability (CSEP). Our results show that regional models that adaptively smooth small earthquake locations perform best in California and Italy during the evaluation period; however, GEAR1, based on global seismicity and geodesy datasets, performs surprisingly well across all testing regions, ranking first in New Zealand, second in California, and third in Italy. Furthermore, the performance of the models is highly sensitive to spatial smoothing, and the optimal smoothing likely depends on the regional tectonic setting. Acknowledging the limited prospective test data, these results provide preliminary support for using GEAR1 as a global reference M 4.95+ seismicity model that could inform eight-year regional and global PSHAs.
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区域校准的地震活动模型比全球模型更有信息吗?来自加利福尼亚、新西兰和意大利的见解
地震预报模型表达了关于地震发生的假设,这些假设是全球和区域概率地震灾害评估(PSHAs)的基础。一个隐含的假设是,产生区域模型的相对较高的时空分辨率数据集比全球模型提供更多信息的地震活动预测,而全球模型是在更大的大地震数据集上校准的。在这里,我们前瞻性地评估了全球地震活动率(GEAR1)模型和19个时间无关的区域模型预测2014年至2021年加利福尼亚、新西兰和意大利4.95级以上地震活动的能力,使用了地震可预测性研究合作实验室(CSEP)开发的指标。结果表明,加利福尼亚和意大利的自适应平滑小地震位置的区域模型在评价期内表现最好;然而,基于全球地震活动和大地测量数据集的GEAR1在所有测试地区的表现令人惊讶地好,在新西兰排名第一,在加利福尼亚排名第二,在意大利排名第三。此外,模型的性能对空间平滑非常敏感,最优平滑可能取决于区域构造背景。考虑到有限的前瞻性测试数据,这些结果为使用GEAR1作为全球参考m4.95 +地震活动模型提供了初步支持,该模型可以为8年的区域和全球psha提供信息。
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