地震动
衰减
地震灾害
深度学习
危害
缩放比例
组分(热力学)
计算机科学
地震学
人工智能
地质学
数学
物理
光学
有机化学
热力学
化学
几何学
作者
Chenxi Li,Duofa Ji,Changhai Zhai,Yixin Ma,Lili Xie
标识
DOI:10.1016/j.soildyn.2022.107713
摘要
Vertical-component of ground motions (GM) plays a significant role in seismic hazard analysis, especially for long-span structures and high-rising buildings. The former is usually predicted by empirical ground motion models (GMMs) that are developed on the basis of a preset function form and thus intensely depend on researchers' choices and prior knowledge. To overcome this issue, a deep learning-based GMM to predict the vertical component of GMs' IMs is developed in this study. 20,651 GM recordings are selected and divided into training, validation, and testing dataset based on the Next Generation Attenuation-West2 Project (NGA-West2). Comparative assessments with existing models are introduced on predicting performance indicators, IMs’ distribution with respect to seismic parameters, residuals, and variabilities. It can be concluded that the proposed model possesses better predictive power than the compared models. Meanwhile, sound physical features (e.g., magnitude scaling effects and near-fault saturation) can be observed.
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