光谱加速度
地震灾害
参数统计
峰值地面加速度
加速度
地震动
概率逻辑
增量动力分析
强度(物理)
航程(航空)
计算机科学
危害
结构工程
地质学
统计
地震学
数学
工程类
物理
经典力学
航空航天工程
有机化学
化学
量子力学
作者
Yin Cheng,Andrea Lucchini,Fabrizio Mollaioli
出处
期刊:Earthquakes and Structures
[Techno-Press]
日期:2014-10-30
卷期号:7 (4): 485-510
被引量:35
标识
DOI:10.12989/eas.2014.7.4.485
摘要
In performance-based seismic design procedures Peak Ground Acceleration (PGA) and pseudo-Spectral acceleration ($S_a$) are commonly used to predict the response of structures to earthquake. Recently, research has been carried out to evaluate the predictive capability of these standard Intensity Measures (IMs) with respect to different types of structures and Engineering Demand Parameter (EDP) commonly used to measure damage. Efforts have been also spent to propose alternative IMs that are able to improve the results of the response predictions. However, most of these IMs are not usually employed in probabilistic seismic demand analyses because of the lack of reliable Ground Motion Prediction Equations (GMPEs). In order to define seismic hazard and thus to calculate demand hazard curves it is essential, in fact, to establish a GMPE for the earthquake intensity. In the light of this need, new GMPEs are proposed here for the elastic input energy spectra, energy-based intensity measures that have been shown to be good predictors of both structural and non-structural damage for many types of structures. The proposed GMPEs are developed using mixed-effects models by empirical regressions on a large number of strong-motions selected from the NGA database. Parametric analyses are carried out to show the effect of some properties variation, such as fault mechanism, type of soil, earthquake magnitude and distance, on the considered IMs. Results of comparisons between the proposed GMPEs and other from the literature are finally shown.
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