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首页> 外文期刊>Structural Safety >Parametric models averaging for optimized non-parametric fragility curve estimation based on intensity measure data clustering
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Parametric models averaging for optimized non-parametric fragility curve estimation based on intensity measure data clustering

机译:基于强度测量数据聚类的优化非参数脆性曲线估计的参数模型平均

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摘要

Seismic fragility curves give the probability of exceedance of the threshold of a damage state of a structure, or a non-structural component, conditioned on the intensity measure of the seismic motion. Typically, fragility curves are constructed parametrically assuming a lognormal shape. In some cases, which cannot be identified a priori, differences may be observed between non-parametric fragility curves, evaluated empirically based on a large number of seismic response analyses, and their estimations via the lognormal assumption. Here, we present an optimized Monte Carlo procedure for derivation of non-parametric fragility curves. This procedure uses clustering of the intensity measure data to construct the non-parametric curve and parametric models averaging for optimized assessment. In simplified case studies presented here as illustrative applications, the developed procedure leads to a fragility curve with reduced bias compared to the lognormal curve and to reduced confidence intervals compared to an un-optimized Monte Carlo-based approach. In the studied cases, this procedure proved to be efficient providing reasonable estimations even with as few as 100 seismic response analyses.
机译:地震脆性曲线给出了以地震运动的强度度量为条件的,超过结构或非结构组件破坏状态阈值的概率。通常,脆性曲线在参数上采用对数正态形状构建。在某些无法先验确定的情况下,可能会观察到非参数脆性曲线之间的差异,这些脆性曲线是基于大量地震响应分析进行经验评估,并通过对数正态假设进行估计。在这里,我们提出了用于推导非参数脆性曲线的优化蒙特卡洛程序。此过程使用强度测量数据的聚类来构建非参数曲线和平均参数模型以进行优化评估。在此处作为示例性应用程序进行的简化案例研究中,与对数正态曲线相比,所开发的过程会导致具有减小的偏差的易碎性曲线,与未优化的基于蒙特卡洛的方法相比,会导致减小的置信区间。在所研究的情况下,即使仅进行了100次地震响应分析,该方法仍能有效地提供合理的估计。

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