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Estimating aftershock collapse vulnerability using mainshock intensity, structural response and physical damage indicators

机译:使用主震强度,结构响应和物理破坏指标估算余震倒塌脆弱性

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This paper describes statistical models for estimating aftershock collapse vulnerability of buildings using mainshock intensity, structural response and physical damage indicators. The performance of mainshock-damaged buildings is assessed by performing Incremental Dynamic Analyses to collapse using sequential ground motions. Alternative dependent variables are suggested including the ratio of the conditional collapse probability for the damaged and intact buildings. Challenges arising from strong correlation among predictors are addressed using more advanced methods, including Best Subset Regression, Least Absolute Shrinkage and Selection Operator, Principal Components Analysis and Gaussian Kernel Ridge Regression. The models are evaluated based on their accuracy and stability while dealing with issues stemming from high dimensionality. Overall, Gaussian Kernel Ridge Regression is the most favorable model based on the accuracy and stability of its predictions. Of the three types of predictors, those related to observable physical damage to key structural components produced the most accurate and stable estimates of aftershock collapse vulnerability. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文介绍了使用主震强度,结构响应和物理破坏指标估算建筑物余震倒塌脆弱性的统计模型。通过执行连续地面运动进行的倒塌增量动力分析,可以评估受到主震破坏的建筑物的性能。建议使用其他因变量,包括受损和完好的建筑物的条件倒塌概率之比。使用更高级的方法可以解决因预测变量之间的强相关性而引起的挑战,包括最佳子集回归,最小绝对收缩和选择算子,主成分分析和高斯核岭回归。根据模型的准确性和稳定性对模型进行评估,同时处理因高维而引起的问题。总体而言,基于预测的准确性和稳定性,高斯核岭回归是最有利的模型。在这三种类型的预测器中,与可观察到的关键结构部件的物理损坏相关的那些预测器产生了对余震倒塌脆弱性的最准确,最稳定的估计。 (C)2017 Elsevier Ltd.保留所有权利。

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