Quantifying modeling uncertainty in simplified beam models for building response prediction

S. Farid Ghahari, K. Sargsyan, M. Çelebi, E. Taciroglu
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引用次数: 2

Abstract

The use of simple models for response prediction of building structures is preferred in earthquake engineering for risk evaluations at regional scales, as they make computational studies more feasible. The primary impediment in their gainful use presently is the lack of viable methods for quantifying (and reducing upon) the modeling errors/uncertainties they bear. This study presents a Bayesian calibration method wherein the modeling error is embedded into the parameters of the model. The method is specifically described for coupled shear‐flexural beam models here, but it can be applied to any parametric surrogate model. The major benefit the method offers is the ability to consider the modeling uncertainty in the forward prediction of any degree‐of‐freedom or composite response regardless of the data used in calibration. The method is extensively verified using two synthetic examples. In the first example, the beam model is calibrated to represent a similar beam model but with enforced modeling errors. In the second example, the beam model is used to represent the detailed finite element model of a 52‐story building. Both examples show the capability of the proposed solution to provide realistic uncertainty estimation around the mean prediction.
用于建筑物响应预测的简化梁模型建模不确定性量化
在地震工程中,使用简单的模型进行建筑结构的响应预测是进行区域风险评估的首选方法,因为它们使计算研究更加可行。目前它们有效使用的主要障碍是缺乏量化(和减少)它们所承受的建模误差/不确定性的可行方法。本文提出了一种贝叶斯校正方法,该方法将建模误差嵌入到模型参数中。该方法在这里专门描述了耦合剪切-弯曲梁模型,但它可以应用于任何参数替代模型。该方法提供的主要好处是能够在任何自由度或复合响应的前向预测中考虑建模不确定性,而不管校准中使用的数据是什么。用两个综合算例对该方法进行了广泛的验证。在第一个示例中,对光束模型进行校准以表示类似的光束模型,但存在强制的建模错误。在第二个例子中,梁模型被用来表示52层建筑的详细有限元模型。这两个例子都表明,所提出的解决方案能够在平均预测周围提供现实的不确定性估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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