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Finite Element Model Updating in Bridge Structures Using Kriging Model and Latin Hypercube Sampling Method

机译:使用Kriging模型和Latin Hypercube抽样方法更新桥梁结构的有限元模型。

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Computational cost reduction and best model updating method seeking are the key issues during model updating for different kinds of bridges. This paper presents a combined method, Kriging model and Latin hypercube sampling method, for finite element (FE) model updating. For FE model updating, the Kriging model is serving as a surrogate model, and it is a linear unbiased minimum variance estimation to the known data in a region which have similar features. To predict the relationship between the structural parameters and responses, samples are preselected, and then Latin hypercube sampling (LHS) method is applied. To verify the proposed algorithm, a truss bridge and an arch bridge are analyzed. Compared to the predicted results obtained by using a genetic algorithm, the proposed method can reduce the computational time without losing the accuracy.
机译:降低计算成本和寻求最佳模型更新方法是不同类型桥梁模型更新过程中的关键问题。本文提出了一种组合的方法,即克里格模型和拉丁超立方体采样方法,用于有限元模型的更新。对于FE模型更新,Kriging模型用作替代模型,它是对具有相似特征的区域中已知数据的线性无偏最小方差估计。为了预测结构参数与响应之间的关系,需要预先选择样本,然后应用拉丁超立方体抽样(LHS)方法。为了验证所提出的算法,分析了桁架桥和拱桥。与使用遗传算法获得的预测结果相比,该方法可以减少计算时间而不会降低精度。

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