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Investigation of Uncertainty Changes in Model Outputs for Finite-Element Model Updating Using Structural Health Monitoring Data

机译:使用结构健康监测数据进行有限元模型更新的模型输出的不确定性变化调查

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This article aims to investigate the effect of uncertainties on the predicted response of structures using updated finite-element models (FEMs). Modeling uncertainties are quantified by fuzzy numbers and are incorporated into the fuzzy FEM updating procedure. The impact of the amount and types of data used on the performance of the updated model is investigated. In order to perform the complex FEM updating calculations, which generally take too much time for complex models, a Gaussian process (GP) is used as a surrogate model. The central composite design (CCD) method is used to sample the input parameter space for more accurate GP models. Genetic algorithms (GA) are employed to solve the inverse fuzzy model updating problem. Additional constraints are presented to capture the variation space of the uncertain response parameters. The University of Central Florida benchmark test structure, which is designed to represent short-span to medium-span bridges, is used in the scope of uncertainty quantification study. Static and dynamic experimental test data obtained from the benchmark structure under different loadings and conditions are used for the demonstration. A damage case, in which the stiffness reduction in boundaries is simulated by using flexible pads, is considered. The results show that appropriate data sets, which contain the least uncertainty, should be generated instead of involving the entire set of measurements obtained from different tests. Nevertheless, uncertainty quantification should be employed to find the variation range of uncertain responses predicted by simplified FEM models.
机译:本文旨在使用更新的有限元模型(FEM)研究不确定性对结构的预测响应的影响。建模不确定性通过模糊数进行量化,并被纳入模糊FEM更新程序中。研究了使用的数据量和类型对更新模型性能的影响。为了执行复杂的FEM更新计算(对于复杂的模型通常会花费太多时间),高斯过程(GP)被用作替代模型。中央复合设计(CCD)方法用于对输入参数空间进行采样,以获得更准确的GP模型。遗传算法(GA)用于解决逆模糊模型更新问题。提出了其他约束条件,以捕获不确定响应参数的变化空间。不确定性量化研究的范围内使用了中佛罗里达大学基准测试结构,该结构旨在代表短跨度到中跨度的桥梁。从基准结构在不同载荷和条件下获得的静态和动态实验测试数据用于演示。考虑一种损坏情况,其中使用柔性垫模拟边界的刚度降低。结果表明,应生成包含最小不确定性的适当数据集,而不要涉及从不同测试获得的整个测量集。然而,应采用不确定性量化来找到简化FEM模型所预测的不确定性响应的变化范围。

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