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Uncertainty quantification for modal parameters from stochastic subspace identification on multi-setup measurements

机译:多设置测量中随机子空间识别中模态参数的不确定度量化

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摘要

In operational modal analysis, the modal parameters (natural frequencies, damping ratios and mode shapes), obtained with stochastic subspace identification from ambient vibration measurements of structures, are subject to statistical uncertainty. It is hence necessary to evaluate the uncertainty bounds of the obtained results, which can be done by a first-order perturbation analysis. To obtain vibration measurements at many coordinates of a structure with only a few sensors, it is common practice to use multiple sensor setups for the measurements. Recently, a multi-setup subspace identification algorithm has been proposed that merges the data from different setups prior to the identification step to obtain one set of global modal parameters, taking the possibly different ambient excitation characteristics between the measurements into account. In this paper, an algorithm is proposed that efficiently estimates the covariances on modal parameters obtained from this multi-setup subspace identification. The new algorithm is validated on multi-setup ambient vibration data of the Z24 Bridge, benchmark of the COST F3 European network.
机译:在运行模态分析中,从结构的环境振动测量中随机子空间识别中获得的模态参数(固有频率,阻尼比和模态形状)会受到统计不确定性的影响。因此,有必要评估所获得结果的不确定性范围,这可以通过一阶扰动分析来完成。为了仅使用几个传感器在结构的许多坐标上获得振动测量值,通常的做法是使用多个传感器设置进行测量。最近,已经提出了一种多设置子空间识别算法,该算法将来自不同设置的数据合并到识别步骤之前,以获得一组全局模态参数,同时考虑到测量之间可能不同的环境激发特性。在本文中,提出了一种算法,该算法可以有效地估计从这种多设置子空间识别中获得的模态参数的协方差。新算法在Z24桥的多设置环境振动数据上得到验证,Z24桥是COST F3欧洲网络的基准。

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