随机矩阵理论与单结构测量的结合

F. Igea, M. Chatzis, A. Cicirello
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引用次数: 0

摘要

提出了一种计算名义上相同结构的系综在只有单一结构且色散参数已知的情况下模态参数的概率密度函数的方法。该方法将动态数据集上的特征系统实现算法与显式非参数概率方法相结合。单个结构(数学模型或原型)分别用于获得用于构建离散时间状态空间模型描述的模拟数据或测量。色散参数用于描述由不同来源引起的不确定性,如在总体中发现的可变性和从实验中发现的噪声测量中的识别误差。该方法不是通过系统的控制方程来传播不确定性,而是通过对状态空间模型中的矩阵进行有效的随机化来获得整个系统的模态参数分布。通过对2D0F质量-弹簧-阻尼系统和悬臂系统的分析,证明了该方法的适用性。这些结果表明,如果不确定性的来源是未知的,并且有可能指定不确定性的总体水平,通过访问单个系统测量,就有可能评估模态参数的最终pdf。还发现,高色散参数值可能导致非物理结果,如负阻尼比值。
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On the Combination of Random Matrix Theory with Measurements On a Single Structure
An approach is proposed for the evaluation of the probability density functions (pdfs) of the modal parameters for an ensemble of nominally identical structures when there is only access to a single structure and the dispersion parameter is known. The approach combines the Eigensystem Realization Algorithm on sets of dynamic data, with an explicit non-parametric probabilistic method. A single structure, either a mathematical model or a prototype, are respectively used to obtain simulated data or measurements that are employed to build a discrete time state-space model description. The dispersion parameter is used to describe the uncertainty due to different sources such as the variability found in the population and the identification errors found in the noisy measurements from the experiments. With this approach, instead of propagating the uncertainties through the governing equations of the system, the distribution of the modal parameters of the whole ensemble is obtained by randomising the matrices in the state-space model with an efficient procedure. The applicability of the approach is shown through the analysis of a 2D0F mass-spring-damper system and a cantilever system. These results show that if the source of uncertainty is unknown and it is possible to specify an overall level of uncertainty, by having access to a single system measurements' it is possible to evaluate the resulting pdfs on the modal parameters. It was also found that high values of the dispersion parameter may lead to non-physical results such as negative damping ratios values.
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来源期刊
CiteScore
5.20
自引率
13.60%
发文量
34
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