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Estimation of beam material random field properties via sensitivity-based model updating using experimental frequency response functions

机译:通过使用实验频率响应函数的基于灵敏度的模型更新来估计梁材料的随机场特性

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摘要

Structural parameter estimation is affected not only by measurement noise but also by unknown uncertainties which are present in the system. Deterministic structural model updating methods minimise the difference between experimentally measured data and computational prediction. Sensitivity-based methods are very efficient in solving structural model updating problems. Material and geometrical parameters of the structure such as Poisson's ratio, Young's modulus, mass density, modal damping, etc. are usually considered deterministic and homogeneous. In this paper, the distributed and non-homogeneous characteristics of these parameters are considered in the model updating. The parameters are taken as spatially correlated random fields and are expanded in a spectral Karhunen-Loeve (KL) decomposition. Using the KL expansion, the spectral dynamic stiffness matrix of the beam is expanded as a series in terms of discretized parameters, which can be estimated using sensitivity-based model updating techniques. Numerical and experimental tests involving a beam with distributed bending rigidity and mass density are used to verify the proposed method. This extension of standard model updating procedures can enhance the dynamic description of structural dynamic models.
机译:结构参数估计不仅受到测量噪声的影响,而且还受到系统中存在的未知不确定性的影响。确定性结构模型更新方法可最大程度地减少实验测量数据与计算预测之间的差异。基于灵敏度的方法在解决结构模型更新问题方面非常有效。通常认为结构的材料和几何参数(例如泊松比,杨氏模量,质量密度,模态阻尼等)是确定性和均质的。本文在模型更新中考虑了这些参数的分布式和非均匀特性。这些参数被视为与空间相关的随机字段,并在频谱Karhunen-Loeve(KL)分解中扩展。使用KL展开,光束的光谱动态刚度矩阵根据离散参数展开为一系列,可以使用基于灵敏度的模型更新技术进行估计。数值计算和实验测试涉及具有分布的弯曲刚度和质量密度的梁,以验证该方法。标准模型更新过程的这种扩展可以增强结构动态模型的动态描述。

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