Hybrid method for full-field response estimation using sparse measurement data based on inverse analysis and static condensation

Ashish Pal , Wei Meng , Satish Nagarajaiah
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引用次数: 0

Abstract

In structural health monitoring, measuring the accurate and spatially dense response near critical locations of the structure can be advantageous to estimate damage to the structure. Due to several physical restrictions or limitations of the sensing method, it may not always be possible to generate reliable data at critical locations. In this study, a hybrid method is presented that makes use of the measured displacement data and finite element (FE) model of the structure to predict dense full-field response. The presented method can incorporate unknown boundary conditions and unknown body forces by applying correction/fictitious forces to match predicted and measured responses. Using static condensation followed by inverse analysis, these additional forces are found by setting up a least square problem. Due to the problem being ill-posed, L2-penalty is used to control the prediction error. Numerical simulation of a plate subjected to body force showed an accurate prediction of full-field response except for a few boundary locations. To handle this, the proposed method is used in conjunction with linear interpolation near boundary locations. The method is validated in a laboratory experiment for a plate with a notch having displacement measured using Digital Image Correlation (DIC). On comparing strains calculated using predicted displacements, FEM, and DIC, the predicted strains show better agreement with the FEM than DIC. This affirms that the proposed hybrid technique can be used at critical locations where DIC fails to provide reliable strain data.

基于逆分析和静态凝聚的稀疏测量数据全场响应估计混合方法
在结构健康监测中,测量结构关键位置附近精确且空间密集的响应有利于估计结构的损伤程度。由于传感方法的一些物理限制或限制,可能并不总是能够在关键位置生成可靠的数据。本文提出了一种利用位移实测数据和结构有限元模型进行密集全场响应预测的混合方法。该方法通过应用修正/虚拟力来匹配预测和测量的响应,可以将未知的边界条件和未知的体力结合起来。采用静力凝结法,然后进行逆分析,通过建立最小二乘问题找到了这些附加力。由于问题的病态性,采用l2惩罚来控制预测误差。对受体力作用的平板进行了数值模拟,结果表明,除了少数边界位置外,对全场响应的预测是准确的。为了解决这一问题,将该方法与边界附近的线性插值相结合。用数字图像相关(DIC)测量了带缺口的板的位移,在实验室实验中验证了该方法的有效性。通过比较预测位移法、有限元法和DIC法计算的应变,结果表明,预测应变与有限元法的吻合程度优于DIC法。这证实了所提出的混合技术可以用于DIC无法提供可靠应变数据的关键位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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