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Structural Damage Identification Based on AR Model with Additive Noises Using an Improved TLS Solution

机译:改进的TLS解决方案基于带有加性噪声的AR模型的结构损伤识别

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摘要

Structural damage is inevitable due to the structural aging and disastrous external excitation. The auto-regressive (AR) based method is one of the most widely used methods for structural damage identification. In this regard, the classical least-squares algorithm is often utilized to solve the AR model. However, this algorithm generally could not take all the observed noises into account. In this study, a partial errors-in-variables (EIV) model is used so that both the current and prior observation errors are considered. Accordingly, a total least-squares (TLS ) solution is introduced to solve the partial EIV model. The solution estimates and accounts for the correlations between the current observed data and the design matrix. An effective damage indicator is chosen to count for damage levels of the structures. Both mathematical and finite element simulation results show that the proposed TLS method yields better accuracy than the classical LS method and the AR model. Finally, the response data of a high-rise building shaking table test is used for demonstrating the effectiveness of the proposed method in identifying the location and damage degree of a model structure.
机译:由于结构老化和灾难性的外部激励,结构损坏是不可避免的。基于自回归(AR)的方法是用于结构损伤识别的最广泛使用的方法之一。在这方面,经典最小二乘算法通常用于求解AR模型。但是,该算法通常无法考虑所有观察到的噪声。在这项研究中,使用了部分变量误差(EIV)模型,以便同时考虑当前和先前的观测误差。因此,引入了总最小二乘(TLS)解决方案来解决部分EIV模型。该解决方案估算并考虑了当前观察到的数据与设计矩阵之间的相关性。选择一个有效的损坏指标来计算结构的损坏程度。数学和有限元仿真结果均表明,所提出的TLS方法比经典的LS方法和AR模型具有更高的准确性。最后,通过高层建筑振动台试验的响应数据证明了该方法在识别模型结构的位置和破坏程度方面的有效性。

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