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Frequency domain decomposition‐based multisensor data fusion for assessment of progressive damage in structures

机译:基于频域分解的多传感器数据融合,用于评估结构逐行损伤

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摘要

In this paper, we focused on the development and verification of a solid and robust framework for structural condition assessment of real-life structures using measured vibration responses, with the presence of multiple progressive damages occurring within the inspected structures. A self-tuning learning method for structural condition assessment was proposed. Damage sensitive features were extracted using a frequency domain decomposition (FDD) approach to fuse all the measured responses, followed by random projection algorithm for dimensionality reduction. An automatic parameter selection method called Appropriate Distance to the Enclosing Surface (ADES) was used for tuning the classifier parameter. The effect of operational conditions on the robustness of the proposed method was also investigated, and it was realized that application of FDD to extract damage sensitive feature reduces the variation in the results. Promising results in the assessment of damage were obtained based on two comprehensive case studies, which included single and multiple damage scenarios. The contributions of the work are threefold. First, through two comprehensive case studies, we demonstrate that the frequency-based feature from a single sensor might not be adequate enough to detect the progress of damage, even if the sensor is in the vicinity of damage. Second, we show that data fusion using FDD can reliably assess the severity of damage, and finally, we propose a new automated approach for tuning the classifier parameter.
机译:在本文中,我们专注于使用测量的振动响应的现实寿命结构的结构条件评估的实体和稳健框架的开发和验证,存在在检查的结构内发生的多个渐进损坏。提出了一种用于结构条件评估的自调整学习方法。利用频域分解(FDD)方法提取损伤敏感特征以熔断所有测量的响应,然后是随机投影算法进行维度降低。将称为与封闭表面(Ades)的适当距离的自动参数选择方法调整分类器参数。还研究了运行条件对所提出的方法的稳健性的影响,实现了FDD提取损伤敏感特征的应用降低了结果的变化。基于两个综合案例研究获得了损害评估的有希望的结果,其中包括单一和多重损害情景。工作的贡献是三倍。首先,通过两个综合案例研究,我们证明,即使传感器处于损坏附近,单个传感器的频率基特征也可能不足以检测损坏的进度。其次,我们显示使用FDD的数据融合可以可靠地评估损坏的严重程度,最后,我们提出了一种新的自动化方法来调用分类器参数。

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