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A robust Bayesian methodology for damage localization in plate-like structures using ultrasonic guided-waves

机译:使用超声导波的板状结构损伤定位的鲁棒贝叶斯方法

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摘要

SHM methods for damage detection and localization in plate-like structures have typically relied on signal post-processing techniques applied to ultrasonic guided-waves. The time of flight is one of these signals features which has been extensively used by the SHM community for damage localization. One approach for obtaining the time of flight is by applying a particular time-frequency transform to capture the frequency and energy content of the wave at each instant of time. To this end, the selection of a suitable methodology for time-frequency transform among the many candidates available in the literature has typically relied on experience, or simply based on considerations about computational efficiency. In this paper, a full probabilistic method based on the Bayesian inverse problem is proposed to rigorously provide a robust estimate of the time of flight for each sensor independently. Then, the robust prediction is introduced as an input to the Bayesian inverse problem of damage localization. The results reveal that the proposed methodology is able to efficiently reconstruct the damage localization within a metallic plate without the need to assume a specific a priori time-frequency transform model. (C) 2018 Elsevier Ltd. All rights reserved.
机译:用于板状结构中损伤检测和定位的SHM方法通常依赖于应用于超声波导波的信号后处理技术。飞行时间是SHM社区广泛用于损坏定位的信号功能之一。一种获得飞行时间的方法是通过应用特定的时频变换来捕获每个时间瞬间的电波频率和能量含量。为此,在文献中可用的许多候选者中,时频变换的合适方法的选择通常依赖于经验,或者仅基于关于计算效率的考虑。在本文中,提出了一种基于贝叶斯逆问题的完整概率方法,以针对每个传感器分别严格地提供飞行时间的鲁棒估计。然后,将鲁棒预测作为损伤定位的贝叶斯逆问题的输入。结果表明,所提出的方法能够有效地重建金属板内的损伤局部,而无需假设特定的先验时频变换模型。 (C)2018 Elsevier Ltd.保留所有权利。

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