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Scale-wavenumber domain filtering method for curvature modal damage detection

机译:尺度波数域滤波的曲率模态损伤检测方法

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摘要

In damage assessment of composite structures, the modal curvature appears to be one of the most important damage indices in the past decades. However, a noticeable deficiency of the modal curvature is its susceptibility to noise, which is mainly induced by the numerical difference estimation. This study proposes the scale-wavenumber domain filtering method based on the combination of the continuous wavelets transform, the discrete Fourier transform-based modal curvature and the scale wavenumber domain filtering method. The continuous wavelet transform provides the scale domain for noisy mode shape analysis, in which the normal fluctuations and the noise-induced fluctuations are filtered from the inspected mode shapes. The discrete Fourier transform-based modal curvature supplies the wavenumber domain expressions of the scaled mode shapes. In the scale and wavenumber domains, some special filters are designed and used in noise suppression. The effectiveness of the proposed method is analytically verified by employing the cracked composite beam model, and the performance is further validated by the experimental data from the carbon-fiber-reinforced polymer beam with crack. Based on these validations, it is observed that the proposed method is capable of revealing slight damage in noisy condition, without the requirement for the prior knowledge of material properties. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在复合结构的损伤评估中,模态曲率似乎是过去几十年来最重要的损伤指标之一。但是,模态曲率的明显缺陷是其对噪声的敏感性,这主要是由数值差估计引起的。本文提出了基于连续小波变换,基于离散傅里叶变换的模态曲率和尺度波数域滤波方法相结合的尺度波数域滤波方法。连续小波变换为噪声模式形状分析提供了标度域,其中从检查的模式形状中滤除正常波动和噪声引起的波动。基于离散傅里叶变换的模态曲率提供了缩放模式形状的波数域表达式。在尺度和波数域中,设计了一些特殊的滤波器并将其用于噪声抑制。通过采用开裂的复合梁模型对所提方法的有效性进行了分析验证,并通过含碳纤维增强聚合物梁开裂的实验数据进一步验证了该方法的有效性。基于这些验证,可以观察到所提出的方法能够在嘈杂的条件下显示出轻微的损坏,而无需先验的材料特性知识。 (C)2016 Elsevier Ltd.保留所有权利。

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