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A novel approach to surface defect detection

机译:表面缺陷检测的新方法

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Defects or flaws in highly loaded structures have a significant impact on the structural integrity. Early inspection of faults can reduce the likelihood of occurrence of potential disasters and limit the damaging effects of destructions. According to our previous work, a novel approach called as Quantitative Detection of Fourier Transform (QDFT) using guided ultrasonic waves is developed in this paper for efficiently detecting defects in pipeline structures. Details of this fast method consist of three steps: First, an in-house finite element code has been developed to calculate reflection coefficients of guided waves travelling in the pipe. Then, based on boundary integral equations and Fourier transform of space-wavenumber domain, theoretical formulations of the quantitative detection are derived as a function of wavenumber using Born approximation. This lays a solid foundation for QDFT method, in which a reference model in a problem with a known defect is utilized to effectively evaluate the unknown defects. Finally, the location and shape of the unknown defect are reconstructed using signal processing for noise removal. Several examples are presented to demonstrate the correctness and efficiency of the proposed methodology. It is concluded that the general two-dimensional surface defects can be detected with high level of accuracy by this fast approach. (C) 2018 Elsevier Ltd. All rights reserved.
机译:高负荷结构中的缺陷或缺陷对结构完整性有重大影响。对故障进行早期检查可以减少发生潜在灾难的可能性,并限制破坏的破坏性影响。根据我们以前的工作,本文提出了一种新方法,称为使用引导超声波的傅立叶变换定量检测(QDFT),以有效地检测管道结构中的缺陷。此快速方法的详细信息包括三个步骤:首先,已开发出内部有限元代码来计算在管道中传播的导波的反射系数。然后,基于边界积分方程和空间波数域的傅里叶变换,利用波恩近似推导了定量检测的理论公式,作为波数的函数。这为QDFT方法打下了坚实的基础,其中利用已知缺陷问题中的参考模型来有效评估未知缺陷。最后,使用信号处理来去除噪声,从而重建未知缺陷的位置和形状。给出了几个例子,以证明所提出方法的正确性和有效性。结论是,通过这种快速方法,可以高精度地检测出一般的二维表面缺陷。 (C)2018 Elsevier Ltd.保留所有权利。

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