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An approach based on expectation-maximization algorithm for parameter estimation of Lamb wave signals

机译:基于期望最大化算法的兰姆波信号参数估计方法

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In the structural health monitoring or nondestructive examination system based on the Lamb wave technology, the accurate and valid characteristics of wave packet extracted from the signal are critical factors to evaluate damage. However, the dispersion effect and the multi-mode characteristic in the elastic wave make the data extraction difficult and degrade the resolution, and therefore further prevent the effectiveness of Lamb wave for damage detection. In this study, we proposed a model-based approach for extracting effective characteristics from the noisy signals. By taking the narrow band Gabor pulse as the incident pulse and considering the general non-linear frequency dispersion (quadratic dispersion), we developed a model with five parameters to model the dispersive wave packet and obtained the parameter vector of each wave packet by the expectation-maximization (EM) algorithm. The parameters in the model present the characteristics of signals, which can be further applied to locate and evaluate the structure's damage. To study the convergence property, synthetic signals with different sampling rates and noise intensities were considered. Furthermore the developed approach is also verified by the experimental data from an isotropic aluminum plate. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在基于兰姆波技术的结构健康监测或无损检测系统中,从信号中提取的波包的准确和有效特性是评估损伤的关键因素。然而,弹性波中的色散效应和多模特性使数据提取变得困难并且降低了分辨率,因此进一步阻止了兰姆波对损伤检测的有效性。在这项研究中,我们提出了一种基于模型的方法来从噪声信号中提取有效特征。通过将窄带Gabor脉冲作为入射脉冲并考虑一般的非线性频率色散(二次色散),我们开发了具有五个参数的模型来对色散波包进行建模,并根据期望获得每个波包的参数矢量-maximization(EM)算法。模型中的参数表示信号的特征,可以将其进一步应用于定位和评估结构的损坏。为了研究收敛性,考虑了具有不同采样率和噪声强度的合成信号。此外,通过各向同性铝板的实验数据也验证了所开发的方法。 (C)2018 Elsevier Ltd.保留所有权利。

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