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Mode Separation of Complicated Guided Wave in Plate-Like Structures Based on Sparse Bayesian Learning Approach

机译:基于稀疏贝叶斯学习方法的板状结构复杂导波的模式分离

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Guided wave based methods has been demonstrated to be the effective techniques for damage detection in plate, tube and pipe etc. structures during the last two decades. However, the nature of guided waves, such as multi-mode, dispersion effect and mode conversion, results in the difficulty of guided wave packets recognition. This work uses a special piezoelectric wafer to generate both Lamb waves and guided shear horizontal (SH) waves in plate-like structures. The latter is employed to detect the damage taking advantage of its non-dispersive properties. However, the SH wave packets without distortion are still disturbed by the other mode wave packets, such as S_0 and A_0 mode of Lamb waves at low frequencies. In this study, based on a robust sparse Bayesian learning (RSBL) technique, a novel mode separation method is proposed to identify the SH wave packets. An over-complete dictionary is first designed by using the propagating waveforms with various distances. The dictionary is then employed to decompose the received signals containing SH waves and Lamb waves by the RSBL algorithm. The sparseness of wave packet is utilized and the posterior mean vector of the retained basis vectors in the dictionary can be used to determine the propagation distance of wave packet. Furthermore, the posterior uncertainties give a measure of the inference confidence. A numerical study is performed to validate the proposed method and the results show that the proposed method is capable to separate the SH mode wave packets with high accuracy.
机译:在过去的二十年中,基于导波的方法已被证明是检测板,管和管道等结构中损伤的有效技术。然而,导波的性质,例如多模,色散效应和模转换,导致导波包识别的困难。这项工作使用一种特殊的压电晶片在板状结构中产生兰姆波和导向剪切水平(SH)波。后者利用其非分散特性来检测损坏。然而,没有失真的SH波包仍然受到其他模式波包的干扰,例如低频下的兰姆波的S_0和A_0模式。在这项研究中,基于鲁棒的稀疏贝叶斯学习(RSBL)技术,提出了一种新颖的模式分离方法来识别SH波包。首先通过使用具有各种距离的传播波形来设计超完备字典。然后使用字典通过RSBL算法分解包含SH波和Lamb波的接收信号。利用波包的稀疏性,字典中保留的基向量的后均矢量可以用来确定波包的传播距离。此外,后验不确定性提供了推断置信度的度量。数值研究验证了该方法的有效性,结果表明该方法能够以较高的精度分离SH模式波包。

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