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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Lamb Wave Mode Decomposition Based on Cross-Wigner-Ville Distribution and Its Application to Anomaly Imaging for Structural Health Monitoring
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Lamb Wave Mode Decomposition Based on Cross-Wigner-Ville Distribution and Its Application to Anomaly Imaging for Structural Health Monitoring

机译:基于交叉Wigner-Ville分布的羊羔波模式分解及其在结构健康监测中的异常成像

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Lamb waves are characterized by their multimodal and dispersive propagation, which often complicates analysis. This paper presents a method for separation of the mode components and reflected components in sensor signals in an active structural health monitoring (SHM) system. The system is trained using linear chirp signals but works for arbitrary excitation signals. The training process employs the cross-Wigner-Ville distribution (xWVD) of the excitation signal and the sensor signal to separate the temporally overlapped modes in the time-frequency domain. The mode decomposition method uses a ridge extraction algorithm to separate each signal component in the time-frequency distribution. Once the individual modes are separated in the time-frequency domain, they are reconstructed in the time domain using the inverse xWVD operation. The propagation impulse response associated with each component can be directly estimated for chirp inputs. The estimated propagation impulse response can be used to separate the modes resulting from arbitrary excitation signals as long as their frequency components fall in the range of the chirp signal. The usefulness of the mode decomposition algorithm is demonstrated on a new health monitoring system for composite structures. This system performs anomaly imaging using the first arriving mode extracted from sensor array signals acquired from the structure. The anomaly maps are computed using a sparse tomographic reconstruction algorithm. The reconstructed map can locate anomalies on the structure and estimate their boundaries. Comparisons with methods that do not employ mode decomposition and/or sparse reconstruction techniques indicate a substantially better performance for the method of this paper.
机译:羊波的特征在于它们的多模式和分散繁殖,这通常会使分析复杂化。本文介绍了一种用于在有源结构健康监测(SHM)系统中的传感器信号中的模式分量和反射分量的分离方法。使用线性啁啾信号训练该系统,但适用于任意激励信号。训练过程采用激励信号的跨WIGNER-VILL分布(XWVD)和传感器信号,以分离时频域中的时间上重叠的模式。模式分解方法使用脊提取算法在时频分布中分离每个信号分量。一旦在时频域中分离各个模式,它们就会使用反向XWVD操作在时域中重建它们。可以直接估计与每个组件相关联的传播脉冲响应以用于啁啾输入。估计的传播脉冲响应可用于分离由任意激励信号产生的模式,只要其频率分量落入啁啾信号的范围即可。用于复合结构的新型健康监测系统,对模式分解算法的有用性。该系统使用从结构获取的传感器阵列信号中提取的第一到达模式执行异常成像。使用稀疏断层摄影重建算法计算异常地图。重建的地图可以在结构上定位异常并估计其边界。与不采用模式分解和/或稀疏重建技术的方法的比较表明本文方法的显着更好的性能。

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