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Damage characterisation in composite materials under buckling test using acoustic emission waveform clustering technique

机译:声发射波形聚类技术屈曲试验下复合材料损伤表征

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Acoustic Emission (AE) is extensively used to assess damage for structural health monitoring of loaded structures. Knowing the correlation between the detected AE signals and a particular failure mechanism is important in order to help the operator of the structure to make a correct decision about the structures integrity. The purpose of this investigation is to study the clustering and classification ability of unsupervised clustering based on the signal waveforms, in order to identify and characterise the most critical damage mechanisms in a buckling test on composite panel. The Hilbert Transformation and Principal Component Analysis (PCA) were utilised to extract the waveform appearance information for use as an input vector to the clustering process. The unsupervised clustering was performed using the k-means method. The results show that there is a good agreement between clustering classes and the damage revealed by the ultrasonic C-scan image. The reliable indication of different damage modes (i.e. delamination and matrix cracking) occurring in different regions of the panel allowed a validation of the use of unsupervised classification techniques based on signal appearance in order to categorize the AE signals.
机译:声发射(AE)广泛用于评估加载结构的结构健康监测的损伤。知道检测到的AE信号与特定故障机制之间的相关性是重要的,以帮助结构的操作员对结构完整性做出正确的决定。本研究的目的是研究基于信号波形的无监督聚类的聚类和分类能力,以便识别和表征复合板上屈曲测试中的最关键的损坏机制。利用希尔伯特转换和主成分分析(PCA)来提取用作群集过程的输入向量的波形外观信息。使用K-Means方法进行无监督的聚类。结果表明,聚类类别与超声波C扫描图像显示的损坏之间存在良好的一致性。在面板的不同区域中发生的不同损伤模式(即分层和矩阵裂缝)的可靠指示允许基于信号外观验证无监督的分类技术,以便对AE信号进行分类。

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