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首页> 外文期刊>Nondestructive Testing and Evaluation >Identification of damage mechanisms in self-reinforced polyethylene composites by using pattern recognition techniques on AE data
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Identification of damage mechanisms in self-reinforced polyethylene composites by using pattern recognition techniques on AE data

机译:利用模式识别技术对AE数据识别自增强聚乙烯复合材料的损伤机理

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摘要

Acoustic emission (AE) signals collected from thermoplastic self-reinforced polyethylene composites ultra-high molecular weight polyethylene fibre reinforced low-density polyethylene (UHMWPE/LDPE) under quasi-static tensile load were clustered and identified by unsupervised pattern recognition (UPR) and supervised pattern recognition (SPR) techniques in order to clarify various damage modes in the composites. The purpose was to find an easy way to separate a set of data with a large number of unknown AE signals into several classes attributed to a specific damage mode each. UPR techniques were utilised first to classify the AE signals from simple lay-up laminate specimens automatically and mathematically. Different damage modes were identified and a physical validation was carried out by the scanning electron microscope (SEM) technique. Damage investigation of the specimen according to the clustering results showed reasonable results. Therefore, the labelling data set consisting of signals from different damage modes was used as the reference for a SPR system. A large number of AE signals from quasi-isotropic laminates were then identified by the supervised method. It showed good results, which were also supported by the SEM examination. A reliable and convenient procedure was established for a good identification of large number of unknown AE data for the UHMWPE/LDPE composites. This methodology is promising for any other fibre reinforced composites in the field of damage mechanisms analysis.
机译:对在准静态拉伸载荷下从热塑性自增强聚乙烯复合材料超高分子量聚乙烯纤维增强低密度聚乙烯(UHMWPE / LDPE)收集的声发射(AE)信号进行聚类并通过无监督模式识别(UPR)进行识别和监督模式识别(SPR)技术,以阐明复合材料中的各种损坏模式。目的是找到一种简便的方法,将具有大量未知AE信号的数据集分离为归因于特定损坏模式的几类。首先使用UPR技术对自动叠层样品的AE信号进行自动数学分类。确定了不同的损坏模式,并通过扫描电子显微镜(SEM)技术进行了物理验证。根据聚类结果对标本进行损伤研究,结果合理。因此,由来自不同损伤模式的信号组成的标记数据集被用作SPR系统的参考。然后通过监督方法从准各向同性层压板中识别出大量的AE信号。它显示出良好的结果,这也得到SEM检查的支持。建立了可靠,方便的程序,可以很好地识别UHMWPE / LDPE复合材料的大量未知AE数据。这种方法对于损伤机理分析领域中的任何其他纤维增强复合材料都有希望。

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