Šofer Michal, Šofer Pavel, Pagáč Marek, Volodarskaja Anastasia, Babiuch Marek, Gruň Filip
Department of Applied Mechanics, Faculty of Mechanical Engineering, VSB-Technical University of Ostrava, 17. listopadu 2172/15, 708 00 Ostrava, Czech Republic.
Department of Control Systems and Instrumentation, Faculty of Mechanical Engineering, VSB-Technical University of Ostrava, 17. listopadu 2172/15, 708 00 Ostrava, Czech Republic.
Polymers (Basel). 2022 Dec 22;15(1):47. doi: 10.3390/polym15010047.
The characterisation of failure mechanisms in carbon fibre-reinforced polymer (CFRP) materials using the acoustic emission (AE) technique has been the topic of a number of publications. However, it is often challenging to obtain comprehensive and reliable information about individual failure mechanisms. This situation was the impetus for elaborating a comprehensive overview that covers all failure mechanisms within the framework of CFRP materials. Thus, we performed tensile and compact tension tests on specimens with various stacking sequences to induce specific failure modes and mechanisms. The AE activity was monitored using two different wideband AE sensors and further analysed using a hybrid AE hit detection process. The datasets received from both sensors were separately subjected to clustering analysis using the spectral clustering technique, which incorporated an unsupervised k-means clustering algorithm. The failure mechanism analysis also included a proposed filtering process based on the power distribution across the considered frequency range, with which it was possible to distinguish between the fibre pull-out and fibre breakage mechanisms. This functionality was particularly useful in cases where it was evident that the above-mentioned damage mechanisms exhibited very similar parametric characteristics. The results of the clustering analysis were compared to those of the scanning electron microscopy analysis, which confirmed the conclusions of the AE data analysis.
利用声发射(AE)技术对碳纤维增强聚合物(CFRP)材料中的失效机制进行表征一直是众多出版物的主题。然而,要获得关于单个失效机制的全面且可靠的信息往往具有挑战性。这种情况促使我们编写了一份全面的综述,涵盖了CFRP材料框架内的所有失效机制。因此,我们对具有不同堆叠顺序的试样进行了拉伸和紧凑拉伸试验,以诱导特定的失效模式和机制。使用两种不同的宽带AE传感器监测AE活动,并使用混合AE撞击检测过程进行进一步分析。从两个传感器接收的数据集分别使用光谱聚类技术进行聚类分析,该技术采用了无监督k均值聚类算法。失效机制分析还包括一个基于所考虑频率范围内功率分布的提议滤波过程,利用该过程可以区分纤维拔出和纤维断裂机制。在上述损伤机制表现出非常相似的参数特征的情况下,此功能特别有用。将聚类分析结果与扫描电子显微镜分析结果进行比较,证实了AE数据分析的结论。