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Acoustic emission signature analysis of failure mechanisms in fiber-reinforced plastic structures.

机译:纤维增强塑料结构破坏机理的声发射特征分析。

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The objective of the research program was to develop reliable pattern recognition and neural network analysis methods to determine the failure mechanism signatures in fiber reinforced plastic structures from acoustic emission (AE) data.; The AE database was collected from a range of test specimens.{09}Visual inspection and observation with a scanning electron microscope were performed to identify failure mechanisms in the specimens at various load levels. It was found that different types of specimen and structural loading yielded different types of failure. The failure mechanisms of interest were matrix cracking, debonding, delamination, and fiber breakage.; Two method of analysis were used to determine the AE signatures. The first was visual AE pattern recognition. This analysis used a comparison of dissimilarities among AE correlation plots of data from different specimens. The results showed several AE signatures. The analysis also explains the correlation of material properties to failure mechanism evolution.; The second analysis method was the use of neural networks to perform AE pattern recognition. The neural networks were trained using AE data in order to perform two tasks: determine the failure mechanisms and to assess the damage severity. The performance of the networks was found to be excellent for the first task and promising for the second task.; The neural network was also applied to additional AE data from full-scale and coupon tests. By comparing the results from the network with visually observed damage, the network results are shown to be very reliable in determining failure mechanisms.
机译:该研究计划的目的是开发可靠的模式识别和神经网络分析方法,以根据声发射(AE)数据确定纤维增强塑料结构的破坏机理特征。 AE数据库是从一系列试样中收集的。{09}使用扫描电子显微镜进行目视检查和观察,以识别试样在不同载荷水平下的破坏机理。结果发现,不同类型的试样和结构载荷产生不同类型的破坏。感兴趣的破坏机制是基体开裂,脱粘,分层和纤维断裂。使用两种分析方法来确定AE签名。首先是视觉AE模式识别。该分析使用了来自不同样本的数据的AE相关图之间的相异性比较。结果显示了几个AE签名。分析还解释了材料特性与破坏机理演变之间的关系。第二种分析方法是使用神经网络执行AE模式识别。使用AE数据对神经网络进行了训练,以执行两项任务:确定故障机制并评估损坏的严重性。人们发现,网络的性能在第一项任务中表现出色,而在第二项任务中则很有希望。该神经网络还应用于来自满量程和试样测试的其他AE数据。通过将网络结果与肉眼观察到的损坏进行比较,可以证明网络结果在确定故障机制方面非常可靠。

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