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Acoustic emission pattern recognition in CFRP retrofitted RC beams for failure mode identification

机译:CFRP加固RC梁中的声发射模式识别用于故障模式识别

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The application of fiber reinforced polymer (FRP) composites to repair reinforcement concrete (RC) structures has emerged as a new and viable choice. However, the understanding of the durability and long-term performance of this combined system still remains elusive. Adopting non-destructive techniques such as acoustic emission (AE) will raise confidence in exploiting the full potential of this material. The objective of the current study is to identify failure mechanisms in CFRP-retrofitted RC beams by applying advanced pattern recognition techniques on the collected AE data. Six RC beams with artificially induced damage repaired with CFRP sheets are tested with flexural loads and monitored with AE sensors. Since damage mechanisms in the retrofitted RC beams are unknown a priori, a pattern recognition methodology is developed. After preprocessing the AE data using the principal component analysis (PCA), the unsupervised k-means clustering method is applied to automatically cluster and separate the AE patterns. The neural networks based on multi-layer perceptron (MLP) or support vector machine (SVM) algorithm are then developed to better understand the trends in the AE data and their association with the observed damage mechanism. Finally, the trained models are used to successfully identify damage modes in other similar samples.
机译:纤维增强聚合物(FRP)复合材料在修补钢筋混凝土(RC)结构中的应用已成为一种新的可行选择。但是,对这种组合系统的耐用性和长期性能的了解仍然难以捉摸。采用非破坏性技术(例如声发射(AE))将提高开发这种材料的全部潜力的信心。当前研究的目的是通过对收集的AE数据应用先进的模式识别技术来识别CFRP加固的RC梁的破坏机理。六根用CFRP板修复的具有人为损坏的RC梁在弯曲载荷下进行测试,并通过AE传感器进行监控。由于改装后的RC光束中的损伤机制是事先未知的,因此开发了一种模式识别方法。在使用主成分分析(PCA)对AE数据进行预处理之后,采用无监督的k均值聚类方法来自动聚类和分离AE模式。然后,开发了基于多层感知器(MLP)或支持向量机(SVM)算法的神经网络,以更好地了解AE数据的趋势及其与观察到的破坏机制的关联。最后,训练有素的模型可用于成功识别其他类似样本中的损坏模式。

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