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首页> 外文期刊>Journal of aerospace engineering >Using Acoustic Emission to Monitor Failure Modes in CFRP-Strengthened Concrete Structures
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Using Acoustic Emission to Monitor Failure Modes in CFRP-Strengthened Concrete Structures

机译:使用声发射监测CFRP加固混凝土结构的破坏模式

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摘要

Carbon fiber-reinforced polymer (CFRP) composites have been widely used to repair and strength concrete structures. Nevertheless, the durability and long-term performance of FPR-strengthened structures are still not well understood. To this end, nondestructive techniques (NDTs) such as acoustic emission (AE) are usually adopted for the inspection and monitoring of composite structures. The objective of this study is to monitor the damage modes in CFRP-strengthened reinforced concrete structures using the AE technique together with advanced statistical analysis and pattern recognition (PR) methods. Three concrete cube specimens bonded with CFRP sheets and two full-scale RC beams before and after retrofitting were tested to acquire AE data originating from critical damage mechanisms. Because the damage mechanisms in the retrofitted RC beams are unknown a priori, a methodology based on the unsupervised k-means clustering analysis, and the supervised neural networks (NNs) were developed. By applying k-means clustering analysis, each data cluster was identified to associate with one or more damage mechanisms for the typical specimens. The NN models based on multilayer perceptron (MLP) and support vector machines (SVMs) were then created and applied to other similar samples, which show quite satisfactory performance on damage mode identification. (c) 2019 American Society of Civil Engineers.
机译:碳纤维增强聚合物(CFRP)复合材料已被广泛用于修复和增强混凝土结构。然而,FPR增强结构的耐用性和长期性能仍未得到很好的了解。为此,通常采用无损技术(NDT)例如声发射(AE)来检查和监视复合结构。这项研究的目的是使用AE技术以及先进的统计分析和模式识别(PR)方法来监测CFRP加固钢筋混凝土结构的损伤模式。测试了改造前后的三个用CFRP板粘结的混凝土立方体标本和两个完整的RC梁,以获取源自关键破坏机制的AE数据。由于改装后的RC梁的损伤机理是先验未知的,因此开发了一种基于无监督k均值聚类分析和监督神经网络(NNs)的方法。通过应用k均值聚类分析,可以识别每个数据聚类,以与典型标本的一个或多个损坏机制相关联。然后创建了基于多层感知器(MLP)和支持向量机(SVM)的NN模型,并将其应用于其他类似样本,这些样本在损伤模式识别方面表现出令人满意的性能。 (c)2019美国土木工程师学会。

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