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首页> 外文期刊>Applied Acoustics >Pattern recognition enabled acoustic emission signatures for crack characterization during damage progression in large concrete structures
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Pattern recognition enabled acoustic emission signatures for crack characterization during damage progression in large concrete structures

机译:在大型混凝土结构损伤进展期间,使样式识别使声发射签名用于裂纹表征

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摘要

The present study focuses on the investigations on technique for assessing damage progression and localization in concrete structure using acoustic emission (AE) technique. Damage is introduced in a girder-deck system of reinforced concrete (RC) bridge by monotonically applied load in terms of strain in reinforcement, at defined intervals. AE signals emitted at different damage stages are recorded to detect crack initiation and progression. Acoustic parameters such as energy, signal strength are considered to examine their efficacy in identifying the initiation and propagation of crack in concrete structures. Few of the frequency parameters of AE signal are identified to be very effective and able to clearly differentiate between the initiation of new crack and progression of existing crack(s) in concrete. AE waveform characteristics, as identified in the present study, can be used to classify the damage progression of in-service concrete structures. Further, unsupervised- and supervised- pattern recognition algorithms are used to classify the AE signal dataset recorded at different damage stages. To validate the effectiveness of feature selection and support vector machine (SVM) classifier, SVM classified locations of AE events are compared with the experimentally observed damage pattern at different damage stages. It is found that, SVM can effectively be able to classify two types of AE sources appropriately, enabling the potential application of AE technique for initiation and its progression, and localization of damage in critical in-service structures such as bridges. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本研究致力于利用声发射(AE)技术对分析混凝土结构损伤进展和定位的技术研究。在钢筋混凝土(RC)桥梁的梁甲板系统中引入损坏,通过在钢筋的应变中单调施加负载,定义间隔。记录在不同损伤阶段发射的AE信号以检测裂纹启动和进展。声学参数如能量,信号强度被认为是在识别混凝土结构中识别裂缝的启动和传播时检查它们的功效。识别AE信号的频率参数的一些频率参数非常有效,并且能够在混凝土中的新裂缝和现有裂缝的开始之间清楚地区分。如本研究中所识别的AE波形特性可用于分类损坏在役混凝土结构的损伤进展。此外,无监督和监督模式识别识别算法用于对在不同损伤阶段记录的AE信号数据集进行分类。为了验证特征选择和支持向量机(SVM)分类器的有效性,将AE事件的SVM分类位置与不同损伤阶段的实验观察到的损伤模式进行比较。发现,SVM可以有效地适当地对两种类型的AE源进行分类,从而能够潜在地应用AE技术进行启动及其进展,以及诸如桥的临界在职结构中的损坏的局部化。 (c)2020 elestvier有限公司保留所有权利。

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