Automated crack identification in structures using acoustic waveforms and deep learning

Mohamed Barbosh, Liangfu Ge, Ayan Sadhu
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引用次数: 0

Abstract

Structural elements undergo multiple levels of damage at various locations due to environments and critical loading conditions. The level of damage and its location can be predicted using acoustic emission (AE) waveforms that are captured from the generation of inherent microcracks. Existing AE methods are reliant on the feature selection of the captured waveforms and may be subjective in nature. To automate this process, this paper proposes a deep-learning model to predict the damage severity and its expected location using AE waveforms. The model is based on a densely connected convolutional neural network (CNN) that offers superior feature extraction and minimal training data requirements. Time-domain AE waveforms are used as inputs of the proposed model to automate the process of predicting the severity of damage and identifying the expected location of the damage in structural elements. The proposed approach is validated using AE data collected from a concrete beam and a wooden beam and plate. The results show the capability of the proposed method for predicting the level of damage with an accuracy range of 92-95% and identifying the approximate location of damage with 90-100% accuracy. Thus, the proposed method serves as a robust technique for damage severity prediction and localization in civil structures.
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利用声波波形和深度学习自动识别结构中的裂纹
由于环境和关键载荷条件的影响,结构元件在不同位置会发生多级损坏。可以利用从固有微裂缝产生过程中捕获的声发射(AE)波形来预测损伤程度及其位置。现有的 AE 方法依赖于对捕获波形的特征选择,可能具有主观性。为了使这一过程自动化,本文提出了一种深度学习模型,利用 AE 波形预测损坏严重程度及其预期位置。该模型基于密集连接的卷积神经网络 (CNN),具有卓越的特征提取能力和最低的训练数据要求。时域 AE 波形用作拟议模型的输入,以自动预测损坏严重程度并确定结构元件中损坏的预期位置。利用从混凝土梁和木梁及木板上收集的 AE 数据对所提出的方法进行了验证。结果表明,所提方法预测损坏程度的准确率为 92-95%,识别损坏大致位置的准确率为 90-100%。因此,所提出的方法是一种用于民用结构损坏严重程度预测和定位的稳健技术。
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来源期刊
CiteScore
5.70
自引率
0.00%
发文量
0
审稿时长
13 weeks
期刊最新文献
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