Deep Learning-Based Acoustic Emission Signal Filtration Model in Reinforced Concrete

IF 2.6 4区 综合性期刊 Q2 MULTIDISCIPLINARY SCIENCES
Omair Inderyas, Ninel Alver, Sena Tayfur, Yuma Shimamoto, Tetsuya Suzuki
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引用次数: 0

Abstract

Acoustic emission is a nondestructive testing (NDT) technique, widely used to monitor the condition of structures for safety reasons especially in real time. The method utilizes the electrical signals generated by the elastic waves in a material under load to detect and locate damage in structures. However, identifying the sources of AE signals in concrete or composite materials can be challenging due to the anisotropic properties of materials and interpreting a large amount of AE data, leading to data misinterpretation and inaccurate detection of damage. Hence, the need for filtering out noise-induced signals from recorded data and emphasizing the actual AE source is crucial for monitoring and source localization of damage in real time. This study proposed a one-dimensional convolutional neural network (1D-CNN) deep learning approach to filter around 22,000 AE data in a reinforced concrete (RC) beam. The model utilizes significant AE parameters identified through neighborhood component analysis (NCA) to classify true AE signals from noise-induced signals. By using the optimized network parameters, a high classification accuracy of 97% and 96.29% was achieved during the training and testing phases, respectively. To check the reliability of the proposed AE filtering model in the real world, it was evaluated and verified using source location AE activities collected during a four-point bending test on a shear-deficient beam. The outcomes suggest that the proposed AE filtration model has the potential to accurately classify AE signals with an accuracy of 92.8% and proved that the filtration model provides accurate and valuable insight into source location determination.

Abstract Image

基于深度学习的钢筋混凝土声发射信号过滤模型
声发射是一种无损检测技术,广泛应用于结构状态监测,特别是实时监测。该方法利用材料在载荷作用下的弹性波产生的电信号来检测和定位结构的损伤。然而,由于材料的各向异性和大量声发射数据的解释,识别混凝土或复合材料中声发射信号的来源可能具有挑战性,从而导致数据误解和不准确的损伤检测。因此,需要从记录数据中滤除噪声诱发信号,并强调实际声发射源,这对于实时监测和定位损伤源至关重要。本研究提出了一种一维卷积神经网络(1D-CNN)深度学习方法来过滤钢筋混凝土(RC)梁中约22,000个声发射数据。该模型利用邻域分量分析(NCA)识别的重要声发射参数,将真实声发射信号与噪声信号区分开来。使用优化后的网络参数,在训练阶段和测试阶段的分类准确率分别达到97%和96.29%。为了验证所提出的声发射滤波模型在现实世界中的可靠性,使用在剪切缺陷梁的四点弯曲试验中收集的源位置声发射活动对其进行了评估和验证。结果表明,所提出的声发射滤波模型具有准确分类声发射信号的潜力,准确率为92.8%,并证明该滤波模型为确定源位置提供了准确而有价值的见解。
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来源期刊
Arabian Journal for Science and Engineering
Arabian Journal for Science and Engineering MULTIDISCIPLINARY SCIENCES-
CiteScore
5.70
自引率
3.40%
发文量
993
期刊介绍: King Fahd University of Petroleum & Minerals (KFUPM) partnered with Springer to publish the Arabian Journal for Science and Engineering (AJSE). AJSE, which has been published by KFUPM since 1975, is a recognized national, regional and international journal that provides a great opportunity for the dissemination of research advances from the Kingdom of Saudi Arabia, MENA and the world.
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