AECWT-3DR-Net: Damage Localization Network for Concrete Structures Using Acoustic Emission Sensors

Proceeding of The 12th Conference on Information Technology and It's Applications (CITA 2023); pp: 2-11.

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Bibliografski detalji
Glavni autori: Van, Vy, Hyungchul, Yoon
Format: Bài viết
Jezik:English
Izdano: Vietnam-Korea University of Information and Communication Technology 2023
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Online pristup:http://elib.vku.udn.vn/handle/123456789/2706
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spelling oai:elib.vku.udn.vn:123456789-27062023-09-25T08:28:26Z AECWT-3DR-Net: Damage Localization Network for Concrete Structures Using Acoustic Emission Sensors Van, Vy Hyungchul, Yoon Damage Detection Acoustic Emission Sensor Deep Learning Proceeding of The 12th Conference on Information Technology and It's Applications (CITA 2023); pp: 2-11. In the construction industry, the deterioration of structures is a significant concern. To detect cracks in concrete structures, acoustic emission sensors are commonly used. The traditional approach relies on measuring the time of arrival, time difference of arrival, and received signal strength indicator. However, conventional methods are prone to error in the presence of inhomogeneous materials. In this research, we introduce a new method that employs deep learning techniques to detect cracks using acoustic emission sensors. The aim of this approach is to enhance the accuracy of crack detection while automating the process. The proposed method entails the following steps: capturing signals from acoustic emission sensors and then converting them into a time-frequency representation using continuous wavelet transform. These representations are fed into a convolutional neural network that is specifically designed to locate the crack. Finally, the convolutional neural network is trained to predict the coordinates of the crack. The proposed method's effectiveness and advancements were confirmed through experiments conducted on a concrete block that had a crack artificially created by pencil-lead breaks. 2023-09-25T08:28:19Z 2023-09-25T08:28:19Z 2023-06 Working Paper 978-604-80-8083-9 http://elib.vku.udn.vn/handle/123456789/2706 en CITA; application/pdf Vietnam-Korea University of Information and Communication Technology
institution Trường Đại học Công nghệ Thông tin và Truyền thông Việt Hàn - Đại học Đà Nẵng
collection DSpace
language English
topic Damage Detection
Acoustic Emission Sensor
Deep Learning
spellingShingle Damage Detection
Acoustic Emission Sensor
Deep Learning
Van, Vy
Hyungchul, Yoon
AECWT-3DR-Net: Damage Localization Network for Concrete Structures Using Acoustic Emission Sensors
description Proceeding of The 12th Conference on Information Technology and It's Applications (CITA 2023); pp: 2-11.
format Working Paper
author Van, Vy
Hyungchul, Yoon
author_facet Van, Vy
Hyungchul, Yoon
author_sort Van, Vy
title AECWT-3DR-Net: Damage Localization Network for Concrete Structures Using Acoustic Emission Sensors
title_short AECWT-3DR-Net: Damage Localization Network for Concrete Structures Using Acoustic Emission Sensors
title_full AECWT-3DR-Net: Damage Localization Network for Concrete Structures Using Acoustic Emission Sensors
title_fullStr AECWT-3DR-Net: Damage Localization Network for Concrete Structures Using Acoustic Emission Sensors
title_full_unstemmed AECWT-3DR-Net: Damage Localization Network for Concrete Structures Using Acoustic Emission Sensors
title_sort aecwt-3dr-net: damage localization network for concrete structures using acoustic emission sensors
publisher Vietnam-Korea University of Information and Communication Technology
publishDate 2023
url http://elib.vku.udn.vn/handle/123456789/2706
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