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측정 위치에 대한 강건성을 가지는 구조 진동 신호 기반의 결함 있는 복합재 구조물의 분류Classification of Damaged Composite Structures Using Structural Vibration Signals Featuring Robustness to Measurement Locations

Other Titles
Classification of Damaged Composite Structures Using Structural Vibration Signals Featuring Robustness to Measurement Locations
Authors
이다운한장우김흥수손정우
Issue Date
Dec-2021
Publisher
한국소음진동공학회
Keywords
복합재 구조물; 결함 탐지; 분류; 오토인코더; 합성곱 심경망; Composite Structure; Damage Detection; Classification; Autoencode; Convolutional Neural Network
Citation
한국소음진동공학회논문집, v.31, no.6, pp 684 - 691
Pages
8
Indexed
KCI
Journal Title
한국소음진동공학회논문집
Volume
31
Number
6
Start Page
684
End Page
691
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/3979
DOI
10.5050/KSNVE.2021.31.6.684
ISSN
1598-2785
2287-5476
Abstract
In the present work, a new method to classify healthy and damaged composite structures using experimentally obtained structural vibration data is proposed and evaluated. After fabricating healthy and damaged laminated composite beam specimens, structural vibration data for fixed-free boundary conditions is experimentally obtained via random excitation. The measured vibration signals are converted into images using a Short-Time Fourier Transform and used as input data for learning and testing. First, an autoencoder is used to detect the presence of damage. The autoencoder model is trained using the vibration data of the healthy composite structure. The vibration data of a healthy composite structure is input to the trained autoencoder model with the data of a damaged composite structure, and errors between the input and output data are compared to detect the presence of damage. Second, a convolutional neural network model is used to classify the healthy and damaged composite structures with two different damage locations. This study confirms that the proposed technique can effectively detect and locate damage in composite structures.
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