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Damage Detection in Structural Health Monitoring using Hybrid Convolution Neural Network and Recurrent Neural Network

Authors :
Thanh Bui-Tien
Dung Bui-Ngoc
Hieu Nguyen-Tran
Lan Nguyen-Ngoc
Hoa Tran-Ngoc
Hung Tran-Viet
Source :
Frattura ed Integrità Strutturale, Vol 16, Iss 59 (2021)
Publication Year :
2021
Publisher :
Gruppo Italiano Frattura, 2021.

Abstract

The process of damage identification in Structural Health Monitoring (SHM) gives us a lot of practical information about the current status of the inspected structure. The target of the process is to detect damage status by processing data collected from sensors, followed by identifying the difference between the damaged and the undamaged states. Different machine learning techniques have been applied to attempt to extract features or knowledge from vibration data, however, they need to learn prior knowledge about the factors affecting the structure. In this paper, a novel method of structural damage detection is proposed using convolution neural network and recurrent neural network. A convolution neural network is used to extract deep features while recurrent neural network is trained to learn the long-term historical dependency in time series data. This method with combining two types of features increases discrimination ability when compares with it to deep features only. Finally, the neural network is applied to categorize the time series into two states - undamaged and damaged. The accuracy of the proposed method was tested on a benchmark dataset of Z24-bridge (Switzerland). The result shows that the hybrid method provides a high level of accuracy in damage identification of the tested structure.

Details

Language :
English
ISSN :
19718993
Volume :
16
Issue :
59
Database :
Directory of Open Access Journals
Journal :
Frattura ed Integrità Strutturale
Publication Type :
Academic Journal
Accession number :
edsdoj.0f5b4eba81dd4859bbf0b2860a270fab
Document Type :
article