Structural Damage Detection in the Wooden Bridge Using the Fourier Decomposition, Time Series Modeling and Machine Learning Methods

In this article, a novel approach has been employed to identify structural damage in the wooden bridge structure by utilizing vibration data. This method encompasses the Fourier decomposition method that decompose the response of the bridge into a sequence of Fourier Intrinsic Band Functions (FIBF)....

Full description

Saved in:
Bibliographic Details
Main Authors: Younes Nouri, Farzad Shahabian, Hashem Shariatmadar, Alireza Entezami
Format: Article
Language:English
Published: Pouyan Press 2024-04-01
Series:Journal of Soft Computing in Civil Engineering
Subjects:
Online Access:https://www.jsoftcivil.com/article_180884_a67d1d7af0d29fc2c4739a8fd713a7e8.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850176085987164160
author Younes Nouri
Farzad Shahabian
Hashem Shariatmadar
Alireza Entezami
author_facet Younes Nouri
Farzad Shahabian
Hashem Shariatmadar
Alireza Entezami
author_sort Younes Nouri
collection DOAJ
description In this article, a novel approach has been employed to identify structural damage in the wooden bridge structure by utilizing vibration data. This method encompasses the Fourier decomposition method that decompose the response of the bridge into a sequence of Fourier Intrinsic Band Functions (FIBF). These functions comprise the responses of the structure that contain inherent information of structure as well as noise from the vibrations. The time series modeling is utilized to extract damage-sensitive features. The residuals of the time series model of both undamaged and damaged structures are extracted for detecting any damage. To ascertain the presence of damage, supervised classification machine learning algorithms are employed. The algorithms are utilized consist of Artificial Neural Network (ANN), K-Nearest Neighbors (KNN), support vector machines (SVM), ensemble learning, and decision tree. The results indicate that the proposed method of feature extraction is highly effective and reliable in detecting damages. In addition, the capacity of decision tree and ANN algorithms to minimize type 2 error and enhance accuracy is demonstrated when evaluating different machine learning algorithms. The value of the type II error in the ANN model and the decision tree is equal to 13.85% and the accuracy of the model is 93.02%.
format Article
id doaj-art-e5f73eedc87d4e729a357f0b81b90dd9
institution OA Journals
issn 2588-2872
language English
publishDate 2024-04-01
publisher Pouyan Press
record_format Article
series Journal of Soft Computing in Civil Engineering
spelling doaj-art-e5f73eedc87d4e729a357f0b81b90dd92025-08-20T02:19:19ZengPouyan PressJournal of Soft Computing in Civil Engineering2588-28722024-04-01828310110.22115/scce.2023.401971.1669180884Structural Damage Detection in the Wooden Bridge Using the Fourier Decomposition, Time Series Modeling and Machine Learning MethodsYounes Nouri0Farzad Shahabian1Hashem Shariatmadar2Alireza Entezami3Department of Civil Engineering, Faculty of Engineering, Ferdowsi University of Mashhad, Mashhad, IranDepartment of Civil Engineering, Faculty of Engineering, Ferdowsi University of Mashhad, Mashhad, IranDepartment of Civil Engineering, Faculty of Engineering, Ferdowsi University of Mashhad, Mashhad, IranDepartment of Civil and Environmental Engineering, Politecnico di Milano, Milan, ItalyIn this article, a novel approach has been employed to identify structural damage in the wooden bridge structure by utilizing vibration data. This method encompasses the Fourier decomposition method that decompose the response of the bridge into a sequence of Fourier Intrinsic Band Functions (FIBF). These functions comprise the responses of the structure that contain inherent information of structure as well as noise from the vibrations. The time series modeling is utilized to extract damage-sensitive features. The residuals of the time series model of both undamaged and damaged structures are extracted for detecting any damage. To ascertain the presence of damage, supervised classification machine learning algorithms are employed. The algorithms are utilized consist of Artificial Neural Network (ANN), K-Nearest Neighbors (KNN), support vector machines (SVM), ensemble learning, and decision tree. The results indicate that the proposed method of feature extraction is highly effective and reliable in detecting damages. In addition, the capacity of decision tree and ANN algorithms to minimize type 2 error and enhance accuracy is demonstrated when evaluating different machine learning algorithms. The value of the type II error in the ANN model and the decision tree is equal to 13.85% and the accuracy of the model is 93.02%.https://www.jsoftcivil.com/article_180884_a67d1d7af0d29fc2c4739a8fd713a7e8.pdfstructural health monitoringdamage detectionthe fourier decomposition methodtime seriesmachine learning
spellingShingle Younes Nouri
Farzad Shahabian
Hashem Shariatmadar
Alireza Entezami
Structural Damage Detection in the Wooden Bridge Using the Fourier Decomposition, Time Series Modeling and Machine Learning Methods
Journal of Soft Computing in Civil Engineering
structural health monitoring
damage detection
the fourier decomposition method
time series
machine learning
title Structural Damage Detection in the Wooden Bridge Using the Fourier Decomposition, Time Series Modeling and Machine Learning Methods
title_full Structural Damage Detection in the Wooden Bridge Using the Fourier Decomposition, Time Series Modeling and Machine Learning Methods
title_fullStr Structural Damage Detection in the Wooden Bridge Using the Fourier Decomposition, Time Series Modeling and Machine Learning Methods
title_full_unstemmed Structural Damage Detection in the Wooden Bridge Using the Fourier Decomposition, Time Series Modeling and Machine Learning Methods
title_short Structural Damage Detection in the Wooden Bridge Using the Fourier Decomposition, Time Series Modeling and Machine Learning Methods
title_sort structural damage detection in the wooden bridge using the fourier decomposition time series modeling and machine learning methods
topic structural health monitoring
damage detection
the fourier decomposition method
time series
machine learning
url https://www.jsoftcivil.com/article_180884_a67d1d7af0d29fc2c4739a8fd713a7e8.pdf
work_keys_str_mv AT younesnouri structuraldamagedetectioninthewoodenbridgeusingthefourierdecompositiontimeseriesmodelingandmachinelearningmethods
AT farzadshahabian structuraldamagedetectioninthewoodenbridgeusingthefourierdecompositiontimeseriesmodelingandmachinelearningmethods
AT hashemshariatmadar structuraldamagedetectioninthewoodenbridgeusingthefourierdecompositiontimeseriesmodelingandmachinelearningmethods
AT alirezaentezami structuraldamagedetectioninthewoodenbridgeusingthefourierdecompositiontimeseriesmodelingandmachinelearningmethods