European Workshop on Structural Health Monitoring , 2022-07-04

Title : ( A multi-stage machine learning methodology for health monitoring of largely unobserved structures under varying environmental conditions )

Authors: Alireza Entezami , Stefano Mariani , Hashem Shariatmadar ,

Citation: BibTeX | EndNote

Abstract

Book cover Book cover European Workshop on Structural Health Monitoring EWSHM 2022: European Workshop on Structural Health Monitoring pp 297–307Cite as A Multi-stage Machine Learning Methodology for Health Monitoring of Largely Unobserved Structures Under Varying Environmental Conditions Alireza Entezami, Stefano Mariani & Hashem Shariatmadar Conference paper First Online: 16 June 2022 598 Accesses Part of the Lecture Notes in Civil Engineering book series (LNCE,volume 254) Abstract Structural Health Monitoring (SHM) via data-driven techniques can be based upon vibrations acquired by sensor networks. However, technical and economic reasons may prevent the deployment of pervasive sensor networks over civil structures, thus limiting their reliability in terms of damage detection. Moreover, the effects of environmental (and operational) variability may lead to false alarms. To address these challenges, a multi-stage machine learning (ML) method is here proposed by exploiting autoregressive (AR) spectra as damage-sensitive features. The proposed method is framed as follows: (i) computing the distances between different sets of the AR spectra via the log-spectral distance (LSD), providing also the training and test datasets; (ii) removing the potential environmental variability by an auto-associative artificial neural network (AANN), to set normalized training and test datasets; (iii) running a statistical analysis via the Mahalanobis-squared distance (MSD) for early damage detection. The effectiveness of the proposed approach is assessed in the case of limited vibration data for the laboratory truss structure known as the Wooden Bridge. Comparative studies show that the AR spectrum is a reliable feature, sensitive to damage even in the presence of a limited number of sensors in the network; additionally, the multi-stage ML methodology succeeds in early detecting damage under environmental variability

Keywords

, Structural Health Monitoring, Partially observed systems, Environmental variability, AutoRegressive time series, Neural networks
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@inproceedings{paperid:1091623,
author = {علیرضا انتظامی and استفانو ماریانی and Shariatmadar, Hashem},
title = {A multi-stage machine learning methodology for health monitoring of largely unobserved structures under varying environmental conditions},
booktitle = {European Workshop on Structural Health Monitoring},
year = {2022},
location = {Palermo, ITALY},
keywords = {Structural Health Monitoring; Partially observed systems; Environmental variability; AutoRegressive time series; Neural networks},
}

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%0 Conference Proceedings
%T A multi-stage machine learning methodology for health monitoring of largely unobserved structures under varying environmental conditions
%A علیرضا انتظامی
%A استفانو ماریانی
%A Shariatmadar, Hashem
%J European Workshop on Structural Health Monitoring
%D 2022

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