Fully convolutional networks for structural health monitoring through multivariate time series classification

Abstract We propose a novel approach to structural health monitoring (SHM), aiming at the automatic identification of damage-sensitive features from data acquired through pervasive sensor systems. Damage detection and localization are formulated as classification problems, and tackled through fully...

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Main Authors: Luca Rosafalco, Andrea Manzoni, Stefano Mariani, Alberto Corigliano
Format: Article
Language:English
Published: SpringerOpen 2020-09-01
Series:Advanced Modeling and Simulation in Engineering Sciences
Subjects:
Online Access:http://link.springer.com/article/10.1186/s40323-020-00174-1
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spelling doaj-eb55259952d149dba7f91219694f556d2020-11-25T03:52:14ZengSpringerOpenAdvanced Modeling and Simulation in Engineering Sciences2213-74672020-09-017113110.1186/s40323-020-00174-1Fully convolutional networks for structural health monitoring through multivariate time series classificationLuca Rosafalco0Andrea Manzoni1Stefano Mariani2Alberto Corigliano3Dipartimento di Ingegneria Civile e Ambientale, Politecnico di MilanoMOX, Dipartimento di Matematica, Politecnico di MilanoDipartimento di Ingegneria Civile e Ambientale, Politecnico di MilanoDipartimento di Ingegneria Civile e Ambientale, Politecnico di MilanoAbstract We propose a novel approach to structural health monitoring (SHM), aiming at the automatic identification of damage-sensitive features from data acquired through pervasive sensor systems. Damage detection and localization are formulated as classification problems, and tackled through fully convolutional networks (FCNs). A supervised training of the proposed network architecture is performed on data extracted from numerical simulations of a physics-based model (playing the role of digital twin of the structure to be monitored) accounting for different damage scenarios. By relying on this simplified model of the structure, several load conditions are considered during the training phase of the FCN, whose architecture has been designed to deal with time series of different length. The training of the neural network is done before the monitoring system starts operating, thus enabling a real time damage classification. The numerical performances of the proposed strategy are assessed on a numerical benchmark case consisting of an eight-story shear building subjected to two load types, one of which modeling random vibrations due to low-energy seismicity. Measurement noise has been added to the responses of the structure to mimic the outputs of a real monitoring system. Extremely good classification capacities are shown: among the nine possible alternatives (represented by the healthy state and by a damage at any floor), damage is correctly classified in up to $$95 \%$$ 95 % of cases, thus showing the strong potential of the proposed approach in view of the application to real-life cases.http://link.springer.com/article/10.1186/s40323-020-00174-1Structural health monitoringFully convolutional networksDamage localizationTime series analysisDeep learning
collection DOAJ
language English
format Article
sources DOAJ
author Luca Rosafalco
Andrea Manzoni
Stefano Mariani
Alberto Corigliano
spellingShingle Luca Rosafalco
Andrea Manzoni
Stefano Mariani
Alberto Corigliano
Fully convolutional networks for structural health monitoring through multivariate time series classification
Advanced Modeling and Simulation in Engineering Sciences
Structural health monitoring
Fully convolutional networks
Damage localization
Time series analysis
Deep learning
author_facet Luca Rosafalco
Andrea Manzoni
Stefano Mariani
Alberto Corigliano
author_sort Luca Rosafalco
title Fully convolutional networks for structural health monitoring through multivariate time series classification
title_short Fully convolutional networks for structural health monitoring through multivariate time series classification
title_full Fully convolutional networks for structural health monitoring through multivariate time series classification
title_fullStr Fully convolutional networks for structural health monitoring through multivariate time series classification
title_full_unstemmed Fully convolutional networks for structural health monitoring through multivariate time series classification
title_sort fully convolutional networks for structural health monitoring through multivariate time series classification
publisher SpringerOpen
series Advanced Modeling and Simulation in Engineering Sciences
issn 2213-7467
publishDate 2020-09-01
description Abstract We propose a novel approach to structural health monitoring (SHM), aiming at the automatic identification of damage-sensitive features from data acquired through pervasive sensor systems. Damage detection and localization are formulated as classification problems, and tackled through fully convolutional networks (FCNs). A supervised training of the proposed network architecture is performed on data extracted from numerical simulations of a physics-based model (playing the role of digital twin of the structure to be monitored) accounting for different damage scenarios. By relying on this simplified model of the structure, several load conditions are considered during the training phase of the FCN, whose architecture has been designed to deal with time series of different length. The training of the neural network is done before the monitoring system starts operating, thus enabling a real time damage classification. The numerical performances of the proposed strategy are assessed on a numerical benchmark case consisting of an eight-story shear building subjected to two load types, one of which modeling random vibrations due to low-energy seismicity. Measurement noise has been added to the responses of the structure to mimic the outputs of a real monitoring system. Extremely good classification capacities are shown: among the nine possible alternatives (represented by the healthy state and by a damage at any floor), damage is correctly classified in up to $$95 \%$$ 95 % of cases, thus showing the strong potential of the proposed approach in view of the application to real-life cases.
topic Structural health monitoring
Fully convolutional networks
Damage localization
Time series analysis
Deep learning
url http://link.springer.com/article/10.1186/s40323-020-00174-1
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