Structural Health Monitoring Impact Classification Method Based on Bayesian Neural Network

This paper proposes a novel method for multi-class classification and uncertainty quantification of impact events on a flat composite plate with a structural health monitoring (SHM) system by using a Bayesian neural network (BNN). Most of the existing research in passive sensing has focused on deter...

Full description

Bibliographic Details
Main Authors: Haofan Yu, Aldyandra Hami Seno, Zahra Sharif Khodaei, M. H. Ferri Aliabadi
Format: Article
Language:English
Published: MDPI AG 2022-09-01
Series:Polymers
Subjects:
Online Access:https://www.mdpi.com/2073-4360/14/19/3947
_version_ 1797477417020817408
author Haofan Yu
Aldyandra Hami Seno
Zahra Sharif Khodaei
M. H. Ferri Aliabadi
author_facet Haofan Yu
Aldyandra Hami Seno
Zahra Sharif Khodaei
M. H. Ferri Aliabadi
author_sort Haofan Yu
collection DOAJ
description This paper proposes a novel method for multi-class classification and uncertainty quantification of impact events on a flat composite plate with a structural health monitoring (SHM) system by using a Bayesian neural network (BNN). Most of the existing research in passive sensing has focused on deterministic approaches for impact detection and characterization. However, there are variability in impact location, angle and energy in real operational conditions which results in uncertainty in the diagnosis. Therefore, this paper proposes a reliability-based impact characterization method based on BNN for the first time. Impact data are acquired by a passive sensing system of piezoelectric (PZT) sensors. Features extracted from the sensor signals, such as their transferred energy, frequency at maximum amplitude and time interval of the largest peak, are used to develop a BNN for impact classification (i.e., energy level). To test the robustness and reliability of the proposed model to impact variability, it is trained with perpendicular impacts and tested by variable angle impacts. The same dataset is further applied in a method called multi-artificial neural network (multi-ANN) to compare its ability in uncertainty quantification and its computational efficiency against the BNN for validation of the developed meta-model. It is demonstrated that both the BNN and multi-ANN can measure the uncertainty and confidence of the diagnosis from the prediction results. Both have very high performance in classifying impact energies when the networks are trained and tested with perpendicular impacts of different energy and location, with 94% and 98% reliable predictions for BNN and multi-ANN, respectively. However, both metamodels struggled to detect new impact scenarios (angled impacts) when the data set was not used in the development stage and only used for testing. Including additional features improved the performance of the networks in regularization; however, not to the acceptable accuracy. The BNN significantly outperforms the multi-ANN in computational time and resources. For perpendicular impacts, both methods can reach a reliable accuracy, while for angled impacts, the accuracy decreases but the uncertainty provides additional information that can be further used to improve the classification.
first_indexed 2024-03-09T21:17:20Z
format Article
id doaj.art-d9bb1fd2850b4e078d62072414ac2084
institution Directory Open Access Journal
issn 2073-4360
language English
last_indexed 2024-03-09T21:17:20Z
publishDate 2022-09-01
publisher MDPI AG
record_format Article
series Polymers
spelling doaj.art-d9bb1fd2850b4e078d62072414ac20842023-11-23T21:31:42ZengMDPI AGPolymers2073-43602022-09-011419394710.3390/polym14193947Structural Health Monitoring Impact Classification Method Based on Bayesian Neural NetworkHaofan Yu0Aldyandra Hami Seno1Zahra Sharif Khodaei2M. H. Ferri Aliabadi3Structural Integrity and Health Monitoring Group, Department of Aeronautics, Imperial College London, London SW7 2AZ, UKStructural Integrity and Health Monitoring Group, Department of Aeronautics, Imperial College London, London SW7 2AZ, UKStructural Integrity and Health Monitoring Group, Department of Aeronautics, Imperial College London, London SW7 2AZ, UKStructural Integrity and Health Monitoring Group, Department of Aeronautics, Imperial College London, London SW7 2AZ, UKThis paper proposes a novel method for multi-class classification and uncertainty quantification of impact events on a flat composite plate with a structural health monitoring (SHM) system by using a Bayesian neural network (BNN). Most of the existing research in passive sensing has focused on deterministic approaches for impact detection and characterization. However, there are variability in impact location, angle and energy in real operational conditions which results in uncertainty in the diagnosis. Therefore, this paper proposes a reliability-based impact characterization method based on BNN for the first time. Impact data are acquired by a passive sensing system of piezoelectric (PZT) sensors. Features extracted from the sensor signals, such as their transferred energy, frequency at maximum amplitude and time interval of the largest peak, are used to develop a BNN for impact classification (i.e., energy level). To test the robustness and reliability of the proposed model to impact variability, it is trained with perpendicular impacts and tested by variable angle impacts. The same dataset is further applied in a method called multi-artificial neural network (multi-ANN) to compare its ability in uncertainty quantification and its computational efficiency against the BNN for validation of the developed meta-model. It is demonstrated that both the BNN and multi-ANN can measure the uncertainty and confidence of the diagnosis from the prediction results. Both have very high performance in classifying impact energies when the networks are trained and tested with perpendicular impacts of different energy and location, with 94% and 98% reliable predictions for BNN and multi-ANN, respectively. However, both metamodels struggled to detect new impact scenarios (angled impacts) when the data set was not used in the development stage and only used for testing. Including additional features improved the performance of the networks in regularization; however, not to the acceptable accuracy. The BNN significantly outperforms the multi-ANN in computational time and resources. For perpendicular impacts, both methods can reach a reliable accuracy, while for angled impacts, the accuracy decreases but the uncertainty provides additional information that can be further used to improve the classification.https://www.mdpi.com/2073-4360/14/19/3947structural health monitoringpassive sensingimpact classificationBayesian neural networkartificial neural networkuncertainty measurement
spellingShingle Haofan Yu
Aldyandra Hami Seno
Zahra Sharif Khodaei
M. H. Ferri Aliabadi
Structural Health Monitoring Impact Classification Method Based on Bayesian Neural Network
Polymers
structural health monitoring
passive sensing
impact classification
Bayesian neural network
artificial neural network
uncertainty measurement
title Structural Health Monitoring Impact Classification Method Based on Bayesian Neural Network
title_full Structural Health Monitoring Impact Classification Method Based on Bayesian Neural Network
title_fullStr Structural Health Monitoring Impact Classification Method Based on Bayesian Neural Network
title_full_unstemmed Structural Health Monitoring Impact Classification Method Based on Bayesian Neural Network
title_short Structural Health Monitoring Impact Classification Method Based on Bayesian Neural Network
title_sort structural health monitoring impact classification method based on bayesian neural network
topic structural health monitoring
passive sensing
impact classification
Bayesian neural network
artificial neural network
uncertainty measurement
url https://www.mdpi.com/2073-4360/14/19/3947
work_keys_str_mv AT haofanyu structuralhealthmonitoringimpactclassificationmethodbasedonbayesianneuralnetwork
AT aldyandrahamiseno structuralhealthmonitoringimpactclassificationmethodbasedonbayesianneuralnetwork
AT zahrasharifkhodaei structuralhealthmonitoringimpactclassificationmethodbasedonbayesianneuralnetwork
AT mhferrialiabadi structuralhealthmonitoringimpactclassificationmethodbasedonbayesianneuralnetwork