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dc.contributor.authorWang, Ruhua
dc.contributor.authorChencho,
dc.contributor.authorAn, Senjian
dc.contributor.authorLi, Jun
dc.contributor.authorLi, Ling
dc.contributor.authorHao, Hong
dc.contributor.authorLiu, Wan-Quan
dc.date.accessioned2023-03-14T04:23:46Z
dc.date.available2023-03-14T04:23:46Z
dc.date.issued2021
dc.identifier.citationWang, R. and Chencho, and An, S. and Li, J. and Li, L. and Hao, H. and Liu, W. 2021. Deep residual network framework for structural health monitoring. Structural Health Monitoring. 20 (4): pp. 1443-1461.
dc.identifier.urihttp://hdl.handle.net/20.500.11937/90890
dc.identifier.doi10.1177/1475921720918378
dc.description.abstract

Convolutional neural networks have been widely employed for structural health monitoring and damage identification. The convolutional neural network is currently considered as the state-of-the-art method for structural damage identification due to its capabilities of efficient and robust feature learning in a hierarchical manner. It is a tendency to develop a convolutional neural network with a deeper architecture to gain a better performance. However, when the depth of the network increases to a certain level, the performance will degrade due to the gradient vanishing issue. Residual neural networks can avoid the problem of vanishing gradients by utilizing skip connections, which allows the information flowing to the next layer through identity mappings. In this article, a deep residual network framework is proposed for structural health monitoring of civil engineering structures. This framework is composed of purely residual blocks which operate as feature extractors and a fully connected layer as a regressor. It learns the damage-related features from the vibration characteristics such as mode shapes and maps them into the damage index labels, for example, stiffness reductions of structures. To evaluate the efficacy and robustness of the proposed framework, an intensive evaluation is conducted with both numerical and experimental studies. The comparison between the proposed approach and the state-of-the-art models, including a sparse autoencoder neural network, a shallow convolutional neural network and a convolutional neural network with the same structure but without skip connections, is conducted. In the numerical studies, a 7-storey steel frame is investigated. Four scenarios with considering measurement noise and finite element modelling errors in the data sets are studied. The proposed framework consistently outperforms the state-of-the-art models in all the scenarios, especially for the most challenging scenario, which includes both measurement noise and uncertainties. Experimental studies on a prestressed concrete bridge in the laboratory are conducted. The proposed framework demonstrates consistent damage prediction results on this beam with the state-of-the-art models.

dc.languageEnglish
dc.publisherSAGE PUBLICATIONS LTD
dc.relation.sponsoredbyhttp://purl.org/au-research/grants/arc/FT190100801
dc.subjectScience & Technology
dc.subjectTechnology
dc.subjectEngineering, Multidisciplinary
dc.subjectInstruments & Instrumentation
dc.subjectEngineering
dc.subjectResidual networks
dc.subjectdeep learning
dc.subjectstructural health monitoring
dc.subjectdamage identification
dc.subjectuncertainties
dc.subjectmeasurement noise
dc.subjectDAMAGE IDENTIFICATION
dc.subjectNEURAL-NETWORK
dc.titleDeep residual network framework for structural health monitoring
dc.typeJournal Article
dcterms.source.volume20
dcterms.source.number4
dcterms.source.startPage1443
dcterms.source.endPage1461
dcterms.source.issn1475-9217
dcterms.source.titleStructural Health Monitoring
dc.date.updated2023-03-14T04:23:46Z
curtin.departmentSchool of Elec Eng, Comp and Math Sci (EECMS)
curtin.departmentSchool of Civil and Mechanical Engineering
curtin.accessStatusOpen access via publisher
curtin.facultyFaculty of Science and Engineering
curtin.contributor.orcidLiu, Wan-Quan [0000-0003-4910-353X]
curtin.contributor.orcidAn, Senjian [0000-0002-1758-6824]
curtin.contributor.orcidLi, Jun [0000-0002-0148-0419]
curtin.contributor.orcidHao, Hong [0000-0001-7509-8653]
curtin.contributor.researcheridAn, Senjian [H-8746-2014]
curtin.contributor.researcheridHao, Hong [D-6540-2013]
curtin.identifier.article-numberARTN 1475921720918378
dcterms.source.eissn1741-3168
curtin.contributor.scopusauthoridLiu, Wan-Quan [56510481200] [7407343628]
curtin.contributor.scopusauthoridAn, Senjian [56333284500] [7203025146]
curtin.contributor.scopusauthoridLi, Jun [56196287500]
curtin.contributor.scopusauthoridLi, Ling [55636319553] [55636319554] [56697627700]
curtin.contributor.scopusauthoridHao, Hong [7101908489]
curtin.repositoryagreementV3


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