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AuthorAvci O.
AuthorAbdeljaber O.
AuthorKiranyaz M.S.
AuthorBoashash B.
AuthorSodano H.
AuthorInman D.J.
Available date2022-04-26T12:31:22Z
Publication Date2018
Publication Name25th International Congress on Sound and Vibration 2018, ICSV 2018: Hiroshima Calling
ResourceScopus
URIhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85058819068&partnerID=40&md5=5ddaffe3fc16a523e855afd8c52f8f43
URIhttp://hdl.handle.net/10576/30622
AbstractIn this paper, a novel one dimensional convolution neural network (1D-CNN) based structural damage assessment technique is validated with a benchmark study published by IASC-ASCE Structural Health Monitoring Task Group in 2003. In contrast with predominant machine learning based structural damage detection techniques of the literature, the technique shown in this paper runs without manual feature extraction or preprocessing stages. It runs directly on the raw vibration data. In CNNs, the stages of feature extraction and feature classification are merged into one stage; therefore, the proposed technique is efficient, feasible and economical. Utilizing the optimal features learned by 1D CNNs, the proposed CNN-based technique considerably improves the classification efficiency and accuracy. The performance improvement of the proposed technique is assessed by calculating the "Probability of Damage" values for damage estimations. The unseen structural damage cases between the two extreme end structural cases (zero damage and total damage) were successfully identified. Consequently, it is validated that the improved CNN-based technique is efficient since it predicted the level of damage consistently with the structural damage cases defined in the existing benchmark.
Languageen
PublisherInternational Institute of Acoustics and Vibration, IIAV
SubjectClassification (of information)
Convolution
Efficiency
Extraction
Feature extraction
Learning systems
Neural networks
Structural analysis
Structural health monitoring
Classification efficiency
Convolution neural network
Convolutional neural network
Feature classification
Performance improvements
Probability of damages
Structural damage assessments
Structural damage detection
Damage detection
TitleEfficiency validation of one dimensional convolutional neural networks for structural damage detection using a SHM benchmark data
TypeConference Paper
Pagination4600-4607
Volume Number8


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