A novel approach for deterioration and damage identification in building structures based on Stockwell-Transform and deep convolutional neural network

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Gharehbaghi, Vahid Reza
Kalbkhani, Hashem
Farsangi, Ehsan Noroozinejad
Yang, TY
Nguyen, Andy
Mirjalili, Seyedali
Malaga-Chuquitaype, Christian
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2022
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Abstract

In this paper, a novel deterioration and damage identification procedure (DIP) is presented and applied to building models. The challenge associated with applications on these types of structures is related to the strong correlation of responses, an issue that gets further complicated when coping with real ambient vibrations with high levels of noise. Thus, a DIP is designed utilizing low-cost ambient vibrations to analyze the acceleration responses using the Stockwell transform (ST) to generate spectrograms. Subsequently, the ST outputs become the input of two series of Convolutional Neural Networks (CNNs) established for identifying deterioration and damage on the building models. To the best of our knowledge, this is the first time that both damage and deterioration are evaluated on building models through a combination of ST and CNN with high accuracy.

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Journal of Structural Integrity and Maintenance

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7

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2

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This is an Author's Accepted Manuscript of an article published in the Journal of Structural Integrity and Maintenance, 7 (2), pp. 136-150, 2022, copyright Taylor & Francis, available online at: https://doi.org/10.1080/24705314.2021.2018840

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Subject

Neural networks

Civil engineering

Science & Technology

Technology

Engineering, Civil

Engineering

Deterioration

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Gharehbaghi, VR; Kalbkhani, H; Farsangi, EN; Yang, TY; Nguyen, A; Mirjalili, S; Malaga-Chuquitaype, C, A novel approach for deterioration and damage identification in building structures based on Stockwell-Transform and deep convolutional neural network, Journal of Structural Integrity and Maintenance, 2022, 7 (2), pp. 136-150

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