Application of supervised learning for classification of cracking and non-cracking major damage in TRMs based on AE features

Textile reinforced mortar composites (TRMs) experience various types of damage. In this study, these damage mechanisms (such as cracking and non-cracking) were understood or distinguished with the help of acoustic emissions (AE). Four types of TRMs made of a single mortar matrix and two types of car...

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Veröffentlicht in:Construction & building materials 2024-07, Vol.437, p.137079, Article 137079
Hauptverfasser: Junaid, Khan, Si Larbi, Amir, Algourdin, Nonna, Mesticou, Zyed, Aggelis, Dimitrios, Cai, Gaochuang
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container_issue
container_start_page 137079
container_title Construction & building materials
container_volume 437
creator Junaid, Khan
Si Larbi, Amir
Algourdin, Nonna
Mesticou, Zyed
Aggelis, Dimitrios
Cai, Gaochuang
description Textile reinforced mortar composites (TRMs) experience various types of damage. In this study, these damage mechanisms (such as cracking and non-cracking) were understood or distinguished with the help of acoustic emissions (AE). Four types of TRMs made of a single mortar matrix and two types of carbon textiles (coated and noncoated) were evaluated under uniaxial tension. Meanwhile, the acoustic emissions were monitored during the tensile test. The study showed that AE features are sensitive to damage evolution but more importantly that TRMs are complex and various modes can coexist. Similarly, the evolution of improved b-value (Ib) also demonstrated sensitivity to the existence of damage. Finally, the supervised learning models (trained on AE data) demonstrated that information on the instant of cracking obtained through digital image correlation (DIC) can be successfully coupled with AE features to separate the cracking and non-cracking damage types with accuracy of above 80 %. •High average hit rates during cracking.•Various damage modes coexist in TRMs.•SVMs and KNNs based on AE can predict cracking with accuracy of above 80 %.
doi_str_mv 10.1016/j.conbuildmat.2024.137079
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subjects Acoustic emissions
Crack
Engineering Sciences
KNN
SVM
TRM
title Application of supervised learning for classification of cracking and non-cracking major damage in TRMs based on AE features
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