A Damage Classification Approach for Structural Health Monitoring Using Machine Learning
Inspection strategies with guided wave-based approaches give to structural health monitoring (SHM) applications several advantages, among them, the possibility of the use of real data from the structure which enables continuous monitoring and online damage identification. These kinds of inspection s...
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doaj-07a5ebfe9c6f4146b574f6623bbe04272020-11-25T00:48:41ZengHindawi-WileyComplexity1076-27871099-05262018-01-01201810.1155/2018/50812835081283A Damage Classification Approach for Structural Health Monitoring Using Machine LearningDiego Tibaduiza0Miguel Ángel Torres-Arredondo1Jaime Vitola2Maribel Anaya3Francesc Pozo4Departamento de Ingeniería Eléctrica y Electrónica, Universidad Nacional de Colombia, Cra 45 No. 26-85, Bogotá, ColombiaMAN Energy Solutions SE, Test & Validation—R&D Engineering Four-Stroke (EEEFTTM), Stadtbachstr. 1, 86153, Augsburg, GermanyControl, Modeling, Identification, and Applications (CoDAlab), Departament de Matemàtiques, Escola d’Enginyeria de Barcelona Est (EEBE), Universitat Politècnica de Catalunya (UPC), Campus Diagonal-Besòs (CDB), Eduard Maristany, 16, Barcelona 08019, SpainFaculty of Electronics Engineering, Universidad Sergio Arboleda, Calle 74 #14-14, Bogotá, ColombiaControl, Modeling, Identification, and Applications (CoDAlab), Departament de Matemàtiques, Escola d’Enginyeria de Barcelona Est (EEBE), Universitat Politècnica de Catalunya (UPC), Campus Diagonal-Besòs (CDB), Eduard Maristany, 16, Barcelona 08019, SpainInspection strategies with guided wave-based approaches give to structural health monitoring (SHM) applications several advantages, among them, the possibility of the use of real data from the structure which enables continuous monitoring and online damage identification. These kinds of inspection strategies are based on the fact that these waves can propagate over relatively long distances and are able to interact sensitively with and uniquely with different types of defects. The principal goal for SHM is oriented to the development of efficient methodologies to process these data and provide results associated with the different levels of the damage identification process. As a contribution, this work presents a damage detection and classification methodology which includes the use of data collected from a structure under different structural states by means of a piezoelectric sensor network taking advantage of the use of guided waves, hierarchical nonlinear principal component analysis (h-NLPCA), and machine learning. The methodology is evaluated and tested in two structures: (i) a carbon fibre reinforced polymer (CFRP) sandwich structure with some damages on the multilayered composite sandwich structure and (ii) a CFRP composite plate. Damages in the structures were intentionally produced to simulate different damage mechanisms, that is, delamination and cracking of the skin.http://dx.doi.org/10.1155/2018/5081283 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Diego Tibaduiza Miguel Ángel Torres-Arredondo Jaime Vitola Maribel Anaya Francesc Pozo |
spellingShingle |
Diego Tibaduiza Miguel Ángel Torres-Arredondo Jaime Vitola Maribel Anaya Francesc Pozo A Damage Classification Approach for Structural Health Monitoring Using Machine Learning Complexity |
author_facet |
Diego Tibaduiza Miguel Ángel Torres-Arredondo Jaime Vitola Maribel Anaya Francesc Pozo |
author_sort |
Diego Tibaduiza |
title |
A Damage Classification Approach for Structural Health Monitoring Using Machine Learning |
title_short |
A Damage Classification Approach for Structural Health Monitoring Using Machine Learning |
title_full |
A Damage Classification Approach for Structural Health Monitoring Using Machine Learning |
title_fullStr |
A Damage Classification Approach for Structural Health Monitoring Using Machine Learning |
title_full_unstemmed |
A Damage Classification Approach for Structural Health Monitoring Using Machine Learning |
title_sort |
damage classification approach for structural health monitoring using machine learning |
publisher |
Hindawi-Wiley |
series |
Complexity |
issn |
1076-2787 1099-0526 |
publishDate |
2018-01-01 |
description |
Inspection strategies with guided wave-based approaches give to structural health monitoring (SHM) applications several advantages, among them, the possibility of the use of real data from the structure which enables continuous monitoring and online damage identification. These kinds of inspection strategies are based on the fact that these waves can propagate over relatively long distances and are able to interact sensitively with and uniquely with different types of defects. The principal goal for SHM is oriented to the development of efficient methodologies to process these data and provide results associated with the different levels of the damage identification process. As a contribution, this work presents a damage detection and classification methodology which includes the use of data collected from a structure under different structural states by means of a piezoelectric sensor network taking advantage of the use of guided waves, hierarchical nonlinear principal component analysis (h-NLPCA), and machine learning. The methodology is evaluated and tested in two structures: (i) a carbon fibre reinforced polymer (CFRP) sandwich structure with some damages on the multilayered composite sandwich structure and (ii) a CFRP composite plate. Damages in the structures were intentionally produced to simulate different damage mechanisms, that is, delamination and cracking of the skin. |
url |
http://dx.doi.org/10.1155/2018/5081283 |
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