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LASER shock delamination generation and machine learning-based damage quantification in CFRP composites plates

Communication avec acte
Auteur
GHRIB, Meriem
BERTHE, Laurent
ccMECHBAL, Nazih
86289 Laboratoire Procédés et Ingénierie en Mécanique et Matériaux [PIMM]
ccGUSKOV, Mikhail
ccRÉBILLAT, Marc

URI
http://hdl.handle.net/10985/13675
Date
2018

Résumé

In the aeronautic industry, composite materials are becoming more widespread due to their high strength to mass ratio. Piezoelectric elements can be permanently incorporated on composite parts during the manufacturing process and can then be used to provide a diagnosis of their current health and the prognosis of their remaining operational life. This approach is called Structural Health Monitoring (SHM). In this work, we approach delamination quantification in Carbon Fiber Reinforced Polymer (CFRP) plates as a classification problem whereby each class corresponds to a certain damage extent. Starting from the assumption that damage causes a structure to exhibit nonlinear response, we investigate whether the use of Nonlinear Model Based Features (NMBF) increases classification performance. NMBF are computed based on parallel Hammerstein models which are identified with an Exponential Sine Sweep (ESS) signal. Delamination damage is introduced into samples in a calibrated and realistic way using LASER Shock Wave Technique (LSWT) and more particularly symmetrical LASER shock configuration. Obtained results demonstrate that the proposed approach is very reliable for delamination quantification.

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Documents liés

Visualiser des documents liés par titre, auteur, créateur et sujet.

  • Laser shock a novel way to generate calibrated delamination in composites: concept and first results 
    Communication avec acte
    GHRIB, Meriem; BERTHE, Laurent; ECAULT, Romain; ccMECHBAL, Nazih; ccGUSKOV, Mikhail; ccRÉBILLAT, Marc (2015)
    Structural Health Monitoring (SHM) has been gaining importance in recent years. SHM aims at providing structures with similar functionality as the biological nervous system and it is organized into four main steps: detection, ...
  • Signal-based versus nonlinear model-based damage sensitive features for delamination quantification in CFRP composites 
    Communication avec acte
    GHRIB, Meriem; BERTHE, Laurent; ccMECHBAL, Nazih; ccGUSKOV, Mikhail; ccRÉBILLAT, Marc (2017)
    Structural health monitoring (SHM) is an emerging technology designed to automate the inspection process undertaken to assess the health condition of structures. The SHM process is classically decomposed into four sequential ...
  • Generation of controlled delaminations in composites using symmetrical laser shock configuration 
    Article dans une revue avec comité de lecture
    GHRIB, Meriem; BERTHE, Laurent; ECAULT, Romain; BEDREDDINE, Nas; ccMECHBAL, Nazih; ccGUSKOV, Mikhail; ccRÉBILLAT, Marc (Elsevier, 2017)
    Structural Health Monitoring (SHM) is defined as the process of implementing a damage identification strategy for aerospace, civil and mechanical engineering infrastructures. SHM can be organized into five main steps: ...
  • Automatic Damage Quantification Using Signal Based And Nonlinear Model Based Damage Sensitive Features 
    Communication avec acte
    GHRIB, Meriem; VERMOT DES ROCHES, Guillaume; ccMECHBAL, Nazih; ccRÉBILLAT, Marc (2017)
    Structural Health Monitoring (SHM) can be de ned as the process of acquiring and analyzing data from on-board sensors to evaluate the health of a structure. Classically, an SHM process can be performed in four steps: ...
  • Automatic damage type classification and severity quantification using signal based and nonlinear model based damage sensitive features 
    Article dans une revue avec comité de lecture
    GHRIB, Meriem; ccRÉBILLAT, Marc; VERMOT DES ROCHES, Guillaume; ccMECHBAL, Nazih (Elsevier, 2019)
    Structural health monitoring (SHM) is an emerging technology designed to automate the inspectionprocess undertaken to assess the health condition of structures. The SHM process is classically decom-posed into four sequential ...

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