Condition Monitoring with Defect Localisation in a Two-Dimensional Structure based on Linear Discriminant and Nearest Neighbour Classification of Strain Features
Nondestructive Testing and Evaluation 2020
Rims Janeliukštis, Sandris Ručevskis, Andris Čate

A method for condition monitoring and localization of defects in mass-produced structural members using supervised learning is presented. An example for the effectiveness of the developed method comprises cantilevered carbon composite plate. In a numerical finite element model, the plate is partitioned into zones and a point mass is put on several locations within each zone. Point mass is treated as a pseudo-defect locally modifying structural properties of the plate. For each act of mass application, strain values are recorded and serve as defect-sensitive feature. Two variables of classification are tested – two different supervised learning algorithms (linear discriminant and non-linear k-nearest neighbours) and a limited number of strain data points per class which is varied in the range of 2 to 9 points. Several query points are simulated and subjected to classification in terms of belonging to particular zones of the partitioned plate. This step can be treated as a defect localization. It is shown that only 2 strain readings per class are sufficient for defect localization. The methodology is experimentally validated on a cantilevered carbon composite prepreg of the same dimensions and properties.


Atslēgas vārdi
Condition monitoring; structure; defect; strain; classification
DOI
10.1080/10589759.2019.1635594
Hipersaite
https://www.tandfonline.com/doi/full/10.1080/10589759.2019.1635594

Janeliukštis, R., Ručevskis, S., Čate, A. Condition Monitoring with Defect Localisation in a Two-Dimensional Structure based on Linear Discriminant and Nearest Neighbour Classification of Strain Features. Nondestructive Testing and Evaluation, 2020, Vol. 35, No. 1, 48.-72.lpp. ISSN 1058-9759. e-ISSN 1477-2671. Pieejams: doi:10.1080/10589759.2019.1635594

Publikācijas valoda
English (en)
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