2020
DOI: 10.1177/1475921720967157
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A comparison of machine learning algorithms for assessment of delamination in fiber-reinforced polymer composite beams

Abstract: Structural health monitoring techniques based on vibration parameters have been used to assess the internal delamination damage of fiber-reinforced polymer composites. Recently, machine learning algorithms have been adopted to solve the inverse problem of predicting delamination parameters of the delamination from natural frequency shifts. In this article, a delamination detection methodology is proposed based on the changes in multiple modes of frequencies to assess the interface, location, and size of delami… Show more

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Cited by 23 publications
(10 citation statements)
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“…Moreover, from the test confusion matrices, it can be observed that the correct prediction rate from using the pretrained model to autonomously extract features, regardless of the model used, is reasonably high and show similar behavior to that shown by the training confusion matrices. The results for the increasing size of delamination and the ease in its detectability in the current work are supported by the research finding of the articles in the references [ 50 , 53 ].…”
Section: Resultssupporting
confidence: 79%
See 1 more Smart Citation
“…Moreover, from the test confusion matrices, it can be observed that the correct prediction rate from using the pretrained model to autonomously extract features, regardless of the model used, is reasonably high and show similar behavior to that shown by the training confusion matrices. The results for the increasing size of delamination and the ease in its detectability in the current work are supported by the research finding of the articles in the references [ 50 , 53 ].…”
Section: Resultssupporting
confidence: 79%
“…The autonomous features were processed via a quadratic support vector machine using 10-fold cross validation and a one-vs-all training strategy for the detection, quantification, and localization of delamination in laminated composites. The mathematical details of SVM for the assessment of discriminative features and classification results can be found in the references [ 50 , 51 , 52 ].…”
Section: Resultsmentioning
confidence: 99%
“…He et al proposed a delamination detection approach for the detection of location, size and interfacial bonding of delamination in fiber-reinforced polymer composites. This method was based on frequency changes in multiple modes [ 97 ]. They employed a combination of different algorithms i.e., support vector machine, extreme learning machine and back propagation neural network for the detection of delamination parameters.…”
Section: Classification Based On Textile Processesmentioning
confidence: 99%
“…SVMs were proposed by Vapnik 41 and are a powerful tool for classifying linearly separable data, which has recently been applied to SHM applications as well. 42 The guiding principle of SVMs used for binary classification is finding the hyperplane which divides the two groups of data in such a way that the distance to the hyperplane from the nearest point from each group is maximized. Assuming that the two classes can be labeled as either y i = 1 or y i = −1, finding this hyperplane can be expressed as the following optimization problem …”
Section: Damage Identificationmentioning
confidence: 99%