Feature selection for neural network based defect classification of ceramic components using high frequency ultrasound

•Evolutionary artificial neural networks have been proposed for feature selection.•The classification of various defects in RSSC ceramics, DWT and PCA were proposed.•Classification results obtained by Original features were compared with three feature selection methods.•Empirical results shown that...

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Veröffentlicht in:Ultrasonics 2015-09, Vol.62, p.271-277
Hauptverfasser: Kesharaju, Manasa, Nagarajah, Romesh
Format: Artikel
Sprache:eng
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Zusammenfassung:•Evolutionary artificial neural networks have been proposed for feature selection.•The classification of various defects in RSSC ceramics, DWT and PCA were proposed.•Classification results obtained by Original features were compared with three feature selection methods.•Empirical results shown that PCA followed by GA performed best as the feature selection method.•Significant contribution has been in identifying those features that contribute to first five Principal Components. The motivation for this research stems from a need for providing a non-destructive testing method capable of detecting and locating any defects and microstructural variations within armour ceramic components before issuing them to the soldiers who rely on them for their survival. The development of an automated ultrasonic inspection based classification system would make possible the checking of each ceramic component and immediately alert the operator about the presence of defects. Generally, in many classification problems a choice of features or dimensionality reduction is significant and simultaneously very difficult, as a substantial computational effort is required to evaluate possible feature subsets. In this research, a combination of artificial neural networks and genetic algorithms are used to optimize the feature subset used in classification of various defects in reaction-sintered silicon carbide ceramic components. Initially wavelet based feature extraction is implemented from the region of interest. An Artificial Neural Network classifier is employed to evaluate the performance of these features. Genetic Algorithm based feature selection is performed. Principal Component Analysis is a popular technique used for feature selection and is compared with the genetic algorithm based technique in terms of classification accuracy and selection of optimal number of features. The experimental results confirm that features identified by Principal Component Analysis lead to improved performance in terms of classification percentage with 96% than Genetic algorithm with 94%.
ISSN:0041-624X
1874-9968
DOI:10.1016/j.ultras.2015.05.027