Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 33122
Classification of Defects by the SVM Method and the Principal Component Analysis (PCA)
Authors: M. Khelil, M. Boudraa, A. Kechida, R. Drai
Abstract:
Analyses carried out on examples of detected defects echoes showed clearly that one can describe these detected forms according to a whole of characteristic parameters in order to be able to make discrimination between a planar defect and a volumic defect. This work answers to a problem of ultrasonics NDT like Identification of the defects. The problems as well as the objective of this realized work, are divided in three parts: Extractions of the parameters of wavelets from the ultrasonic echo of the detected defect - the second part is devoted to principal components analysis (PCA) for optimization of the attributes vector. And finally to establish the algorithm of classification (SVM, Support Vector Machine) which allows discrimination between a plane defect and a volumic defect. We have completed this work by a conclusion where we draw up a summary of the completed works, as well as the robustness of the various algorithms proposed in this study.Keywords: NDT, PCA, SVM, ultrasonics, wavelet
Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1060751
Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 2005References:
[1] R. Drai, M. Khelil and A. Benchaala "Time-frequency and wavelet transform applied to selected problems in ultrasonics NDE ".NDT & E International Volume 35, Issue 8, Décembre 2002, Pages 567-572.
[2] A.sophian & G.tian & D.taylor & J.rudlin A "feature extraction technique based on pricipal component analysis for pulsed Eddy current NDT". NDT&E international 36 (2003) 37-41.
[3] Olivier bousquet "Introduction aux Support Vector machine"(SVM). Orsay, 15 Novembre 2001
[4] R. Polikar & T. Taylor & L. Udpa & S Udpa "frequency invariant classification of ultrasonic weld inspection signals." IEEE transactions on ultrasonics, ferroelectrics, and frequency control. Vol. 45, may1998.
[5] Drai R, Khelil M & Benchaala A, "Elaboration of some signal processing algorithms in ultrasonic techniques : Application to materials NDT.". ULTRASONICS, VOL.38 (1-8) 2000, pp.503-507
[6] Burrus, C.S., Gopinath, R.A. & Guo, H. "Introducing to wavelets and wavelet transformation", Prentice-Hall, 1998
[7] Mallat, S., "A Theory for Multiresolution Signal Processing: The Wavelet Representation," IEEE Transactions on Pattern Analysis and Machine Intelligence, July 1989, Vol. 11, pp 674-693.
[8] Rashmi, M., Bilgutay N. M. and Kagan Kaya, O. "Detection of ultrasonic anomaly signals using wavelet decomposition." Materials evaluation (Nov. 1997), 1274-1279.