Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
295169 | NDT & E International | 2013 | 5 Pages |
Abstract
The main advantage of Magnetic Barkhausen Noise as a non-destructive testing method is its sensitivity to several parameters such as microstructure, applied tension and plastic deformation. However, this noticeable property of the MBN sometimes could be a drawback. Usually, in measurements of industrial steel samples the variation of parameters occurs simultaneously. Then it is difficult to separate the influence of multiple parameters from the raw signal. This work proposes a method using trajectories traced in a type of neural network known as Self-Organizing Maps, in order to separate the influence of varying parameters on the Magnetic Barkhausen Noise row signal.
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Authors
J.A. Pérez-Benítez, J.H. Espina-Hernández, P. Martínez-Ortiz,