In this paper the effectiveness of a procedure that allows the flaws characterization of pipes inspected by a long range guided waves is investigated. The method performs the extraction of correlation coefficients between the x, y, z components of the displacement of simulated guided waves reflected by defects on pipes. These features feed a neural network classifier which evaluates the dimensions of well defined geometry defects on the pipe under test. The results show lower error rates in the evaluation of both angular and axial extent of a defect. © 2007 IEEE.

Classification of defects for guided waves inspected pipes by a neural network approach

BERTONCINI, FRANCESCO;RAUGI, MARCO;TURCU, FLORIN OCTAVIAN
2007-01-01

Abstract

In this paper the effectiveness of a procedure that allows the flaws characterization of pipes inspected by a long range guided waves is investigated. The method performs the extraction of correlation coefficients between the x, y, z components of the displacement of simulated guided waves reflected by defects on pipes. These features feed a neural network classifier which evaluates the dimensions of well defined geometry defects on the pipe under test. The results show lower error rates in the evaluation of both angular and axial extent of a defect. © 2007 IEEE.
2007
1424413834
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11568/802947
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