Defect Characterization With Eddy Current Testing Using Nonlinear-Regression Feature Extraction and Artificial Neural Networks
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IEEE Transactions in Instrumentation and Measurement
Abstract
The estimation of the parameters of defects from
eddy current nondestructive testing data is an important tool to
evaluate the structural integrity of critical metallic parts. In recent
years, several works have reported the use of artificial neural
networks (ANNs) to deal with the complex relation between the
testing data and the defect properties. To extract relevant features
used by the ANN, principal component analysis, wavelet decomposition,
and the discrete Fourier transform have been proposed.
In this paper, a method to estimate dimensional parameters from
eddy current testing data is reported. Feature extraction is based
on the modeling of the testing data by a template of additive
Gaussian functions and nonlinear regressions to estimate their
parameters. An ANN was trained using features extracted from
a synthetic data set obtained with finite-element modeling of the
eddy current probe. The proposed method was applied to both
simulated and measured data, providing good estimates.
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Citation
Rosado, L.S.; Janeiro, F.M.; Ramos, P.M.; Piedade, M., "Defect Characterization With Eddy Current Testing Using Nonlinear-Regression Feature Extraction and Artificial Neural Networks," Instrumentation and Measurement, IEEE Transactions on , vol.62, no.5, pp.1207,1214, May 2013