Title :
Crack Shape Reconstruction in Eddy Current Testing Using Machine Learning Systems for Regression
Author :
Bernieri, Andrea ; Ferrigno, Luigi ; Laracca, Marco ; Molinara, Mario
Author_Institution :
Dept. of Autom., Cassino Univ., Cassino
Abstract :
Nondestructive testing techniques for the diagnosis of defects in solid materials can follow three steps, i.e., detection, location, and characterization. The solutions currently on the market allow for good detection and location of defects, but their characterization in terms of the exact determination of defect shape and dimensions is still an open question. This paper proposes a method for the reliable estimation of crack shape and dimensions in conductive materials using a suitable nondestructive instrument based on the eddy current principle and machine learning system postprocessing. After the design and tuning stages, a performance comparison between the two machine learning systems [artificial neural network (ANN) and support vector machine (SVM)] was carried out. An experimental validation carried out on a number of specimens with different known cracks confirmed the suitability of the proposed approach for defect characterization.
Keywords :
cracks; eddy current testing; learning (artificial intelligence); neural nets; physics computing; support vector machines; artificial neural network; crack shape reconstruction; eddy current testing; machine learning systems; nondestructive testing; postprocessing; regression; support vector machine; Artificial neural network (ANN); eddy current testing (ECT); nondestructive testing (NDT); signal processing; support vector machine (SVM);
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
DOI :
10.1109/TIM.2008.919011