In this paper, we present a fast method for classification of defects detected by eddy current testing (ECT). This is done by using defects derived by lab experiments. For any defect, the ECT magnetic field response for different EC-probe's paths is represented on a complex plane to obtain Lissajous' figures. Their shapes are described through the use of few geometrical parameters forming a feature vector. Such vectors are used as signatures of the defects detected by the probe at different crossing angles and distances from the defect. The effectiveness of the proposed approach is evaluated by measuring the performances of three machine learning-based classifiers (Naïve Bayes, C4.5/J48 Decision Tree, and Multilayer Perceptron neural networ...
Non destructive testing methods are often used in order to de-tect and classify structural flaws. Th...
In eddy current testing ofheat-exchanger pipes the signal ofthe scanning probe is usually presented ...
In this paper we discuss the use of the Probabilistic Neural Network (PNN) for the classification of...
In this paper, we present a fast method for classification of defects detected by eddy current testi...
In this paper, we present a fast method for classification of defects detected by eddy current testi...
In the framework of Eddy Current Testing (ECT), this work presents an automated non-destructive test...
In the framework of Eddy Current Testing (ECT), this work presents an automated non-destructive test...
In eddy current testing of heat-exchanger pipes the signal of the scanning probe is usually presente...
The aim of this work is to classify the aerospace structure defects detected by eddy current non-des...
One of the benefits of eddy current (EC) testing is the attainability of high testing speeds while m...
Eddy current testing technology is widely used in the defect detection of metal components and the i...
The aim of this paper is to propose the use of elliptical basis function probabilistic neural networ...
This work was partially supported by the Italian MURST. Abstract- The aim of this paper is to presen...
Non destructive testing methods are often used in order to de-tect and classify structural flaws. Th...
In eddy current testing ofheat-exchanger pipes the signal ofthe scanning probe is usually presented ...
In this paper we discuss the use of the Probabilistic Neural Network (PNN) for the classification of...
In this paper, we present a fast method for classification of defects detected by eddy current testi...
In this paper, we present a fast method for classification of defects detected by eddy current testi...
In the framework of Eddy Current Testing (ECT), this work presents an automated non-destructive test...
In the framework of Eddy Current Testing (ECT), this work presents an automated non-destructive test...
In eddy current testing of heat-exchanger pipes the signal of the scanning probe is usually presente...
The aim of this work is to classify the aerospace structure defects detected by eddy current non-des...
One of the benefits of eddy current (EC) testing is the attainability of high testing speeds while m...
Eddy current testing technology is widely used in the defect detection of metal components and the i...
The aim of this paper is to propose the use of elliptical basis function probabilistic neural networ...
This work was partially supported by the Italian MURST. Abstract- The aim of this paper is to presen...
Non destructive testing methods are often used in order to de-tect and classify structural flaws. Th...
In eddy current testing ofheat-exchanger pipes the signal ofthe scanning probe is usually presented ...
In this paper we discuss the use of the Probabilistic Neural Network (PNN) for the classification of...