This paper presents an artificial neural network for quantitative eddy current testing of materials. Time domain parameters that are functions of digitized in phase and quadrature components of eddy current probe imvedance are given as input to the neural network; the output of the network, in user defined units, is tested and displayed continuously. The performance of the neural network has been tested on austenitic stainless steel plates for detection and depth quantification of surface breaking machined notches in the presence of disturbing variables such as liftoff, material property variations and surface roughness. The applicability of the neural network method has been demonstrated to detect and size discontinuities in thin walled st...
The estimation of the parameters of defects from eddy current nondestructive testing data is an impo...
AbstractIn this paper a method for estimating the dimension of rectangular cracks is proposed. The u...
This article proposes a Radial Basis Function Artificial Neural Network (RBF-ANN) to classify temper...
A new methodology has been proposed to carry on-line multifrequency eddy current testing. This uses ...
For quantitative eddy current testing in the presence of disturbing variables, radial basis function...
Eddy current signals (ECS) generated under varied experimental conditions from different types of di...
A new method for computing fracture mechanics parameters using computational Eddy Current Modelling ...
Abstrac t – Conductive specimens such as aluminum plates are tested in order to extract information...
This paper presents the application of non-destructive evaluation by eddy currents for the determina...
Interpretation of eddy current signal for flaw characterization in tubes is corresponding to solving...
International audienceIn the aeronautics sector, aircraft parts are inspected during manufacture, as...
International audienceEddy Currents (ECs) Non Destructive Testing (NDT) is widely used to determine ...
Pulsed eddy current and swept-frequency techniques have both been previously applied to thickness me...
Eddy current images of defects are blurred due to convolution of point spread function of eddy curre...
Eddy current testing is a widely used nondestructive evaluation (NDE) technique in which flaw inform...
The estimation of the parameters of defects from eddy current nondestructive testing data is an impo...
AbstractIn this paper a method for estimating the dimension of rectangular cracks is proposed. The u...
This article proposes a Radial Basis Function Artificial Neural Network (RBF-ANN) to classify temper...
A new methodology has been proposed to carry on-line multifrequency eddy current testing. This uses ...
For quantitative eddy current testing in the presence of disturbing variables, radial basis function...
Eddy current signals (ECS) generated under varied experimental conditions from different types of di...
A new method for computing fracture mechanics parameters using computational Eddy Current Modelling ...
Abstrac t – Conductive specimens such as aluminum plates are tested in order to extract information...
This paper presents the application of non-destructive evaluation by eddy currents for the determina...
Interpretation of eddy current signal for flaw characterization in tubes is corresponding to solving...
International audienceIn the aeronautics sector, aircraft parts are inspected during manufacture, as...
International audienceEddy Currents (ECs) Non Destructive Testing (NDT) is widely used to determine ...
Pulsed eddy current and swept-frequency techniques have both been previously applied to thickness me...
Eddy current images of defects are blurred due to convolution of point spread function of eddy curre...
Eddy current testing is a widely used nondestructive evaluation (NDE) technique in which flaw inform...
The estimation of the parameters of defects from eddy current nondestructive testing data is an impo...
AbstractIn this paper a method for estimating the dimension of rectangular cracks is proposed. The u...
This article proposes a Radial Basis Function Artificial Neural Network (RBF-ANN) to classify temper...