A resurgence of research in artificial neural networks has sparked interest in applying these networks to difficult computational tasks such as inversion. Artificial neural networks are composed of simple processing elements, richly interconnected. These networks can be trained to perform arbitrary mappings between sets of input-output pairs by adjusting the weights of interconnections. They require no a priori information or built-in rules; rather, they acquire knowledge through the presentation of examples. This characteristic allows neural networks to approximate mappings for functions which do not appear to have a clearly defined algorithm or theory. Neural network performance has proven robust when faced with incomplete, fuzzy, or nove...
The aim of eddy current inversion is to reconstruct an unknown flaw from probe signals measured as a...
LGEP 2011 ID = 808International audienceThis paper presents a technique for solving inverse problems...
Abstract. The application of the generalised radial basis functions neural networks to the solution ...
Interpretation of eddy current signal for flaw characterization in tubes is corresponding to solving...
The inverse problem in nondestructiye evaluation involves the characterization of flaw parameters gi...
Eddy current testing is a widely used nondestructive evaluation (NDE) technique in which flaw inform...
978-3-642-16224-4Motivated by the slow learning properties of Multi-Layer Perceptrons (MLP) which ut...
A new method for computing fracture mechanics parameters using computational Eddy Current Modelling ...
This paper presents an artificial neural network for quantitative eddy current testing of materials....
Measuring the eddy currents in a material induced by an exciting field can provide useful informatio...
The aim of this paper is to present a neural approach to crack shape reconstruction by eddy current ...
We present a simple analytical method for predicting the eddy current signal (ΔZ) produced by a surf...
The objective of this paper is to investigate the applicability of artificial neural networks in inv...
Current practice in the design of eddy current probes calls for an optimum balance between detection...
Flaw depth estimation is crucial in eddy current tubing inspection in order to prevent leak accident...
The aim of eddy current inversion is to reconstruct an unknown flaw from probe signals measured as a...
LGEP 2011 ID = 808International audienceThis paper presents a technique for solving inverse problems...
Abstract. The application of the generalised radial basis functions neural networks to the solution ...
Interpretation of eddy current signal for flaw characterization in tubes is corresponding to solving...
The inverse problem in nondestructiye evaluation involves the characterization of flaw parameters gi...
Eddy current testing is a widely used nondestructive evaluation (NDE) technique in which flaw inform...
978-3-642-16224-4Motivated by the slow learning properties of Multi-Layer Perceptrons (MLP) which ut...
A new method for computing fracture mechanics parameters using computational Eddy Current Modelling ...
This paper presents an artificial neural network for quantitative eddy current testing of materials....
Measuring the eddy currents in a material induced by an exciting field can provide useful informatio...
The aim of this paper is to present a neural approach to crack shape reconstruction by eddy current ...
We present a simple analytical method for predicting the eddy current signal (ΔZ) produced by a surf...
The objective of this paper is to investigate the applicability of artificial neural networks in inv...
Current practice in the design of eddy current probes calls for an optimum balance between detection...
Flaw depth estimation is crucial in eddy current tubing inspection in order to prevent leak accident...
The aim of eddy current inversion is to reconstruct an unknown flaw from probe signals measured as a...
LGEP 2011 ID = 808International audienceThis paper presents a technique for solving inverse problems...
Abstract. The application of the generalised radial basis functions neural networks to the solution ...