A neural network model is proposed to treat inverse problems in electromagnetics, which includes wavelet functions to improve local approximation capabilities, This processor couples the advantages of an interpretation of the problem based on "features" to the accuracy derived from using wavelets where local corrections are needed. The combined model allows to cope with singularities of the mapping and to slightly modify the mapping in real time. The detection and characterization of a circular defect in a conducting plate by using eddy current testing is shown to take advantage from the proposed approach in a test case, when unforeseen disturbances are present
International audienceIn the paper, a novel, fast and accurate artificial neural network is proposed...
A resurgence of research in artificial neural networks has sparked interest in applying these networ...
In eddy current nondestructive evaluation, one of the principal challenges is to determine the dimen...
LGEP 2011 ID = 808International audienceThis paper presents a technique for solving inverse problems...
The inverse problems in electromagnetic system design, optimization, and identification received lat...
In the magnetotelluric (MT) method, naturally occurring electromagnetic fields are used to study th...
The inverse problem in nondestructiye evaluation involves the characterization of flaw parameters gi...
Multilayer neural networks, trained via the back-propagation rule, are proved to provide an efficien...
Neural networks have been effective in several engineering applications because of their learning ab...
Interpretation of eddy current signal for flaw characterization in tubes is corresponding to solving...
This paper presents an approach which is based on the use of supervised feed forward neural network,...
A novel procedure to identify and correct the field inhomogeneities in Nuclear Magnetic Resonance (N...
A backpropagation neural network was trained to estimate the spatial location (offset and depth) of ...
The estimation of the parameters of defects from eddy current nondestructive testing data is an impo...
Abstract: This paper investigates the application of wavelet transform as a preprocessor for neural ...
International audienceIn the paper, a novel, fast and accurate artificial neural network is proposed...
A resurgence of research in artificial neural networks has sparked interest in applying these networ...
In eddy current nondestructive evaluation, one of the principal challenges is to determine the dimen...
LGEP 2011 ID = 808International audienceThis paper presents a technique for solving inverse problems...
The inverse problems in electromagnetic system design, optimization, and identification received lat...
In the magnetotelluric (MT) method, naturally occurring electromagnetic fields are used to study th...
The inverse problem in nondestructiye evaluation involves the characterization of flaw parameters gi...
Multilayer neural networks, trained via the back-propagation rule, are proved to provide an efficien...
Neural networks have been effective in several engineering applications because of their learning ab...
Interpretation of eddy current signal for flaw characterization in tubes is corresponding to solving...
This paper presents an approach which is based on the use of supervised feed forward neural network,...
A novel procedure to identify and correct the field inhomogeneities in Nuclear Magnetic Resonance (N...
A backpropagation neural network was trained to estimate the spatial location (offset and depth) of ...
The estimation of the parameters of defects from eddy current nondestructive testing data is an impo...
Abstract: This paper investigates the application of wavelet transform as a preprocessor for neural ...
International audienceIn the paper, a novel, fast and accurate artificial neural network is proposed...
A resurgence of research in artificial neural networks has sparked interest in applying these networ...
In eddy current nondestructive evaluation, one of the principal challenges is to determine the dimen...