International audienceThis paper shows the efficiency of neural networks (NN), coupled with the finite element method (FEM), to evaluate the broadband properties of dielectric materials. A characterization protocol is built to characterize dielectric materials and NN are used in order to provide the estimated permittivity. The FEM is used to create the data set required to train the NN. A method based on Bayesian regularization ensures a good generalization capability of the NN. It is shown that NN can determine the permittivity of materials with a high accuracy and that the Bayesian regularization greatly simplifies their implementation
International audienceA method for optimising the sampling points in a database used to characterise...
Microwave-assisted sintering materials have been proven to deliver improvements in the mechanical an...
In biological dielectric spectroscopy, where dispersions are substantially broader than that expecte...
International audienceThis paper shows the efficiency of neural networks (NN), coupled with the fini...
Abstract—This paper shows the efficiency of neural networks (NN), coupled with the finite element me...
LGEP 2011 ID = 739International audienceThis paper shows that Ridge Polynomial Neural Networks (RPNN...
The aim of this study is to determine the complex permittivity of dielectric materials using a coax...
ABSTRACT. The paper outlines different versions of a novel method for determining the dielectric pro...
Abstract — In this paper, we present simulations of a microwave sensor in a cylindrical leaky metall...
International audienceThe purpose of this paper is to describe an improved microwave method for pred...
This paper presents an approach which is based on the use of supervised feed forward neural network,...
In this work, a learning architecture based on neural networks has been employed for modelling the ...
We present two different machine learning strategies to estimate the two lowest-order statistical mo...
An advanced method of modeling radio-frequency (RF) devices based on a deep learning technique is pr...
Low permittivity microwave dielectric ceramics (MWDCs) are attracting great interest because of thei...
International audienceA method for optimising the sampling points in a database used to characterise...
Microwave-assisted sintering materials have been proven to deliver improvements in the mechanical an...
In biological dielectric spectroscopy, where dispersions are substantially broader than that expecte...
International audienceThis paper shows the efficiency of neural networks (NN), coupled with the fini...
Abstract—This paper shows the efficiency of neural networks (NN), coupled with the finite element me...
LGEP 2011 ID = 739International audienceThis paper shows that Ridge Polynomial Neural Networks (RPNN...
The aim of this study is to determine the complex permittivity of dielectric materials using a coax...
ABSTRACT. The paper outlines different versions of a novel method for determining the dielectric pro...
Abstract — In this paper, we present simulations of a microwave sensor in a cylindrical leaky metall...
International audienceThe purpose of this paper is to describe an improved microwave method for pred...
This paper presents an approach which is based on the use of supervised feed forward neural network,...
In this work, a learning architecture based on neural networks has been employed for modelling the ...
We present two different machine learning strategies to estimate the two lowest-order statistical mo...
An advanced method of modeling radio-frequency (RF) devices based on a deep learning technique is pr...
Low permittivity microwave dielectric ceramics (MWDCs) are attracting great interest because of thei...
International audienceA method for optimising the sampling points in a database used to characterise...
Microwave-assisted sintering materials have been proven to deliver improvements in the mechanical an...
In biological dielectric spectroscopy, where dispersions are substantially broader than that expecte...