LGEP 2011 ID = 739International audienceThis paper shows that Ridge Polynomial Neural Networks (RPNN) and Least-Square Support Vector Machines (LS-SVM) technique provide efficient tools for microwave characterization of dielectric materials. Such methods avoids the slow learning properties of multilayer perceptrons (MLP) which utilize computationally intensive training algorithms and can get trapped in local minima. RPNN and LS-SVM are combined in this work with the Finite Element Method (FEM) to evaluate the dielectric materials properties. The RPNN is constructed from a number of increasing orders of Pi-Sigma units, it maintains fast learning properties and powerful mapping capabilities of single layer High Order Neural Networks (HONN). L...
International audienceIn this paper, the microwave characterization of dielectric materials using op...
The aim of this study is to determine the complex permittivity of dielectric materials using a coax...
Low permittivity microwave dielectric ceramics (MWDCs) are attracting great interest because of thei...
LGEP 2011 ID = 739International audienceThis paper shows that Ridge Polynomial Neural Networks (RPNN...
Abstract—This paper shows the efficiency of neural networks (NN), coupled with the finite element me...
International audienceThis paper shows the efficiency of neural networks (NN), coupled with the fini...
In this work, a learning architecture based on neural networks has been employed for modelling the ...
978-3-642-16224-4Motivated by the slow learning properties of Multi-Layer Perceptrons (MLP) which ut...
Abstract—In recent years, Artificial Neural networks (ANNs) have been intensively employed to build ...
Abstract — In this paper, we present simulations of a microwave sensor in a cylindrical leaky metall...
An overview of neural network-based modeling techniques and their applications in microwave modeling...
International audienceThis paper presents the use of the Least Square Support Vector Machines (LS-SV...
3MT Contest - EUSIPCO 2019 - A CorunaA finite set of infinitely long, regularly-distributed dielectr...
International audienceIn this paper, the microwave characterization of dielectric materials using op...
The aim of this study is to determine the complex permittivity of dielectric materials using a coax...
Low permittivity microwave dielectric ceramics (MWDCs) are attracting great interest because of thei...
LGEP 2011 ID = 739International audienceThis paper shows that Ridge Polynomial Neural Networks (RPNN...
Abstract—This paper shows the efficiency of neural networks (NN), coupled with the finite element me...
International audienceThis paper shows the efficiency of neural networks (NN), coupled with the fini...
In this work, a learning architecture based on neural networks has been employed for modelling the ...
978-3-642-16224-4Motivated by the slow learning properties of Multi-Layer Perceptrons (MLP) which ut...
Abstract—In recent years, Artificial Neural networks (ANNs) have been intensively employed to build ...
Abstract — In this paper, we present simulations of a microwave sensor in a cylindrical leaky metall...
An overview of neural network-based modeling techniques and their applications in microwave modeling...
International audienceThis paper presents the use of the Least Square Support Vector Machines (LS-SV...
3MT Contest - EUSIPCO 2019 - A CorunaA finite set of infinitely long, regularly-distributed dielectr...
International audienceIn this paper, the microwave characterization of dielectric materials using op...
The aim of this study is to determine the complex permittivity of dielectric materials using a coax...
Low permittivity microwave dielectric ceramics (MWDCs) are attracting great interest because of thei...