Purpose: Inverse problems in electromagnetism, namely, the recovery of sources (currents or charges) or system data from measured effects, are usually ill-posed or, in the numerical formulation, ill-conditioned and require suitable regularization to provide meaningful results. To test new regularization methods, there is the need of benchmark problems, which numerical properties and solutions should be well known. Hence, this study aims to define a benchmark problem, suitable to test new regularization approaches and solves with different methods. Design/methodology/approach: To assess reliability and performance of different solving strategies for inverse source problems, a benchmark problem of current synthesis is defined and solved by me...
Abstract. The application of the generalised radial basis functions neural networks to the solution ...
Recently, indoor localization has become an active area of research. Although there are various appr...
A resurgence of research in artificial neural networks has sparked interest in applying these networ...
Purpose: Inverse problems in electromagnetism, namely, the recovery of sources (currents or charges)...
The inverse problems in electromagnetic system design, optimization, and identification received lat...
Direct measurement of electric currents can be prevented by poor accessibility or prohibitive techni...
Purpose - The purpose of this paper is to analyze the impact of different current representation mod...
Purpose-Inverse problems are usually ill-conditioned, requiring the adoption of regularization techn...
Purpose - The purpose of this paper is to develop a source reconstruction technique, applied to a ca...
Multilayer neural networks, trained via the back-propagation rule, are proved to provide an efficien...
This paper presents an approach which is based on the use of supervised feed forward neural network,...
LGEP 2011 ID = 808International audienceThis paper presents a technique for solving inverse problems...
The inverse problem in electro- and magneto-encephalography (EEG/MEG) aims at reconstructing the und...
Predicting measurement outcomes from an underlying structure often follows directly from fundamental...
Purpose - To present a neural network-based approach to the design of electromagnetic devices. Desig...
Abstract. The application of the generalised radial basis functions neural networks to the solution ...
Recently, indoor localization has become an active area of research. Although there are various appr...
A resurgence of research in artificial neural networks has sparked interest in applying these networ...
Purpose: Inverse problems in electromagnetism, namely, the recovery of sources (currents or charges)...
The inverse problems in electromagnetic system design, optimization, and identification received lat...
Direct measurement of electric currents can be prevented by poor accessibility or prohibitive techni...
Purpose - The purpose of this paper is to analyze the impact of different current representation mod...
Purpose-Inverse problems are usually ill-conditioned, requiring the adoption of regularization techn...
Purpose - The purpose of this paper is to develop a source reconstruction technique, applied to a ca...
Multilayer neural networks, trained via the back-propagation rule, are proved to provide an efficien...
This paper presents an approach which is based on the use of supervised feed forward neural network,...
LGEP 2011 ID = 808International audienceThis paper presents a technique for solving inverse problems...
The inverse problem in electro- and magneto-encephalography (EEG/MEG) aims at reconstructing the und...
Predicting measurement outcomes from an underlying structure often follows directly from fundamental...
Purpose - To present a neural network-based approach to the design of electromagnetic devices. Desig...
Abstract. The application of the generalised radial basis functions neural networks to the solution ...
Recently, indoor localization has become an active area of research. Although there are various appr...
A resurgence of research in artificial neural networks has sparked interest in applying these networ...