International audienceNeural networks are powerful tools for black box system identification. However, their main drawback is the large number of parameters usually required to deal with complex systems. Classically, the model's parameters minimize a L2-norm-based criterion. However, when using strongly corrupted data, namely, outliers, the L2-norm-based estimation algorithms become ineffective. In order to deal with outliers and the model's complexity, the main contribution of this paper is to propose a robust system identification methodology providing neuromodels with a convenient balance between simplicity and accuracy. The estimation robustness is ensured by means of the Huberian function. Simplicity and accuracy are achieved by a dedi...
This thesis deals with the idenlification of dynamical non-tinear MISO Sytems with multilayer feedfo...
The ability of neural networks to realize some complex nonlinear function makes them attractive for ...
An identification algorithm for vibrating dynamic characterization by using artificial neural networ...
International audienceNeural networks are powerful tools for black box system identification. Howeve...
International audienceNonlinear system identification tends to pro- vide highly accurate models thes...
International audienceThis paper presents a new methodology of nonlinear system identification using...
This report concerns the research topic of black box nonlinear system identification. In effect, amo...
Ce rapport porte sur le sujet de recherche de l'identification boîte noire du système non linéaire. ...
This paper compares a wide variety of neural network architectures applied in the context of black-b...
Identifying parameters in a system of nonlinear, ordinary differential equations is vital for design...
Neural Networks are non-linear black-box model structures, to be used with conventional parameter es...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
The two most commonly used types of artificial neural networks (ANNs) are the multilayer feed-forwar...
We explore the identification of neuronal voltage traces by artificial neural networks based on wave...
This thesis deals with the idenlification of dynamical non-tinear MISO Sytems with multilayer feedfo...
The ability of neural networks to realize some complex nonlinear function makes them attractive for ...
An identification algorithm for vibrating dynamic characterization by using artificial neural networ...
International audienceNeural networks are powerful tools for black box system identification. Howeve...
International audienceNonlinear system identification tends to pro- vide highly accurate models thes...
International audienceThis paper presents a new methodology of nonlinear system identification using...
This report concerns the research topic of black box nonlinear system identification. In effect, amo...
Ce rapport porte sur le sujet de recherche de l'identification boîte noire du système non linéaire. ...
This paper compares a wide variety of neural network architectures applied in the context of black-b...
Identifying parameters in a system of nonlinear, ordinary differential equations is vital for design...
Neural Networks are non-linear black-box model structures, to be used with conventional parameter es...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
The two most commonly used types of artificial neural networks (ANNs) are the multilayer feed-forwar...
We explore the identification of neuronal voltage traces by artificial neural networks based on wave...
This thesis deals with the idenlification of dynamical non-tinear MISO Sytems with multilayer feedfo...
The ability of neural networks to realize some complex nonlinear function makes them attractive for ...
An identification algorithm for vibrating dynamic characterization by using artificial neural networ...