This paper discusses memory neuron networks as models for identification and adaptive control of nonlinear dynamical systems. These are a class of recurrent networks obtained by adding trainable temporal elements to feedforward networks that makes the output history-sensitive. By virtue of this capability, these networks can identify dynamical systems without having to be explicitly fed with past inputs and outputs. Thus, they can identify systems whose order is unknown or systems with unknown delay. It is argued that for satisfactory modeling of dynamical systems, neural networks should be endowed with such internal memory. The paper presents a preliminary analysis of the learning algorithm, providing theoretical justification for the iden...
International audienceThis paper deals with model predictive control synthesis which take benefits f...
Abstract — In this paper we present a new continuous-time recurrent neurofuzzy network structure for...
A novel approach, which uses intrinsically dynamic neurons inspired from biological control systems,...
This paper discusses memory neuron networks as models for identification and adaptive control of non...
In this paper, we present an approach for neural networks (NN) based identification of unknown nonli...
This paper presents a first attempt to relate the experimental studies to theoretical developments a...
This paper presents a discussion of the applicability of neural networks in the identification and c...
The goal of this paper is to introduce a new neural network architecture called Sigmoid Diagonal Rec...
Methods for model identification are crucial in many fields, such as adaptive signal processing, pat...
We study a model for learning periodic signals in recurrent neural networks proposed by Doya and Yos...
This paper presents a type of recurrent artificial neural network architecture for identification of...
In this study, a generalized procedure in identification and control of a class of time-varying-dela...
dentification and control of nonlinear dynamic systems are typically established on a case-by-case b...
An attempt has been made to establish a nonlinear dynamic discrete-time neuron model, the so called ...
AbstractModels for the identification and control of nonlinear dynamical systems using neural networ...
International audienceThis paper deals with model predictive control synthesis which take benefits f...
Abstract — In this paper we present a new continuous-time recurrent neurofuzzy network structure for...
A novel approach, which uses intrinsically dynamic neurons inspired from biological control systems,...
This paper discusses memory neuron networks as models for identification and adaptive control of non...
In this paper, we present an approach for neural networks (NN) based identification of unknown nonli...
This paper presents a first attempt to relate the experimental studies to theoretical developments a...
This paper presents a discussion of the applicability of neural networks in the identification and c...
The goal of this paper is to introduce a new neural network architecture called Sigmoid Diagonal Rec...
Methods for model identification are crucial in many fields, such as adaptive signal processing, pat...
We study a model for learning periodic signals in recurrent neural networks proposed by Doya and Yos...
This paper presents a type of recurrent artificial neural network architecture for identification of...
In this study, a generalized procedure in identification and control of a class of time-varying-dela...
dentification and control of nonlinear dynamic systems are typically established on a case-by-case b...
An attempt has been made to establish a nonlinear dynamic discrete-time neuron model, the so called ...
AbstractModels for the identification and control of nonlinear dynamical systems using neural networ...
International audienceThis paper deals with model predictive control synthesis which take benefits f...
Abstract — In this paper we present a new continuous-time recurrent neurofuzzy network structure for...
A novel approach, which uses intrinsically dynamic neurons inspired from biological control systems,...