In this paper, our main concern is to establish new exponential stability-based identification results for a class of Euler nonlinear sampled-data systems using deterministic learning. At first, a new deterministic learning law is designed based on the Lyapunov function method. Rigorous analysis is provided to show that the resulting closed-loop linear time-varying (LTV) systems (containing tracking errors and parameter estimation errors) is exponentially stable. All the states of the closed-loop system converge to a small neighborhood around the origin exponentially. Thus, locally-accurate identification performance can be achieved under the new deterministic learning algorithm. Finally, simulation results on Duffing oscillator system are ...
It is shown that uniform global exponential stability of the input-free discrete-time model of a glo...
International audienceThis paper provides exponential stability results for a family of nonlinear OD...
This paper presents a set of single layer low complexity nonlinear adaptive models for efficient ide...
In this paper, based on the deterministic learning mechanism, we present an alternative systematic s...
A " deterministic learning " (DL) theory was recently proposed for identification of nonlinear syste...
Recently, a deterministic learning theory was proposed for identification and rapid pattern recognit...
In this paper, we present an approach to system identification based on viewing identification as a ...
In this paper, based on deterministic learning, we propose a method for rapid recognition of dynamic...
Models for deterministic continuous-time nonlinear systems typically take the form of ordinary diffe...
In this paper we extend the models discussed by Cohen (1992) by introducing an input term. This allo...
International audienceThis paper investigates the problem of exponential stability of neural network...
This paper considers the problem of identifiability and parameter estimation of single-input-single-...
The problem of system identification is to learn the system dynamics from data. While classical syst...
Abstract In this paper we extend the models discussed by Cohen (1992) by introducing an input term. ...
International audienceThis paper provides exponential stability results for two system classes. The ...
It is shown that uniform global exponential stability of the input-free discrete-time model of a glo...
International audienceThis paper provides exponential stability results for a family of nonlinear OD...
This paper presents a set of single layer low complexity nonlinear adaptive models for efficient ide...
In this paper, based on the deterministic learning mechanism, we present an alternative systematic s...
A " deterministic learning " (DL) theory was recently proposed for identification of nonlinear syste...
Recently, a deterministic learning theory was proposed for identification and rapid pattern recognit...
In this paper, we present an approach to system identification based on viewing identification as a ...
In this paper, based on deterministic learning, we propose a method for rapid recognition of dynamic...
Models for deterministic continuous-time nonlinear systems typically take the form of ordinary diffe...
In this paper we extend the models discussed by Cohen (1992) by introducing an input term. This allo...
International audienceThis paper investigates the problem of exponential stability of neural network...
This paper considers the problem of identifiability and parameter estimation of single-input-single-...
The problem of system identification is to learn the system dynamics from data. While classical syst...
Abstract In this paper we extend the models discussed by Cohen (1992) by introducing an input term. ...
International audienceThis paper provides exponential stability results for two system classes. The ...
It is shown that uniform global exponential stability of the input-free discrete-time model of a glo...
International audienceThis paper provides exponential stability results for a family of nonlinear OD...
This paper presents a set of single layer low complexity nonlinear adaptive models for efficient ide...