This paper deals with the problem of identifying and filtering a class of continuous-time nonlinear dynamic games (nonlinear differential games) subject to additive and undesired deterministic perturbations. Moreover, the mathematical model of this class is completely unknown with the exception of the control actions of each player, and even though the deterministic noises are known, their power (or their effect) is not. Therefore, two differential neural networks are designed in order to obtain a feedback (perfect state) information pattern for the mentioned class of games. In this way, the stability conditions for two state identification errors and for a filtering error are established, the upper bounds of these errors are obtained, and ...
This paper is concerned with the problem of neural network identification and anti-disturbance contr...
This paper develops a general purpose numerical method to compute the feedback Nash equilibria in dy...
This work presents a straightforward methodology based on neural networks (NN) which allows to obtai...
In this paper, a robust differential game guidance law is proposed for the nonlinear zero-sum system...
The paper deals with the numerical approximation of optimal strategies for two-person zero-sum diffe...
The Liapunov Design Technique and the theory of adaptive identifiers are used to provide the determi...
The problem of identification of a nonlinear dynamic system is considered. A two-layer neural networ...
We discuss the numerical solution to a class of continuous time finite state mean field games. We ap...
The design of robust controllers for continuous-time (CT) non-linear systems with completely unknown...
In this paper, we present an approach for neural networks (NN) based identification of unknown nonli...
In this paper, the nearly optimal solution for discrete-time (DT) affine nonlinear control systems i...
In this paper, we present an algorithm for the online identification and adaptive control of a class...
In previous works, a learning law with a dead zone function was developed for multilayer differentia...
This paper presents a first attempt to relate the experimental studies to theoretical developments a...
Identification of nonlinear stochastic processes via differential neural networks is discussed. A ne...
This paper is concerned with the problem of neural network identification and anti-disturbance contr...
This paper develops a general purpose numerical method to compute the feedback Nash equilibria in dy...
This work presents a straightforward methodology based on neural networks (NN) which allows to obtai...
In this paper, a robust differential game guidance law is proposed for the nonlinear zero-sum system...
The paper deals with the numerical approximation of optimal strategies for two-person zero-sum diffe...
The Liapunov Design Technique and the theory of adaptive identifiers are used to provide the determi...
The problem of identification of a nonlinear dynamic system is considered. A two-layer neural networ...
We discuss the numerical solution to a class of continuous time finite state mean field games. We ap...
The design of robust controllers for continuous-time (CT) non-linear systems with completely unknown...
In this paper, we present an approach for neural networks (NN) based identification of unknown nonli...
In this paper, the nearly optimal solution for discrete-time (DT) affine nonlinear control systems i...
In this paper, we present an algorithm for the online identification and adaptive control of a class...
In previous works, a learning law with a dead zone function was developed for multilayer differentia...
This paper presents a first attempt to relate the experimental studies to theoretical developments a...
Identification of nonlinear stochastic processes via differential neural networks is discussed. A ne...
This paper is concerned with the problem of neural network identification and anti-disturbance contr...
This paper develops a general purpose numerical method to compute the feedback Nash equilibria in dy...
This work presents a straightforward methodology based on neural networks (NN) which allows to obtai...