In this paper, we present an algorithm for the online identification and adaptive control of a class of continuous-time nonlinear systems via dynamic neural networks. The plant considered is an unknown multi-input/multi-output continuous-time higher order nonlinear system. The control scheme includes two parts: a dynamic neural network is employed to perform system identification and a controller based on the proposed dynamic neural network is developed to track a reference trajectory. Stability analysis for the identification and the tracking errors is performed by means of Lyapunov stability criterion. Finally, we illustrate the effectiveness of these methods by computer simulations of the Duffing chaotic system and one-link rigid robot m...
Neural networks can have approximate multi-power, so in recent years they have been used widely and ...
dentification and control of nonlinear dynamic systems are typically established on a case-by-case b...
This article addresses the challenging problem of fixed-time output-constrained synchronization for ...
This paper presents a first attempt to relate the experimental studies to theoretical developments a...
In this thesis, on-line identification algorithm and adaptive control design are proposed for nonlin...
In this letter, we address the problem of online identification of nonlinear continuous-time systems...
In this paper, real-time results for a novel continuous-time adaptive tracking controller algorithm ...
The design of robust controllers for continuous-time (CT) non-linear systems with completely unknown...
In this study, a generalized procedure in identification and control of a class of time-varying-dela...
Identification of nonlinear stochastic processes via differential neural networks is discussed. A ne...
Lately, there has been an extensive interest in the possible uses of neural networks for nonlinear s...
This paper focuses on the problem of discrete-time nonlinear system identification via recurrent hig...
This paper discusses memory neuron networks as models for identification and adaptive control of non...
Lately, there has been an extensive interest in the possible uses of neural networks for nonlinear s...
This thesis focuses on the study of the neural network (NN) and its application to robot tracking co...
Neural networks can have approximate multi-power, so in recent years they have been used widely and ...
dentification and control of nonlinear dynamic systems are typically established on a case-by-case b...
This article addresses the challenging problem of fixed-time output-constrained synchronization for ...
This paper presents a first attempt to relate the experimental studies to theoretical developments a...
In this thesis, on-line identification algorithm and adaptive control design are proposed for nonlin...
In this letter, we address the problem of online identification of nonlinear continuous-time systems...
In this paper, real-time results for a novel continuous-time adaptive tracking controller algorithm ...
The design of robust controllers for continuous-time (CT) non-linear systems with completely unknown...
In this study, a generalized procedure in identification and control of a class of time-varying-dela...
Identification of nonlinear stochastic processes via differential neural networks is discussed. A ne...
Lately, there has been an extensive interest in the possible uses of neural networks for nonlinear s...
This paper focuses on the problem of discrete-time nonlinear system identification via recurrent hig...
This paper discusses memory neuron networks as models for identification and adaptive control of non...
Lately, there has been an extensive interest in the possible uses of neural networks for nonlinear s...
This thesis focuses on the study of the neural network (NN) and its application to robot tracking co...
Neural networks can have approximate multi-power, so in recent years they have been used widely and ...
dentification and control of nonlinear dynamic systems are typically established on a case-by-case b...
This article addresses the challenging problem of fixed-time output-constrained synchronization for ...