Neural network based variable structure control is proposed for the design of nonlinear discrete systems. Sliding mode control is used to provide good stability and robustness performance for nonlinear systems. An affine nonlinear neural predictor is introduced to predict the outputs of the nonlinear process and to make the variable structure control algorithm simple and easy to implement. When the predictor model is inaccurate, variable structure control with sliding modes is used to improve the stability of the system. A recursive weight learning algorithm for the neural networks based affine nonlinear predictor is also developed and the convergence of both the weights and the estimation error is analysed
In this paper, real-time results for a novel continuous-time adaptive tracking controller algorithm ...
This paper addresses the problem of adaptive neural sliding mode control for a class of multi-input ...
In this paper, a continuous time recurrent neural network (CTRNN) is developed to be used in nonline...
A neural network based predictive controller design algorithm is introduced for nonlinear control sy...
This paper is concerned with the adaptive control of continuous-time nonlinear dynamical systems usi...
International audienceIn this communication is proposed a new neural network structure to design a r...
This paper is concerned with the adaptive control of continuous-time nonlinear dynamical systems usi...
An artificial feedforward neural network is used for on-line control purposes of a class of single i...
A neural network enhanced self-tuning controller is presented, which combines the attributes of neur...
Minimum variance (MV) and generalised minimum variance (GMV) control methods are studied with respec...
In this paper, a novel neural network (NN) based online reinforcement learning controller is designe...
The series Advances in Industrial Control aims to report and encourage technology transfer in contro...
The use of neural networks in control systems can be seen as a natural step in the evolution of cont...
A nonaffine discrete-time system represented by the nonlinear autoregressive moving average with eXo...
[[abstract]]In this paper, a Fourier series neural network is introduced to approximate a nonlinear,...
In this paper, real-time results for a novel continuous-time adaptive tracking controller algorithm ...
This paper addresses the problem of adaptive neural sliding mode control for a class of multi-input ...
In this paper, a continuous time recurrent neural network (CTRNN) is developed to be used in nonline...
A neural network based predictive controller design algorithm is introduced for nonlinear control sy...
This paper is concerned with the adaptive control of continuous-time nonlinear dynamical systems usi...
International audienceIn this communication is proposed a new neural network structure to design a r...
This paper is concerned with the adaptive control of continuous-time nonlinear dynamical systems usi...
An artificial feedforward neural network is used for on-line control purposes of a class of single i...
A neural network enhanced self-tuning controller is presented, which combines the attributes of neur...
Minimum variance (MV) and generalised minimum variance (GMV) control methods are studied with respec...
In this paper, a novel neural network (NN) based online reinforcement learning controller is designe...
The series Advances in Industrial Control aims to report and encourage technology transfer in contro...
The use of neural networks in control systems can be seen as a natural step in the evolution of cont...
A nonaffine discrete-time system represented by the nonlinear autoregressive moving average with eXo...
[[abstract]]In this paper, a Fourier series neural network is introduced to approximate a nonlinear,...
In this paper, real-time results for a novel continuous-time adaptive tracking controller algorithm ...
This paper addresses the problem of adaptive neural sliding mode control for a class of multi-input ...
In this paper, a continuous time recurrent neural network (CTRNN) is developed to be used in nonline...