The behavior of a multivariable predictive control scheme based on neural networks applied to a model of a nonlinear multivariable real process, consisting of a pressurized tank is investigated in this paper. The neural scheme consists of three neural networks; the first is meant for the identification of plant parameters (identifier), the second one is for the prediction of future control errors (predictor) and the third one, based on the two previous, compute the control input to be applied to the plant (controller). The weights of the neural networks are updated on-line, using standard and dynamic backpropagation. The model of the nonlinear process is driven to an operation point and it is then controlled with the proposed neural control...
We present the design, training, and implementation of a nonlinear autoregressive neural network for...
Since the last three decades predictive control has shown to be successful in control industry, but ...
This paper investigates the possible use of artificial neural networks (ANN), more precisely multi-l...
The behavior of a multivariable predictive control scheme based on neural networks applied to a mode...
A neural network predictive control scheme is compared with a first principle model predictive contr...
Model Predictive Control (MPC) refers to a class of algorithms that compute a sequence of manipulate...
The contribution is aimed at predictive control of nonlinear processes with the help of artificial n...
Purpose - To develop a new predictive control scheme based on neural networks for linear and non-lin...
The control design of coupled tanks is not an easy task due to the nonlinear characteristic of the v...
Design and implementation are studied for a neural network-based predictive controller meant to gove...
A multi-layer feedforward neural network model based predictive control scheme is developed for a mu...
Model predictive control (MPC) is an advanced technique for process control. It is based on iterativ...
Abstract- In this paper, a neural network based predictive controller is designed to govern the dyna...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
In this paper, a neural network model-based predictive control has been developed to solve problems ...
We present the design, training, and implementation of a nonlinear autoregressive neural network for...
Since the last three decades predictive control has shown to be successful in control industry, but ...
This paper investigates the possible use of artificial neural networks (ANN), more precisely multi-l...
The behavior of a multivariable predictive control scheme based on neural networks applied to a mode...
A neural network predictive control scheme is compared with a first principle model predictive contr...
Model Predictive Control (MPC) refers to a class of algorithms that compute a sequence of manipulate...
The contribution is aimed at predictive control of nonlinear processes with the help of artificial n...
Purpose - To develop a new predictive control scheme based on neural networks for linear and non-lin...
The control design of coupled tanks is not an easy task due to the nonlinear characteristic of the v...
Design and implementation are studied for a neural network-based predictive controller meant to gove...
A multi-layer feedforward neural network model based predictive control scheme is developed for a mu...
Model predictive control (MPC) is an advanced technique for process control. It is based on iterativ...
Abstract- In this paper, a neural network based predictive controller is designed to govern the dyna...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
In this paper, a neural network model-based predictive control has been developed to solve problems ...
We present the design, training, and implementation of a nonlinear autoregressive neural network for...
Since the last three decades predictive control has shown to be successful in control industry, but ...
This paper investigates the possible use of artificial neural networks (ANN), more precisely multi-l...