In this paper the synthesis of the predictive controller for control of the nonlinear object is considered. It is supposed that the object model is not known. The method is based on a digital recurrent network (DRN) model of the system to be controlled, which is used for predicting the future behavior of the output variables. The cost function which minimizes the difference between the future object outputs and the desired values of the outputs is formulated. The function ga of the Matlab’s Genetic Algorithm Optimization Toolbox is used for obtaining the optimum values of the control signals. Controller synthesis is illustrated for plants often referred to in the literature. Results of simulations show effectiveness of the proposed control ...
Kajian ini mengemukakan kaedah pembelajaran rangkaian neural (NN) pelbilang lapisan dengan menggunak...
This work deals with the identification and predictive control of non linear systems. The Non linear...
In order to effectively implement a good model based control strategy, the combination of different ...
In this paper, a continuous time recurrent neural network (CTRNN) is developed to be used in nonline...
Since the last three decades predictive control has shown to be successful in control industry, but ...
In this study, the application of Recurrent Artificial Neural Network (RANN) in nonlinear system ide...
In this paper an efficient algorithm to train general differential recurrent neural network (DRNN) i...
In this paper an efficient algorithm to train general differential recurrent neural network (DRNN) ...
[EN] In this paper, it is presented a solution to the model based non linear predictive control whic...
Thesis (MTech (Electrical Engineering))--Cape Peninsula University of Technology, 2009In real world ...
A neural network based predictive controller design algorithm is introduced for nonlinear control sy...
Predictive process control is a method of regulation suitable for controlling various types of syste...
This paper introduces a new method for the control of nonlinear systems using genetic algorithms. Th...
International audienceThis paper deals with model predictive control synthesis which take benefits f...
In this paper, a continuous time recurrent neural network (CTRNN) is developed to be used in nonlin...
Kajian ini mengemukakan kaedah pembelajaran rangkaian neural (NN) pelbilang lapisan dengan menggunak...
This work deals with the identification and predictive control of non linear systems. The Non linear...
In order to effectively implement a good model based control strategy, the combination of different ...
In this paper, a continuous time recurrent neural network (CTRNN) is developed to be used in nonline...
Since the last three decades predictive control has shown to be successful in control industry, but ...
In this study, the application of Recurrent Artificial Neural Network (RANN) in nonlinear system ide...
In this paper an efficient algorithm to train general differential recurrent neural network (DRNN) i...
In this paper an efficient algorithm to train general differential recurrent neural network (DRNN) ...
[EN] In this paper, it is presented a solution to the model based non linear predictive control whic...
Thesis (MTech (Electrical Engineering))--Cape Peninsula University of Technology, 2009In real world ...
A neural network based predictive controller design algorithm is introduced for nonlinear control sy...
Predictive process control is a method of regulation suitable for controlling various types of syste...
This paper introduces a new method for the control of nonlinear systems using genetic algorithms. Th...
International audienceThis paper deals with model predictive control synthesis which take benefits f...
In this paper, a continuous time recurrent neural network (CTRNN) is developed to be used in nonlin...
Kajian ini mengemukakan kaedah pembelajaran rangkaian neural (NN) pelbilang lapisan dengan menggunak...
This work deals with the identification and predictive control of non linear systems. The Non linear...
In order to effectively implement a good model based control strategy, the combination of different ...