In this paper, a real-time optimal control technique for non-linear plants is proposed. The control system makes use of the cell-mapping (CM) techniques, widely used for the global analysis of highly non-linear systems. The CM framework is employed for designing approximate optimal controllers via a control variable discretization. Furthermore, CM-based designs can be improved by the use of supervised feedforward artificial neural networks (ANNs), which have proved to be universal and efficient tools for function approximation, providing also very fast responses. The quantitative nature of the approximate CM solutions fits very well with ANNs characteristics. Here, we propose several control architectures which combine, in a different manne...
The difficulties associated with the control of nonlinear systems are especially profound when it in...
This paper is about synthesis quasi-optimal control system in uncertain conditions with neural netwo...
In this paper, a neural network based controller which optimizes a finite horizon quadratic cost fun...
In this paper the authors present two approaches for the control of an inverted pendulum on a cart. ...
This work aims to improve and simplify the procedure used in the Control Adjoining Cell Mapping with...
The design of a feedback controller, so as to minimize a given performance criterion, for a general ...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
This paper introduces a numerical technique for solving nonlinear optimal control problems. The univ...
The topic of nonlinear control design has attracted particular attention to satisfy the demanding re...
Abstract—The paper presents neural dynamic optimization (NDO) as a method of optimal feedback contro...
The application of neural networks technology to dynamic system control has been constrained by the ...
This chapter proposes an optimization technique of Artificial Neural Network (ANN) controller, of si...
The paper is concerned with the application of quadratic optimization for motion control to feedback...
An optimal online feedback treatment strategy is developed for the parturient paresis of cows, based...
[[abstract]]In this paper, a new learning method bused on the concept of cell-to-cell mapping is dev...
The difficulties associated with the control of nonlinear systems are especially profound when it in...
This paper is about synthesis quasi-optimal control system in uncertain conditions with neural netwo...
In this paper, a neural network based controller which optimizes a finite horizon quadratic cost fun...
In this paper the authors present two approaches for the control of an inverted pendulum on a cart. ...
This work aims to improve and simplify the procedure used in the Control Adjoining Cell Mapping with...
The design of a feedback controller, so as to minimize a given performance criterion, for a general ...
This paper presents a method for developing control laws for nonlinear systems based on an optimal c...
This paper introduces a numerical technique for solving nonlinear optimal control problems. The univ...
The topic of nonlinear control design has attracted particular attention to satisfy the demanding re...
Abstract—The paper presents neural dynamic optimization (NDO) as a method of optimal feedback contro...
The application of neural networks technology to dynamic system control has been constrained by the ...
This chapter proposes an optimization technique of Artificial Neural Network (ANN) controller, of si...
The paper is concerned with the application of quadratic optimization for motion control to feedback...
An optimal online feedback treatment strategy is developed for the parturient paresis of cows, based...
[[abstract]]In this paper, a new learning method bused on the concept of cell-to-cell mapping is dev...
The difficulties associated with the control of nonlinear systems are especially profound when it in...
This paper is about synthesis quasi-optimal control system in uncertain conditions with neural netwo...
In this paper, a neural network based controller which optimizes a finite horizon quadratic cost fun...