This paper presents a new method for implementing adaptive controllers using multilayer feedforward neural networks (MFNN). The controlled process is approximated at each sampling time by a linear time-invariant (LTI) model. The proposed adaptive controller is a combination of a parameter estimation algorithm to estimate the parameters of the process and an adaptation algorithm for the connection weights of the neural network. An adaptation algorithm to adjust the connection weights of the neural network has been derived. Simulation results are included to demonstrate the feasibility and the adaptive properties of the proposed controller
Abstract — This paper is concerned with the adaptive control of continuous-time nonlinear dynamical ...
One can derive a model for use in a Model Predictive Controller (MPC) from first principles or from ...
In this paper, adaptive tracking control is considered for a class of general nonlinear systems usin...
This paper presents a new method for implementing adaptive controllers using multilayer feedforward ...
In this research, a comparative study of two recurrent neural networks, nonlinear autoregressive wit...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...
This paper proposes a new scheme for direct neural adaptive control that works efficiently employing...
In this paper, a strategy that combines a single-layer feedforward network model with self tuning in...
Derivative (PID) controllers have been used extensively in process industries due to their simple st...
There has been much interest in recent years on neural network based control of non-linear dynamic p...
This paper demonstrates a method to control a non-linear, multivariable, noisy process using trained...
Various embodiments of the invention are neural network adaptive control systems and methods configu...
The aim of this thesis is to study a feedforward neural network and its application to system ident...
The modern stage of development of science and technology is characterized by a rapid increase in th...
Abstract — This paper is concerned with the adaptive control of continuous-time nonlinear dynamical ...
One can derive a model for use in a Model Predictive Controller (MPC) from first principles or from ...
In this paper, adaptive tracking control is considered for a class of general nonlinear systems usin...
This paper presents a new method for implementing adaptive controllers using multilayer feedforward ...
In this research, a comparative study of two recurrent neural networks, nonlinear autoregressive wit...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...
ABSTRACT: This paper proposes a new scheme for direct neural adaptive control that works efficiently...
This paper proposes a new scheme for direct neural adaptive control that works efficiently employing...
In this paper, a strategy that combines a single-layer feedforward network model with self tuning in...
Derivative (PID) controllers have been used extensively in process industries due to their simple st...
There has been much interest in recent years on neural network based control of non-linear dynamic p...
This paper demonstrates a method to control a non-linear, multivariable, noisy process using trained...
Various embodiments of the invention are neural network adaptive control systems and methods configu...
The aim of this thesis is to study a feedforward neural network and its application to system ident...
The modern stage of development of science and technology is characterized by a rapid increase in th...
Abstract — This paper is concerned with the adaptive control of continuous-time nonlinear dynamical ...
One can derive a model for use in a Model Predictive Controller (MPC) from first principles or from ...
In this paper, adaptive tracking control is considered for a class of general nonlinear systems usin...