The aim of this thesis is to contribute in solving problems related to the on-line identification and control of unknown dynamic systems using feedforward neural networks. In this sense, this thesis presents new on-line learning algorithms for feedforward neural networks based upon the theory of variable structure system design, along with mathematical proofs regarding the convergence of solutions given by the algorithms; the boundedness of these solutions; and robustness features of the algorithms with respect to external perturbations affecting the neural networks' signals. In the thesis, the problems of on-line identification of the forward transfer operator, and the inverse transfer operator of unknown dynamic systems are also ...
Lately, there has been an extensive interest in the possible uses of neural networks for nonlinear s...
Effective control of a complex system can often be obtained using a neural network controller. Howev...
Adaptive Inverse Control (AIC) is a very significant approach for control of unknown linear and nonl...
This paper presents a discussion of the applicability of neural networks in the identification and c...
This paper presents a first attempt to relate the experimental studies to theoretical developments a...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
An artificial feedforward neural network is used for on-line control purposes of a class of single i...
Abstract—In this paper, we see adaptive control as a three-part adaptive-filtering problem. First, t...
AbstractModels for the identification and control of nonlinear dynamical systems using neural networ...
Lately, there has been an extensive interest in the possible uses of neural networks for nonlinear s...
This report is devoted to the problem of controlling a class of linear time-invariant dynamic system...
Lately, there has been an extensive interest in the possible uses of neural networks for nonlinear s...
Effective control of a complex system can often be obtained using a neural network controller. Howev...
Adaptive Inverse Control (AIC) is a very significant approach for control of unknown linear and nonl...
This paper presents a discussion of the applicability of neural networks in the identification and c...
This paper presents a first attempt to relate the experimental studies to theoretical developments a...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
Model–based feedforward control improves tracking performance of motion systems if the model describ...
An artificial feedforward neural network is used for on-line control purposes of a class of single i...
Abstract—In this paper, we see adaptive control as a three-part adaptive-filtering problem. First, t...
AbstractModels for the identification and control of nonlinear dynamical systems using neural networ...
Lately, there has been an extensive interest in the possible uses of neural networks for nonlinear s...
This report is devoted to the problem of controlling a class of linear time-invariant dynamic system...
Lately, there has been an extensive interest in the possible uses of neural networks for nonlinear s...
Effective control of a complex system can often be obtained using a neural network controller. Howev...
Adaptive Inverse Control (AIC) is a very significant approach for control of unknown linear and nonl...