The ability of feed-forward neural network architectures to learn continuous valued mappings in the presence of noise was demonstrated in relation to parameter identification and real-time adaptive control applications. An error function was introduced to help optimize parameter values such as number of training iterations, observation time, sampling rate, and scaling of the control signal. The learning performance depended essentially on the degree of embodiment of the control law in the training data set and on the degree of uniformity of the probability distribution function of the data that are presented to the net during sequence. When a control law was corrupted by noise, the fluctuations of the training data biased the probability di...
The modern stage of development of science and technology is characterized by a rapid increase in th...
This article concentrates on adaptive tracking control of strict-feedback uncertain nonlinear system...
Over the past three years, our group has concentrated on the application of neural network methods t...
The ability of feed-forward neural net architectures to learn continuous-valued mappings in the pres...
This paper reviews the architecture, representation capability, training and learning ability of a c...
This work explores the impact of various design and training choices on the resilience of a neural n...
International audienceVarious forms of noise are present in the brain. The role of noise in a explor...
The ever increasingly tight control performance requirement of modern mechanical systems often force...
This paper presents a discussion of the applicability of neural networks in the identification and c...
Model Reference Adaptive Control (MRAC) is a widely studied adaptive control methodology that aims t...
Various embodiments of the invention are neural network adaptive control systems and methods configu...
An increasing trend in the use of neural networks in control systems is being observed. The aim of t...
An improved algorithm has been devised for training a recurrent multilayer perceptron (RMLP) for opt...
This paper reviews the architecture, representation capability, training and learning ability of a c...
Artificial neural networks allow the construction of a wide family of nonlinear models and controlle...
The modern stage of development of science and technology is characterized by a rapid increase in th...
This article concentrates on adaptive tracking control of strict-feedback uncertain nonlinear system...
Over the past three years, our group has concentrated on the application of neural network methods t...
The ability of feed-forward neural net architectures to learn continuous-valued mappings in the pres...
This paper reviews the architecture, representation capability, training and learning ability of a c...
This work explores the impact of various design and training choices on the resilience of a neural n...
International audienceVarious forms of noise are present in the brain. The role of noise in a explor...
The ever increasingly tight control performance requirement of modern mechanical systems often force...
This paper presents a discussion of the applicability of neural networks in the identification and c...
Model Reference Adaptive Control (MRAC) is a widely studied adaptive control methodology that aims t...
Various embodiments of the invention are neural network adaptive control systems and methods configu...
An increasing trend in the use of neural networks in control systems is being observed. The aim of t...
An improved algorithm has been devised for training a recurrent multilayer perceptron (RMLP) for opt...
This paper reviews the architecture, representation capability, training and learning ability of a c...
Artificial neural networks allow the construction of a wide family of nonlinear models and controlle...
The modern stage of development of science and technology is characterized by a rapid increase in th...
This article concentrates on adaptive tracking control of strict-feedback uncertain nonlinear system...
Over the past three years, our group has concentrated on the application of neural network methods t...