Over the past three years, our group has concentrated on the application of neural network methods to the training of controllers for real-world systems. This presentation describes our approach, surveys what we have found to be important, mentions some contributions to the field, and shows some representative results. Topics discussed include: (1) executing model studies as rehearsal for experimental studies; (2) the importance of correct derivatives; (3) effective training with second-order (DEKF) methods; (4) the efficacy of time-lagged recurrent networks; (5) liberation from the tyranny of the control cycle using asynchronous truncated backpropagation through time; and (6) multistream training for robustness. Results from model studies ...
Artificial neural networks allow the construction of a wide family of nonlinear models and controlle...
oai:ojs.ijair.id:article/260The modern stage of development of science and technology is characteriz...
Several interrelated problems in the area of neural network computations are described. First an int...
This thesis considers the application of neural networks to automotive suspension systems. In partic...
Summary. The chapter deals with neural networks and learning machines for en-gine control applicatio...
This paper studies complex dynamic neural network learning models. Backpropagation was used to train...
The NEUCON project addressed the problem of learning neural network-based controllers. The main aim ...
Artificial neural networks' ability to learn, categorize, generalize and self organize make them pot...
A methodology was developed for manually training autonomous control systems based on artificial neu...
This chapter utilizes the direct neural control (DNC) based on back propagation neural networks (BPN...
This paper aims to discuss and analyze the potentialities of Recurrent Neural Networks (RNN) in cont...
ABSTRACT: Neural networks can be used to solve highly nonlinear control problems. This paper shows h...
While conventional computers must be programmed in a logical fashion by a person who thoroughly unde...
This paper studies neural learning control. Based on an earlier result for deterministic learning of...
Abstract: A neural-network based approach to the control of non-linear dynamical systems such as whe...
Artificial neural networks allow the construction of a wide family of nonlinear models and controlle...
oai:ojs.ijair.id:article/260The modern stage of development of science and technology is characteriz...
Several interrelated problems in the area of neural network computations are described. First an int...
This thesis considers the application of neural networks to automotive suspension systems. In partic...
Summary. The chapter deals with neural networks and learning machines for en-gine control applicatio...
This paper studies complex dynamic neural network learning models. Backpropagation was used to train...
The NEUCON project addressed the problem of learning neural network-based controllers. The main aim ...
Artificial neural networks' ability to learn, categorize, generalize and self organize make them pot...
A methodology was developed for manually training autonomous control systems based on artificial neu...
This chapter utilizes the direct neural control (DNC) based on back propagation neural networks (BPN...
This paper aims to discuss and analyze the potentialities of Recurrent Neural Networks (RNN) in cont...
ABSTRACT: Neural networks can be used to solve highly nonlinear control problems. This paper shows h...
While conventional computers must be programmed in a logical fashion by a person who thoroughly unde...
This paper studies neural learning control. Based on an earlier result for deterministic learning of...
Abstract: A neural-network based approach to the control of non-linear dynamical systems such as whe...
Artificial neural networks allow the construction of a wide family of nonlinear models and controlle...
oai:ojs.ijair.id:article/260The modern stage of development of science and technology is characteriz...
Several interrelated problems in the area of neural network computations are described. First an int...