In general, complex control tasks can be solved by dividing them into simpler ones which are easier to handle. Several authors have developed different solutions that combine Layer Evolution techniques with Evolving Neural Networks, giving rise to controllers made up by several networks. In this type of solution, the selection of the module to be used in each case is not an easy problem to solve. This paper is focused on a new evolutionary mechanism that allows combining modules which solve the different parts of a problem, giving place to a single recurrent neural network. In this way, simple modules which are trained independently of the problem to solve are used. The communication among them is established by evolution, which gives rise ...
To study the relevance of recurrent neural network structures for the behavior of autonomous agents ...
Artificial neural networks provide an attractive approach for design of control mechanisms in robots...
In 1994, Yamauchi and Beer (1994) attempted to evolve a dynamic neural network as a control system f...
In general, complex control tasks can be solved by dividing them into simpler ones which are easier ...
A modular approach to neural behavior control of autonomous robots is presented. It is based on the ...
An evolutionary algorithm for the creation of recurrent network structures is presented. The aim is ...
This paper introduces a novel robot parallel evolution design algorithm , leveraging the concept of...
The manual design of con- trol systems for robotic devices can be challenging. Methods for the autom...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.Neural networks (NN) can be used...
La resolución de tareas complejas puede ser llevada cabo descomponiendo el problema original en part...
This thesis describes a novel approach to the evolution of Modular Artificial Neural Networks. Stand...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
Neuromodulation is a biologically-inspired technique that can adapt the per-connection learning rate...
The Artificial Neural Networks group at the Robert Gordon University has, over the last six years, b...
In recent years, research on techniques for developing controllers for autonomous robots has been co...
To study the relevance of recurrent neural network structures for the behavior of autonomous agents ...
Artificial neural networks provide an attractive approach for design of control mechanisms in robots...
In 1994, Yamauchi and Beer (1994) attempted to evolve a dynamic neural network as a control system f...
In general, complex control tasks can be solved by dividing them into simpler ones which are easier ...
A modular approach to neural behavior control of autonomous robots is presented. It is based on the ...
An evolutionary algorithm for the creation of recurrent network structures is presented. The aim is ...
This paper introduces a novel robot parallel evolution design algorithm , leveraging the concept of...
The manual design of con- trol systems for robotic devices can be challenging. Methods for the autom...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.Neural networks (NN) can be used...
La resolución de tareas complejas puede ser llevada cabo descomponiendo el problema original en part...
This thesis describes a novel approach to the evolution of Modular Artificial Neural Networks. Stand...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
Neuromodulation is a biologically-inspired technique that can adapt the per-connection learning rate...
The Artificial Neural Networks group at the Robert Gordon University has, over the last six years, b...
In recent years, research on techniques for developing controllers for autonomous robots has been co...
To study the relevance of recurrent neural network structures for the behavior of autonomous agents ...
Artificial neural networks provide an attractive approach for design of control mechanisms in robots...
In 1994, Yamauchi and Beer (1994) attempted to evolve a dynamic neural network as a control system f...