Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.Neural networks (NN) can be used as controllers in autonomous robots. The specific features of the navigation problem in robotics make generation of good training sets for the NN difficult. An evolution strategy (ES) is introduced to learn the weights of the NN instead of the learning method of the network. The ES is used to learn high performance reactive behavior for navigation and collision avoidance. No subjective information about “how to accomplish the task” has been included in the fitness function. The learned behaviors are able to solve the problem in different environments; therefore, the learning process has the proven ability to obtain a specialized behavior. Al...
A modular approach to neural behavior control of autonomous robots is presented. It is based on the ...
Mobile robot's navigation and obstacle avoidance in an unknown and static environment is analyzed in...
To study the relevance of recurrent neural network structures for the behavior of autonomous agents ...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.Neural networks (NN) can be used...
Proceeding of: International Work-Conference on Artificial and Natural Neural Networks, IWANN'99 Ali...
Abstract- In this paper an evolution strategy (ES) is introduced, to learn weights of a neural netwo...
In this paper, a new coevolutive method, called Uniform Coevolution, is introduced to learn weights ...
Congress on Evolutionary Computation. La Jolla, CA, 16-19 July 2000.A new coevolutive method, called...
This paper introduces a novel robot parallel evolution design algorithm , leveraging the concept of...
Existing approaches for learning to control a robot arm rely on supervised methods where correct beh...
International Symposium on Industrial Electronics. Guimaraes, 7-11 July 1997.In this paper, an evolu...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
Complex task solving can be carried out by decomposing the original problem into more specific and s...
By beginning with simple reactive behaviors and gradually building up to more memory-dependent behav...
In this paper, an robot parallel evolution design algorithm is proposed, based on the idea of module...
A modular approach to neural behavior control of autonomous robots is presented. It is based on the ...
Mobile robot's navigation and obstacle avoidance in an unknown and static environment is analyzed in...
To study the relevance of recurrent neural network structures for the behavior of autonomous agents ...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.Neural networks (NN) can be used...
Proceeding of: International Work-Conference on Artificial and Natural Neural Networks, IWANN'99 Ali...
Abstract- In this paper an evolution strategy (ES) is introduced, to learn weights of a neural netwo...
In this paper, a new coevolutive method, called Uniform Coevolution, is introduced to learn weights ...
Congress on Evolutionary Computation. La Jolla, CA, 16-19 July 2000.A new coevolutive method, called...
This paper introduces a novel robot parallel evolution design algorithm , leveraging the concept of...
Existing approaches for learning to control a robot arm rely on supervised methods where correct beh...
International Symposium on Industrial Electronics. Guimaraes, 7-11 July 1997.In this paper, an evolu...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
Complex task solving can be carried out by decomposing the original problem into more specific and s...
By beginning with simple reactive behaviors and gradually building up to more memory-dependent behav...
In this paper, an robot parallel evolution design algorithm is proposed, based on the idea of module...
A modular approach to neural behavior control of autonomous robots is presented. It is based on the ...
Mobile robot's navigation and obstacle avoidance in an unknown and static environment is analyzed in...
To study the relevance of recurrent neural network structures for the behavior of autonomous agents ...