Generally speaking, the behavioural strategies of a multi-robot system can be defined as scalable if the performance of the system does not drop by increasing the cardinality of the group. The research work presented in this paper studies the issue of scalability in artificial neural network controllers designed by evolutionary algorithms. The networks are evolved to control homogeneous group of autonomous robots required to solve a navigation task in an open arena. This work shows that, the controllers designed to solve the task, generate navigation strategies which are potentially scalable. However, through an analysis of the dynamics of the single robot controller we identify elements that significantly hinder the scalability of the syst...
Online evolution gives robots the capacity to learn new tasks and to adapt to changing environmental...
Artificial neural networks provide an attractive approach for design of control mechanisms in robots...
We report on recent work in which we employed artificial evolution to design neural network controll...
Abstract. Generally speaking, the behavioural strategies of a multi-robot system can be defined as s...
Abstract. A Layered Evolution (LE) paradigm based method for the generation of a neuron- controller ...
International audienceThis paper investigates the properties required to evolve Artificial Neural Ne...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
Multiple, independent robot platforms promise signi-cant advantage with respect to robustness and e...
Mobile robots are already in use for mapping, agriculture, entertainment, and the delivery of goods ...
We discuss the methodological foundations for our work on the development of cognitive architectures...
Designing controllers for autonomous robots is not an exact science, and there are few guiding princ...
Multiple, independent robot platforms promise significant advantage with respect to robustness and f...
Designing controllers for robot swarms is challenging, because human developers have typically no go...
Abstract. In this paper, we investigate the dynamics of different neu-ronal models on online neuroev...
A distributed and scalable architecture for the control of an autonomous robot is presented in this ...
Online evolution gives robots the capacity to learn new tasks and to adapt to changing environmental...
Artificial neural networks provide an attractive approach for design of control mechanisms in robots...
We report on recent work in which we employed artificial evolution to design neural network controll...
Abstract. Generally speaking, the behavioural strategies of a multi-robot system can be defined as s...
Abstract. A Layered Evolution (LE) paradigm based method for the generation of a neuron- controller ...
International audienceThis paper investigates the properties required to evolve Artificial Neural Ne...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
Multiple, independent robot platforms promise signi-cant advantage with respect to robustness and e...
Mobile robots are already in use for mapping, agriculture, entertainment, and the delivery of goods ...
We discuss the methodological foundations for our work on the development of cognitive architectures...
Designing controllers for autonomous robots is not an exact science, and there are few guiding princ...
Multiple, independent robot platforms promise significant advantage with respect to robustness and f...
Designing controllers for robot swarms is challenging, because human developers have typically no go...
Abstract. In this paper, we investigate the dynamics of different neu-ronal models on online neuroev...
A distributed and scalable architecture for the control of an autonomous robot is presented in this ...
Online evolution gives robots the capacity to learn new tasks and to adapt to changing environmental...
Artificial neural networks provide an attractive approach for design of control mechanisms in robots...
We report on recent work in which we employed artificial evolution to design neural network controll...