This article is concerned with a fixed-size population of autonomous agents facing unknown, possibly changing, environments. The motivation is to design an embodied evolutionary algorithm that can cope with the implicit fitness function hidden in the environment so as to provide adaptation in the long run at the level of population. The proposed algorithm, termed mEDEA, is shown to be both efficient in unknown environments and robust to abrupt and unpredicted changes in the environment. The emergence of consensus towards specific behavioural strategies is examined, with a particular focus on algorithmic stability. Finally, a real-world implementation of the algorithm is described with a population of 20 real-world e-puck robots. © 2012 Copy...
International audienceDistributed Embodied Evolution [1] is a compelling family of approaches to lea...
This paper describes an experimental result on evolutionary processes of learning agents in a multi-...
The automated generation of controllers for real-world autonomous agents by means of evolutionary me...
This article is concerned with a fixed-size population of autonomous agents facing unknown, possibly...
International audienceThis paper is concerned with a fixed-size population of autonomous agents faci...
International audienceThis paper is concerned with a fixed-size population of autonomous agents faci...
International audienceThis paper summarizes work done since 2009 on running swarm of autonomous robo...
Embodied evolutionary robotics is a sub-field of evolutionary robotics that employs evolutionary alg...
Embodied evolutionary robotics is a sub-field of evolutionary robotics that employs evolutionary alg...
We introduce Embodied Evolution (EE) as a new methodology for evolutionary robotics (ER). EE uses a ...
We introduce Embodied Evolution (EE) as a methodology for the automatic design of robotic controller...
We introduce a novel evolutionary algorithm where the centralized oracle –the selection-reproduction...
We use genetic algorithms to evolve behavioral properties of simulated autonomous vehicles. The trai...
Digital Object Identifier: 10.1177/1059712310397633In this article we propose a framework for perfor...
This thesis investigates several aspects of environment-driven adaptation in simulated evolutionary ...
International audienceDistributed Embodied Evolution [1] is a compelling family of approaches to lea...
This paper describes an experimental result on evolutionary processes of learning agents in a multi-...
The automated generation of controllers for real-world autonomous agents by means of evolutionary me...
This article is concerned with a fixed-size population of autonomous agents facing unknown, possibly...
International audienceThis paper is concerned with a fixed-size population of autonomous agents faci...
International audienceThis paper is concerned with a fixed-size population of autonomous agents faci...
International audienceThis paper summarizes work done since 2009 on running swarm of autonomous robo...
Embodied evolutionary robotics is a sub-field of evolutionary robotics that employs evolutionary alg...
Embodied evolutionary robotics is a sub-field of evolutionary robotics that employs evolutionary alg...
We introduce Embodied Evolution (EE) as a new methodology for evolutionary robotics (ER). EE uses a ...
We introduce Embodied Evolution (EE) as a methodology for the automatic design of robotic controller...
We introduce a novel evolutionary algorithm where the centralized oracle –the selection-reproduction...
We use genetic algorithms to evolve behavioral properties of simulated autonomous vehicles. The trai...
Digital Object Identifier: 10.1177/1059712310397633In this article we propose a framework for perfor...
This thesis investigates several aspects of environment-driven adaptation in simulated evolutionary ...
International audienceDistributed Embodied Evolution [1] is a compelling family of approaches to lea...
This paper describes an experimental result on evolutionary processes of learning agents in a multi-...
The automated generation of controllers for real-world autonomous agents by means of evolutionary me...