Home /Research /Evolution of visually-guided approach behaviour in recurrent artificial neural network robot controllers
LEARNING

Evolution of visually-guided approach behaviour in recurrent artificial neural network robot controllers

Rolf Pfeifer, Bruce Blumberg, Jean-Arcady Meyer, Stewart W. Wilson

Year
1998
Citations
2

Abstract

Analysis of internal structures of embodied and situated agents may provide insights into the mechanisms underlying adaptive behaviour. This paper is concerned with the evolution and analysis of visually-guided approach behaviour in a simulated robotic agent controlled by a recurrent artificial neural network, whose connection weights have been evolved using evolutionary algorithms. Analysis of the evolved behaviours and their network-internal mechanisms reveals a behavioural structure and organization resembling a Brooksian subsumption architecture. The task decomposition, as well as the resulting individual behaviours and their integration, however, are realized as network-internal state space dynamics, evolved in the course of agent-environment interaction, i.e. with a minimum of designer intervention.

Keywords

Artificial intelligenceSituatedComputer scienceArtificial neural networkEvolutionary roboticsEmbodied cognitionRobotTask (project management)Recurrent neural networkEngineering

Related papers

Browse all LEARNING papers