title: DRAMA, a connectionist architecture for control and learning in autonomous robots creator: Billard, Aude creator: Hayes, Gillian subject: Artificial Intelligence subject: Neural Nets subject: Robotics subject: Robotics description: This work proposes a connectionist architecture, DRAMA, for dynamic control and learning of autonomous robots. DRAMA stands for dynamical recurrent associative memory architecture. It is a time-delay recurrent neural network, using Hebbian update rules. It allows learning of spatio-temporal regularities and time series in discrete sequences of inputs, in the face of an important amount of noise. The first part of this paper gives the mathematical description of the architecture and analyses theoretically and through numerical simulations its performance. The second part of this paper reports on the implementation of DRAMA in simulated and physical robotic experiments. Training and rehearsal of the DRAMA architecture is computationally fast and inexpensive, which makes the model particularly suitable for controlling `computationally-challenged' robots. In the experiments, we use a basic hardware system with very limited computational capability and show that our robot can carry out real time computation and on-line learning of relatively complex cognitive tasks. In these experiments, two autonomous robots wander randomly in a fixed environment, collecting information about its elements. By mutually associating information of their sensors and actuators, they learn about physical regularities underlying their experience of varying stimuli. The agents learn also from their mutual interactions. We use a teacher-learner scenario, based on mutual following of the two agents, to enable transmission of a vocabulary from one robot to the other. date: 1999 type: Journal (Paginated) type: PeerReviewed format: application/postscript identifier: http://cogprints.org/535/2/DRAMA.ps identifier: Billard, Aude and Hayes, Gillian (1999) DRAMA, a connectionist architecture for control and learning in autonomous robots. [Journal (Paginated)] relation: http://cogprints.org/535/