An Autonomous Drive Balancing Strategy for the Design of Purpose in Open-ended Learning Robots

Bibliographic citation

Alejandro Romero, Francisco Bellas and Richard J. Duro. 2021. An Autonomous Drive Balancing Strategy for the Design of Purpose in Openended Learning Robots: Extended Abstract. In Proc. of the 20th International Conference on Autonomous Agents and Multiagent Systems (AAMAS 2021), Online, May 3–7, 2021. IFAAMAS, 3 pages.

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Academic degree

Abstract

[Abstract] This paper is concerned with designing purpose in autonomous robots for open-ended learning settings. Unconstrained human robot interaction situations and robotic systems that must operate in dynamic multi-robot scenarios are paradigmatic examples of open-endedness. An approach to the appropriate design and engineering of motivational structures to endow robots with a particular purpose is proposed and tested. This approach focuses on the drive structure and how it can be made to autonomously adapt to changing circumstances. Specifically, a simple evolutionary strategy for the autonomous regulation of multiple drives in order to optimize long-term operation is defined. The experimental results have been obtained on a Baxter robot facing changing situations in real setups.

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