Talk
Evolving Controllers for Robots with Multimodal Locomotion
Rita Ramos (Rita Ramos); Miguel Duarte (Duarte, M.); Sancho Moura Oliveira (Oliveira, S.); Anders Christensen (Christensen, A. L.);
Event Title
From Animals to Animats 14
Year (definitive publication)
2016
Language
English
Country
Germany
More Information
Web of Science®

Times Cited: 0

(Last checked: 2022-02-18 01:34)

View record in Web of Science®

Scopus

Times Cited: 0

(Last checked: 2022-02-20 23:17)

View record in Scopus

Google Scholar

This publication is not indexed in Google Scholar

This publication is not indexed in Overton

Abstract
Animals have inspired numerous studies on robot locomotion, but the problem of how autonomous robots can learn to take advantage of multimodal locomotion remains largely unexplored. In this paper, we study how a robot with two different means of locomotion can effective learn when to use each one based only on the limited information it can obtain through its onboard sensors. We conduct a series of simulation-based experiments using a task where a wheeled robot capable of jumping has to navigate to a target destination as quickly as possible in environments containing obstacles. We apply evolutionary techniques to synthesize neural controllers for the robot, and we analyze the evolved behaviors. The results show that the robot succeeds in learning when to drive and when to jump. The results also show that, compared with unimodal locomotion, multimodal locomotion allows for simpler and higher performing behaviors to evolve.
Acknowledgements
--
Keywords