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Hierarchical quality-diversity for online damage recovery

Allard, Maxime; Smith, Simón C.; Chatzilygeroudis, Konstantinos; Cully, Antoine

Authors

Maxime Allard

Simón C. Smith

Konstantinos Chatzilygeroudis

Antoine Cully



Contributors

Jonathan E. Fieldsend
Editor

Abstract

Adaptation capabilities, like damage recovery, are crucial for the deployment of robots in complex environments. Several works have demonstrated that using repertoires of pre-trained skills can enable robots to adapt to unforeseen mechanical damages in a few minutes. These adaptation capabilities are directly linked to the behavioural diversity in the repertoire. The more alternatives the robot has to execute a skill, the better are the chances that it can adapt to a new situation. However, solving complex tasks, like maze navigation, usually requires multiple different skills. Finding a large behavioural diversity for these multiple skills often leads to an intractable exponential growth of the number of required solutions. In this paper, we introduce the Hierarchical Trial and Error algorithm, which uses a hierarchical behavioural repertoire to learn diverse skills and leverages them to make the robot more adaptive to different situations. We show that the hierarchical decomposition of skills enables the robot to learn more complex behaviours while keeping the learning of the repertoire tractable. The experiments with a hexapod robot show that our method solves maze navigation tasks with 20% less actions in the most challenging scenarios than the best baseline while having 57% less complete failures.

Citation

Allard, M., Smith, S. C., Chatzilygeroudis, K., & Cully, A. (2022, June). Hierarchical quality-diversity for online damage recovery. Presented at GECCO '22: Genetic and Evolutionary Computation Conference, Boston, Massachusetts

Presentation Conference Type Conference Paper (published)
Conference Name GECCO '22: Genetic and Evolutionary Computation Conference
Start Date Jun 9, 2022
End Date Jul 13, 2022
Online Publication Date Jul 8, 2022
Publication Date 2022-07
Deposit Date Jul 11, 2023
Publisher Association for Computing Machinery (ACM)
Pages 58-67
Book Title GECCO '22: Proceedings of the Genetic and Evolutionary Computation Conference
ISBN 978-1-4503-9237-2
DOI https://doi.org/10.1145/3512290.3528751
Keywords hierarchical learning, robotics, quality-diversity