Adaptive Prior Selection for Repertoire-Based Online Adaptation in Robotics.

data-efficient robot learning evolutionary robotics fault tolerance in robotics model-based learning repertoire-based robot learning

Journal

Frontiers in robotics and AI
ISSN: 2296-9144
Titre abrégé: Front Robot AI
Pays: Switzerland
ID NLM: 101749350

Informations de publication

Date de publication:
2019
Historique:
received: 23 10 2019
accepted: 20 12 2019
entrez: 27 1 2021
pubmed: 28 1 2021
medline: 28 1 2021
Statut: epublish

Résumé

Repertoire-based learning is a data-efficient adaptation approach based on a two-step process in which (1) a large and diverse set of policies is learned in simulation, and (2) a planning or learning algorithm chooses the most appropriate policies according to the current situation (e.g., a damaged robot, a new object, etc.). In this paper, we relax the assumption of previous works that a single repertoire is enough for adaptation. Instead, we generate repertoires for many different situations (e.g., with a missing leg, on different floors, etc.) and let our algorithm selects the most useful prior. Our main contribution is an algorithm, APROL (Adaptive Prior selection for Repertoire-based Online Learning) to plan the next action by incorporating these priors when the robot has no information about the current situation. We evaluate APROL on two simulated tasks: (1) pushing unknown objects of various shapes and sizes with a robotic arm and (2) a goal reaching task with a damaged hexapod robot. We compare with "Reset-free Trial and Error" (RTE) and various single repertoire-based baselines. The results show that APROL solves both the tasks in less interaction time than the baselines. Additionally, we demonstrate APROL on a real, damaged hexapod that quickly learns to pick compensatory policies to reach a goal by avoiding obstacles in the path.

Identifiants

pubmed: 33501166
doi: 10.3389/frobt.2019.00151
pmc: PMC7805922
doi:

Types de publication

Journal Article

Langues

eng

Pagination

151

Informations de copyright

Copyright © 2020 Kaushik, Desreumaux and Mouret.

Références

IEEE Trans Pattern Anal Mach Intell. 2015 Feb;37(2):408-23
pubmed: 26353251
Evol Comput. 2016 Spring;24(1):59-88
pubmed: 25585055
Nature. 2015 May 28;521(7553):503-7
pubmed: 26017452
Nature. 2016 Jan 28;529(7587):484-9
pubmed: 26819042
Nature. 2015 Feb 26;518(7540):529-33
pubmed: 25719670

Auteurs

Rituraj Kaushik (R)

Inria, CNRS, Université de Lorraine, Nancy, France.

Pierre Desreumaux (P)

Inria, CNRS, Université de Lorraine, Nancy, France.

Jean-Baptiste Mouret (JB)

Inria, CNRS, Université de Lorraine, Nancy, France.

Classifications MeSH