Cargando…

Learning system for compliant autonomous tasks in harsh environments

CERN’s work-line is deeply related to harsh environments where radiation is its main concern towards the people working there. Therefore, a robotics team was founded to find solutions to situation where the environment is too dangerous for people to intervene. The purpose of this work is to achieve a...

Descripción completa

Detalles Bibliográficos
Autor principal: Solis Paiva, Santiago Andres
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2670927
_version_ 1780962316075925504
author Solis Paiva, Santiago Andres
author_facet Solis Paiva, Santiago Andres
author_sort Solis Paiva, Santiago Andres
collection CERN
description CERN’s work-line is deeply related to harsh environments where radiation is its main concern towards the people working there. Therefore, a robotics team was founded to find solutions to situation where the environment is too dangerous for people to intervene. The purpose of this work is to achieve an autonomous system capable of performing repetitive tasks in structured environments that are considered harsh for humans to perform activities. Furthermore, the equipment in the surroundings are of high importance and cost, which requires the system to be complaint so that none of the equipment are damaged in case of unexpected circumstances. The integration of an online modifiable trajectory generation system known as Dynamic Movement Primitives (DMP) is used to perform specific tasks. Kinematic demonstrations along with locally weighted regression (LWR) are used to learn the trajectories and implemented in the system. A compliant behaviour is achieved through the modification of the DMPs canonical system and use of an impedance controller.
id cern-2670927
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
record_format invenio
spelling cern-26709272019-09-30T06:29:59Zhttp://cds.cern.ch/record/2670927engSolis Paiva, Santiago AndresLearning system for compliant autonomous tasks in harsh environmentsEngineeringCERN’s work-line is deeply related to harsh environments where radiation is its main concern towards the people working there. Therefore, a robotics team was founded to find solutions to situation where the environment is too dangerous for people to intervene. The purpose of this work is to achieve an autonomous system capable of performing repetitive tasks in structured environments that are considered harsh for humans to perform activities. Furthermore, the equipment in the surroundings are of high importance and cost, which requires the system to be complaint so that none of the equipment are damaged in case of unexpected circumstances. The integration of an online modifiable trajectory generation system known as Dynamic Movement Primitives (DMP) is used to perform specific tasks. Kinematic demonstrations along with locally weighted regression (LWR) are used to learn the trajectories and implemented in the system. A compliant behaviour is achieved through the modification of the DMPs canonical system and use of an impedance controller.CERN-THESIS-2018-396oai:cds.cern.ch:26709272019-04-10T07:01:04Z
spellingShingle Engineering
Solis Paiva, Santiago Andres
Learning system for compliant autonomous tasks in harsh environments
title Learning system for compliant autonomous tasks in harsh environments
title_full Learning system for compliant autonomous tasks in harsh environments
title_fullStr Learning system for compliant autonomous tasks in harsh environments
title_full_unstemmed Learning system for compliant autonomous tasks in harsh environments
title_short Learning system for compliant autonomous tasks in harsh environments
title_sort learning system for compliant autonomous tasks in harsh environments
topic Engineering
url http://cds.cern.ch/record/2670927
work_keys_str_mv AT solispaivasantiagoandres learningsystemforcompliantautonomoustasksinharshenvironments