On differential drive robot learning convex policy with application to path-tracking
Autor
Ribeiro, Alexandre
Quiroz, Cesar
Fioravanti, André Ricardo
Kurka, Paulo
Data de publicação
//2021Tipo de conteúdo
ArtigoMetadados
Mostrar registro completoResumo
This paper presents an experimental validation of a learning convex policy for
path-tracking on a differential drive robot. An online implementation of the convex control
policy (COCP) is provided in the ROS environment using the CVXGEN package that runs
on the on-board computer in a real-time application. The control policies are trained in an
off-board computer considering a stochastic kinematic description of the robot and using an
approximate gradient method for a given cost-to-go metric function. The policy is validated
through simulation and experimental evaluation. In addition, to certify the training efficacy, the
experiment is also evaluated using the untuned policy. A discussion regarding trajectory errors
is presented as well as final considerations for the solver and real-time concerns.
Palavras-chave
Adaptive dynamic programmingDifferential-drive robot
Patch tracking
Convex optimization control policies
Learning control
