Towards Self-Autonomy Evaluation using Behavior Trees
K Fozilov, Y Hasegawa… - 2021 IEEE International …, 2021 - ieeexplore.ieee.org
K Fozilov, Y Hasegawa, K Sekiyama
2021 IEEE International Conference on Systems, Man, and …, 2021•ieeexplore.ieee.orgAdjustable autonomy is an attractive paradigm to deploy autonomous robots that require
occasional interaction with humans or partner robots. In multi-robot applications, autonomy
levels such as teleoperation and fully autonomous are extended to team levels, and
depending on the task might have complex hierarchical relations. This paper presents a
preliminary work on multi-robot coordination strategy based on evaluating the robot's level of
autonomy. With appropriate assumptions, choosing the level of autonomy can be interpreted …
occasional interaction with humans or partner robots. In multi-robot applications, autonomy
levels such as teleoperation and fully autonomous are extended to team levels, and
depending on the task might have complex hierarchical relations. This paper presents a
preliminary work on multi-robot coordination strategy based on evaluating the robot's level of
autonomy. With appropriate assumptions, choosing the level of autonomy can be interpreted …
Adjustable autonomy is an attractive paradigm to deploy autonomous robots that require occasional interaction with humans or partner robots. In multi-robot applications, autonomy levels such as teleoperation and fully autonomous are extended to team levels, and depending on the task might have complex hierarchical relations.This paper presents a preliminary work on multi-robot coordination strategy based on evaluating the robot’s level of autonomy. With appropriate assumptions, choosing the level of autonomy can be interpreted as a cooperative planning problem. To this end, we propose to encode the robot’s task and motion plans as a Behavior Tree (BT) to monitor the execution and react to external disturbances. Our approach combines an informative path planning with BT synthesis to obtain a plan that allows a robot to explore and act depending on the uncertainty in an environment representation. We demonstrate how a robot can switch between the single and cooperative execution depending on the exploration’s outcome in a navigation among movable objects scenario.
ieeexplore.ieee.org
Showing the best result for this search. See all results