| Literature DB >> 31007394 |
Cenk Baykal1, Chris Bowen2, Ron Alterovitz3.
Abstract
In highly constrained settings, e.g., a tentaclelike medical robot maneuvering through narrow cavities in the body for minimally invasive surgery, it may be difficult or impossible for a robot with a generic kinematic design to reach all desirable targets while avoiding obstacles. We introduce a design optimization method to compute kinematic design parameters that enable a single robot to reach as many desirable goal regions as possible while avoiding obstacles in an environment. Our method appropriately integrates sampling based motion planning in configuration space into stochastic optimization in design space so that, over time, our evaluation of a design's ability to reach goals increases in accuracy and our selected designs approach global optimality. We prove the asymptotic optimality of our method and demonstrate performance in simulation for (i) a serial manipulator and (ii) a concentric tube robot, a tentacle-like medical robot that can bend around anatomical obstacles to safely reach clinically- relevant goal regions.Entities:
Keywords: Concentric tube robots; Design optimization; Motion planning
Year: 2018 PMID: 31007394 PMCID: PMC6472929 DOI: 10.1007/s10514-018-9766-x
Source DB: PubMed Journal: Auton Robots ISSN: 0929-5593 Impact factor: 3.000