Reuleaux: Robot Base Placement by Reachability Analysis
Abhijit Makhal, Alex K. Goins

TL;DR
Reuleaux is an open source library that automates robot base placement by analyzing reachability, reducing manual effort and improving efficiency for both fixed and mobile robots in various tasks.
Contribution
The paper introduces Reuleaux, a novel reachability analysis library that optimizes robot base placement for diverse tasks, outperforming existing methods in efficiency and applicability.
Findings
Reuleaux significantly improves placement efficiency.
It enhances reachability coverage for various robot types.
The library performs well in both simulation and real-world tests.
Abstract
Before beginning any robot task, users must position the robot's base, a task that now depends entirely on user intuition. While slight perturbation is tolerable for robots with moveable bases, correcting the problem is imperative for fixed-base robots if some essential task sections are out of reach. For mobile manipulation robots, it is necessary to decide on a specific base position before beginning manipulation tasks. This paper presents Reuleaux, an open source library for robot reachability analyses and base placement. It reduces the amount of extra repositioning and removes the manual work of identifying potential base locations. Based on the reachability map, base placement locations of a whole robot or only the arm can be efficiently determined. This can be applied to both statically mounted robots, where position of the robot and work piece ensure the maximum amount of work…
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