Floating-base manipulation on zero-perturbation manifolds
Brian A. Bittner, Jason Reid, Kevin C. Wolfe

TL;DR
This paper introduces a motion planning method for floating-base systems that minimizes base perturbations by planning arm motions on zero-perturbation manifolds, enabling efficient high-DOF navigation in complex environments.
Contribution
It presents a novel approach to motion planning on zero-perturbation manifolds using nonholonomic RRT, accounting for base dynamics as pfaffian constraints, applicable in various environments.
Findings
Enables rapid exploration for high-DOF floating-base systems.
Reduces base perturbations during manipulation tasks.
Applicable in underwater, aerial, and orbital environments.
Abstract
To achieve high-dexterity motion planning on floating-base systems, the base dynamics induced by arm motions must be treated carefully. In general, it is a significant challenge to establish a fixed-base frame during tasking due to forces and torques on the base that arise directly from arm motions (e.g. arm drag in low Reynolds environments and arm momentum in high Reynolds environments). While thrusters can in theory be used to regulate the vehicle pose, it is often insufficient to establish a stable pose for precise tasking, whether the cause be due to underactuation, modeling inaccuracy, suboptimal control parameters, or insufficient power. We propose a solution that asks the thrusters to do less high bandwidth perturbation correction by planning arm motions that induce zero perturbation on the base. We are able to cast our motion planner as a nonholonomic rapidly-exploring random…
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Taxonomy
TopicsRobotic Path Planning Algorithms · AI-based Problem Solving and Planning · Robot Manipulation and Learning
