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Model-Predictive Control of a flexible spine robot

Andrew P. Sabelhaus, Abishek K. Akella, Zeerek A. Ahmad, Vytas SunSpiral

发表年份
2017
引用次数
18

摘要

The Underactuated Lightweight Tensegrity Robotic Assistive Spine (ULTRA Spine) project is an ongoing effort to develop a flexible, actuated backbone for quadruped robots. In this work, model-predictive control is used to track a trajectory in the robot's state space, in simulation. This is the first work that tracks an arbitrary trajectory, in closed-loop, in the state space of a spine-like tensegrity robot. The state trajectory used here corresponds to a bending motion of the spine, with translations and rotations of the three moving vertebrae. The controller uses a linearized model of the system dynamics, computed at each timestep, and has both constraints and weighted penalties to reduce linearization errors. For this robot, which measures 26cm × 26cm × 45cm, the tracking errors converge to less than 0.5cm even with disturbances, indicating that the controller is stable and could be used on a physical robot in future work.

关键词

TrajectoryRobotControl theory (sociology)TensegrityController (irrigation)UnderactuationComputer scienceControl engineeringModel predictive controlState space

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