Estimating Infinite-Dimensional Continuum Robot States From the Tip

Tongjia Zheng, Ciera McFarland, Margaret Coad, Hai Lin

2024 IEEE 7th International Conference on Soft Robotics (RoboSoft)(2023)

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摘要
Knowing the state of a robot is critical for many problems, such as feedback control. For continuum robots, state estimation is incredibly challenging. First, the motion of a continuum robot involves many kinematic states, including poses, strains, and velocities. Second, all these states are infinite-dimensional due to the robot's flexible property. It has remained unclear whether these infinite-dimensional states are observable at all using existing sensing techniques. Recently, we presented a solution to this challenge. It was a mechanics-based dynamic state estimation algorithm, called a Cosserat theoretic boundary observer, which could recover all the infinite-dimensional robot states by only measuring the velocity twist of the tip. In this work, we generalize the algorithm to incorporate tip pose measurements for more tuning freedom. We also validate this algorithm offline using recorded experimental data of a tendon-driven continuum robot. Specifically, we feed the recorded tension of the tendon and the recorded tip measurements into a numerical solver of the Cosserat rod model based on our continuum robot. It is observed that, even with purposely deviated initialization, the state estimates by our algorithm quickly converge to the recorded ground truth states and closely follow the robot's actual motion.
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关键词
Robot State,Continuum Robots,Motor Activity,Estimation Algorithm,State Estimation Algorithm,Estimation Error,Actuator,Angular Velocity,Ordinary Differential Equations,Partial Differential Equations,Kalman Filter,Estimation Problem,Constitutive Equations,Stiffness Matrix,Position Estimation,Motion Capture System,Linear Velocity,Force Sensor,Transient Phase,Discrete Measurements,State Estimation Problem,Body Frame,Material Damping,Spatial Frame,Linear Law,Column Vector,Error Model,Ground Truth Position,Cross-product,Time Instants
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