Keep soft robots soft -- a data-driven based trade-off between feed-forward and feedback control

06/25/2019
by   Thomas Beckers, et al.
0

Tracking control for soft robots is challenging due to uncertainties in the system model and environment. Using high feedback gains to overcome this issue results in an increasing stiffness that clearly destroys the inherent safety property of soft robots. However, accurate models for feed-forward control are often difficult to obtain. In this article, we employ Gaussian Process regression to obtain a data-driven model that is used for the feed-forward compensation of unknown dynamics. The model fidelity is used to adapt the feed-forward and feedback part allowing low feedback gains in regions of high model confidence.

READ FULL TEXT
research
06/19/2018

Stable Gaussian Process based Tracking Control of Euler-Lagrange Systems

Perfect tracking control for real-world Euler-Lagrange systems is challe...
research
06/02/2023

Optimal Control for Articulated Soft Robots

Soft robots can execute tasks with safer interactions. However, control ...
research
12/06/2017

Differential Flatness of Quadrotor Dynamics Subject to Rotor Drag for Accurate Tracking of High-Speed Trajectories

In this paper, we prove that the dynamical model of a quadrotor subject ...
research
09/22/2021

Control of Pneumatic Artificial Muscles with SNN-based Cerebellar-like Model

Soft robotics technologies have gained growing interest in recent years,...
research
01/13/2021

Flatness Based Control of an Industrial Robot Joint Using Secondary Encoders

Due to their compliant structure, industrial robots without precision-en...
research
11/12/2022

Kinematics Transformer: Solving The Inverse Modeling Problem of Soft Robots using Transformers

Soft robotic manipulators provide numerous advantages over conventional ...
research
12/04/2020

A data-set of piercing needle through deformable objects for Deep Learning from Demonstrations

Many robotic tasks are still teleoperated since automating them is very ...

Please sign up or login with your details

Forgot password? Click here to reset