English

Sample-efficient Model Predictive Control Design of Soft Robotics by Bayesian Optimization

Robotics 2022-10-18 v1 Systems and Control Systems and Control

Abstract

This paper presents a sample-efficient data-driven method to design model predictive control (MPC) for cable-actuated soft robotics using Bayesian optimization. Instead of modeling the complex dynamics of the soft robots, the proposed approach uses Bayesian optimization to search the best-guessed low-dimensional prediction model and its associated controller to minimize the objective function of closed-loop responses. The prediction model is updated by Bayesian optimization from the closed-loop input-output data in each iteration. A linear MPC is then designed based on the updated prediction model, and evaluated based on the closed-loop responses. Different from directly searching controller parameters, the closed-loop system stability, and inputs/outputs constraints can be easily handled in the MPC design. After a few iterations, a convergent solution of a (sub-)optimal controller can be obtained, which minimizes the user-defined closed-loop performance index. The proposed method is simulated and validated by a high-fidelity simulation of a cable-actuated soft robot. The simulation results demonstrate that the proposed approach can achieve desired tracking controller for the soft robot without a prior-known model.

Keywords

Cite

@article{arxiv.2210.08780,
  title  = {Sample-efficient Model Predictive Control Design of Soft Robotics by Bayesian Optimization},
  author = {Anuj Pal and Tianyi He and Wenpeng Wei},
  journal= {arXiv preprint arXiv:2210.08780},
  year   = {2022}
}

Comments

submitted to ACC 2023

R2 v1 2026-06-28T03:46:50.094Z