English

Adaptive Contact-Implicit Model Predictive Control with Online Residual Learning

Robotics 2024-03-05 v2

Abstract

The hybrid nature of multi-contact robotic systems, due to making and breaking contact with the environment, creates significant challenges for high-quality control. Existing model-based methods typically rely on either good prior knowledge of the multi-contact model or require significant offline model tuning effort, thus resulting in low adaptability and robustness. In this paper, we propose a real-time adaptive multi-contact model predictive control framework, which enables online adaption of the hybrid multi-contact model and continuous improvement of the control performance for contact-rich tasks. This framework includes an adaption module, which continuously learns a residual of the hybrid model to minimize the gap between the prior model and reality, and a real-time multi-contact MPC controller. We demonstrated the effectiveness of the framework in synthetic examples, and applied it on hardware to solve contact-rich manipulation tasks, where a robot uses its end-effector to roll different unknown objects on a table to track given paths. The hardware experiments show that with a rough prior model, the multi-contact MPC controller adapts itself on-the-fly with an adaption rate around 20 Hz and successfully manipulates previously unknown objects with non-smooth surface geometries.

Keywords

Cite

@article{arxiv.2310.09893,
  title  = {Adaptive Contact-Implicit Model Predictive Control with Online Residual Learning},
  author = {Wei-Cheng Huang and Alp Aydinoglu and Wanxin Jin and Michael Posa},
  journal= {arXiv preprint arXiv:2310.09893},
  year   = {2024}
}

Comments

Wei-Cheng Huang and Alp Aydinoglu contributed equally to this work. ICRA 2024 Final Submission

R2 v1 2026-06-28T12:51:09.119Z