Home Technology Right Model, Right Time: Real-Time Cascaded-Fidelity MPC...
Technology

Right Model, Right Time: Real-Time Cascaded-Fidelity MPC for Bipedal Walking

Key Points

arXiv:2605.04607v2 Announce Type: replace Abstract: This paper presents a multi-phase whole-body model predictive control (MPC) approach for bipedal walking, combining a detailed whole-body model in the near horizon with a simplified single-rigid-body model in the later prediction steps. This reduces computational complexity while retaining prediction capabilities. The resulting nonlinear optimal control problem is solved entirely within the general-purpose, off-the-shelf nonlinear MPC...

arXiv:2605.04607v2 Announce Type: replace Abstract: This paper presents a multi-phase whole-body model predictive control (MPC) approach for bipedal walking, combining a detailed whole-body model in the near horizon with a simplified single-rigid-body model in the later prediction steps. This reduces computational complexity while retaining prediction capabilities. The resulting nonlinear optimal control problem is solved entirely within the general-purpose, off-the-shelf nonlinear MPC framework acados, using sequential quadratic programming (SQP). Given a contact schedule and a target walking speed, the controller optimizes joint torques without depending on preselected footstep locations. The controller is validated in MuJoCo simulation on the 18-DoF bipedal robot HyPer-2.
MPC (ORG) SQP (ORG)
Originally published by arXiv CS Read original →