TY - JOUR
T1 - A manifold model predictive controller for agile pose trajectory tracking of an orbital space robot
AU - Wang, Shuai
AU - Hu, Haiyan
AU - Chen, Ju
AU - Song, Xiaodong
AU - Tian, Qiang
N1 - Publisher Copyright:
© The Author(s) 2026
PY - 2026
Y1 - 2026
N2 - The control of an orbital space robot is challenging due to the strong nonlinear dynamic coupling between the floating base spacecraft and the equipped manipulator. To address this problem effectively, this paper develops a geometric control framework by identifying and exploiting the Lie group structures of the space robot. The paper shows how to formulate the system momentum evolution equations as a set of first-order ordinary differential equations. Then, it discusses the designs of the Lie-algebra proportional-integral controller and the manifold model predictive controller to perform the three-dimensional pose trajectory tracking task. For the manifold model predictive controller, the paper presents the structure-preserving direct-collocation method to enforce the discrete dynamic constraints in a finite-horizon optimal control problem. Furthermore, it presents the performance comparisons of the above two controllers in numerical simulations, and emphasizes the significance of computational accuracy and efficiency, momentum shaping and prediction horizon selection for the manifold model predictive controller, with detailed benchmarks against the classic Euclidean model predictive controller. Finally, the paper demonstrates the trajectory tracking and object capturing experiments in a three-dimensional space via an air-bearing space robot simulator.
AB - The control of an orbital space robot is challenging due to the strong nonlinear dynamic coupling between the floating base spacecraft and the equipped manipulator. To address this problem effectively, this paper develops a geometric control framework by identifying and exploiting the Lie group structures of the space robot. The paper shows how to formulate the system momentum evolution equations as a set of first-order ordinary differential equations. Then, it discusses the designs of the Lie-algebra proportional-integral controller and the manifold model predictive controller to perform the three-dimensional pose trajectory tracking task. For the manifold model predictive controller, the paper presents the structure-preserving direct-collocation method to enforce the discrete dynamic constraints in a finite-horizon optimal control problem. Furthermore, it presents the performance comparisons of the above two controllers in numerical simulations, and emphasizes the significance of computational accuracy and efficiency, momentum shaping and prediction horizon selection for the manifold model predictive controller, with detailed benchmarks against the classic Euclidean model predictive controller. Finally, the paper demonstrates the trajectory tracking and object capturing experiments in a three-dimensional space via an air-bearing space robot simulator.
KW - air-bearing simulator
KW - geometric mechanics
KW - model predictive control
KW - space robot
KW - trajectory tracking
UR - https://www.scopus.com/pages/publications/105034081527
U2 - 10.1177/02783649261433048
DO - 10.1177/02783649261433048
M3 - Article
AN - SCOPUS:105034081527
SN - 0278-3649
JO - International Journal of Robotics Research
JF - International Journal of Robotics Research
ER -