English

MOFM-Nav: On-Manifold Ordering-Flexible Multi-Robot Navigation

Robotics 2025-10-22 v1

Abstract

This paper addresses the problem of multi-robot navigation where robots maneuver on a desired mm-dimensional (i.e., mm-D) manifold in the nn-dimensional Euclidean space, and maintain a {\it flexible spatial ordering}. We consider m2 m\geq 2, and the multi-robot coordination is achieved via non-Euclidean metrics. However, since the mm-D manifold can be characterized by the zero-level sets of nn implicit functions, the last mm entries of the GVF propagation term become {\it strongly coupled} with the partial derivatives of these functions if the auxiliary vectors are not appropriately chosen. These couplings not only influence the on-manifold maneuvering of robots, but also pose significant challenges to the further design of the ordering-flexible coordination via non-Euclidean metrics. To tackle this issue, we first identify a feasible solution of auxiliary vectors such that the last mm entries of the propagation term are effectively decoupled to be the same constant. Then, we redesign the coordinated GVF (CGVF) algorithm to {\it boost} the advantages of singularities elimination and global convergence by treating mm manifold parameters as additional mm virtual coordinates. Furthermore, we enable the on-manifold ordering-flexible motion coordination by allowing each robot to share mm virtual coordinates with its time-varying neighbors and a virtual target robot, which {\it circumvents} the possible complex calculation if Euclidean metrics were used instead. Finally, we showcase the proposed algorithm's flexibility, adaptability, and robustness through extensive simulations with different initial positions, higher-dimensional manifolds, and robot breakdown, respectively.

Keywords

Cite

@article{arxiv.2510.18063,
  title  = {MOFM-Nav: On-Manifold Ordering-Flexible Multi-Robot Navigation},
  author = {Bin-Bin Hu and Weijia Yao and Ming Cao},
  journal= {arXiv preprint arXiv:2510.18063},
  year   = {2025}
}
R2 v1 2026-07-01T06:56:30.223Z