Abstract
Navigating unknown three-dimensional (3D) rugged environments is challenging for multi-robot systems. Traditional discrete systems struggle with rough terrain due to limited individual mobility, while modular systems—where rigid, controllable constraints link robot units—improve traversal but suffer from high control complexity and reduced flexibility. To address these limitations, we propose the Multi-Robot System with Controllable Weak Constraints (MRS-CWC), where robot units are connected by constraints with dynamically adjustable stiffness. This adaptive mechanism softens or stiffens in real time during environmental interactions, ensuring a balance between flexibility and mobility. We formulate the system’s dynamics and control model and evaluate MRS-CWC against six baseline methods and an ablation variant in a benchmark dataset with 100 different simulation terrains. Results show that MRS-CWC achieves the highest navigation completion rate and ranks second in success rate, efficiency, and energy cost in the highly rugged terrain group, outperforming all baseline methods without relying on environmental modeling, path planning, or complex control. Even where MRS-CWC ranks second, its performance is only slightly behind a more complex ablation variant with environmental modeling and path planning. Finally, we develop a physical prototype and validate its feasibility in a constructed rugged environment.
Comparison and Validation
Comparison of 8 Methods in One Example Environment
Validation Experiment with Prototype
Representative Environment Simulations
Simulation of MRS-CWC in a Representative Environment I
Simulation of MRS-CWC in a Representative Environment II
Simulation of MRS-CWC in a Representative Environment III
Simulation of MRS-CWC in a Representative Environment IV
Simulation of MRS-CWC in a Representative Environment V