Trajectory Planning for a Multi-UAV Rigid-Payload Cascaded Transportation System Based on Enhanced Tube-RRT*
Jianqiao Yu, Jia Li, Tianhua Gao
TLDR
This paper introduces a two-stage trajectory planning framework for multi-UAV rigid-payload systems in cluttered environments, using Enhanced Tube-RRT*.
Key contributions
- Enhanced Tube-RRT* uses active hybrid sampling and adaptive expansion for rapid, safe virtual tube generation.
- Integrates trajectory smoothness cost to minimize excessive turns and cable-induced oscillations.
- A convex quadratic program plans smooth, collision-free payload trajectories considering dynamics and constraints.
- Validates the framework with a centralized geometric control scheme for payload attitude maneuvering.
Why it matters
This paper offers a practical solution for complex multi-UAV rigid-payload transportation in cluttered spaces. Its two-stage planning framework improves path safety, smoothness, and efficiency, significantly reducing cable oscillations. This advances autonomous logistics in challenging environments.
Original Abstract
This paper presents a two-stage trajectory planning framework for a multi-UAV rigid-payload cascaded transportation system, aiming to address planning challenges in densely cluttered environments. In Stage I, an Enhanced Tube-RRT* algorithm is developed by integrating active hybrid sampling and an adaptive expansion strategy, enabling rapid generation of a safe and feasible virtual tube in environments with dense obstacles. Moreover, a trajectory smoothness cost is explicitly incorporated into the edge cost to reduce excessive turns and thereby mitigate cable-induced oscillations. Simulation results demonstrate that the proposed Enhanced Tube-RRT* achieves a higher success rate and effective sampling rate than mixed-sampling Tube-RRT* (STube-RRT*) and adaptive-extension Tube-RRT* (AETube-RRT*), while producing a shorter optimal path with a smaller cumulative turning angle. In Stage II, a convex quadratic program is formulated by considering payload translational and rotational dynamics, cable tension constraints, and collision-safety constraints, yielding a smooth, collision-free desired payload trajectory. Finally, a centralized geometric control scheme is applied to the cascaded system to validate the effectiveness and feasibility of the proposed planning framework, offering a practical solution for payload attitude maneuvering in densely cluttered environments.
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