Pigeon-Inspired UAV Swarm Control and Planning Within a Virtual Tube
Abstract
:1. Introduction
- Curved virtual tube planning based on pigeon-inspired optimization (PIO): A novel virtual tube planning method is proposed using PIO, ensuring obstacle-free paths for UAV swarms. This approach adapts better to narrow or obstacle-dense environments than traditional methods, avoiding excessively narrow tubes.
- Distributed swarm controller inspired by pigeon flocking: A distributed controller based on pigeon flocking hierarchical behavior is designed to guide UAVs within the virtual tube. It guarantees collision avoidance, safe passage, and adherence to the tube, addressing scalability and deadlock issues in complex scenarios.
- Integrated framework combining pigeon flocking behaviors and virtual tube methods: This work integrates pigeons’ flocking properties with virtual tube techniques, offering a unified framework for both planning and control. It enhances navigation efficiency and safety for large-scale UAV swarms in cluttered environments.
2. Preliminaries and Problem Formulation
2.1. UAV Modeling
2.2. Virtual Tube Model
2.3. Problem Formulation
- Virtual tube planning: Denote as free space, where is the configuration space and is the obstacle space. The virtual tube planning method aims to find the center path (generating curve) in free space, and the radius of the virtual tube is determined, satisfying the requirement of smoothness and width.
- Velocity command design: Based on the assumption above, design the velocity command based on the pigeons flocking behaviors. During the passing-through process, all UAVs should avoid collisions with each other and stay within the curved virtual tube.
3. Virtual Tube Planning Based on Pigeon-Inspired Optimization
4. Pigeon-Inspired Velocity Command Design for UAV Swarm
4.1. Pigeon Flocking Hierarchical Strategies
4.2. Controller Design
5. Simulation Results
5.1. UAV Swarm Control
5.2. Virtual Tube Planning
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Type | Level | Number | Set of Leaders Number |
---|---|---|---|
Leader | ∖ | 1 | ∖ |
Followers | first-level | 2, 3, 4 | 1 |
second-level | 5 | 1, 2 | |
6 | 1, 3 | ||
7 | 1, 4 | ||
third-level | 8 | 1, 2, 5 | |
9 | 1, 3, 6 | ||
10 | 1, 4, 7 |
Starting Point | Endpoint | Obstacle 1 | Obstacle 2 | Obstacle 3 | Obstacle 4 | |
---|---|---|---|---|---|---|
Position | 1 | 8 | 2.5 | 5 | 2.2 | 7.5 |
3 | 3 | 6.5 | 3 | 1.5 | 6 | |
Radius | ∖ | ∖ | 1.5 | 0.8 | 0.8 | 0.5 |
PSO | PIO | PPPIO | GA | |
---|---|---|---|---|
Path length (m) | 8.037 | 7.117 | 7.013 | 9.282 |
Running time (s) | 1.216 | 1.536 | 1.704 | 1.449 |
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Lei, Y.; She, Z.; Quan, Q. Pigeon-Inspired UAV Swarm Control and Planning Within a Virtual Tube. Drones 2025, 9, 333. https://doi.org/10.3390/drones9050333
Lei Y, She Z, Quan Q. Pigeon-Inspired UAV Swarm Control and Planning Within a Virtual Tube. Drones. 2025; 9(5):333. https://doi.org/10.3390/drones9050333
Chicago/Turabian StyleLei, Yangqi, Zhikun She, and Quan Quan. 2025. "Pigeon-Inspired UAV Swarm Control and Planning Within a Virtual Tube" Drones 9, no. 5: 333. https://doi.org/10.3390/drones9050333
APA StyleLei, Y., She, Z., & Quan, Q. (2025). Pigeon-Inspired UAV Swarm Control and Planning Within a Virtual Tube. Drones, 9(5), 333. https://doi.org/10.3390/drones9050333