Target Tracking Optimization of UAV Swarms Based on Dual-Pheromone Clustering
Title | Target Tracking Optimization of UAV Swarms Based on Dual-Pheromone Clustering |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Brust, M. R., Zurad, M., Hentges, L., Gomes, L., Danoy, G., Bouvry, P. |
Conference Name | 2017 3rd IEEE International Conference on Cybernetics (CYBCONF) |
Date Published | jun |
Publisher | IEEE |
ISBN Number | 978-1-5386-2201-8 |
Keywords | Aircraft, ant colony optimisation, Atmospheric modeling, attractive pheromones, autonomous aerial vehicles, autonomous aircraft, Base stations, cluster stability, Clustering algorithms, collaborative swarm, communication range, connection volatility, coverage fairness, data sharing, disappearing target model, DPCHA, dual-pheromone ant-colony model, dual-pheromone clustering hybrid approach, map coverage performance, multi-robot systems, multihop clustering, Network reconnaissance, object detection, pattern clustering, pubcrawl, reconnaissance mission, repulsive pheromones, Resiliency, stable overlay network, surveillance, surveillance mission, surveillance result propagation, target detection, target tracking, target tracking optimization, temporarily invisible targets, UAV network connectivity, UAV swarm, unmanned aerial vehicles, wireless communication interface |
Abstract | Unmanned Aerial Vehicles (UAVs) are autonomous aircraft that, when equipped with wireless communication interfaces, can share data among themselves when in communication range. Compared to single UAVs, using multiple UAVs as a collaborative swarm is considerably more effective for target tracking, reconnaissance, and surveillance missions because of their capacity to tackle complex problems synergistically. Success rates in target detection and tracking depend on map coverage performance, which in turn relies on network connectivity between UAVs to propagate surveillance results to avoid revisiting already observed areas. In this paper, we consider the problem of optimizing three objectives for a swarm of UAVs: (a) target detection and tracking, (b) map coverage, and (c) network connectivity. Our approach, Dual-Pheromone Clustering Hybrid Approach (DPCHA), incorporates a multi-hop clustering and a dual-pheromone ant-colony model to optimize these three objectives. Clustering keeps stable overlay networks, while attractive and repulsive pheromones mark areas of detected targets and visited areas. Additionally, DPCHA introduces a disappearing target model for dealing with temporarily invisible targets. Extensive simulations show that DPCHA produces significant improvements in the assessment of coverage fairness, cluster stability, and connection volatility. We compared our approach with a pure dual- pheromone approach and a no-base model, which removes the base station from the model. Results show an approximately 50% improvement in map coverage compared to the pure dual-pheromone approach. |
URL | http://ieeexplore.ieee.org/document/7985815/ |
DOI | 10.1109/CYBConf.2017.7985815 |
Citation Key | brust_target_2017 |
- surveillance result propagation
- Aircraft
- wireless communication interface
- Unmanned Aerial Vehicles
- UAV swarm
- UAV network connectivity
- temporarily invisible targets
- target tracking optimization
- target tracking
- target detection
- ant colony optimisation
- surveillance mission
- surveillance
- stable overlay network
- Resiliency
- repulsive pheromones
- object detection
- reconnaissance mission
- pubcrawl
- pattern clustering
- data sharing
- Network reconnaissance
- multihop clustering
- multi-robot systems
- map coverage performance
- dual-pheromone clustering hybrid approach
- dual-pheromone ant-colony model
- DPCHA
- disappearing target model
- autonomous aircraft
- autonomous aerial vehicles
- coverage fairness
- connection volatility
- communication range
- collaborative swarm
- Clustering algorithms
- cluster stability
- Base stations
- attractive pheromones
- Atmospheric modeling