Ant Colony Pheromone Mechanism-Based Passive Localization Using UAV Swarm
Abstract
:1. Introduction
2. Problem Description and Modeling
3. The Proposed Method
3.1. Target Initial Position Estimate
3.2. The Ant Colony Pheromone Mechanism
Algorithm 1 The pheromone update algorithm. |
At time t, |
Step1: Pheromone injection. Each UAV uses the current received target |
bearing information to correct the initial position estimate . |
1:for |
2: if the i th UAV contains target position information |
3: |
6: End |
7:End |
Step2: Pheromone transmission. Each UAV is weighted by the pheromone |
transmitted by other UAVs in the communication radius |
1:for |
2: for |
3: if , and the j th UAV does not contain the |
the target position pheromone |
4: |
5: else if the j th UAV contains the target position pheromone |
6: |
7: End |
8: End |
9:End |
3.2.1. Pheromone Injection
3.2.2. Pheromone Transmission
- (a)
- A small number of UAVs receiving radiation source signals use PLE to compute an initial target location estimate ;
- (b)
- Based on the pheromone injection mechanism, each UAV uses MLE to self-correct to obtain the next moment estimate ;
- (c)
- Radiation source information can be transmitted to the whole network through the pheromone transmission mechanism. Each UAV is weighted with other individuals within the communication radius to obtain the revised target location estimate .
4. Simulation Results
4.1. A Single-Fixed Target
4.1.1. Bearing Standard Deviation
4.1.2. The Number of UAVs
4.1.3. The Communication Radius of UAV
4.2. A Single-Unfixed Target
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
UAV | Unmanned aerial vehicle |
PLE | Pseudo linear estimation |
ML | Maximum likelihood |
CRLB | Cramer-Rao lower bound |
TDOA | Time difference of arrival |
RSS | Received signal strength |
FDOA | Frequency difference of arrival |
AOA | Angle of arrival |
LS | Least square |
DWLS | Distance weighted least squares |
NLOS | Non-line of sight |
RMSE | Root mean square error |
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Zhou, Y.; Song, D.; Ding, B.; Rao, B.; Su, M.; Wang, W. Ant Colony Pheromone Mechanism-Based Passive Localization Using UAV Swarm. Remote Sens. 2022, 14, 2944. https://doi.org/10.3390/rs14122944
Zhou Y, Song D, Ding B, Rao B, Su M, Wang W. Ant Colony Pheromone Mechanism-Based Passive Localization Using UAV Swarm. Remote Sensing. 2022; 14(12):2944. https://doi.org/10.3390/rs14122944
Chicago/Turabian StyleZhou, Yongkun, Dan Song, Bowen Ding, Bin Rao, Man Su, and Wei Wang. 2022. "Ant Colony Pheromone Mechanism-Based Passive Localization Using UAV Swarm" Remote Sensing 14, no. 12: 2944. https://doi.org/10.3390/rs14122944
APA StyleZhou, Y., Song, D., Ding, B., Rao, B., Su, M., & Wang, W. (2022). Ant Colony Pheromone Mechanism-Based Passive Localization Using UAV Swarm. Remote Sensing, 14(12), 2944. https://doi.org/10.3390/rs14122944