Low-Complexity Three-Dimensional AOA-Cross Geometric Center Localization Methods via Multi-UAV Network
Abstract
:1. Introduction
- Three-dimensional AOA positioning is considered in this paper. Inspired by the inscribed sphere of a tetrahedron, we extend every angle to a plane. Then, the 3-D AOA localization can be used to seek out the centers of inscribed spheres for these multiple planes. Our method can not only accurately estimate the source position and the noise level at the same time, but it also has very low computational complexity, which is similar to the conventional least square (LS) estimator.
- To further reduce computational complexity, the estimation for variance of angle noise is removed. Then, the second algorithm is born. This algorithm is based on the sum of the minimum squared distance from the estimated point to all planes. The original optimization problem can be converted to a LS problem. Thus, this method has lower computational complexity due to its closed-formed solution. The simulation results show that these two methods have similar performance. Furthermore, compared with conventional LS, the proposed methods have about 8 dB of gain.
- The CRLB and computational complexity are presented. Theoretical analysis and simulation results respectively unveiled that the performance of the proposed methods is close to CRLB and the computational complexity is reduced significantly. The proposed methods could achieve a satisfactory balance between the performance and computational complexity.
2. System Model
3. Proposed Center of Inscribed Sphere-Based Methods for AOA Localization
3.1. Proposed Center of the Inscribed Sphere Method
3.2. Proposed Minimum Squared Distance Method
4. Analysis
4.1. Performance Accuracy
4.2. Computational Complexity
5. Simulation Results and Analysis
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
3-D | Three-dimensional |
UAV | Unmanned aerial vehicle |
MIMO | Multiple-input, multiple-output |
LOS | Line-of-sight |
DOA | Directory of arrival |
RSS | Received signal strength |
AOA | Angle of arrival |
TOA | Time od arrival |
CRLB | Cramér–Rao lower bound |
WSN | Wireless sensor network |
MLE | Maximum likelihood estimator |
IoT | Internet of Things |
CSI | Channel state information |
OTFS | Orthogonal time frequency space |
MUSIC | Multiple signal classification |
ANM | Atomic norm minimization |
CIS | Center of the inscribed sphere |
MSD | Minimum squared distance |
BR-PLE | Bias reduction pseudolinear estimator |
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Methods | Advantages | Disadvantages |
---|---|---|
RSS | 1. Low circuit cost 2. Easy to be implemented | Performance is easily influenced by electromagnetic energy |
TOA | 1. The speed of light is fixed 2. Interfered with by the structure of array | Requires ultra-high-precision time measurement synchronization accuracy |
AOA | Relatively low communications cost | Multiple antennas are essential |
Parameter | Value |
---|---|
Source location | m |
The range of UAVs’ locations | m |
The number of UAVs | 20 |
Angle measurement variance | −5 dB |
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Shi, B.; Li, Y.; Wu, G.; Chen, R.; Yan, S.; Shu, F. Low-Complexity Three-Dimensional AOA-Cross Geometric Center Localization Methods via Multi-UAV Network. Drones 2023, 7, 318. https://doi.org/10.3390/drones7050318
Shi B, Li Y, Wu G, Chen R, Yan S, Shu F. Low-Complexity Three-Dimensional AOA-Cross Geometric Center Localization Methods via Multi-UAV Network. Drones. 2023; 7(5):318. https://doi.org/10.3390/drones7050318
Chicago/Turabian StyleShi, Baihua, Yifan Li, Guilu Wu, Riqing Chen, Shihao Yan, and Feng Shu. 2023. "Low-Complexity Three-Dimensional AOA-Cross Geometric Center Localization Methods via Multi-UAV Network" Drones 7, no. 5: 318. https://doi.org/10.3390/drones7050318
APA StyleShi, B., Li, Y., Wu, G., Chen, R., Yan, S., & Shu, F. (2023). Low-Complexity Three-Dimensional AOA-Cross Geometric Center Localization Methods via Multi-UAV Network. Drones, 7(5), 318. https://doi.org/10.3390/drones7050318