Chaff Cloud Integrated Communication and TT&C: An Integrated Solution for Single-Station Emergency Communications and TT&C in a Denied Environment
Abstract
:1. Introduction
2. Principle of Single-Station Emergency IC&T
2.1. IC&T Modulation Manners and Signal Models
2.1.1. Selection of Modulation Manners
2.1.2. BPSK-R (n) Signal Model
2.2. Single-Station Emergency IC&T Model Based on Radar Chaff Cloud Relay
2.2.1. Theory of Communication, Data Transmission, and Measurement Quality Analysis
2.2.2. TT&C Performance Analysis Theory
- (1)
- ρM1(t1): at time t1, the local pseudo-range of the measuring body M1 is obtained by sampling the DWAPR&TS frame header;
- (2)
- τM1_sl: transmission delay of measuring body M1;
- (3)
- τM1_rl: receiving delay of measuring body M1;
- (4)
- τ0l (t1): at time t1, the transmission delay of electromagnetic waves passing through the radar chaff cloud between the antenna phase centers of measuring bodies M1 and M2;
- (5)
- Δτ: the calculation value of the time difference, which is the difference in timing between the measuring bodies M1 and M2 at time t1.
- (6)
- τ (t1): using the clock of measuring body M1 as a reference, at the beginning of the t1 transmission time slot, the distance transmission delay between measuring bodies M1 and M2 is measured through radar chaff cloud scattering;
- (7)
- τ12 (t1): the spatial propagation delay that occurs when the signal emitted by the measuring body M1 reaches the measuring body M2 through the radar chaff cloud at time t1;
- (8)
- dM1: the distance vector that measuring body M1 moves within this propagation delay.
3. Physical Characteristic Analysis of Radar Chaff and Aerodynamic Modeling of Chaff Cloud
3.1. Effective Radar Cross Section (RCS) of Radar Chaff
3.1.1. Effective RCS of a Single Radar Chaff
3.1.2. Average RCS of Radar Chaff Cloud
3.2. Radar Chaff Aerodynamic Modeling
3.2.1. Optimal Deployment of Radar Chaff Cloud
3.2.2. Modeling of the Motion Characteristics of Radar Chaff Clouds
4. Simulation Analysis
4.1. Radar Chaff Effective RCS Simulation Analysis
4.2. Simulation Analysis of Radar Chaff Motion Model
4.3. Simulation of Single-Station Emergency IC&T Application Based on Radar Chaff Cloud Relay
4.3.1. Simulation Analysis of Communication and Data Transmission Quality
4.3.2. Simulation Analysis of IT&C System Performance
- (1)
- About ranging, for drones at a flight velocity of 20 m/s, the ranging error fluctuates within 300 m. As the interference intensity decreases, the ranging performance gradually improves, with ranging accuracies of approximately 140 m, 90 m, and 50 m, respectively. For drones at different dynamic fly velocities of 20 m/s, 10 m/s, and 1 m/s, the ranging error fluctuates within 200 m. Under the same interference intensity, the ranging performance of drones with larger dynamics is relatively poor, but the difference is not significant, and the ranging accuracy is around 90 m. Therefore, it is not difficult to find that the main factor that has the greatest impact on the ranging performance is the interference intensity. Therefore, under the interference of large multipath and noise caused by small elevation angles, ranging errors can be improved by improving multipath interference. However, in emergency situations, the communication and TT&C business requirements are sufficient.
- (2)
- Regarding the velocity measurement, for drones at a flight velocity of 20 m/s, the velocity measurement error fluctuates within 0.25 m/s. As the interference intensity decreases, the velocity measurement performance also improves to a certain extent, and the velocity measurement accuracy is about 0.08 m/s. For drones at different dynamic fly velocities of 20 m/s, 10 m/s, and 1 m/s, under the same interference intensity, the velocity measurement error also fluctuates within 0.25 m/s. The larger the drone, the greater the error fluctuation, and the poorer the corresponding velocity measurement accuracy. This is consistent with the actual situation in terms of the speed measurement; the velocity measurement accuracy is about 0.07 m/s, 0.04 m/s, and 0.05 m/s, respectively. But high dynamics are more sensitive to the measurement of drone velocity under the same interference. The larger dynamic of the drone, the greater the velocity measurement error.
- (3)
- About angle measurement, for drones at a flight velocity of 20 m/s, the angle measurement error fluctuates within 0.08°. As the interference intensity decreases, the measurement error of the angle also improves to a certain extent, and the angle measurement accuracy is about 0.07°. For drones at different dynamic fly velocities of 20 m/s, 10 m/s, and 1 m/s, under the same interference intensity, the angle measurement error fluctuates within 0.07°, but the measurement accuracy of drones with different motion velocities does not differ significantly. Therefore, the same interference has little effect on the angle measurement of drones with different velocities, and the angle measurement accuracy is also about 0.07°.
5. Comparative Analysis of System Performance
6. Conclusions and Prospects
- (1)
- By selecting appropriate frequency bands based on actual business situations, the compatibility issue between communication and TT&C integrated business frequency bands can be effectively solved, which can allow for both communication and TT&C business.
- (2)
- By using BPSK modulation, it can adapt well to various channel models, achieve high-quality information transmission, and also have a good code-tracking performance and anti-multipath performance.
- (3)
- The established free sphere diffusion model of the chaff cloud is very close to the actual diffusion situation of the chaff cloud, and through reasonable deployment, the link transmission loss can be minimized, thereby improving the business quality of IC&T.
- (4)
- Based on the proposed ranging and time synchronization system, velocity measurement system, and angle measurement system, although emergency IC&T in a denial environment is taken as the demand background and various interference factors are considered, the final simulation results show that in emergency situations, TT&C services with certain accuracy requirements can be met.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Adjustment Interval |Δt(i)| | Residual after Each Adjustment | ||||
---|---|---|---|---|---|
k = 1 | k = 2 | k = 3 | k = 4 | k = 5 | |
5 s | 10 × 10−6 s | 20 s | 40 μs | 80 ps | 0.00016 ps |
10 s | 20 × 10−6 s | 40 s | 80 μs | 160 ps | 0.00032 ps |
30 s | 60 × 10−6 s | 120 s | 240 μs | 480 ps | 0.00096 ps |
60 s | 120 × 10−6 s | 240 s | 480 μs | 960 ps | 0.00192 ps |
Height Range (m) | Wind Speed Change Rate (m/s) | Cloud Diffusion Rate (km3/s) |
---|---|---|
6500~6000 | 1 | 0.001 |
6000~5000 | 2 | 0.004 |
5000~4000 | 7 | 0.022 |
4000~3000 | 4 | 0.010 |
Measurement Items | Mean | STD | ||
---|---|---|---|---|
Ranging (m) | Scenario 1 | γ = 0.003 | 3.149 | 131.643 |
γ = 0.002 | 1.844 | 87.113 | ||
γ = 0.001 | 0.318 | 47.219 | ||
Scenario 2 | v = 20 m/s | 3.842 | 89.865 | |
v = 10 m/s | 2.652 | 88.089 | ||
v = 1 m/s | 1.261 | 87.023 | ||
Velocity measurement (m/s) | Scenario 1 | γ = 0.003 | 0.132 | 0.074 |
γ = 0.002 | 0.122 | 0.068 | ||
γ = 0.001 | 0.112 | 0.063 | ||
Scenario 2 | v = 20 m/s | 0.119 | 0.070 | |
v = 10 m/s | 0.060 | 0.036 | ||
v = 1 m/s | 0.036 | 0.003 | ||
Angle measurement (°) | Scenario 1 | γ = 0.003 | 0.046 | 0.065 |
γ = 0.002 | 0.042 | 0.062 | ||
γ = 0.001 | 0.041 | 0.059 | ||
Scenario 2 | v = 20 m/s | 0.046 | 0.064 | |
v = 10 m/s | 0.043 | 0.064 | ||
v = 1 m/s | 0.037 | 0.063 |
Algorithm | Ranging (m) | Velocity Measurement (m/s) | Angle Measurement (°) | |||
---|---|---|---|---|---|---|
Mean | STD | Mean | STD | Mean | STD | |
This paper | 0.318 | 47.219 | 0.112 | 0.063 | 0.041 | 0.059 |
Ref. [10] | 0.530 | 1.620 | - | - | - | - |
Ref. [77] | - | 11.2 | - | - | - | 0.082 |
Ref. [78] | - | - | - | - | - | 0.017 |
Ref. [79] | 31.471 | 21.118 | - | - | - | 0.033 |
Ref. [80] | - | - | 0.004 | 0.007 | - | - |
Ref. [81] | - | - | 0.006 | 0.005 | - | - |
Ref. [82] | - | - | 0.361 | 0.088 | - | - |
Ref. [83] | - | - | 0.035 | 0.008 | - | - |
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Ye, L.; Yang, Y.; Chen, B.; Pan, D.; Yang, F.; Cao, S.; Yan, Y.; Sun, F. Chaff Cloud Integrated Communication and TT&C: An Integrated Solution for Single-Station Emergency Communications and TT&C in a Denied Environment. Drones 2024, 8, 207. https://doi.org/10.3390/drones8050207
Ye L, Yang Y, Chen B, Pan D, Yang F, Cao S, Yan Y, Sun F. Chaff Cloud Integrated Communication and TT&C: An Integrated Solution for Single-Station Emergency Communications and TT&C in a Denied Environment. Drones. 2024; 8(5):207. https://doi.org/10.3390/drones8050207
Chicago/Turabian StyleYe, Lvyang, Yikang Yang, Binhu Chen, Deng Pan, Fan Yang, Shaojun Cao, Yangdong Yan, and Fayu Sun. 2024. "Chaff Cloud Integrated Communication and TT&C: An Integrated Solution for Single-Station Emergency Communications and TT&C in a Denied Environment" Drones 8, no. 5: 207. https://doi.org/10.3390/drones8050207
APA StyleYe, L., Yang, Y., Chen, B., Pan, D., Yang, F., Cao, S., Yan, Y., & Sun, F. (2024). Chaff Cloud Integrated Communication and TT&C: An Integrated Solution for Single-Station Emergency Communications and TT&C in a Denied Environment. Drones, 8(5), 207. https://doi.org/10.3390/drones8050207