A Method for Analyzing the Impact of Intra-System and Inter-System Interference on DME Based on Queueing Theory
Abstract
:1. Introduction
2. Overview of DME and JTIDS
2.1. First Principles and Baseband Signal of DME
2.2. First Principles and Baseband Signal of JTIDS
2.3. Frequency Distribution of DME and JTIDS
3. Analysis Method of iNterference on DME
3.1. Metric of Interference on DME
3.2. Calculation for P(I)
3.2.1. Calculation for
3.2.2. Calculation for
- When n is small: Since PRF and duty cycle of DME interrogation are all small, the collision probability of interrogations is small accordingly. It can be assumed that dead time is a part of pulse duration, thus, the desired pulse duration equals plus . All the interrogations are assumed to be independently at the same time, according to [10], the probability of DME interrogations not interfered in search mode is given as follows:Similarly, the probability of DME interrogations not interfered in track mode is given as follows:Combining Equations (5)–(7), the average probability of multi-path DME interrogations not interfered can be obtained as follows:Event M and event J are assumed to be statistically independent, that is to say, inter-system and intra-system interference are independent of each other. Substituting Equations (4) and (8) into (3), we obtainThe collision probability between two or more DME interrogations will increase when n is large. The result based on Equation (7) is smaller than actual value. Moreover, intra-system interference is correlative with inter-system interference, the error using Equation (9) is large if n is large. Equation (9) can be apply to a small quantity of aircraft only.
- When n is large: We can adopt simplifying assumption that these interrogations are randomly distributed with respect to time forming a Poisson process [5], considering that interrogations will be abandoned if its arrival time overlaps with dead time generated by front interrogation, and hence the receiving process of DME interrogations can be regarded as a quasi M/D/1/0 theory model. In such a birth-and-death model M/D/1/0, the interrogation pulses are customers, transponder is service facility, “M” represents that the arrivals occur from an infinite source in accordance with a Poisson process with parameter defined in Figure 4—that is, the inter-arrival times are independent exponential with mean 1/, “D” represents service times that are deterministic and equivalent to dead time plus , “1” represents single server, and “0” means that customer will depart when its arrival time overlaps with service time [16]. Service rate is given as follows:According to [11], the probability of customers serviced Q can be calculated as follows:Substituting Equations (4) and (12) into (3) gives:
3.3. Calculation for P(D)
3.4. Calculation for P(R)
4. Results and Discussion
4.1. The Result of Re Based on Different Methods
- , .
- 95% of aircraft are in track mode and others are in search mode.
- DME operates in mode X, s and s.
- PRF of identification pulse: .
- Inter-system interference is absent.
- Simulation time: 1 s.
- Number of aircraft: variation from 5 to 600 every 3.
- Number of Monte Carlo simulation: 1000.
4.2. Analysis of JTIDS Interference and DME Mode on RE
- When DME operates in mode Y, s, s and s.
- JTIDS signal duration: ms.
- Number of aircraft: variation from 5 to 400 every 15.
- means that there is no JTIDS interference, means that JTIDS is in present.
4.3. Impact of Reply Rate and RE on DME Capacity
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
DME | Distance Measuring Equipment |
JTIDS | Joint Tactical Information Distribution System |
RE | Reply Efficiency |
ICAO | International Civil Aviation Organization |
ACSS | Airborne Collision Avoidance System |
IFF | Identification Friend or Foe |
ATCRBS | Air Traffic Control Radar Beacon System |
EMC | Electromagnetic Compatibility |
SNR | signal to noise ratio |
BER | Bit Error Rate |
PRF | Pulse Repetition Frequency |
PPCM | Periodic Pulse Collision Method |
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Signal Type | Operation Mode | Pulse Duration (s) | Pulse Interval (s) | Signal Duration (s) | PRF(Hz) | |
---|---|---|---|---|---|---|
Tracking | Searching | |||||
Interrogation | X | 3.5 | 12 | 15.5 | 10–30 | 40–150 |
Y | 36 | 39.5 | ||||
Reply | X | 12 | 15.5 | 700–2700 | ||
Y | 30 | 33.5 |
Reply Rate (ppps) | JTIDS | Mode | Number of Aircraft | |
---|---|---|---|---|
2700 | Yes | X | 71.4% | 159 |
Y | 52.5% | 216 | ||
No | X | 75.3% | 154 | |
Y | 55.3% | 210 | ||
2848 | Yes | X | 70% | 171 |
1748 | Y | 100 | ||
3214 | No | X | 200 | |
1964 | No | Y | 117 |
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Jiang, G.; Fan, Y. A Method for Analyzing the Impact of Intra-System and Inter-System Interference on DME Based on Queueing Theory. Sensors 2019, 19, 348. https://doi.org/10.3390/s19020348
Jiang G, Fan Y. A Method for Analyzing the Impact of Intra-System and Inter-System Interference on DME Based on Queueing Theory. Sensors. 2019; 19(2):348. https://doi.org/10.3390/s19020348
Chicago/Turabian StyleJiang, Guofeng, and Yangyu Fan. 2019. "A Method for Analyzing the Impact of Intra-System and Inter-System Interference on DME Based on Queueing Theory" Sensors 19, no. 2: 348. https://doi.org/10.3390/s19020348
APA StyleJiang, G., & Fan, Y. (2019). A Method for Analyzing the Impact of Intra-System and Inter-System Interference on DME Based on Queueing Theory. Sensors, 19(2), 348. https://doi.org/10.3390/s19020348