Receiver Location Optimization for Heterogeneous S-Band Marine Transmitters in Passive Multistatic Radar Networks via NSGA-II
Abstract
1. Introduction
2. Materials and Methods
2.1. Analysis of Detection Performance of Non-Cooperative Multistatic Radar Systems
- (1)
- The detection probability of the target by the detection system within a specific direction and distance range, with a focus on analyzing the influence of environmental factors and disturbances on the detection effect of the target—by comprehensively considering these factors, the target detection capability of radars in complex environments can be evaluated more accurately.
- (2)
- The maximum detection distance that the detection system can achieve under the given false alarm rate and detection probability—this method starts from the perspective of radar layout and configuration to analyze the overall performance of the system. By setting reasonable false alarm rates and detection probability thresholds, it assesses the maximum detection distance that the radar can achieve while maintaining high performance.
2.1.1. Multistatic Radar Detection Range
2.1.2. Multistatic Radar Positioning Method
- (1)
- Positioning methods based on time information, which measure time information such as the Time Difference of Arrival (TDOA) and the distance between two bases through multistatic radar systems. In TDOA, the time difference of signal arrival is measured by multiple receiving stations, and the intersection point of the hyperbola is formed to determine the target position. This method requires high-precision time synchronization and is suitable for distributed radar systems. In the bistatic distance and method, the total distance from the transmitting station to the target and then to the receiving station (bistatic distance) is utilized. Multiple bistatic distances form an elliptical trajectory, and the target is located through the intersection of the ellipses [11].
- (2)
- Angle of Arrival (AOA) and other angular information-based positioning techniques use the intersection of geometric triangles to estimate the position of each receiving station, which measures the incident angle of the target signal. High-precision direction-finding devices, including phased array antennas, are necessary for this technique [12].
- (3)
- The Doppler frequency shift-based positioning technique uses data from several receiving stations along with the difference in Doppler frequency shift brought on by the target’s movement to determine the target’s position and speed. This method is mostly applicable to the dynamic target tracking of radar transmission [13].
- (4)
- By integrating TDOA with AOA and combining temporal information with angular information for hybrid positioning, the robustness of positioning is enhanced and geometric dilution errors are reduced [14].
- (1)
- Time error
- (2)
- Baseline error:
- (3)
- Azimuth error:
2.2. Non-Dominated Sorting Genetic Algorithm
2.2.1. The Core Principle of Non-Dominated Sorting Genetic Algorithm
2.2.2. Multistatic Radar Optimization
3. Results
3.1. Simulation Process
3.2. Analysis of Simulation Results
4. Discussion
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Serial Number | Radar Parameters | Measurement Value |
---|---|---|
1 | Width of beam | 1.8° |
2 | Scan rate | 30 rpm |
3 | Power output | 30 kw |
4 | Frequency | 3000 MHz |
5 | Gain of antenna | 28 dB |
6 | Wavelength | 0.0995 m |
7 | Bandwidth of noise | 5 MHz |
8 | Pulse repetition frequency | 1000 Hz |
Serial Number | Algorithm Parameters | Measurement Value |
---|---|---|
1 | Population size | 50 |
2 | Generations | 50 |
3 | Crossover rates | 0.8 |
4 | Migration rates | 0.2 |
5 | Bounds | Geometric center ± 25 km |
6 | Encoding | Real encoding |
7 | Penalty coefficient | 50 |
Method | Optimization Objectives | Constraints | Gains |
---|---|---|---|
Convex Relaxation [19] | GDOP minimization | Linear/Convex | ~15–20% GDOP reduction |
MOEA/D [20] | Coverage, Accuracy | Geometric | ~15–20% coverage improvement |
SPEA2 [21] | Detection probability, Positioning error | Energy, Geometric | ~10–16% error reduction |
Gradient-based [22] | CRLB minimization | Differentiable constraints | ~12–18% CRLB improvement |
Proposed NSGA-II | Coverage area, Localization accuracy | Bistatic angle, Baseline distance | 15.8% coverage gain, 8.9% error reduction |
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Li, X.; He, P.; Song, J.; Wang, Z. Receiver Location Optimization for Heterogeneous S-Band Marine Transmitters in Passive Multistatic Radar Networks via NSGA-II. Sensors 2025, 25, 5861. https://doi.org/10.3390/s25185861
Li X, He P, Song J, Wang Z. Receiver Location Optimization for Heterogeneous S-Band Marine Transmitters in Passive Multistatic Radar Networks via NSGA-II. Sensors. 2025; 25(18):5861. https://doi.org/10.3390/s25185861
Chicago/Turabian StyleLi, Xinpeng, Pengfei He, Jie Song, and Zhongxun Wang. 2025. "Receiver Location Optimization for Heterogeneous S-Band Marine Transmitters in Passive Multistatic Radar Networks via NSGA-II" Sensors 25, no. 18: 5861. https://doi.org/10.3390/s25185861
APA StyleLi, X., He, P., Song, J., & Wang, Z. (2025). Receiver Location Optimization for Heterogeneous S-Band Marine Transmitters in Passive Multistatic Radar Networks via NSGA-II. Sensors, 25(18), 5861. https://doi.org/10.3390/s25185861