Two-Dimensional Jamming Recognition Algorithm Based on the Sevcik Fractal Dimension and Energy Concentration Property for UAV Frequency Hopping Systems
Abstract
:1. Introduction
2. Jamming Signal Model
2.1. BNJ
2.2. NNJ
2.3. STJ
2.4. MTJ
2.5. PJ
2.6. LFM
3. Feature Extraction
3.1. Sevcik Fractal Dimension in Frequency
3.2. Degree of Energy Concentration in Fractional Fourier Transform Domain
4. Jamming Recognition Algorithm Based on Two-Dimensional Features
4.1. SVM Classifier Design
- (1)
- Direct method: This method is directly modified on the objective function, and the parameter solution of multiple classification surfaces is merged into an optimization problem. Then, the optimization problem is solved “one-time” to achieve multi-class classification. This method seems simple, but its computational complexity is relatively high, and it is difficult to implement. Thus, it is only suitable for small problems.
- (2)
- Indirect method: This method is used to realize the construction of multiple classifiers by combining multiple two classifiers. The more common methods now include the one-to-one method, the one-to-many method, and BT-SVM.
4.2. Jamming Recognition Process
- The received signal takes the DFT and calculates its normalized spectrum. Equations (13), (16), and (17) are used to obtain the SFDF, which is used as a characteristic parameter of different jamming patterns.
- Equations (19) and (20) are used to calculate , which is used as another characteristic parameter of different jamming patterns.
- Two-dimensional feature vectors are constructed with different jamming patterns.
- The two-dimensional feature vector with different jamming patterns is used as a sample to establish the SVM classifier, and then the BT-SVM classifier is used for classification.
5. Simulation
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Jamming Types | Jamming Parameters | |
---|---|---|
NNJ | Center frequency | 2.5 MHz |
Bandwidth | 10% (FH bandwidth) | |
BNJ | Bandwidth | 100% (FH bandwidth) |
STJ | Jamming frequency | 5 MHz |
MTJ | Jamming frequency | {3, 4, 5, 6, 7, 8, 9, 10} MHz |
PJ | Duty cycle | 10% |
LFM | Frequency sweep range | 2–8 MHz |
Windows Version | System | ||
---|---|---|---|
Windows10 | Processor | Installed memory (RAM) | System type |
Intel Core i5-1035G1 CPU | 16.0 (GB) | 64-bit operating system |
Algorithm | Feature Extraction Time |
---|---|
Proposed algorithm | 73.538922 s |
Algorithm in [19] | 107.171106 s |
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Xue, R.; Liu, J.; Tang, H. Two-Dimensional Jamming Recognition Algorithm Based on the Sevcik Fractal Dimension and Energy Concentration Property for UAV Frequency Hopping Systems. Information 2020, 11, 520. https://doi.org/10.3390/info11110520
Xue R, Liu J, Tang H. Two-Dimensional Jamming Recognition Algorithm Based on the Sevcik Fractal Dimension and Energy Concentration Property for UAV Frequency Hopping Systems. Information. 2020; 11(11):520. https://doi.org/10.3390/info11110520
Chicago/Turabian StyleXue, Rui, Jing Liu, and Huaiyu Tang. 2020. "Two-Dimensional Jamming Recognition Algorithm Based on the Sevcik Fractal Dimension and Energy Concentration Property for UAV Frequency Hopping Systems" Information 11, no. 11: 520. https://doi.org/10.3390/info11110520
APA StyleXue, R., Liu, J., & Tang, H. (2020). Two-Dimensional Jamming Recognition Algorithm Based on the Sevcik Fractal Dimension and Energy Concentration Property for UAV Frequency Hopping Systems. Information, 11(11), 520. https://doi.org/10.3390/info11110520