Research on Beidou Navigation Interference Monitoring Technology Based on CFAR
DOI:
https://doi.org/10.54097/fcis.v3i1.6355Keywords:
Satellite navigation, Interference monitoring, MATLAB, CFAR, Constant false alarm detectionAbstract
Satellite monitoring stations are often affected by strong clutter and interference when monitoring targets. When ground receivers receive target signals, they also receive noise, clutter, and interference signals. These signals have randomness and signal strength changes from time to time. Therefore, constant false alarm detection technology is used to detect interference signals. CFAR detectors construct different system functions in different clutter environments and maintain a constant false alarm rate by adaptively modifying the detection threshold. A comparison of CFAR algorithms shows that CA_ The CFAR algorithm has excellent monitoring performance in uniform environments_ CFAR is suitable for multi target environments, GO_ CFAR performs well in clutter edge environments, SO_ CFAR performs well under various conditions.
Downloads
References
Huang Lei, Ma Wenjia. Research and Analysis of Satellite Navigation Interference Monitoring Technology [J]. China Integrated Circuit, 2021,30 (07): 12-16+49.
Fan Guangwei, Chao Lei, Liu Li. Satellite navigation interference monitoring technology [J]. Journal of Sichuan Military Industry, 2013,34 (06): 16-79.
Han Qiwei, Zeng Xianghua, Li Zhengrong, et al Development Status and Trend of Satellite Navigation Interference Monitoring Technology [J] Aerospace Electronic Countermeasures, 2009 (6): 4.
Lei Liang Research on interference monitoring technology for GNSS satellite navigation system [D]. Gansu: Lanzhou Jiaotong University, 2017.
Guo Xuqiang Research on Beidou Satellite Navigation Interference Detection and Identification Technology [D]. Beijing: Beijing Jiaotong University, 2018.
Huang Ting Research on Key Technologies of Suppressive Interference Monitoring for Satellite Navigation Systems [D]. Hunan: Hunan University, 2014.
Jiménez L P J, García F D A, Alvarado M C L, et al. A General CA-CFAR Performance Analysis for Weibull-Distributed Clutter Environments[J]. IEEE Geoscience and Remote Sensing Letters, 2022.
Sahal M Said Z A , Putra R Y , et al. Comparison of CFAR Methods on Multiple Targets in Sea Clutter Using SPX-Radar-Simulator[C]// 2020 International Seminar on Intelligent Technology and Its Applications (ISITIA). IEEE, 2020.
Smith M E, Varshney P K . Intelligent CFAR processor based on data variability[J]. IEEE Transactions on Aerospace & Electronic Systems, 2002, 36(3):837-847.
Hatem G M, Saeed T R , Sadah J . Comparative Study of Combined CFAR Algorithms for Non-Homogenous Environment [J]. Procedia Computer Science, 2018, 131:58-64.
Wang Z , He Z , He Q , et al. Adaptive CFAR Detectors for Mismatched Signal in Compound Gaussian Sea Clutter With Inverse Gaussian Texture[J]. IEEE Geoscience and Remote Sensing Letters, 2021, PP (99):1-5.


