Radio Signal Modulation Recognition Method Based on Hybrid Feature and Ensemble Learning: For Radar and Jamming Signals
Author:
Zhou Yu12, Cao Ronggang123, Zhang Anqi12, Li Ping12
Affiliation:
1. School of Electrical and Mechanical, Beijing Institute of Technology, Beijing 100081, China 2. Science and Technology on Electromechanical Dynamic Control Laboratory, Beijing Institute of Technology, Beijing 100081, China 3. Tangshan Research Institute, Beijing Institute of Technology, Tangshan 063611, China
Abstract
The detection performance of radar is significantly impaired by active jamming and mutual interference from other radars. This paper proposes a radio signal modulation recognition method to accurately recognize these signals, which helps in the jamming cancellation decisions. Based on the ensemble learning stacking algorithm improved by meta-feature enhancement, the proposed method adopts random forests, K-nearest neighbors, and Gaussian naive Bayes as the base-learners, with logistic regression serving as the meta-learner. It takes the multi-domain features of signals as input, which include time-domain features including fuzzy entropy, slope entropy, and Hjorth parameters; frequency-domain features, including spectral entropy; and fractal-domain features, including fractal dimension. The simulation experiment, including seven common signal types of radar and active jamming, was performed for the effectiveness validation and performance evaluation. Results proved the proposed method’s performance superiority to other classification methods, as well as its ability to meet the requirements of low signal-to-noise ratio and few-shot learning.
Funder
Special Funds of Military Equipment Development Department
Reference52 articles.
1. Cruz, H., Véstias, M.P., Monteiro, J.A.R., Neto, H.C., and Duarte, R.P. (2022). A Review of Synthetic-Aperture Radar Image Formation Algorithms and Implementations: A Computational Perspective. Remote Sens., 14. 2. Germann, U., Boscacci, M., Clementi, L., Gabella, M., Hering, A., Sartori, M., Sideris, I.V., and Calpini, B. (2022). Weather Radar in Complex Orography. Remote Sens., 14. 3. Mishra, A., and Li, C. (2021). A Review: Recent Progress in the Design and Development of Nonlinear Radars. Remote Sens., 13. 4. Amitrano, D., Martino, G.D., Guida, R., Iervolino, P., Iodice, A., Papa, M.N., Riccio, D., and Ruello, G. (2021). Earth Environmental Monitoring Using Multi-Temporal Synthetic Aperture Radar: A Critical Review of Selected Applications. Remote Sens., 13. 5. Adeli, S., Salehi, B., Mahdianpari, M., Quackenbush, L.J., Brisco, B., Tamiminia, H., and Shaw, S. (2020). Wetland Monitoring Using SAR Data: A Meta-Analysis and Comprehensive Review. Remote Sens., 12.
|
|