Pulse‐level work state recognition of multifunction radar based on MC‐RSG

Author:

Qin Zijun1234ORCID,Ren Wenjuan12ORCID,Yang Zhanpeng12,Sun Xian1234

Affiliation:

1. Aerospace Information Research Institute Chinese Academy of Sciences Beijing China

2. Key Laboratory of Network Information System Technology(NIST) Aerospace Information Research Institute Chinese Academy of Sciences Beijing China

3. University of Chinese Academy of Sciences Beijing China

4. School of Electronic, Electrical and Communication Engineering University of the Chinese Academy of Sciences Beijing China

Abstract

AbstractAccurate work state recognition of multifunction radar (MFR) is crucial in electronic warfare, as it helps understand the enemy's intention and evaluate potential threats. A pulse‐level work state recognition method of MFR based on the residual block with spatial attention connected gated recurrent unit by features using metric coding and correlative embedding (MC‐RSG) is proposed. Metric coding is designed to generate the distance vector with time of arrival, and the correlative embedding is performed on the distance vector and raw data features to increase the feature information by extracting feature information associated with the previous and subsequent pulses in each feature sequence, respectively. Besides, we make use of the model called RSG containing the residual block with spatial attention connected gated recurrent unit to learn the features of pulse sequences and identify the radar work state label of each pulse. The experimental work shows that the method is robust and has achieved up to 97% recognition accuracy on the test dataset under ideal observation conditions and 5% higher than the comparison network in high noise observation conditions.

Publisher

Institution of Engineering and Technology (IET)

Reference33 articles.

1. De Martino A.: Introduction to Modern EW Systems 2nd ed.Electronic Warfare Library Artech House Boston(2018)

2. Network Radar Countermeasure Systems

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