Ma, Runfa and Jin, Guodong and Song, Chen and Li, Yong and Wang, Yu and Zhu, Daiyin (2024) A Novel Method to Identify the Spaceborne SAR Operating Mode Based on Sidelobe Reconnaissance and Machine Learning. Remote Sensing, 16 (7). p. 1234. ISSN 2072-4292
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Abstract
Operating mode identification is an important prerequisite for precise deceptive jamming technology against synthetic aperture radar (SAR). In order to solve the problems of traditional spaceborne SAR operating mode identification, such as low identification accuracy, poor timeliness, and limitation to main lobe reconnaissance, an efficient identification method based on sidelobe reconnaissance and machine learning is proposed in this paper. It can identify four classical SAR operating modes, including stripmap, scan, spotlight and ground moving target indication (GMTI). Firstly, the signal models of different operating modes are presented from the perspective of sidelobe reconnaissance. By setting the parameters differently, such as the SAR trajectory height, antenna length, transmit/receive gain and loss, signal–noise ratio, and so on, the feature samples based on multiple parameters can be obtained, respectively. Then, based on the generated database of feature samples, the initialized neural network can be pre-trained. As a result, in practice, with the intercepted sidelobe signal and the pre-trained network, we can precisely infer the SAR operating mode before the arrival of the main lobe beam footprint. Finally, the effect of SNR and the jammer’s position on the identification accuracy is experimentally detailed in the simulation. The simulation results show that the identification accuracy can reach above 91%.
Item Type: | Article |
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Subjects: | Article Archives > Multidisciplinary |
Depositing User: | Unnamed user with email support@articlearchives.org |
Date Deposited: | 01 Apr 2024 05:41 |
Last Modified: | 01 Apr 2024 05:41 |
URI: | http://archive.paparesearch.co.in/id/eprint/2020 |