4.4 Article

An intelligent radar signal classification and deinterleaving method with unified residual recurrent neural network

期刊

IET RADAR SONAR AND NAVIGATION
卷 17, 期 8, 页码 1259-1276

出版社

WILEY
DOI: 10.1049/rsn2.12417

关键词

radar emitter recognition; radar signal processing; radar target recognition

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The accuracy of radar emitter signal sorting deteriorates due to the high flexibility and complexity of modern radar pulse streams and the density of crowded electromagnetic environment. Conventional methods usually fail to achieve acceptable accuracy and lack stable performance. To address this problem, a machine learning architecture called Unified Residual Recurrent Neural Network (URRNN) is proposed. URRNN combines and modifies residual neural network and recurrent neural network to enhance the model performance in both classification and deinterleaving tasks.
The accuracy of radar emitter signal sorting nowadays deteriorates due to the high flexibility and complexity of modern radar pulse streams and the density of crowded electromagnetic environment. In modern radar signal sorting based on pulse repetition interval, conventional methods usually fail to achieve acceptable accuracy and lack stable performance for two main reasons: (1) Conventional methods require a large number of pulses in the stream, which is not practical in many applications. (2) These methods are sensitive to pulse loss and random noise pulses. These two reasons are the main problem that is addressed in this paper. Our proposed model is a machine learning architecture called Unified Residual Recurrent Neural Network (URRNN). In this architecture, residual neural network and recurrent neural network are combined and modified to alleviate the forementioned shortcomings of traditional approaches and enhance the model performance in both classification and deinterleaving tasks. This aim is achieved due to the fact that URRNN extracts both spatial and temporal features, which means more information about processed stream that is exploited to enhance model performance. Three different architectural combinations of URRNN, which show high accuracy and reasonable processing time, are built and trained. The structural and functional description are provided for each architecture. Simulation demonstrates high accuracy and reliable performance of the proposed methods in different circumstances. The results are compared with the results obtained by other conventional machine learning techniques.

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