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基于脉冲神经网络的雷达辐射源调制类型识别
引用本文:李 伟,朱卫纲,朱霸坤.基于脉冲神经网络的雷达辐射源调制类型识别[J].电讯技术,2022,62(1):11-16.
作者姓名:李 伟  朱卫纲  朱霸坤
作者单位:航天工程大学 研究生院,北京 101416;航天工程大学 电子与光学工程系,北京 101416
基金项目:电子信息系统复杂电磁环境效应(CEMEE) 国家重点实验室项目(2020Z0203B)
摘    要:面对日益复杂的电磁环境和层出不穷的新体制雷达,基于人工方式提取雷达辐射源特征难以满足现代认知电子战的需求.为提升雷达辐射源识别的智能化水平,提出一种新的基于脉冲神经网络(Spiking Neuron Network,SNN)进行雷达辐射源调制类型识别的算法.首先利用时频分析的方法,将5种常见雷达时域信号转换为二维灰度图...

关 键 词:认知电子战  辐射源识别  调制类型识别  脉冲神经网络  Tempotron神经元

Modulation pattern recognition of radar emitter based on spiking neural network
LI Wei,ZHU Weigang,ZHU Bakun.Modulation pattern recognition of radar emitter based on spiking neural network[J].Telecommunication Engineering,2022,62(1):11-16.
Authors:LI Wei  ZHU Weigang  ZHU Bakun
Affiliation:(Graduate School,Space Engineering University,Beijing 101416,China;Department of Electronic and Optical Engineering,Space Engineering University,Beijing 101416,China)
Abstract:In the face of increasingly complex electromagnetic environment and endless emergence of new radar systems,it is difficult to meet the needs of modern cognitive electronic warfare by extracting the characteristics of radar radiation sources based on artificial methods.In order to improve the intelligent level of radar radiation source identification,a new algorithm based on Spiking Neuron Network(SNN) is proposed for radiation source identification.First,the method of time-frequency analysis is used to convert five common radar time-domain signals into two-dimensional grayscale images,and a Gaussian tuning curve encoder is used to convert the input data into spike firing moments,and then they are passed into a SNN composed of Tempotron to be recognized.The simulation experiment results show that the SNN has good detection accuracy and low power consumption,which verifies the effectiveness of the method.
Keywords:cognitive electronic warfare  source of radiation identification  modulation pattern recognition  spiking neuron network  Tempotron neuron
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