期刊文献+

基于信号特征空间的TDCS干扰分类识别 被引量:13

Jamming classification and recognition in transform domain communication system based on signal feature space
下载PDF
导出
摘要 针对变换域通信系统中干扰信号的分类识别问题,提出了一种基于信号特征空间的支持向量机(signal feature space-support vector machine,SF-SVM)干扰分类算法。首先,基于干扰信号模型和信号空间理论对干扰信号进行特征提取,并建立信号特征空间,进而针对二分类和多分类问题提出了SF-SVM分类算法,设计了干扰信号的多分类识别器。仿真结果表明,与干扰信号的传统分类算法相比,SF-SVM不仅提高了分类精度,而且缩短了训练时间;设计的多分类识别器在信噪比达到8dB时,对6种干扰信号识别性能及对变换域通信系统性能都有所提升。 To solve the problem of jamming signals classification and recognition in transform domain communication system(TDCS),ajamming classification and recognition algorithm based on the signal feature space and support vector machine(SF-SVM)is proposed.Firstly,the signal feature space is built by the jamming signals feature extraction based on the jamming signals models and signal space theory.In order to solve the problems for binary classification and multi-class classification,the classification and recognition SF-SVM algorithm is proposed.Simulation results demonstrate that SF-SVM is superior to traditional classification algorithms in both classification accuracy and training speed,and they indicate the superiority for the new designed classifier and the improvement for TDCS performance when the signal to noise ratio(SNR)is above 8dB.
出处 《系统工程与电子技术》 EI CSCD 北大核心 2017年第9期1950-1958,共9页 Systems Engineering and Electronics
基金 国家自然科学基金(61401499) 新技术研究高校合作项目(KX162600022)资助课题
关键词 变换域通信系统 干扰分类识别 信号特征空间 支持向量机 transform domain communication system(TDCS) jamming classification and recognition signal feature space support vector machine(SVM)
  • 相关文献

参考文献6

二级参考文献151

  • 1赵艳丽,王雪松,王国玉,刘义和,罗佳.多假目标欺骗干扰下组网雷达跟踪技术[J].电子学报,2007,35(3):454-458. 被引量:72
  • 2王娜,李霞.基于类加权的双ν支持向量机[J].电子与信息学报,2007,29(4):859-862. 被引量:4
  • 3周文辉,李琳,陈国海.一种有效的RGPO干扰鉴别算法及性能分析[J].电子学报,2007,35(6):1165-1169. 被引量:16
  • 4边肇祺 张学工 等.模式识别[M].北京:清华大学出版社,2001..
  • 5何友,修建娟,关欣.雷达数据处理及应用[M].3版.北京:电子工业出版社,2013:257-259.
  • 6Kuba M,Ronge K,Weigel R. Development and implementation of a feature-based automatic classification algorithm for communication standards in the 868 MHz band[A].2012.3104-3109.
  • 7Ebrahimzadeh A,Ghazalian R. Blind digital modulation classification in software radio using the optimized classifier and feature subset selection[J].{H}Engineering applications of artificial intelligence,2011,(1):50-59.
  • 8Duda R O,Hart P E,Stork D G. Pattern classification[M].Beijing:China Machine Press,2003.
  • 9Dubey H C,Tiwari A K. Blind modulation classification based on MLP and PNN[A].2012.1-6.
  • 10Hassan K,Dayoub I,Hamouda W. Automatic modulation recognition using wavelet transform and neural network[A].2009.234-238.

共引文献35

同被引文献55

引证文献13

二级引证文献43

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部