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优化的神经网络分类器在自动调制识别中的应用 被引量:3

An Application of Optimized Neural Network Classifier in Automatic Modulation Recognition
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摘要 对截获到的信号调制类型进行自动识别是非协作通信中的关键技术之一,在民用及军用领域中有着重要的应用前景。其中,分类器的设计对调制类型识别结果和效率起到了决定性的作用。各种方法中,采用BP神经网络构造的分类器能获得较好的识别效果,但是传统BP神经网络存在收敛速度慢、容易陷入局部最小值、网络对初始值敏感等问题。论文采用遗传算法优化BP神经网络的权值和阀值,可以避免神经网络利用梯度下降法陷入局部最小值的缺陷,从而提高BP网络的学习能力。论文对高斯白噪声信道中6种常用的数字通信信号进行了判定识别。仿真结果表明,用遗传算法优化的神经网络分类器能有效地提高调制信号识别率。 Detected signal's automatic modulation classification(AMC) is one of the key technologies in non-cooperative communication. It has extensive application prospects in civilian and military fields. The design of classifier plays a decisive role in recognition results and the efficiency of modulated schemes. The classifier based on back-propagation(BP) neural network is better than the existing methods of AMC. However, there are some entrapment at a local optimum, slow convergence rate and sensitive to initial values for the traditional BP neural network. This paper introduces genetic algorithm to optimize the weight and threshold values of the BP neural network. The method can overcome the weakness of gradient-based BP algorithm which is easy to fall into local minimum. And moreover this method can enhance the learning ability of BP neural network. The paper identifies six digital signals in an additive white Gaussian noise channel. The simulation and experimental results show that the optimized neural network classifier designed with genetic algorithm can perform a higher recognition rate of modulation type.
作者 程莉
出处 《工程研究(跨学科视野中的工程)》 CSCD 2013年第3期272-278,共7页 JOURNAL OF ENGINEERING STUDIES
关键词 遗传算法 BP神经网络 自动调制识别 参数优化 genetic algorithm BP neural network automatic modulation identification parameter optimizations
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参考文献16

  • 1XU J L, Su W, Zhou M C. Software-defined radio equipped with rapid modulation recognition[J]. IEEE Tr- ansactions on vehicular technology, 2010, 59: 1659-1667.
  • 2Xu J L, Su W, Zhou M C. Likelihood-ratio approaches to automatic modulation classification[J]. IEEE Transactions on Systems, Man, and Cybernetics, Part C: Applications and Reviews, 2011, 41: 455-469.
  • 3Hameed F, Dobre O A, Popescu D C. On the likeli- hood-based approach to modulation classification[J]. IEEE Transactions on Wireless Communications, 2009, 8: 5884-5892.
  • 4Puenqnim A, Thomas N, Tourneret J Y, et al. Classifica- tion of linear and non-linear modulations using the Baum-Welch algorithm and MCMC methods[J]. Signal Processing, 2010, 90: 3242-3255.
  • 5Avci E. Selecting of the optimal feature subset and kernel parameters in digital modulation classification by using hybrid genetic algorithm-support vector machines: HGASVM[J]. Expert Systems with Applications, 2009, 36 1391-1402.
  • 6Avci D. An intelligent system using adaptive wavelet en- tropy for automatic analog modulation identification[J]. Digital Signal Processing, 2010, 20:1196-1206.
  • 7Aslam M W, Zhu Z C, Nandi A K. Automatic modulation classification using combination of genetic programming and KNN[J]. IEEE Transactions on Wireless Communica- tions,2012, 11: 2742-2750.
  • 8Sengur A. Multiclass least-squares support vector ma- chines for analog modulation classification[J]. Expert Systems with Applications, 2009, 36: 6681-6685.
  • 9Ebrahimzadeh A, Ghazalian R. Blind digital modulation classification in software radio using the optimized classi- fier and feature subset selection[J]. Engineering Applica- tion of Artificial Intelligence, 201 l, 24: 50-59.
  • 10Nandi A K, Azzouz E E. Algorithms for automatic modu- lation recognition of communication signals[J]. IEEE Transactions on communications, 1998, 46:431-436.

二级参考文献35

  • 1许士敏,陈鹏举.频谱混叠通信信号分离方法[J].航天电子对抗,2004,33(5):53-55. 被引量:10
  • 2蒋云霄,杨俊安,钟子发,沈辉.基于Donoho模型和高阶统计理论的小波消噪算法研究及其应用[J].电路与系统学报,2007,12(1):11-14. 被引量:5
  • 3周开利,康耀红.神经网络模型及其MATLAB仿真程序设计[M].清华大学出版社,2004.11.
  • 4Nandi A K, Azzouz E E. Automatic analogue modulation recognitions[J].IEEE Signal Processing, 1995, 46(2) :211 - 222.
  • 5Nandi A K, Azzouz E E. Automatic identification of digital modulations[J].IEEE Signal Processing, 1995, 47(1) : 55 - 69.
  • 6Nandi A K, Azzouz E E. Algorithms for automatic modulation recognition of communication signals[J].IEEE Trans. on Communication, 1998, 46(4) :431 - 436.
  • 7Wong M L D, Nandi A K. Automatic digital modulation recognition using artificial neural network and genetic algorithm[J].IEEE Signal Processing, 2004,84 : 351 - 365.
  • 8Wu Juanping, Han Yingzheng, Zhang Jinmei, et al. Automatic modulation recognition of digital communication signals using statistical parameters methods[C]// International Conference on Communications, Circuits and Systems, 2007 : 697 - 700.
  • 9高玉龙,张中兆.基于联合特征参数和改进概率神经网络的调制方式识别[C]//Proc. of the 6th World Congress on Intelligent Control and Automation, 2006, (6):21 - 23.
  • 10Chan Y T, Gadbois L G. Identification of the modulation type of a signal[J].Signal Processing, 1989,16 : 149 - 154.

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