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采用支持向量机的水声通信信号调制识别方法; Modulation Recognition Method of Underwater Acoustic Communication Signals Using SVM
江伟华 ; 曹秀岭 ; 童峰
2015-07-28
关键词水声通信信号 谱特征 调制识别 最小二乘支持向量机 underwater acoustic digital modulated signal spectrum feature modulation recognition least-squares support vector machine
英文摘要由于水声信道中随机、复杂的时、频扩展特性的影响,非合作水声通信信号调制方式的自动识别极具挑战性.考虑到载频等调制参数提取较为困难,本研究基于信号功率谱、平方谱进行无需先验知识的水声通信信号特征参数提取,设计了一种基于多类别最小二乘支持向量机(lS-SVM)的水声通信信号调制方式分类器,该分类器具有泛化性能好、小样本学习能力强的特点,同时可避免传统神经网络分类器存在的过学习、欠学习以及局部最小化等问题.对海上实录信号数据的识别实验结果表明,本方法具有优于神经网络分类器的识别性能和信道稳健性.; Due to random,complex time and frequency spread characteristics of underwater acoustic channels,modulation classification of the non-cooperation underwater acoustic communication signal is extremely challenging.Considering the difficulty in prior knowledge extraction(such as carrier frequency),the spectra and square spectrum features that do not need any prior knowledge are adopted to incorporate with the least-squares support vector machine(LS-SVM)classifier to derive a recognition method for underwater acoustic communication modulation classification.The proposed method is capable of avoiding the drawbacks of the artificial neural network(ANN)classifier such as overfitting,underfitting and local minimum.The experimental modulation classification results obtained with field signals at 4different underwater acoustic channels show that the performance and the channel robustness of the proposed modulation recognition algorithm are superior to that of the ANN classifier.; 国家自然科学基金(11274259)
语种zh_CN
内容类型期刊论文
源URL[http://dspace.xmu.edu.cn/handle/2288/104801]  
专题海洋环境-已发表论文
推荐引用方式
GB/T 7714
江伟华,曹秀岭,童峰. 采用支持向量机的水声通信信号调制识别方法, Modulation Recognition Method of Underwater Acoustic Communication Signals Using SVM[J],2015.
APA 江伟华,曹秀岭,&童峰.(2015).采用支持向量机的水声通信信号调制识别方法..
MLA 江伟华,et al."采用支持向量机的水声通信信号调制识别方法".(2015).
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