基于細微特征提取的輻射源個體識別方法研究
[Abstract]:Individual recognition of emitter based on signal fine feature analysis originates from the field of non-cooperative communication. The so-called fine characteristic refers to the signal individual or the device individual because of the transmitter equipment or the transmission channel influence, causes the receiver to receive the signal with the ability to act as the individual identification difference. Different from the traditional emitter recognition theory, the purpose of traditional emitter signal detection and recognition is to obtain the transmitted communication information, and the purpose of emitter individual identification is to pass a certain signal processing process. The subtle differences hidden in the communication information are extracted to identify and judge the relative information of the other side's emitter. How to select effective signal processing methods to analyze and extract these subtle features in real time and accurately is a hot topic in recent years. Aiming at this problem, the emitter signal based on fine feature analysis and the method of device individual identification are studied in this paper. The main contents of this paper are as follows: the system model of individual identification of emitter is established, the mechanism of fine feature generation is analyzed, and the typical methods of extracting subtle feature of radiation source are studied. It provides a good theoretical basis for the further study of the new method of fine feature analysis. Emitter recognition method based on Entropy feature extraction. Because different information entropy can describe the difference of signal from different angles, a recognition model based on multidimensional information entropy model is proposed in this paper. In signal recognition, the recognition performance based on Euclidean distance, artificial intelligence classifier and the proposed feature weighting method is compared. The emitter recognition method based on parameter estimation is studied. Based on the idea of fine feature analysis, the individual features of different parameter signals are extracted, and the recognition performance of the extracted features in unstable SNR environment is verified. Then the feature nonlinear fitting method is used to identify the individual of LFM signal with different parameters. The recognition method of emitter based on nonlinear characteristics of oscillator is studied. Because of the difference of the nonlinear characteristics of the devices, different communication devices will make the transmitted signals contain the individual difference information of the devices. A nonlinear analysis method based on local dispersion difference feature extraction is proposed and its recognition performance is studied.
【學位授予單位】:哈爾濱工程大學
【學位級別】:碩士
【學位授予年份】:2014
【分類號】:TN97
【參考文獻】
相關期刊論文 前10條
1 彭健航;;通信輻射源個體特征提取技術[J];電子測試;2012年07期
2 胡為東;;相位噪聲的時域測量方法[J];國外電子測量技術;2011年09期
3 柴恒;孫毓富;;基于無意調制特征的雷達個體識別[J];艦船電子對抗;2011年04期
4 黃桂根;傅有光;武月婷;;一種改進的基于DTOA統(tǒng)計的信號分選算法[J];數(shù)據(jù)采集與處理;2011年04期
5 周斌;王秀敏;果然;李紹濱;毛興鵬;;輻射源個體特征提取技術綜述[J];電訊技術;2011年06期
6 白旭平;張鋒;劉瓊俐;胡鳳霞;;基于時頻表示的LFM信號參數(shù)估計方法[J];現(xiàn)代電子技術;2010年20期
7 余志斌;陳春霞;金煒東;;基于融合熵特征的輻射源信號識別[J];現(xiàn)代雷達;2010年01期
8 李林;姬紅兵;;基于模糊函數(shù)的雷達輻射源個體識別[J];電子與信息學報;2009年11期
9 李越雷;張?zhí)祢U;代少升;虞路勤;蔣世文;;基于稀疏分解的微弱多分量LFM信號參數(shù)估計[J];數(shù)據(jù)采集與處理;2009年S1期
10 許丹;姜文利;周一宇;;基于子空間比較的寬帶信號下輻射源功放“指紋”分類方法[J];電子學報;2009年08期
相關博士學位論文 前3條
1 陸滿君;通信輻射源個體識別與參數(shù)估計[D];哈爾濱工程大學;2010年
2 柴娟芳;復雜環(huán)境下雷達信號的分選識別技術研究[D];哈爾濱工程大學;2009年
3 許丹;輻射源指紋機理及識別方法研究[D];國防科學技術大學;2008年
相關碩士學位論文 前1條
1 蘭鉑;FSK和PSK信號特征研究[D];北京郵電大學;2011年
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