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Automatic modulation classification of communication signals.

机译:通信信号的自动调制分类。

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摘要

The automatic modulation recognition (AMR) plays an important role in various civilian and military applications. Most of the existing AMR algorithms assume that the input signal is only of analog modulation or is only of digital modulation. In blind environments, however, it is impossible to know in advance if the received communication signal is analogue modulated or digitally modulated. Furthermore, it is noted that the applications of the currently existing AMR algorithms designed for handling both analog and digital communication signals are rather restricted in practice. Motivated by this, an AMR algorithm that is able to discriminate between analog communication signals and digital communication signals is developed in this dissertation. The proposed algorithm is able to recognize the concrete modulation type if the input is an analog communication signal and to estimate the number of modulation levels and the frequency deviation if the input is an exponentially modulated digital communication signal. For linearly modulated digital communication signals, the proposed classifier will classify them into one of several nonoverlapping sets of modulation types. In addition, in M-ary FSK (MFSK) signal classification, two classifiers have also been developed. These two classifiers are also capable of providing good estimate of the frequency deviation of a received MFSK signal.;For further classification of linearly modulated digital communication signals, it is often necessary to blindly equalize the received signal before performing modulation recognition. This doing generally requires knowing the carrier frequency and symbol rate of the input signal. For this purpose, a blind carrier frequency estimation algorithm and a blind symbol rate estimation algorithm have been developed. The carrier frequency estimator is based on the phases of the autocorrelation functions of the received signal. Unlike the cyclic correlation based estimators, it does not require the transmitted symbols being non-circularly distributed. The symbol rate estimator is based on digital communication signals' cyclostationarity related to the symbol rate. In order to adapt to the unknown symbol rate as well as the unknown excess bandwidth, the received signal is first filtered by using a bank of filters. Symbol rate candidates and their associated confident measurements are extracted from the fourth order cyclic moments of the filtered outputs, and the final estimate of symbol rate is made based on weighted majority voting.;A thorough evaluation of some well-known feature based AMR algorithms is also presented in this dissertation.
机译:自动调制识别(AMR)在各种民用和军事应用中起着重要作用。现有的大多数AMR算法都假定输入信号仅是模拟调制或仅是数字调制。然而,在盲环境中,不可能事先知道接收到的通信信号是模拟调制还是数字调制。此外,应当指出,设计上用于处理模拟和数字通信信号的当前存在的AMR算法的应用实际上受到限制。为此,本文提出了一种能够区分模拟通信信号和数字通信信号的AMR算法。如果输入是模拟通信信号,则所提出的算法能够识别出具体的调制类型,如果输入是指数调制的数字通信信号,则能够估计调制电平的数量和频率偏差。对于线性调制的数字通信信号,建议的分类器会将其分类为几种非重叠的调制类型集合之一。此外,在Mary FSK(MFSK)信号分类中,还开发了两个分类器。这两个分类器还能够很好地估计接收到的MFSK信号的频率偏差。为了进一步对线性调制数字通信信号进行分类,通常有必要在进行调制识别之前对接收信号进行盲均衡。这样做通常需要知道输入信号的载波频率和符号率。为此,已经开发了盲载波频率估计算法和盲符号率估计算法。载波频率估计器基于接收信号的自相关函数的相位。与基于循环相关的估计器不同,它不需要发送的符号非圆形分布。符号率估计器基于与符号率有关的数字通信信号的循环平稳性。为了适应未知的符号率以及未知的多余带宽,首先使用一组滤波器对接收到的信号进行滤波。从滤波后的输出的四阶循环矩中提取候选符号率及其相关的置信度,然后基于加权多数表决对符号率进行最终估计。对一些著名的基于特征的AMR算法进行全面评估本文还介绍了这一点。

著录项

  • 作者

    Yu, Zaihe.;

  • 作者单位

    New Jersey Institute of Technology.;

  • 授予单位 New Jersey Institute of Technology.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 231 p.
  • 总页数 231
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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