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Low-complexity identifier for M-ary QAM signals

机译:M元QAM信号的低复杂度标识符

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Automatic modulation classifier that reports the modulation type of a received signal blindly has found many applications in adaptive communications, software defined radio and non-cooperative communications. However, the majority of existing techniques does not include the classification of QAM signals that have been widely used in modem standards and high capacity radio systems. This paper developed a low-complexity Haar wavelet transform based QAM classifier by taking into account the ease of computation of the Haar wavelet transform. The number of multiple steps in the Haar wavelet transform magnitude was first detected through finding the numbers of peaks in the histogram of the Haar wavelet transform magnitude. It is then used for recognizing the size of the constellation. Simulations proved that the developed QAM classifier has high identification accuracy. It achieves more than 94% correct classification when SNR is 8 dB and is practically inerrable when SNR is greater than 12 dB.
机译:盲目地报告接收信号的调制类型的自动调制分类器已经在自适应通信,软件定义的无线电和非合作通信中找到了许多应用。但是,大多数现有技术不包括已在调制解调器标准和高容量无线电系统中广泛使用的QAM信号的分类。考虑到Haar小波变换的计算简便性,本文开发了一种基于低复杂度Haar小波变换的QAM分类器。首先通过找到Haar小波变换幅度的直方图中的峰数,来检测Haar小波变换幅度的多个步数。然后将其用于识别星座图的大小。仿真证明,所开发的QAM分类器具有较高的识别精度。当SNR为8 dB时,它可以实现94%以上的正确分类,而当SNR大于12 dB时,它几乎是不能出错的。

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