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Quasi-hybrid likelihood modulation classification with nonlinear carrier frequency offsets estimation using antenna arrays

机译:利用天线阵列估计非线性载波频率偏移的拟混合似然调制分类

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摘要

A quasi-hybrid likelihood ratio test (qHLRT) -based algorithm is proposed for linear modulation classification, with unknown carrier frequency offsets (CFO). A blind symbol-rate-sampling nonlinear least-squares (NLS) CFO estimator, which has the advantage of simplicity relative to other estimator that requires over-sampling, is incorporated in the qHLRT algorithm. The classifier is simple to implement yet provides accurate enough classification. A receive antenna array is added to further enhance the classification performance. Although the method can be applied to different linear digital modulation, we concentrate in this paper on M-ary QAM. Simulation results presented for classification of M-ary QAM signals under AWGN channel show that the qHLRT classifier with NLS estimator offers an efficient way to combat the sensitivity to unknown CFO of the average likelihood ratio test (ALRT) algorithm, and the performance can be further improved by spatial diversify.
机译:基于准混合偏移比率测试(QHLRT)的算法,用于线性调制分类,具有未知的载波频率偏移(CFO)。盲符号率 - 采样非线性最小二乘(NLS)CFO估计器,其具有相对于需要过采样的其他估计器的简单性的优点,并入QHLRT算法。分类器易于实现,但提供了准确的分类。添加接收天线阵列以进一步增强分类性能。虽然该方法可以应用于不同的线性数字调制,但我们专注于M-Ary QAM的本文。 AWGN通道下的M-ARY QAM信号分类显示的仿真结果表明,具有NLS估计器的QHLRT分类器提供了对调制平均似然比测试(ALT)算法的UNKNOW CFO的敏感性的有效方法,并且性能可以进一步通过空间多样化改善。

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