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Automatic Modulation Identification Based on the Probability Density Function of Signal Phase

机译:基于信号相位概率密度函数的自动调制识别

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Automatic modulation recognition is advantageous for wireless communication systems employing adaptive modulation, software-defined radio, and cognitive radio. In this paper, we consider a phase based maximum likelihood (ML) approach for identifying the modulation format of a linearly modulated signal. Since the optimal ML scheme is computationally intensive, we propose two approximate ML alternatives, which can offer close-to-optimal performance with reduced complexity. We then present a general performance analysis for classification of K types of modulation constellations. For K;5, we obtain a set of upper bounds on Pcc, which provide a tradeoff between accuracy and complexity in calculating the Pcc. In addition, asymptotic behavior of phase based ML classification schemes is investigated.
机译:自动调制识别对于采用自适应调制,软件定义的无线电和认知无线电的无线通信系统是有利的。在本文中,我们考虑一种基于相位的最大似然(ML)方法来识别线性调制信号的调制格式。由于最佳ML方案的计算量很大,因此我们提出了两种近似的ML替代方案,它们可以提供接近最佳的性能,并且降低了复杂性。然后,我们提出了针对K类调制星座的分类的一般性能分析。对于K; 5,我们获得了Pcc的一组上限,在计算Pcc的准确性和复杂性之间进行了权衡。此外,研究了基于相位的ML分类方案的渐近行为。

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