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Modulation classification of linearly modulated signals in slow flat fading channels

机译:慢平坦衰落信道中线性调制信号的调制分类

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In this study, the authors study the modulation classification of linearly modulated signals including amplitude shift keying (ASK), phase shift keying (PSK) and quadrature amplitude modulation (QAM) signals. The authors consider an unknown frequency non-selective slowly fading channel with an unknown variance additive white Gaussian noise. The authors treat this classification problem as a multi-hypotheses test which is invariant under the complex scale. In such a case, the authors objective is to find uniformly most powerful (UMP) test in the class of invariant decisions. However, the authors find out that the UMPI test does not exist; instead, they provide a most powerful invariant (MPI) PSK signal classifier for known signal to noise ratio and use it as the upper performance bound for any invariant classifier. The authros also propose a hybrid likelihood ratio test (HLRT) solution which can be employed for the classification of linearly modulated signals, interfamily and intra-family. The authors also explain the efficient implementation of these algorithms in some steps. In order to reduce the computational cost, the authors propose quasi-HLRT classifiers for PSK signals. Some simulation examples are provided that show the power of the proposed algorithms in the classification of linearly modulated signals.
机译:在这项研究中,作者研究了线性调制信号的调制分类,包括幅度移键控(ASK),相移键控(PSK)和正交幅度调制(QAM)信号。作者考虑了具有未知方差加性高斯白噪声的未知频率非选择性慢衰落信道。作者将此分类问题视为多假设检验,该假设在复杂范围内不变。在这种情况下,作者的目标是在不变决策类中找到统一最有效的(UMP)检验。但是,作者发现不存在UMPI测试;相反,它们为已知的信噪比提供了功能最强大的不变(MPI)PSK信号分类器,并将其用作任何不变分类器的性能上限。该权威机构还提出了一种混合似然比测试(HLRT)解决方案,该解决方案可用于对线性调制信号(家庭间和家庭内)进行分类。作者还通过一些步骤解释了这些算法的有效实现。为了降低计算成本,作者提出了针对PSK信号的准HLRT分类器。提供了一些仿真示例,这些示例显示了所提出算法在线性调制信号分类中的功能。

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