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Performance Analysis of Modulation Recognition in Multipath Fading Channels using Pattern Recognition Classifiers

机译:模式识别分类器多径衰落通道调制识别性能分析

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Implementation of adaptive modulation techniques based on the channel conditions play a key role in future wireless applications. Due to these adaptive techniques, the performance of the receiver depends on the ability of Blind Modulation Recognition (BMR). This paper investigates the performance of different Pattern Recognition Classifiers (PRC) in modulation recognition under multipath fading channels. Investigations carried out on various non-parametric supervised classifiers which include Decision Tree (DT), K-Nearest Neighbor (KNN), Support Vector Machine (SVM) and Ensemble Classifiers. To train the classifiers initially a set of 39 features is extracted and then a set of 11 noise robust features is chosen based on investigations through rough set theory. Performance of proposed PRC's is compared with other classifiers stated in literature to prove their superiority in modulation classification under fading conditions.
机译:基于信道条件的自适应调制技术的实现在未来的无线应用中发挥着关键作用。 由于这些自适应技术,接收器的性能取决于盲调制识别(BMR)的能力。 本文研究了多路径衰落通道下不同模式识别分类器(PRC)在调制识别中的性能。 在各种非参数监督分类器上进行的调查,包括决策树(DT),K最近邻(KNN),支持向量机(SVM)和集合分类器。 为了训练分类器,最初提取了一组39个功能,然后根据通过粗糙集理论的研究选择了一组11个噪声稳健功能。 拟议的PRC的表现与文献中所述的其他分类器进行比较,以证明在衰落条件下的调制分类中的优越性。

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