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Performance analysis and improvement of machine learning algorithms for automatic modulation recognition over Rayleigh fading channels

机译:瑞利衰落通道自动调制识别机器学习算法的性能分析与改进

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摘要

Abstract Automatic modulation recognition (AMR) is becoming more important because it is usable in advanced general-purpose communication such as, cognitive radio, as well as, specific applications. Therefore, developments should be made for widely used modulation types; machine learning techniques should be employed for this problem. In this study, we have evaluated performances of different machine learning algorithms for AMR. Specifically, we have evaluated performances of artificial neural networks, support vector machines, random forest tree, k-nearest neighbor, Hoeffding tree, logistic regression, Naive Bayes and Gradient Boosted Regression Tree methods to obtain comparative results. The most preferred feature extraction methods in the literature have been used for a set of modulation types for general-purpose communication. We have considered AWGN and Rayleigh channel models evaluating their recognition performance as well as having made recognition performance improvement over Rayleigh for low SNR values using the reception diversity technique. We have compared their recognition performance in the accuracy metric, and plotted them as well. Furthermore, we have served confusion matrices for some particular experiments.
机译:摘要自动调制识别(AMR)变得越来越重要,因为它可以在先进的通用通信中使用,例如认知无线电,以及特定应用。因此,应为广泛使用的调制类型进行开发;机器学习技术应该用于这个问题。在这项研究中,我们已经评估了AMR的不同机器学习算法的性能。具体而言,我们已经评估了人工神经网络的性能,支持向量机,随机林树,k最近邻居,霍夫丁树,逻辑回归,幼稚贝叶斯和梯度提升回归树方法,以获得比较结果。文献中最优选的特征提取方法已被用于一组调制类型以进行通用通信。我们已经考虑了AWGN和Rayleigh频道模型,评估其识别性能以及使用接收分集技术对瑞利的瑞利进行识别性能改进。我们在准确度指标中进行了识别性能,并绘制了它们。此外,我们为某些特定实验提供了混淆矩阵。

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