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首页> 外文期刊>Systems Engineering and Electronics, Journal of >Digital modulation classification using multi-layer perceptron and time-frequency features
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Digital modulation classification using multi-layer perceptron and time-frequency features

机译:利用多层感知器和时频特征进行数字调制分类

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摘要

Considering that real communication signals corrupted by noise are generally nonstationary, and time-frequency distributions are especially suitable for the analysis of nonstationary signals, time-frequency distributions are introduced for the modulation classification of communication signals. The extracted time-frequency features have good classification information, and they are insensitive to signal to noise ratio (SNR) variation. According to good classification by the correct rate of a neural network classifier, a multilayer perceptronron (MLP) classifier with better generalization, as well as, addition of time-frequency features set for classifying six different modulation types has been proposed. Computer simulations show that the MLP classifier outperforms the decision-theoretic classifier at low SNRs, and the classification experiments for real MPSK signals verify engineering significance of the MLP classifier.
机译:考虑到被噪声破坏的真实通信信号通常是不稳定的,并且时频分布特别适合于非平稳信号的分析,因此引入时频分布以对通信信号进行调制分类。提取的时频特征具有良好的分类信息,并且对信噪比(SNR)变化不敏感。根据通过神经网络分类器正确率进行的良好分类,提出了一种具有更好泛化能力的多层感知器(MLP)分类器,并提出了用于对六种不同调制类型进行分类的时频特征集。计算机仿真表明,在低信噪比条件下,MLP分类器优于决策理论分类器,实际MPSK信号的分类实验证明了MLP分类器的工程意义。

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