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Neural Network Classification of SDR Signal Modulation

机译:SDR信号调制神经网络分类

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摘要

With the rising popularity of Software Denned Radios (SDR), there is a strong demand for automatic detection of the modulation type and signal parameters. Automatic modulation classification is an approach to identify the modulation type and its parameters such as the carrier frequency or symbol rate. In electronic warfare, it enables real-time signal interception and processing. In civil applications, it can be used, e.g., by the amateur radio operators to automatically set the transceiver to the appropriate modulation and communication protocol. This paper presents a modulation classification driven by a neural network. A set of signal features are provided as an input of the neural network. The paper discusses the relevance of different signal features and its impact on the success rate of the neural network classification. The proposed approach is tested on both artificial and real samples captured by the SDR.
机译:随着软件普及无线电(SDR)的普及,强烈要求自动检测调制类型和信号参数。自动调制分类是识别调制类型及其参数的方法,例如载波频率或符号率。在电子战中,它可以实现实时信号拦截和处理。在民用应用中,可以使用,例如,由业余无线电运营商自动将收发器设置为适当的调制和通信协议。本文提出了由神经网络驱动的调制分类。提供一组信号特征作为神经网络的输入。本文讨论了不同信号特征的相关性及其对神经网络分类成功率的影响。所提出的方法是在SDR捕获的人工和真实样本上进行测试。

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