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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >Robustness of digitally modulated signal features against variation in HF noise model
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Robustness of digitally modulated signal features against variation in HF noise model

机译:抵抗高频噪声模型变化的数字调制信号特征的鲁棒性

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High frequency (HF) band has both military and civilian uses. It can be used either as a primary or backup communication link. Automatic modulation classification (AMC) is of an utmost importance in this band for the purpose of communications monitoring; e.g., signal intelligence and spectrum management. A widely used method for AMC is based on pattern recognition (PR). Such a method has two main steps: feature extraction and classification. The first step is generally performed in the presence of channel noise. Recent studies show that HF noise could be modeled by Gaussian or bi-kappa distributions, depending on day-time. Therefore, it is anticipated that change in noise model will have impact on features extraction stage. In this article, we investigate the robustness of well known digitally modulated signal features against variation in HF noise. Specifically, we consider temporal time domain (TTD) features, higher order cumulants (HOC), and wavelet based features. In addition, we propose new features extracted from the constellation diagram and evaluate their robustness against the change in noise model. This study is targeting 2PSK, 4PSK, 8PSK, 16QAM, 32QAM, and 64QAM modulations, as they are commonly used in HF communications.
机译:高频(HF)频段既有军事用途,也有民用用途。它可以用作主要或备用通信链接。在此频段中,出于通信监视的目的,自动调制分类(AMC)至关重要。例如信号情报和频谱管理。 AMC的一种广泛使用的方法是基于模式识别(PR)。这种方法有两个主要步骤:特征提取和分类。第一步通常在存在信道噪声的情况下执行。最近的研究表明,HF噪声可以根据白天的高斯或双kappa分布进行建模。因此,预计噪声模型的变化将对特征提取阶段产生影响。在本文中,我们研究了众所周知的数字调制信号特征对HF噪声变化的鲁棒性。具体来说,我们考虑时间时域(TTD)特征,高阶累积量(HOC)和基于小波的特征。此外,我们提出了从星座图中提取的新特征,并针对噪声模型的变化评估了它们的鲁棒性。这项研究针对2PSK,4PSK,8PSK,16QAM,32QAM和64QAM调制,因为它们通常在HF通信中使用。

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