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Automatic modulation classification with genetic backpropagation neural network

机译:遗传反向传播神经网络的自动调制分类

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Automatic modulation classification of digital signals plays an important role in civilian and military applications. The challenge focuses on the efficiency under low signal noise ratio (SNR) and compatibility with new types of digital modulations. In this paper, we propose a high-efficiency classification system for both the classical digital modulations and the binary offset carrier (BOC) and its derivative modulations. In detail, the classical digital modulations are ASK, PSK and FSK, and the new kind of signals are BOC, composite binary offset carrier (CBOC) and alternative binary offset carrier (AltBOC). Our system consists of two parts: feature extraction and classification algorithm. For feature extraction, we extract a suitable combination of signal statistical characteristics and instantaneous characteristics to provide better ability to distinguish different modulation signals. First, we preprocess the signal using the Hilbert transform to get the analytic expression. Then, four instantaneous parameters and four statistical parameters are used to represent the features of signal based on the expression. For classification algorithm, we investigate a genetic backpropagation neural network (BPNN). Genetic algorithm (GA) is used to design the architecture of BPNN to find the best value for the number of hidden layers and the number of neurons in each layer. This approach eliminates the human factor and improves the efficiency and accuracy of network. The simulation results demonstrate that our system shows high classification accuracy and high speed for the researched digital modulation signals at low SNR of 3dB.
机译:数字信号自动调制分类在民用和军事应用中起着重要作用。该挑战重点介绍了低信噪比(SNR)下的效率,以及与新型数字调制的兼容性。在本文中,我们提出了一种高效的分类系统,用于经典数字调制和二进制偏移载波(BOC)及其衍生调制。详细地,典型的数字调制是询问,PSK和FSK,新类型的信号是BOC,复合二进制偏移载波(CBOC)和替代二进制偏移载波(ALTBOC)。我们的系统由两部分组成:特征提取和分类算法。对于特征提取,我们提取了信号统计特征和瞬时特征的合适组合,以提供更好的能力区分不同调制信号。首先,我们使用HILBERT变换预处理信号以获取分析表达式。然后,使用四个瞬时参数和四个统计参数来表示基于表达式的信号的特征。对于分类算法,我们研究了遗传背部化神经网络(BPNN)。遗传算法(GA)用于设计BPNN的体系结构,以找到隐藏层数量的最佳值以及每层的神经元数。这种方法消除了人类因素,提高了网络的效率和准确性。仿真结果表明,我们的系统在3DB的低SNR下对研究的数字调制信号显示出高分类精度和高速。

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