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Communication Signal Modulation Mechanism Based on Artificial Feature Engineering Deep Neural Network Modulation Identifier

机译:基于人工特征工程设计深神经网络调制标识的通信信号调制机制

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Based on the characteristics of time domain and frequency domain recognition theory, a recognition scheme is designed to complete the modulation identification of communication signals including 16 analog and digital modulations, involving 10 different eigenvalues in total. In the in-class recognition of FSK signal, feature extraction in frequency domain is carried out, and a statistical algorithm of spectral peak number is proposed. This paper presents a method to calculate the rotation degree of constellation image. By calculating the rotation degree and modifying the clustering radius, the recognition rate of QAM signal is improved significantly. Another commonly used method for calculating the rotation of constellations is based on Radon transform. Compared with the proposed algorithm, the proposed algorithm has lower computational complexity and higher accuracy under certain SNR conditions. In the modulation discriminator of the deep neural network, the spectral features and cumulative features are extracted as inputs, the modified linear elements are used as neuron activation functions, and the cross-entropy is used as loss functions. In the modulation recognitor of deep neural network, deep neural network and cyclic neural network are constructed for modulation recognition of communication signals. The neural network automatic modulation recognizer is implemented on CPU and GPU, which verifies the recognition accuracy of communication signal modulation recognizer based on neural network. The experimental results show that the communication signal modulation recognizer based on artificial neural network has good classification accuracy in both the training set and the test set.
机译:基于时域和频域识别理论的特点,一个识别方案被设计来完成的通信信号的调制识别包括16所模拟和数字调制,涉及在总共10个不同的本征值。在一流识别FSK信号,在频域特征提取进行的,并提出的光谱峰值数的统计算法。本文提出了计算星座图像的旋转度的方法。通过计算旋转程度和修改聚类半径,QAM信号的识别率显著提高。用于计算星座的旋转另一种常用的方法是基于Radon变换。所提出的算法相比,该算法在一定信噪比条件下的计算复杂度和更高的精度。在深神经网络的调制鉴别器,光谱特征和累积特征被提取作为输入,修改后的线性元件被用作神经元激活的功能,和交叉熵被用作损失的功能。在深神经网络,深神经网络和环状神经网络的调制recognitor被构造为通信信号的调制识别。神经网络自动调制识别器被CPU和GPU,从而验证基于神经网络的通信信号调制识别器的识别精度实现。实验结果表明,基于人工神经网络的通信信号调制识别在训练集和测试集两者良好的分类准确度。

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