Modulation Recognition Based on Lightweight Neural Networks

Tong-xiang Wang, Yanhua Jin
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引用次数: 2

Abstract

In order to solve the problems of complex networks, large amount of calculation and high equipment requirements in the current deep learning method to complete the modulation recognition process, this paper proposes a modulation recognition algorithm based on lightweight neural networks. First, map the common 8 kinds of modulated signals to constellation diagrams to make image data sets. In the process of retaining the original signals, make full use of the performance of the neural network, build a representative the MobileNet neural network in the neural network to complete the training of the data set, use the test samples Verify the effectiveness of the lightweight neural networks used. Simulation experiment results show that the overall recognition rate of modulation reaches 98% when the SNR is greater than 2dB, but the training speed is greatly improved.
基于轻量级神经网络的调制识别
为了解决当前深度学习方法完成调制识别过程中网络复杂、计算量大、对设备要求高的问题,本文提出了一种基于轻量级神经网络的调制识别算法。首先,将常见的8种调制信号映射到星座图上,制作图像数据集。在保留原始信号的过程中,充分利用了神经网络的性能,构建了具有代表性的MobileNet神经网络,在神经网络中完成了数据集的训练,使用测试样本验证了所使用的轻量级神经网络的有效性。仿真实验结果表明,当信噪比大于2dB时,调制的整体识别率达到98%,但训练速度大大提高。
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