CNN-Based Automatic Modulation Classification in OFDM Systems

Geonho Song, Mingyu Jang, D. Yoon
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引用次数: 2

Abstract

Convolutional neural network (CNN)-based modulation classification schemes for orthogonal frequency division multiplexing (OFDM) signals have recently been reported. In this paper, we examine the effect of hyperparameters in a CNN model on classification performance and present improved performance of automatic modulation classification for OFDM signals. To do this, we first set a baseline CNN model for OFDM signal modulation classification and then conduct experiments by varying the hyperparameters, such as the size and number of convolution kernels, and the number of fully connected neurons, through computer simulations. We show that the kernel size has a dominant effect on the classification accuracy and should be large enough within an appropriate range to achieve high classification accuracy for a given in-phase and quadrature data set. Finally, we show that the tuned model outperforms the conventional work in terms of classification accuracy.
基于cnn的OFDM系统自动调制分类
基于卷积神经网络(CNN)的正交频分复用(OFDM)信号调制分类方案最近得到了一些报道。在本文中,我们研究了CNN模型中超参数对分类性能的影响,并提出了改进的OFDM信号自动调制分类性能。为此,我们首先设置了用于OFDM信号调制分类的基线CNN模型,然后通过计算机模拟改变卷积核的大小和数量、全连接神经元的数量等超参数进行实验。我们表明,核大小对分类精度有主导作用,并且应该在一个适当的范围内足够大,以实现给定的同相和正交数据集的高分类精度。最后,我们证明了调整后的模型在分类精度方面优于传统的工作。
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