School of Space Information, Space Engineering University, Beijing 101416, China.
School of National Space Science Center, Chinese Academy of Sciences, Beijing 101416, China.
Sensors (Basel). 2022 Aug 29;22(17):6500. doi: 10.3390/s22176500.
Automatic modulation discrimination (AMC) is one of the critical technologies in spatial cognitive communication systems. Building a high-performance AMC model in intelligent receivers can help to realize adaptive signal synchronization and demodulation. However, tackling the intra-class diversity problem is challenging to AMC based on deep learning (DL), as 16QAM and 64QAM are not easily distinguished by DL networks. In order to overcome the problem, this paper proposes a joint AMC model that combines DL and expert features. In this model, the former builds a neural network that can extract the time series and phase features of in-phase and quadrature component (IQ) samples, which improves the feature extraction capability of the network in similar models; the latter achieves accurate classification of QAM signals by constructing effective feature parameters. Experimental results demonstrate that our proposed joint AMC model performs better than the benchmark networks. The classification accuracy is increased by 11.5% at a 10 dB signal-to-noise ratio (SNR). At the same time, it also improves the discrimination of QAM signals.
自动调制识别(AMC)是空间认知通信系统的关键技术之一。在智能接收机中构建高性能的 AMC 模型有助于实现自适应信号同步和解调。然而,基于深度学习(DL)的 AMC 面临着类内多样性问题的挑战,因为 16QAM 和 64QAM 不容易被 DL 网络区分。为了克服这个问题,本文提出了一种结合深度学习和专家特征的联合 AMC 模型。在这个模型中,前者构建了一个神经网络,可以提取同相和正交分量(IQ)样本的时间序列和相位特征,从而提高了网络在类似模型中的特征提取能力;后者通过构建有效的特征参数来实现 QAM 信号的准确分类。实验结果表明,所提出的联合 AMC 模型优于基准网络。在信噪比(SNR)为 10dB 时,分类精度提高了 11.5%。同时,它还提高了 QAM 信号的辨别能力。