School of Cyberspace Science and Technology, Beijing Institute of Technology, Beijing 100081, China.
Aerospace System Engineering Shanghai, Shanghai 201108, China.
Sensors (Basel). 2023 May 31;23(11):5234. doi: 10.3390/s23115234.
Automatic Modulation Recognition (AMR) can obtain the modulation mode of the received signal for subsequent processing without the assistance of the transmitter. Although the existing AMR methods have been mature for the orthogonal signals, these methods face challenges when deployed in non-orthogonal transmission systems due to the superimposed signals. In this paper, we aim to develop efficient AMR methods for both downlink and uplink non-orthogonal transmission signals using deep learning-based data-driven classification methodology. Specifically, for downlink non-orthogonal signals, we propose a Bi-directional Long Short-Term Memory (BiLSTM)-based AMR method that exploits long-term data dependence to automatically learn irregular signal constellation shapes. Transfer learning is further incorporated to improve recognition accuracy and robustness under varying transmission conditions. For uplink non-orthogonal signals, the combinatorial number of classification types explodes exponentially with the number of signal layers, which becomes the major obstacle to AMR. We develop a spatio-temporal fusion network based on the attention mechanism to efficiently extract spatio-temporal features, and network details are optimized according to the superposition characteristics of non-orthogonal signals. Experiments show that the proposed deep learning-based methods outperform their conventional counterparts in both downlink and uplink non-orthogonal systems. In a typical uplink scenario with three non-orthogonal signal layers, the recognition accuracy can approach 96.6% in the Gaussian channel, which is 19% higher than the vanilla Convolution Neural Network.
自动调制识别(AMR)可以在没有发射器协助的情况下获取接收到的信号的调制模式,以便进行后续处理。尽管现有的 AMR 方法已经在正交信号方面非常成熟,但由于叠加信号的存在,这些方法在非正交传输系统中的部署面临挑战。在本文中,我们旨在使用基于深度学习的数据驱动分类方法为下行链路和上行链路非正交传输信号开发有效的 AMR 方法。具体来说,对于下行链路非正交信号,我们提出了一种基于双向长短期记忆(BiLSTM)的 AMR 方法,该方法利用长期数据依赖性自动学习不规则信号星座形状。进一步采用迁移学习来提高在不同传输条件下的识别准确性和鲁棒性。对于上行链路非正交信号,分类类型的组合数量随着信号层数的增加呈指数级爆炸式增长,这成为 AMR 的主要障碍。我们开发了一种基于注意力机制的时空融合网络,以有效地提取时空特征,并根据非正交信号的叠加特性对网络细节进行优化。实验表明,所提出的基于深度学习的方法在下行链路和上行链路非正交系统中的性能均优于传统方法。在具有三个非正交信号层的典型上行链路场景中,在高斯信道中的识别准确率可接近 96.6%,比原始卷积神经网络高 19%。