Joint Identification of Modulation and Channel Coding Based on Deep Learning

Fang Deng, Xingrong Huang, Shujun Sun, Shengliang Peng
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Abstract

The tasks of identifying which modulation format and channel coding scheme have been utilized by the wireless signal are crucial to intelligent communications, electronic warfare, and spectrum management. Currently, most research on these tasks digs into either modulation identification or channel coding identification, while the joint identification of modulation and channel coding has not been fully investigated. In this paper, we propose two joint identification algorithms based on deep learning to handle the tasks of modulation identification and channel coding identification simultaneously. The first algorithm adopts a successive architecture, in which two neural networks are used to handle the two identification tasks, respectively. The second algorithm exploits multi-task deep learning, with which two identification tasks can be completed using a single neural network. Experiments results show that, considering the candidate set of three modulation formats and two channel coding schemes, both algorithms achieve satisfactory identification accuracy, and the latter is superior to the former with the accuracy improvement of 10%.
基于深度学习的调制和信道编码联合识别
识别无线信号所采用的调制格式和信道编码方案对智能通信、电子战和频谱管理至关重要。目前,对这些任务的研究大多集中在调制识别或信道编码识别上,而调制和信道编码的联合识别尚未得到充分的研究。在本文中,我们提出了两种基于深度学习的联合识别算法来同时处理调制识别和信道编码识别任务。第一种算法采用连续结构,使用两个神经网络分别处理两个识别任务。第二种算法利用多任务深度学习,使用单个神经网络可以完成两个识别任务。实验结果表明,在考虑三种调制格式和两种信道编码方案的候选集的情况下,两种算法都获得了满意的识别精度,后者优于前者,准确率提高了10%。
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