基于CNN-BLSTM的信道编码盲识别

Shuying Zhang, Lina Zhou, Yiduo Tang, Lin Wang, Qiwang Chen
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引用次数: 1

摘要

在认知无线电或军用通信系统中,对主用户信号进行信道编码类型识别是实现无线通信环境全感知的重要任务。以往解决该问题的方法通常计算量大,不适合实时应用,需要丰富的人工特征提取经验和专业知识。提出了一种基于CNN-BLSTM的盲信道编码识别算法。该方法首先利用卷积神经网络提取编码序列的数据特征,避免了将特征不明显的原始码字数据直接输入神经网络导致识别精度低的问题。然后,通过双向长短期记忆网络获得特征的上下文依赖关系。最后,利用softmax函数完成分类任务。实验采用空间耦合LDPC码和5G NR LDPC码作为候选码。实验结果表明,在良好的信道条件下,该算法具有较高的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind Recognition of Channel Coding Based on CNN-BLSTM
In cognitive radio or military communication systems, the channel coding type recognition of the primary user signal is an important task to realize full awareness of the wireless communication environment. Previous methods to solve this problem usually have high computational complexity, which are not suitable for real-time applications and require rich experience and professional knowledge in manual feature extraction. In this paper, a blind channel coding recognition algorithm based on CNN-BLSTM is proposed. Firstly, this method uses convolutional neural network to extract the data features of coding sequence and also avoids the problem of low recognition accuracy caused by inputting the original codeword data with inconspicuous features directly into neural network. Then, the context dependence of features is obtained through bidirectional long short-term memory network. Finally, the classification task is accomplished by softmax function. The experiments use spatially coupled LDPC codes and 5G NR LDPC codes as candidate codes. The experimental results show that the algorithm achieves quite high recognition accuracy under good channel conditions.
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