College of Astronautics Engineering, Air Force Engineering University, Xi'an 710038, China.
Sensors (Basel). 2022 Jul 30;22(15):5715. doi: 10.3390/s22155715.
Current modulation recognition methods in wireless sensor networks rely too much on simulation datasets. Its practical application effect cannot reach the expected results. To address this issue, in this paper we collect a large amount of real-world wireless signal data based on the software radio device USRP 2920. We then propose a real radio frequency (RF) database architecture and preprocessing operators to manage real-world wireless signal data, conduct signal preprocessing, and export the dataset. Based on different feature datasets derived from the RF database, we propose a multidimensional feature hybrid network (MFHN), which is used to identify unknown signals by analyzing different kinds of signal features. Further, we improve MFHN and design a multifeatured joint migration network (MJMN) to identify small-sample targets. The experimental results show that the recognition rates for unknown target signals of the MFHN and MJMN are 82.7% and 93.2%, respectively. The proposed methods improve the recognition performance in the single node of wireless sensor networks in complex electromagnetic environments, which provides reference for subsequent decision fusion.
目前,无线传感器网络中的调制识别方法过于依赖仿真数据集,实际应用效果无法达到预期。针对这一问题,本文基于软件无线电设备 USRP 2920 采集了大量真实的无线信号数据,提出了一种真实射频(RF)数据库架构和预处理算子,用于管理真实无线信号数据、进行信号预处理,并输出数据集。基于从 RF 数据库中提取的不同特征数据集,我们提出了多维特征混合网络(MFHN),通过分析不同类型的信号特征来识别未知信号。此外,我们对 MFHN 进行了改进,并设计了多特征联合迁移网络(MJMN)来识别小样本目标。实验结果表明,MFHN 和 MJMN 对未知目标信号的识别率分别为 82.7%和 93.2%。所提出的方法提高了复杂电磁环境下无线传感器网络单节点的识别性能,为后续的决策融合提供了参考。