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WiST ID—Deep Learning-Based Large Scale Wireless Standard Technology Identification

机译:WIST ID-Deep Learn学习的大规模无线标准技术识别

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Dynamic spectrum access based wireless networks and next-generation cognitive electronic warfare systems demand rapid identification and labelling of high data rate radio frequency (RF) information. This requires receiver front-end designs to distinguish numerous kinds of wireless signals of different standards over a relatively wide spectrum. This paper proposes a novel attempt at large scale, blind identification of signals from 29 wireless standard technologies that occupy the modern day spectrum. A deep convolutional neural network model called 'Wireless Standard Technology Identifier (WiST ID)' is deployed, along with a pre-processing method based on the Stockwell transform time-frequency representation for highly accurate classification over relatively large number of signal classes. The model demonstrates enhanced learning of RF fingerprints from the pre-processed Stockwell images belonging to a variety of wireless technologies. Analyses of classification performance over synthetically generated samples with SNR scenarios varying from -10 dB to 10 dB reveal the robustness of the model under low and moderate SNR. At a modest SNR of 10 dB, the model achieves 100% classification accuracy over a small scale synthetic dataset (9 classes). Over a large scale dataset (29 classes) consisting of both synthetically generated and over-the-air captured samples, the classification accuracy achieved is 98.91%.
机译:基于动态频谱访问的无线网络和下一代认知电子战系统需求快速识别和标记高数据速率射频(RF)信息。这需要接收器前端设计,以在相对宽的光谱上区分不同标准的许多无线信号。本文提出了一种大规模的新型尝试,盲目识别来自占据现代频谱的29个无线标准技术的信号。部署了一个名为“无线标准技术标识符(巫术ID)”的深卷积神经网络模型,以及基于载体变换时频表示的预处理方法,用于在相对大量的信号类上进行高精度分类。该模型展示了来自属于各种无线技术的预处理储藏幅图像的RF指纹的增强学习。通过从-10 dB到10 dB的SNR场景不同的SNR场景对综合生成的样本进行分类性能分析,揭示了低于中等SNR的模型的鲁棒性。在10 dB的适度SNR处,该模型通过小规模合成数据集(9级)实现100%的分类精度。在由合成产生的和空气过度捕获的样本组成的大型数据集(29级),所以实现的分类精度为98.91%。

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