Recognition of Communication Relationship Based on the Spectrum Monitoring Data by Improved VGGNET

Haibo Zhang, Changhua Yao, Lei Zhu, Lei Wang, Fanpeng Zhu, Yiming Chen
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Abstract

The communication relationship can reflect the hidden information of the communication network, which is of great significance for discovering important nodes in the network. To overcome the difficulty of manually extracting expert features, this paper uses deep learning methods to study the communication relationship recognition. First, use the deep learning model to classify the spectrum data directly, and model the communication relationship as a classification problem with time feature data for processing. It is found that the neural network model is easy to fall into a local minimum; in order to limit the impact of the local minimum problem on recognition In this paper, combining the rules of frequency hopping communication to process the data, make the neural network take as few tasks as possible, and then propose the second design scheme, the communication time series classification scheme, and the final recognition rate reaches 97% on the test set. This article uses long and short memory networks and convolutional neural networks to conduct experiments. Among them, the improved VGG network structure has the best recognition rate in communication problems. The factors that affect the recognition rate of neural networks in the identification of communication relationships are discussed in depth, and suggestions on how to adjust these factors are given based on theory and experiment.
基于改进VGGNET的频谱监测数据通信关系识别
通信关系可以反映通信网络的隐藏信息,对于发现网络中的重要节点具有重要意义。为了克服人工提取专家特征的困难,本文采用深度学习方法对通信关系识别进行研究。首先,利用深度学习模型直接对频谱数据进行分类,并将通信关系建模为带有时间特征数据的分类问题进行处理。研究发现,神经网络模型容易陷入局部极小值;为了限制局部极小问题对识别的影响,本文结合跳频通信规则对数据进行处理,使神经网络承担的任务尽可能少,然后提出第二种设计方案,即通信时间序列分类方案,最终在测试集上的识别率达到97%。本文采用长、短时记忆网络和卷积神经网络进行实验。其中,改进的VGG网络结构在通信问题中具有最好的识别率。对通信关系识别中影响神经网络识别率的因素进行了深入探讨,并从理论和实验两方面提出了调整这些因素的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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