Dynamic identification of key nodes in digital microwave communication link based on network topology

Kaibo Hu, Lifeng Yu, Linbo Xu, Na Cui
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Abstract

In order to solve the problems of the traditional microwave communication node identification methods, such as the large difference between the number of identification and the actual situation, and the low accuracy of identification, the dynamic identification of key nodes of digital microwave communication link based on network topology is studied. The data labels of key nodes are set by supervised machine learning, and the synchronous signals of four key nodes close to the digital microwave emitter are selected to prevent the collected signals from excessive noise. Fuzzy clustering is used to process the collected recognition samples, and then the neural network model is trained to identify the key nodes. In order to prevent over fitting during training, L4 regularization method is used to add dropout to the hidden node neurons in each network topology. Then, the identification neural network model of network topology is used to train and dynamically identify different key nodes of the link to realize the dynamic identification of key nodes of digital microwave communication link. The experimental results show that the recognition accuracy of key nodes is 95%, and the recognition performance of key nodes is improved.
基于网络拓扑的数字微波通信链路关键节点动态识别
为解决传统微波通信节点识别方法识别数量与实际情况差异大、识别精度低等问题,研究了基于网络拓扑结构的数字微波通信链路关键节点动态识别方法。通过监督式机器学习设置关键节点的数据标签,选择靠近数字微波发射器的4个关键节点的同步信号,防止采集到的信号噪声过大。对采集到的识别样本进行模糊聚类处理,然后训练神经网络模型进行关键节点的识别。为了防止训练过程中的过拟合,使用L4正则化方法对每个网络拓扑中的隐藏节点神经元添加dropout。然后,利用网络拓扑识别神经网络模型对链路的不同关键节点进行训练和动态识别,实现数字微波通信链路关键节点的动态识别。实验结果表明,关键节点的识别准确率达到95%,关键节点的识别性能得到了提高。
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