Abstract

High dynamic topology and limited bandwidth of the airborne network make it difficult to provide reliable information interaction services for diverse combat mission of aviation swarm operations. Therefore, it is necessary to identify the elephant flows in the network in real time to optimize the process of traffic control and improve the performance of airborne network. Aiming at this problem, a timeliness-enhanced traffic identification method based on machine learning Bayesian network model is proposed. Firstly, the data flow training subset is obtained by preprocessing the original traffic dataset, and the sub-classifier is constructed based on Bayesian network model. Then, the multi-window dynamic Bayesian network classifier model is designed to enable the early identification of elephant flow. The simulation results show that compared with the existing elephant flow identification method, the proposed method can effectively improve the timeliness of identification under the condition of ensuring the accuracy of identification.

Highlights

  • 针对机载网络中基于 ISF 特征的大流识别,本 文构造了多窗口动态贝叶斯网络分类模型 ( multi⁃ window dynamic bayesian network classifier, MWD⁃ BNC) ,如图 2 所示。

  • It is necessary to identify the elephant flows in the network in real time to optimize the process of traffic control and improve the per⁃ formance of airborne network

  • A timeliness⁃enhanced traffic identification method based on machine learning Bayesian network model is proposed

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Summary

Introduction

针对机载网络中基于 ISF 特征的大流识别,本 文构造了多窗口动态贝叶斯网络分类模型 ( multi⁃ window dynamic bayesian network classifier, MWD⁃ BNC) ,如图 2 所示。 的 ISF 特征矢量,c(i) 表示数据流实例 xi 所属类别, c(i) ∈ C,该 ISFC 的识别过程即实现特定数据流实 叶斯定理的 周期性采样方法 ( periodically sampling based on bayesian theory,PS⁃BT) 、基于 LRU 的方法 5 decision tree) 以及贝叶斯网络分类器算法( bayesian network classifier,BNC) ,对不同窗口截取比下获得

Results
Conclusion

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