Moving target defense of routing randomization with deep reinforcement learning against eavesdropping attack

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作者
Xiaoyu Xu [1 ,2 ]
Hao Hu [2 ]
Yuling Liu [3 ,4 ]
Jinglei Tan [2 ]
Hongqi Zhang [2 ]
Haotian Song [1 ]
机构
[1] Academy of People's Armed Police
[2] PLA SSF Information Engineering University
[3] Institute of Information Engineering,Chinese Academy of Sciences
[4] School of Cyber Security,University of Chinese Academy of Sciences
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摘要
Eavesdropping attacks have become one of the most common attacks on networks because of their easy implementation.Eavesdropping attacks not only lead to transmission data leakage but also develop into other more harmful attacks.Routing randomization is a relevant research direction for moving target defense,which has been proven to be an effective method to resist eavesdropping attacks.To counter eavesdropping attacks,in this study,we analyzed the existing routing randomization methods and found that their security and usability need to be further improved.According to the characteristics of eavesdropping attacks,which are "latent and transferable",a routing randomization defense method based on deep reinforcement learning is proposed.The proposed method realizes routing randomization on packet-level granularity using programmable switches.To improve the security and quality of service of legitimate services in networks,we use the deep deterministic policy gradient to generate random routing schemes with support from powerful network state awareness.In-band network telemetry provides real-time,accurate,and comprehensive network state awareness for the proposed method.Various experiments show that compared with other typical routing randomization defense methods,the proposed method has obvious advantages in security and usability against eavesdropping attacks.
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页数:15
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