Security Service Function Chain Based on Graph Neural Network

Author:

Li Wei,Wang Haomin,Zhang XiaoliangORCID,Li Dingding,Yan Lijing,Fan Qi,Jiang Yuan,Yao Ruoyu

Abstract

With the rapid development and wide application of cloud computing, security protection in cloud environment has become an urgent problem to be solved. However, traditional security service equipment is closely coupled with the network topology, so it is difficult to upgrade and expand the security service, which cannot change with the change of network application security requirements. Building a security service function chain (SSFC) makes the deployment of security service functions more dynamic and scalable. Based on a software defined network (SDN) and network function virtualization (NFV) environment, this paper proposes a solution to the particularity optimization algorithm of network topology feature extraction using graph neural network. The experimental results show that, compared with the shortest path, greedy algorithm and hybrid bee colony algorithm, the average success rate of the graph neural network algorithm in the construction of the security service function chain is more than 90%, far more than other algorithms, and far less than other algorithms in construction time. It effectively reduces the end-to-end delay and increases the network throughput.

Funder

State Grid Henan Electric Power Company

Publisher

MDPI AG

Subject

Information Systems

Reference36 articles.

1. SDN-based data center network flow probabilistic path selection method;Zhao;Comput. Eng.,2019

2. Deployment and Optimization of NFV Service Function Chain Based on Artificial Intelligence;Lu,2018

3. Software-Defined Networking: The New Norm for Networks [White Paper]. ONF White Paperhttps://www.semanticscholar.org/paper/Software-Defined-Networking-The-New-Norm-for-Tank-Dixit/6457799bfda12f18c6f3f6cdaad1848bcc4c3aa2

4. DevOps for network function virtualisation: an architectural approach

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