ARGCN: An intelligent prediction model for SDN network performance

Bo Ma, Qin Lu, Xuxin Fang, Junhu Liao, Haoyue Liu, Zebin Chen,Chuanhuang Li

Peer-to-Peer Networking and Applications(2024)

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摘要
Traditional methods for analyzing network performance have limitations, including high costs and over-simplified assumptions, which are not helpful for network administrators managing increasingly complex networks. Therefore, it is necessary to provide a performance prediction method specifically designed for complex networks. This paper introduces the Attention-based Recurrent Graph Convolutional Network (ARGCN), a tailored performance prediction model for Software-defined Networks (SDNs). SDNs extract network data dynamically, and ARGCN, using a Message Passing Neural Network (MPNN) framework, transmits and aggregates information, incorporating a recurrent neural network with an attention mechanism to handle complex dependencies among link nodes. Experimental validation demonstrates the model’s efficiency in forecasting network metrics with over 95
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关键词
Software defined network,Network performance prediction,Neural network,Message passing
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