Abstract

Network traffic prediction is the key to network security management and improving network operation speed. This paper proposes a network traffic chaotic prediction method based on the improved beetle swarm algorithm and optimized support vector machine. Firstly, the new network traffic time series is obtained by the phase space reconstruction method. Then the SVM is optimized by the improved beetle swarm algorithm, and the optimized SVM is used to predict the chaos of the network traffic. Finally, the improved method is compared with the experimental results of network traffic chaos prediction based on particle swarm optimization support vector machine. The results show that the algorithm proposed in this paper has better results in terms of convergence effect and prediction accuracy.

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