A Network Traffic Prediction Model Based on Quantum Inspired Pso and Wavelet Neural Network
[摘要] Network traffic flow prediction model is fundamental to the network performance evaluation and the design of network control scheme which is crucial for the success of high-speed networks. Aiming at shortcoming of the conventional network traffic time series prediction model and the problem that BP training algorithms easily plunge into local solution, a network traffic prediction model based on wavelet neural network and PSO-QI is presented in the paper. Firstly, the quantum principle obtained from Quantum PSO(QPSO)has been combined with standard PSO to form a new hybrid algorithmcalledPSOwithQuantumInfusion(PSO-QI).Then,theparametersof wavelet neural network were optimized with PSO-QI and the time series of network traffic data was modeled and predicted based on wavelet neural network and PSO-QI. Experiments showed that PSOQI-wavelet neural network has better precision and adaptability compared with the traditional neural network.
[发布日期] [发布机构]
[效力级别] [学科分类] 计算数学
[关键词] BP neural network;particle swarm optimization;PSO-QI algorithm;wavelet network traffic [时效性]