Due to the fact that the fluctuation of network traffic is affected by various factors, accurate prediction of network traffic is regarded as a challenging task of the time series prediction process. For this purpose, a novel prediction method of network traffic based on QPSO algorithm and fuzzy wavelet neural network is proposed in this paper. Firstly, quantum-behaved particle swarm optimization (QPSO) was introduced. Then, the structure and operation algorithms of WFNN are presented. The parameters of fuzzy wavelet neural network were optimized by QPSO algorithm. Finally, the QPSO-FWNN could be used in prediction of network traffic simulation successfully and evaluate the performance of different prediction models such as BP neural networ...
The advance knowledge of future traffic load is helpful for network service providers to optimize th...
AbstractThe security incidents ion networks are sudden and uncertain, it is very hard to precisely p...
Accurate traffic flow prediction can provide sufficient information for the formation of symmetric t...
Network traffic flow prediction model is fundamental to the network performance evaluation and the d...
Forecasting short-term traffic flow is a key task of intelligent transportation systems, which can i...
Multistep prediction of traffic state is a key technology for advanced transportation information sy...
Abstract—In order to improve the performance of network traffic prediction model, a novel network tr...
Network traffic is a significantly important parameter for network traffic engineering, while it hol...
The disadvantages of the traditional radial basis function (RBF) neural network during the network t...
AbstractThe increasing P2P network traffic on the Internet has leaded to the problem of network cong...
Traditional fuzzy neural network has certain drawbacks such as long computation time, slow convergen...
Prediction of bus arrival time is an important part of intelligent transportation systems. Accurate ...
Abstract — Packet loss severely degrades the quality of service of multimedia communication in a Wi-...
The evolutionary learning of fuzzy neural networks (FNN) consists of structure learning to determine...
In recent years, the traffic volume of the Yangtze River has increased dramatically. In order to pro...
The advance knowledge of future traffic load is helpful for network service providers to optimize th...
AbstractThe security incidents ion networks are sudden and uncertain, it is very hard to precisely p...
Accurate traffic flow prediction can provide sufficient information for the formation of symmetric t...
Network traffic flow prediction model is fundamental to the network performance evaluation and the d...
Forecasting short-term traffic flow is a key task of intelligent transportation systems, which can i...
Multistep prediction of traffic state is a key technology for advanced transportation information sy...
Abstract—In order to improve the performance of network traffic prediction model, a novel network tr...
Network traffic is a significantly important parameter for network traffic engineering, while it hol...
The disadvantages of the traditional radial basis function (RBF) neural network during the network t...
AbstractThe increasing P2P network traffic on the Internet has leaded to the problem of network cong...
Traditional fuzzy neural network has certain drawbacks such as long computation time, slow convergen...
Prediction of bus arrival time is an important part of intelligent transportation systems. Accurate ...
Abstract — Packet loss severely degrades the quality of service of multimedia communication in a Wi-...
The evolutionary learning of fuzzy neural networks (FNN) consists of structure learning to determine...
In recent years, the traffic volume of the Yangtze River has increased dramatically. In order to pro...
The advance knowledge of future traffic load is helpful for network service providers to optimize th...
AbstractThe security incidents ion networks are sudden and uncertain, it is very hard to precisely p...
Accurate traffic flow prediction can provide sufficient information for the formation of symmetric t...