A Network Traffic Prediction Model Based on Quantum Inspired PSO and Neural Network

The network traffic prediction model is the foundation of network performance analysis and designing. Aiming at limitation of the conventional network traffic time series prediction model and the problem that BP algorithms easily plunge into local solution, an optimization algorithm-PSO-QI which combine particle swarm optimization (PSO) and the quantum principle is proposed, and can alleviate the premature convergence validly. Then, the parameters of BP neural network were optimized and the time series of network traffic data was modeled and forecasted based on BP neural network and PSO-QI. Experiments showed that PSOQI-BP neural network has better precision and adaptability compared with the traditional neural network.

[1]  Ganesh K. Venayagamoorthy,et al.  Quantum inspired PSO for the optimization of simultaneous recurrent neural networks as MIMO learning systems , 2010, Neural Networks.

[2]  Mustafa Yilmaz,et al.  Classification of EMG signals using wavelet neural network , 2006, Journal of Neuroscience Methods.

[3]  Ganesh K. Venayagamoorthy,et al.  Online design of an echo state network based wide area monitor for a multimachine power system , 2007, Neural Networks.

[4]  Riccardo Poli,et al.  Particle swarm optimization , 1995, Swarm Intelligence.

[5]  Vadlamani Ravi,et al.  Differential evolution trained wavelet neural networks: Application to bankruptcy prediction in banks , 2009, Expert Syst. Appl..

[6]  Gang Wu,et al.  Applications of nonlinear prediction methods to the Internet traffic , 2001, ISCAS 2001. The 2001 IEEE International Symposium on Circuits and Systems (Cat. No.01CH37196).

[7]  Liao Shiyong,et al.  Learning algorithm and application of quantum BP neural networks based on universal quantum gates , 2008 .

[8]  Yagyensh C. Pati,et al.  Analysis and synthesis of feedforward neural networks using discrete affine wavelet transformations , 1993, IEEE Trans. Neural Networks.

[9]  Mohammad Reza Ghasemi,et al.  Application of Wavelet Neural Networks in Optimization of Skeletal Buildings under Frequency Constraints , 2007 .

[10]  Roman M. Balabin,et al.  Wavelet neural network (WNN) approach for calibration model building based on gasoline near infrared (NIR) spectra , 2008 .

[11]  Wenbo Xu,et al.  Particle swarm optimization with particles having quantum behavior , 2004, Proceedings of the 2004 Congress on Evolutionary Computation (IEEE Cat. No.04TH8753).

[12]  Wenbo Xu,et al.  A New Mutated Quantum-Behaved Particle Swarm Optimizer for Digital IIR Filter Design , 2010, EURASIP J. Adv. Signal Process..

[13]  A. Adas,et al.  Traffic models in broadband networks , 1997, IEEE Commun. Mag..

[14]  Sun Guang,et al.  Network Traffic Prediction Based on the Wavelet Analysis and Hopfield Neural Network , 2013 .

[15]  Narinder Singh,et al.  Personal Best Position Particle Swarm Optimization , 2012 .

[16]  Jilali Antari,et al.  Identification and Prediction of Internet Traffic Using Artificial Neural Networks , 2010, J. Intell. Learn. Syst. Appl..

[17]  Edmond A. Jonckheere,et al.  On the predictability of data network traffic , 2003, Proceedings of the 2003 American Control Conference, 2003..

[18]  Bor-Sen Chen,et al.  Traffic modeling, prediction, and congestion control for high-speed networks: a fuzzy AR approach , 2000, IEEE Trans. Fuzzy Syst..

[19]  San-qi Li,et al.  A predictability analysis of network traffic , 2000, Proceedings IEEE INFOCOM 2000. Conference on Computer Communications. Nineteenth Annual Joint Conference of the IEEE Computer and Communications Societies (Cat. No.00CH37064).

[20]  Qingjie Zhao,et al.  Appearance-based Robot Visual Servo via a Wavelet Neural Network , 2008 .

[21]  San-qi Li,et al.  A predictability analysis of network traffic , 2002, Comput. Networks.

[22]  Donald C. Wunsch,et al.  Training Winner-Take-All Simultaneous Recurrent Neural Networks , 2007, IEEE Transactions on Neural Networks.