Base station sleeping mechanism based on traffic prediction in heterogeneous networks

In order to reduce the energy consumption of cellular networks, the possibility of turning off base stations under off-peak time has been focused in recent years. However, traffic in cellular networks is always under fluctuation which leads to the sleeping mechanisms which is based on deterministic traffic variation pattern unsuitable. In this paper, a base station sleeping mechanism based on traffic prediction (BSTP) is proposed to solve the problems caused by traffic fluctuation in heterogeneous networks. Modified Wavelet neural network (MWNN) is used to predict the future traffic of base stations in this paper. Based on the prediction, a base station sleeping mechanism is proposed by making use of Pico Base Stations (PBSs) instead of Macro Base Station (MBS) to provide service under off-peak time. Simulation results show that the MWNN model has a good prediction precision and faster convergence speed, and the sleeping mechanism can significantly reduce the total energy consumption of heterogeneous networks.

[1]  Byeong Gi Lee,et al.  A Joint Algorithm for Base Station Operation and User Association in Heterogeneous Networks , 2013, IEEE Communications Letters.

[2]  L. Chiaraviglio,et al.  Optimal Energy Savings in Cellular Access Networks , 2009, 2009 IEEE International Conference on Communications Workshops.

[3]  Vijay K. Bhargava,et al.  Green Cellular Networks: A Survey, Some Research Issues and Challenges , 2011, IEEE Communications Surveys & Tutorials.

[4]  Yang Lei,et al.  Time series predictive wavelet neural network control method , 2014, The 26th Chinese Control and Decision Conference (2014 CCDC).

[5]  Tijani Chahed,et al.  Optimal Control of Wake Up Mechanisms of Femtocells in Heterogeneous Networks , 2012, IEEE Journal on Selected Areas in Communications.

[6]  Abbas Jamalipour,et al.  Wireless communications , 2005, GLOBECOM '05. IEEE Global Telecommunications Conference, 2005..

[7]  Muhammad Ali Imran,et al.  How much energy is needed to run a wireless network? , 2011, IEEE Wireless Communications.

[8]  Marco Ajmone Marsan,et al.  Energy-efficient management of UMTS access networks , 2009, 2009 21st International Teletraffic Congress.

[9]  Fanping Zhang,et al.  Research on Runoff Predicting Based on Wavelet Neural Network Conjunction Model , 2013, 2013 International Conference on Information Science and Cloud Computing Companion.