Mobility Prediction-Based Autonomous Proactive Energy Saving (AURORA) Framework for Emerging Ultra-Dense Networks

Increased network wide energy consumption is a paramount challenge that hinders wide scale ultra-dense networks (UDNs) deployments. While several energy saving (ES) enhancement schemes have been proposed recently, these schemes have one common tenancy. They operate in reactive mode, i.e., to increase ES, cells are switched ON/OFF reactively in response to changing cell loads. Though, significant ES gains have been reported for such ON/OFF schemes, the inherent reactiveness of these ES schemes limits their ability to meet the extremely low latency and high QoS expected from future cellular networks vis-a-vis 5G and beyond. To address this challenge, in this paper we propose a novel user mobility prediction based autonomous proactive energy saving (AURORA) framework for future UDN. Instead of observing changes in cell loads passively and then reacting to them, AURORA uses past hand over traces to determine future cell loads. This prediction is then used to proactively schedule small cell sleep cycles. AURORA also incorporates the effect of cell individual offsets for balancing load among cells to ensure QoS while maximizing ES. Extensive system level simulations leveraging realistic SLAW model based mobility traces show that AURORA can achieve significant energy reduction gain without noticeable impact on QoS.

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

[2]  Bhaskar Krishnamachari,et al.  Dynamic Base Station Switching-On/Off Strategies for Green Cellular Networks , 2013, IEEE Transactions on Wireless Communications.

[3]  Xiaoli Chu,et al.  An Energy Saving Small Cell Sleeping Mechanism with Cell Expansion in Heterogeneous Networks , 2016, 2016 IEEE 83rd Vehicular Technology Conference (VTC Spring).

[4]  Qi Wang,et al.  A Distributed base station On/Off Control Mechanism for energy efficiency of small cell networks , 2015, 2015 IEEE International Conference on Communications (ICC).

[5]  Adnan Abu-Dayya,et al.  A framework for classification of Self-Organising network conflicts and coordination algorithms , 2013, 2013 IEEE 24th Annual International Symposium on Personal, Indoor, and Mobile Radio Communications (PIMRC).

[6]  Jie Wu,et al.  An Efficient Prediction-Based Routing in Disruption-Tolerant Networks , 2012, IEEE Transactions on Parallel and Distributed Systems.

[7]  Injong Rhee,et al.  SLAW: A New Mobility Model for Human Walks , 2009, IEEE INFOCOM 2009.

[8]  Ali Imran,et al.  Spatiotemporal Mobility Prediction in Proactive Self-Organizing Cellular Networks , 2017, IEEE Communications Letters.

[9]  Xuemin Shen,et al.  Energy-Aware Traffic Offloading for Green Heterogeneous Networks , 2016, IEEE Journal on Selected Areas in Communications.

[10]  Yang Liu,et al.  QoS-Aware Distributed Cell Sleep Algorithm for OFDMA Small Cell Networks , 2015, 2015 IEEE 82nd Vehicular Technology Conference (VTC2015-Fall).

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

[12]  Jennifer C. Hou,et al.  Modeling steady-state and transient behaviors of user mobility: formulation, analysis, and application , 2006, MobiHoc '06.

[13]  Ingo Viering,et al.  A Mathematical Perspective of Self-Optimizing Wireless Networks , 2009, 2009 IEEE International Conference on Communications.

[14]  Fengming Cao,et al.  The tradeoff between energy efficiency and system performance of femtocell deployment , 2010, 2010 7th International Symposium on Wireless Communication Systems.

[15]  Krzysztof Grochla,et al.  Review of Mobility Models for Performance Evaluation of Wireless Networks , 2013, ICMMI.

[16]  Lina Mroueh,et al.  Green Opportunistic and Efficient Resource Block Allocation Algorithm for LTE Uplink Networks , 2015, IEEE Transactions on Vehicular Technology.

[17]  Emad Alsusa,et al.  Interference and Resource Management Through Sleep Mode Selection in Heterogeneous Networks , 2017, IEEE Transactions on Communications.

[18]  Marc-Olivier Killijian,et al.  Next place prediction using mobility Markov chains , 2012, MPM '12.

[19]  Nikolaos Limnios,et al.  Nonparametric Estimation for Failure Rate Functions of Discrete Time semi-Markov Processes , 2006 .

[20]  Zhisheng Niu,et al.  TANGO: traffic-aware network planning and green operation , 2011, IEEE Wireless Communications.

[21]  N. N. N. Abd Malik,et al.  User's mobility history-based mobility prediction in LTE femtocells network , 2013, 2013 IEEE International RF and Microwave Conference (RFM).

[22]  Chunming Qiao,et al.  Sociological orbit aware location approximation and routing (SOLAR) in MANET , 2007, Ad Hoc Networks.

[23]  Muhammad Ali Imran,et al.  Energy efficiency in heterogeneous wireless access networks , 2013, IEEE Wireless Communications.

[24]  Dacheng Yang,et al.  An energy-efficiency aware sleeping strategy for dense multi-tier HetNets , 2014, 2014 IEEE Globecom Workshops (GC Wkshps).

[25]  Matti Latva-aho,et al.  Opportunistic sleep mode strategies in wireless small cell networks , 2014, 2014 IEEE International Conference on Communications (ICC).

[26]  H. Vincent Poor,et al.  A Survey of Energy-Efficient Techniques for 5G Networks and Challenges Ahead , 2016, IEEE Journal on Selected Areas in Communications.

[27]  Li-Chun Wang,et al.  An interference-aware small cell on/off mechanism in hyper dense small cell networks , 2017, 2017 International Conference on Computing, Networking and Communications (ICNC).

[28]  Jacques Janssen,et al.  Numerical Treatment of Homogeneous Semi-Markov Processes in Transient Case–a Straightforward Approach , 2004 .

[29]  Wirtschaftswissenschaftliche Fakult Lessons Learned From Germany's 2001-2006 Labor Market Reforms , 2009 .

[30]  Yannis Manolopoulos,et al.  Prediction in wireless networks by Markov chains , 2009, IEEE Wireless Communications.

[31]  Remco Litjens,et al.  Potential of energy-oriented network optimisation: Switching off over-capacity in off-peak hours , 2010, 21st Annual IEEE International Symposium on Personal, Indoor and Mobile Radio Communications.

[32]  Rouzbeh Razavi,et al.  Energy-aware configuration of small cell networks , 2014, 2014 IEEE 25th Annual International Symposium on Personal, Indoor, and Mobile Radio Communication (PIMRC).

[33]  Aldebaro Klautau,et al.  Traffic-aware sleep mode algorithm for 5G networks , 2015, 2015 International Workshop on Telecommunications (IWT).

[34]  Muhammad Ali Imran,et al.  Challenges in 5G: how to empower SON with big data for enabling 5G , 2014, IEEE Network.

[35]  Zhifeng Zhao,et al.  Human Mobility Patterns in Cellular Networks , 2013, IEEE Communications Letters.

[36]  Biljana Badic,et al.  Energy Efficient Radio Access Architectures for Green Radio: Large versus Small Cell Size Deployment , 2009, 2009 IEEE 70th Vehicular Technology Conference Fall.

[37]  Dacheng Yang,et al.  Equilibrated Activating Strategy with Small Cell for Energy Saving in Heterogeneous Network , 2014, 2014 IEEE 80th Vehicular Technology Conference (VTC2014-Fall).

[38]  Zhimin Zeng,et al.  Load-Aware Energy Efficiency Optimization in Dense Small Cell Networks , 2017, IEEE Communications Letters.

[39]  Gerhard Fettweis,et al.  Small-Cell Self-Organizing Wireless Networks , 2014, Proceedings of the IEEE.

[40]  Attahiru Sule Alfa,et al.  Application of Mobility Prediction in Wireless Networks Using Markov Renewal Theory , 2010, IEEE Transactions on Vehicular Technology.

[41]  Federico Boccardi,et al.  SLEEP mode techniques for small cell deployments , 2011, IEEE Communications Magazine.

[42]  Albert-László Barabási,et al.  Limits of Predictability in Human Mobility , 2010, Science.

[43]  David Grace,et al.  Traffic-Aware Cell Management for Green Ultradense Small-Cell Networks , 2017, IEEE Transactions on Vehicular Technology.