Path selection using handover in mobile networks with cloud-enabled small cells

To overcome latency constrain of common mobile cloud computing, computing capabilities can be integrated into a base station in mobile networks. This exploitation of convergence of mobile networks and cloud computing enables to take advantage of proximity between a user equipment (UE) and its serving station to lower latency and to avoid backhaul overloading due to cloud computing services. This concept of cloud-enabled small cells is known as small cell cloud (SCC). In this paper, we propose algorithm for selection of path between the UE and the cell, which performs computing for this particular UE. As a path selection metrics we consider transmission delay and energy consumed for transmission of offloaded data. The path selection considering both metrics is formulated as Markov Decision Process. Comparing to a conventional delivery of data to the computing small cells, the proposed algorithm enables to reduce the delay by 9% and to increase users' satisfaction with experienced delay by 6.5%.

[1]  Zdenek Becvar,et al.  An architecture for mobile computation offloading on cloud-enabled LTE small cells , 2014, 2014 IEEE Wireless Communications and Networking Conference Workshops (WCNCW).

[2]  Myron Hlynka,et al.  Queueing Networks and Markov Chains (Modeling and Performance Evaluation With Computer Science Applications) , 2007, Technometrics.

[3]  Sassan Ahmadi LTE-Advanced: A Practical Systems Approach to Understanding 3GPP LTE Releases 10 and 11 Radio Access Technologies , 2013 .

[4]  JAMAL N. AL-KARAKI,et al.  Routing techniques in wireless sensor networks: a survey , 2004, IEEE Wireless Communications.

[5]  Samir R Das,et al.  Ad hoc on-demand multipath distance vector routing , 2002, MOCO.

[6]  Sergio Barbarossa,et al.  Computation offloading for mobile cloud computing based on wide cross-layer optimization , 2013, 2013 Future Network & Mobile Summit.

[7]  Sokol Kosta,et al.  To offload or not to offload? The bandwidth and energy costs of mobile cloud computing , 2013, 2013 Proceedings IEEE INFOCOM.

[8]  Valerio Di Valerio,et al.  Optimal Virtual Machines allocation in mobile femto-cloud computing: An MDP approach , 2014, WCNC Workshops.

[9]  Sergio Barbarossa,et al.  FREEDOM Project. Scenario, requirements and first business model analysis , 2010 .

[10]  Sunil Kumar,et al.  Robust On-Demand Multipath Routing with Dynamic Path Upgrade for Delay-Sensitive Data over Ad Hoc Networks , 2013, J. Comput. Networks Commun..

[11]  B Suresh,et al.  Survey of Power Control Schemes for LTE Uplink , 2013 .

[12]  Preben E. Mogensen,et al.  Reducing LTE Uplink Transmission Energy by Allocating Resources , 2011, 2011 IEEE Vehicular Technology Conference (VTC Fall).

[13]  Markus Rupp,et al.  The Vienna LTE simulators - Enabling reproducibility in wireless communications research , 2011, EURASIP J. Adv. Signal Process..