Joint cloud and radio resource management for video transmissions in mobile cloud computing networks

In mobile cloud computing (MCC) systems, the resource in both the cloud and the mobile network should be carefully managed. Cloud resource management and radio resource management have traditionally been addressed separately in previous works. In this paper, we propose to jointly study dynamic cloud and radio resource management so as to improve end-to-end performance of adaptive video transmissions in MCC systems. Video application quality of service performance, distortion, is adopted as the performance measure. An important video application layer parameter, intra-refreshing rate, is optimized to improve the video distortion performance. We formulate the problem as a stochastic restless bandits optimization problem, which facilitates the distributed MCC architecture and simplifies the computation and implementation due to its “indexibility” property. Simulation results are presented to show the effectivenes of the proposed scheme.

[1]  F. Richard Yu,et al.  QoS- and security-aware dynamic spectrum management for cyber-physical surveillance system , 2013, 2013 IEEE Global Communications Conference (GLOBECOM).

[2]  Victor C. M. Leung,et al.  Optimal Cooperative Internetwork Spectrum Sharing for Cognitive Radio Systems With Spectrum Pooling , 2010, IEEE Transactions on Vehicular Technology.

[3]  Hitesh Ballani,et al.  Towards predictable datacenter networks , 2011, SIGCOMM 2011.

[4]  Wang Haijun,et al.  Further considerations of 100Gbit/s Wavelength Division Multiplexing system commercial application , 2013, China Communications.

[5]  Jianfei Cai,et al.  Joint source channel rate-distortion analysis for adaptive mode selection and rate control in wireless video coding , 2002, IEEE Trans. Circuits Syst. Video Technol..

[6]  Lisandro Zambenedetti Granville,et al.  Data Center Network Virtualization: A Survey , 2013, IEEE Communications Surveys & Tutorials.

[7]  P. Whittle Restless bandits: activity allocation in a changing world , 1988, Journal of Applied Probability.

[8]  Joseph Mitola,et al.  Cognitive radio: making software radios more personal , 1999, IEEE Wirel. Commun..

[9]  Bu-Sung Lee,et al.  Optimization of Resource Provisioning Cost in Cloud Computing , 2012, IEEE Transactions on Services Computing.

[10]  Zhang Yanhua,et al.  Optimal transmission behaviour policies of secondary users in proactive-optimization cognitive radio networks , 2013, China Communications.

[11]  Dimitris Bertsimas,et al.  Restless Bandits, Linear Programming Relaxations, and a Primal-Dual Index Heuristic , 2000, Oper. Res..

[12]  Ion Stoica,et al.  FairCloud: sharing the network in cloud computing , 2011, SIGCOMM '12.

[13]  Cristina Cervello-Pastor,et al.  On the optimal allocation of virtual resources in cloud computing networks , 2013, IEEE Transactions on Computers.

[14]  Antony I. T. Rowstron,et al.  The price is right: towards location-independent costs in datacenters , 2011, HotNets-X.

[15]  F. Richard Yu,et al.  Optimal network selection in heterogeneous wireless multimedia networks , 2010, Wirel. Networks.

[16]  Jens Zander,et al.  Radio resource management in future wireless networks: requirements and limitations , 1997, IEEE Commun. Mag..