期刊文献+

Mobile-agent-based energy-efficient scheduling with dynamic channel acquisition in mobile cloud computing

Mobile-agent-based energy-efficient scheduling with dynamic channel acquisition in mobile cloud computing
下载PDF
导出
摘要 Mobile cloud computing(MCC) combines mobile Internet and cloud computing to improve the performance of mobile applications. However, MCC faces the problem of energy efficiency because of randomly varying channels. A scheduling algorithm is proposed by introducing the Lyapunov optimization, which can dynamically choose users to transmit data based on queue backlog and channel statistics. The Lyapunov analysis shows that the proposed scheduling algorithm can make a tradeoff between queue backlog and energy consumption in the channel-aware mobile cloud computing system. The simulation results verify the effectiveness of the proposed algorithm. Mobile cloud computing(MCC) combines mobile Internet and cloud computing to improve the performance of mobile applications. However, MCC faces the problem of energy efficiency because of randomly varying channels. A scheduling algorithm is proposed by introducing the Lyapunov optimization, which can dynamically choose users to transmit data based on queue backlog and channel statistics. The Lyapunov analysis shows that the proposed scheduling algorithm can make a tradeoff between queue backlog and energy consumption in the channel-aware mobile cloud computing system. The simulation results verify the effectiveness of the proposed algorithm.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2016年第3期712-720,共9页 系统工程与电子技术(英文版)
基金 supported by the National Natural Science Foundation of China(61173017) the National High Technology Research and Development Program(863 Program)(2014AA01A701)
关键词 mobile cloud computing mobile Internet queueing energy efficiency Lyapunov optimization mobile cloud computing mobile Internet queueing energy efficiency Lyapunov optimization
  • 相关文献

参考文献31

  • 1[K]H. T. Dinh, C. Lee, D. Niyato, et al. A survey of mobile cloudcomputing: architecture, applications, and approaches. WirelessCommunications & Mobile Computing, 2013, 13(18): 1587–1611.
  • 2F. M. Liu, P. Shu, H. Jin, et al. Gearing resource-poor mobiledevices with powerful clouds: architectures, challenges, andapplications. IEEE Wireless Communications, 2013, 20(3): 1334–1354.
  • 3N. Fernando, S. W. Loke, W. Rahayu. Mobile cloud computing:a survey. Future Generation Computer Systems, 2013, 29(1):84–106.
  • 4G. Li, H. Sun, H. Gao, et al. A survey on wireless grids andclouds. Proc. of the Eighth International Conference on Grid andCooperative Computing, 2009: 261– 267.
  • 5C. Ge, Z. Sun, N. Wang. A survey of power-saving techniques ondata centers and content delivery networks. IEEE CommunicationsSurveys & Tutorials, 2013, 15(3): 1334–1354.
  • 6F. W. Fu, M. Schaar. Structure-aware stochastic control fortransmission scheduling. IEEE Trans. on Vehicle Technology,2012, 61(9): 3931– 3945.
  • 7N. Balasubramanian, A. Balasubramanian, A. Venkataramani.Energy consumption in mobile phones: a measurement studyand implications for network applications. Proc. of the ACMSIGCOMM Conference on Internet Measurement Conference,2009: 280–293.
  • 8S. Wang, S. Dey. Adaptive mobile cloud computing to enablerich mobile multimedia applications. IEEE Trans. on Multimedia,2013, (4): 870–883.
  • 9D. T. Hoang, D. Niyato, P. Wang. Optimal admission controlpolicy for mobile cloud computing hotspot with cloudlet. Proc. ofthe IEEE Wireless Communications and Networking Conference ,2012: 3145–3149.
  • 10B. Cao, Y. Ge, C. W. Kim, et al. An experimental study for interuserinterference mitigation in wireless body sensor networks.IEEE Sensors Journal, 2013, 13(10): 3585–3595.

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部