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Energy-efficient dynamic offloading and resource scheduling in mobile cloud computing

机译:移动云计算中的节能动态卸载和资源调度

摘要

Mobile cloud computing (MCC) as an emerging and prospective computing paradigm, can significantly enhance computation capability and save energy of smart mobile devices (SMDs) by offloading computation-intensive tasks from resource-constrained SMDs onto the resource-rich cloud. However, how to achieve energy-efficient computation offloading under the hard constraint for application completion time remains a challenge issue. To address such a challenge, in this paper, we provide an energy-efficient dynamic offloading and resource scheduling (eDors) policy to reduce energy consumption and shorten application completion time. We first formulate the eDors problem into the energy-efficiency cost (EEC) minimization problem while satisfying the task-dependency requirements and the completion time deadline constraint. To solve the optimization problem, we then propose a distributed eDors algorithm consisting of three subalgorithms of computation offloading selection, clock frequency control and transmission power allocation. More importantly, we find that the computation offloading selection depends on not only the computing workload of a task, but also the maximum completion time of its immediate predecessors and the clock frequency and transmission power of the mobile device. Finally, our experimental results in a real testbed demonstrate that the eDors algorithm can effectively reduce the EEC by optimally adjusting the CPU clock frequency of SMDs based on the dynamic voltage and frequency scaling (DVFS) technique in local computing, and adapting the transmission power for the wireless channel conditions in cloud computing.
机译:移动云计算(MCC)作为新兴的前瞻性计算范例,可以通过将计算密集型任务从资源受限的SMD转移到资源丰富的云中来显着增强计算能力并节省智能移动设备(SMD)的能量。但是,如何在应用程序完成时间的严格约束下实现高能效的计算分流仍然是一个难题。为了解决这一挑战,本文提供了一种节能高效的动态卸载和资源调度(eDors)策略,以减少能耗并缩短应用程序完成时间。我们首先将eDors问题公式化为能效成本(EEC)最小化问题,同时满足任务依赖性要求和完成时间期限约束。为了解决优化问题,我们提出了一种分布式eDors算法,该算法由计算分流选择,时钟频率控制和传输功率分配三个子算法组成。更重要的是,我们发现计算分流选择不仅取决于任务的计算工作量,还取决于其前任任务的最大完成时间以及移动设备的时钟频率和传输功率。最后,我们在真实测试平台上的实验结果表明,eDors算法可以通过在本地计算中基于动态电压和频率缩放(DVFS)技术最优地调整SMD的CPU时钟频率来有效地降低EEC,并为云计算中的无线通道条件。

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