基于现实电池模型和半马尔可夫决策过程的移动设备最优卸载控制

Shuang Chen, Yanzhi Wang, Massoud Pedram
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引用次数: 9

摘要

由于移动设备的电池容量有限,提出了移动云计算(MCC)的概念,将一些应用程序从本地设备卸载到云端以获得更高的能源效率。应该明智地确定要卸载用于远程处理的应用程序或任务的部分。本文研究了MCC系统中任务的最优调度、传输和执行问题。动态电压和频率缩放(DVFS)应用于本地移动处理器,而移动设备的射频发射机可以选择多种调制方案和比特率。不能直接控制的移动组件的功耗,如触摸屏、GPU、音频编解码器和I/O端口,也通过捕获它们与移动处理器和RF发射器的相关性来考虑。最后,为了更准确地估计电池的能量损失率,本文采用了一个真实准确的电池模型。本文提出了一种基于半马尔可夫决策过程(SMDP)的优化框架,该框架采用不同的DVFS级别和调制方案/传输比特率,目标是最小化从电池中获取的能量和请求服务中的平均延迟。本文采用线性规划与启发式搜索相结合的方法,导出了最优DVFS策略、最优卸载率、最优传输方案等最优解。在高通骁龙移动开发平台MSM8660上进行了实验,找出了CPU、射频组件和其他组件功耗之间的相关性。仿真结果表明,所提出的最优解始终优于一些基准算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal offloading control for a mobile device based on a realistic battery model and semi-Markov decision process
Due to the limited battery capacity in mobile devices, the concept of mobile cloud computing (MCC) is proposed where some applications are offloaded from the local device to the cloud for higher energy efficiency. The portion of applications or tasks to be offloaded for remote processing should be judiciously determined. In this paper, the problem of optimal task dispatch, transmission, and execution in the MCC system is considered. Dynamic voltage and frequency scaling (DVFS) is applied to the local mobile processor, whereas the RF transmitter of the mobile device can choose from multiple modulation schemes and bit rates. The power consumptions of the mobile components that cannot be directly controlled, e.g., the touch screen, GPU, audio codec, and I/O ports, are also accounted for through capturing their correlation with the mobile processor and RF transmitter. Finally, a realistic and accurate battery model is adopted in this work in order to estimate the battery energy loss rate in a more accurate way. This paper presents a semi-Markov decision process (SMDP)-based optimization framework, with the actions of different DVFS levels and modulation schemes/transimission bit rates and the objective of minimizing both the energy drawn from the battery and the average latency in request servicing. This paper derives the optimal solution, including the optimal DVFS policy, offloading rate, and transmission scheme, using linear programming combined with a heuristic search. Experiments are conducted on Qualcomm Snapdragon Mobile Development Platform MSM8660 to find the correlations among the power consumptions of the CPU, RF components, and other components. Simulation results show that the proposed optimal solution consistently outperforms some baseline algorithms.
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