智能手机CPU能耗随机优化研究

Makar Pelogeiko, Stanislav Sartasov, Oleg Granichin
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引用次数: 0

摘要

随着时间的推移,延长智能手机的工作时间是一项持续的努力,变得越来越重要。它可以通过更先进的硬件或通过向软件引入能源意识实践来实现,后者是一种更容易实现的方法。由于CPU是最耗电的智能手机设备之一,动态电压频率缩放(DVFS)是一种调整CPU频率以适应当前计算需求的技术,并且已经开发了不同的算法,包括能量感知和能量不可知类型。根据我们之前的研究,我们提出了一种新的DVFS方法,使用同时摄动随机逼近(SPSA)和两个噪声观测来跟踪最优频率,并在此基础上实现几种算法。此外,我们还解决了CPU改变频率的信号与实际更新之间的硬件滞后问题。因为Android操作系统可以使用默认的任务调度程序或能量感知的任务调度程序,这能够利用异构的移动CPU架构,如ARM big。此外,我们还探讨了所提出的算法与操作系统调度程序之间的集成方案。本文提出了一种基于模型的测试方法,用于将开发的算法与现有的算法进行比较,并概述了反映真实用例场景的测试套件。我们的实验表明,基于spsa的算法通过简化的集成方案可以很好地与EAS结合,显示出与其他能量感知DVFS算法相当的CPU性能,并且降低了能耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Stochastic Optimization for Smartphone CPU Energy Consumption Decrease
Extending smartphone working time is an ongoing endeavour becoming more and more important with each passing year. It could be achieved by more advanced hardware or by introducing energy-aware practices to software, and the latter is a more accessible approach. As the CPU is one of the most power-hungry smartphone devices, Dynamic Voltage Frequency Scaling (DVFS) is a technique to adjust CPU frequency to the current computational needs, and different algorithms were already developed, both energy-aware and energy-agnostic kinds. Following our previous work on the subject, we propose a novel DVFS approach to use simultaneous perturbation stochastic approximation (SPSA) with two noisy observations for tracking the optimal frequency and implementing several algorithms based on it. Moreover, we also address an issue of hardware lag between a signal for the CPU to change frequency and its actual update. As Android OS could use a default task scheduler or an energy-aware one, which is capable of taking advantage of heterogeneous mobile CPU architectures such as ARM big.LITTLE, we also explore an integration scheme between the proposed algorithms and OS schedulers. A model-based testing methodology to compare the developed algorithms against existing ones is presented, and a test suite reflecting real-world use case scenarios is outlined. Our experiments show that the SPSA-based algorithm works well with EAS with a simplified integration scheme, showing CPU performance comparable to other energy-aware DVFS algorithms and a decreased energy consumption.
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