Improving energy efficiency for mobile platforms by exploiting low-power sleep states

Alexander W. Min, Ren Wang, James Tsai, M. A. Ergin, T. Tai
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引用次数: 36

Abstract

Reducing energy consumption is one of the most important design aspects for small form-factor mobile platforms, such as smartphones and tablets. Despite its potential for power savings, optimally leveraging system low-power sleep states during active mobile workloads, such as video streaming and web browsing, has not been fully explored. One major challenge is to make intelligent power management decisions based on, among other things, accurate system idle duration prediction, which is difficult due to the non-deterministic system interrupt behavior. In this paper, we propose a novel framework, called E2S3 (Energy Efficient Sleep-State Selection), that dynamically enters the optimal low-power sleep state to minimize the system power consumption. In particular, E2S3 detects and exploits short idle durations during active mobile workloads by, (i) finding optimal thresholds (i.e., energy break-even times) for multiple low-power sleep states, (ii) predicting the sleep-state selection error probabilities heuristically, and by (iii) selecting the optimal sleep state based on the expected reward, e.g., power consumption, which incorporates the risks of making a wrong decision We implemented and evaluated E2S3 on Android-based smartphones, demonstrating the effectiveness of the algorithm. The evaluation results show that E2S3 significantly reduces the platform energy consumption, by up to 50% (hence extending battery life), without compromising system performance.
通过利用低功耗睡眠状态来提高移动平台的能源效率
对于智能手机和平板电脑等小型移动平台来说,降低能耗是最重要的设计方面之一。尽管它具有节能的潜力,但在活动移动工作负载(如视频流和网页浏览)期间最佳地利用系统低功耗睡眠状态尚未得到充分探索。其中一个主要挑战是基于准确的系统空闲持续时间预测做出智能电源管理决策,由于系统中断行为的不确定性,这很困难。在本文中,我们提出了一个新的框架,称为E2S3 (Energy Efficient sleep - state Selection),它动态地进入最佳的低功耗睡眠状态,以最小化系统功耗。特别是,E2S3检测和利用活动移动工作负载期间的短空闲持续时间,(i)为多个低功耗睡眠状态找到最佳阈值(即能量盈亏平衡时间),(ii)启发式地预测睡眠状态选择错误概率,以及(iii)根据预期奖励选择最佳睡眠状态,例如,功耗,其中包含做出错误决策的风险。验证了算法的有效性。评估结果表明,E2S3在不影响系统性能的情况下,显著降低了平台能耗,最多可降低50%(从而延长了电池寿命)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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