表征和优化智能手表的后台数据传输

Yi Yang, G. Cao
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引用次数: 6

摘要

智能手表正在迅速普及,但其有限的电池寿命仍然是影响用户满意度的一个重要因素。为了提供完整的功能,智能手表通常通过蓝牙与手机相连。然而,对蓝牙功率特性和蓝牙数据流量的能量影响的研究却很少。为了解决这个问题,我们首先基于广泛的测量和对Android智能手表上蓝牙实现的彻底检查建立了蓝牙功率模型。然后我们对智能手表的后台数据传输进行了第一次深入的调查,发现它们很普遍,并且消耗了大量的能量。例如,我们的实验表明,由于后台数据传输,智能手表的电池寿命可能会减少三分之一(甚至更糟)。如此高的能量成本是由于许多不必要的数据传输和数据传输模式(即频繁传输小数据)与蓝牙能量特性(即尾部效应)之间的不利交互导致的能量效率低下造成的。基于确定的原因,我们提出了四种能量优化技术,即快速休眠、电话启动轮询、两阶段传感器处理和上下文感知推送。第一个目标是减少延迟容忍数据传输的尾能量。后三个是为负责大多数后台数据传输的特定应用程序设计的。评估结果表明,联合使用这些技术可以节省70.6%的蓝牙能量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing and optimizing background data transfers on smartwatches
Smartwatches are quickly gaining popularity, but their limited battery life remains an important factor that adversely affects user satisfaction. To provide full functionality, smartwatches are usually connected to phones via Bluetooth. However, the Bluetooth power characteristics and the energy impact of Bluetooth data traffic have been rarely studied. To address this issue, we first establish the Bluetooth power model based on extensive measurements and a thorough examination of the Bluetooth implementation on Android smartwatches. Then we perform the first in-depth investigation of the background data transfers on smartwatches, and find that they are prevalent and consume a large amount of energy. For example, our experiments show that the smartwatch's battery life can be reduced to one third (or even worse) due to background data transfers. Such high energy cost is caused by many unnecessary data transfers and the energy inefficiency attributed to the adverse interaction between the data transfer pattern (i.e., frequently transferring small data) and the Bluetooth energy characteristics (i.e., the tail effect). Based on the identified causes, we propose four energy optimization techniques, which are fast dormancy, phone-initiated polling, two-stage sensor processing, and context-aware pushing. The first one aims to reduce tail energy for delay-tolerant data transfers. The latter three are designed for specific applications which are responsible for most background data transfers. Evaluation results show that jointly using these techniques can save 70.6% of the Bluetooth energy.
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