Bartendr: a practical approach to energy-aware cellular data scheduling

Aaron Schulman, Vishnu Navda, R. Ramjee, N. Spring, P. Deshpande, Calvin Grunewald, K. Jain, V. Padmanabhan
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引用次数: 280

Abstract

Cellular radios consume more power and suffer reduced data rate when the signal is weak. According to our measurements, the communication energy per bit can be as much as 6x higher when the signal is weak than when it is strong. To realize energy savings, applications must preferentially communicate when the signal is strong, either by deferring non-urgent communication or by advancing anticipated communication to coincide with periods of strong signal. Allowing applications to perform such scheduling requires predicting signal strength, so that opportunities for energy-efficient communication can be anticipated. Furthermore, such prediction must be performed at little energy cost. In this paper, we make several contributions towards a practical system for energy-aware cellular data scheduling called Bartendr. First, we establish, via measurements, the relationship between signal strength and power consumption. Second, we show that location alone is not sufficient to predict signal strength and motivate the use of tracks to enable effective prediction. Finally, we develop energy-aware scheduling algorithms for different workloads - syncing and streaming - and evaluate these via simulation driven by traces obtained during actual drives, demonstrating energy savings of up to 60%. Our experiments have been performed on four cellular networks across two large metropolitan areas, one in India and the other in the U.S.
调酒师:能量感知蜂窝数据调度的实用方法
当信号较弱时,蜂窝无线电会消耗更多的功率,并且数据速率会降低。根据我们的测量,当信号较弱时,每比特的通信能量可能比信号较强时高出6倍。为了实现节能,应用程序必须在信号较强时优先通信,要么推迟非紧急通信,要么提前预期通信,使其与强信号周期一致。允许应用程序执行这样的调度需要预测信号强度,以便可以预测节能通信的机会。此外,这种预测必须以很少的能源成本进行。在本文中,我们为一个实用的能量感知蜂窝数据调度系统Bartendr做了一些贡献。首先,我们通过测量建立了信号强度和功耗之间的关系。其次,我们表明,位置本身不足以预测信号强度,并激励使用轨道来实现有效的预测。最后,我们为不同的工作负载(同步和流)开发了能量感知调度算法,并通过在实际驱动器中获得的迹线驱动的仿真来评估这些算法,证明节能高达60%。我们的实验在两个大城市的四个蜂窝网络上进行,一个在印度,另一个在美国
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