多传感器设备调度策略的电池感知设计探索

Yukai Chen, D. J. Pagliari, E. Macii, M. Poncino
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引用次数: 17

摘要

在电池供电的多传感器设备中,寿命最大化是一个关键挑战。电池感知电源管理策略将任务调度与动态电压缩放(DVS)相结合,考虑到设备所消耗的功率与电池所提供的功率由于其许多非理想性而不同。然而,该领域最先进的技术并没有考虑到几个重要的方面,例如传感任务对总体功率需求的影响,由多次DC-DC转换引起的(工作点依赖的)损耗,以及由电流在时间和频域的不同分布引起的电池效率的动态变化。在这项工作中,我们提出了一种新的方法来确定最佳的电源管理解决方案,解决了所有这些限制。具体来说,我们使用先进的电池和DC-DC转换器模型,提出了静态(在设计时)和动态(在运行时)探索调度空间的方法,不仅考虑计算任务,还考虑通信和感知。通过该方法,我们发现如果采用最优电源管理策略,电池寿命可延长23.36%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Battery-aware Design Exploration of Scheduling Policies for Multi-sensor Devices
Lifetime maximization is a key challenge in battery-powered multi-sensor devices. Battery-aware power management strategies combine task scheduling with dynamic voltage scaling (DVS), accounting for the fact that the power drawn by the device is different from that provided by the battery due to its many non-idealities. However, state-of-the-art techniques in this field do not take into account several important aspects, such as the impact of sensing tasks on the overall power demand, the (operating point dependent) losses due to multiple DC-DC conversions, and the dynamic modifications in battery efficiency caused by different distributions of the currents in the temporal and in the frequency domains. In this work, we propose a novel approach to identify optimal power management solutions, that addresses all these limitations. Specifically, using advanced battery and DC-DC converter models, we propose methods to explore the scheduling space both statically (at design time) and dynamically (at runtime), accounting not only for computation tasks, but also for communication and sensing. With this method, we show that the battery lifetime can be increased by as much as 23.36% if an optimal power management strategy is adopted.
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