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Leveraging Energy Cycle Regularity to Predict Adaptive Mode for Non-volatile Processors

机译:利用能量循环规律性预测非易失性处理器的自适应模式

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Ambient energy harvesting technique is currently an ideal alternative to the state-of-the-art batteries for the power supply of IoT edge devices. Due to the intermittent power supply of the ambient energy, the systems suffer data loss and procedure rollbacks. NVPs have been proposed to ameliorate this problem through storing the volatile data into NVM when power fails and coping back them when power resumes. Recent studies have shown that NVPs can enter the retention mode when a power failure occurs so as to further mitigate the backup and recovery overheads through waiting for power resumption instead of immediate backup. However, the effectiveness of retention-based mechanism highly depends on energy prediction, which usually results in a complicated and slow mode decision process. If we use simple mode decision mechanism, the system may often enter inappropriate mode. In this work, we observe an interesting phenomenon that quite a few ambient energy waveforms exhibit regularity that the duration of the power outage in one energy cycle is quite akin to the adjacent ones. Addressing the mode decision issue upon power failures and exploiting the power regularity property, we build a fast history adaptive mechanism to accurately determine the backup or retention modes for a NVP system upon power dropping to a threshold. The metrics of energy cycle length, historical mode ratio and resumption time are defined to direct the proposed two-phase mode decision process. Experimental evaluations demonstrate the proposed prediction mechanism achieves up to 1.38X execution progress and up to 41.9% improvement on energy utilization over the conventional scheme.
机译:当前,环境能量收集技术是用于为IoT边缘设备供电的最新电池的理想替代品。由于环境能量的间歇性供电,系统遭受了数据丢失和过程回滚的困扰。提出了NVP来解决此问题,方法是在电源故障时将易失性数据存储到NVM中,并在电源恢复时将其恢复。最近的研究表明,NVP可以在发生电源故障时进入保留模式,以便通过等待电源恢复而不是立即备份来进一步减轻备份和恢复开销。但是,基于保留的机制的有效性高度取决于能量预测,这通常会导致复杂而缓慢的模式决策过程。如果我们使用简单的模式决策机制,则系统可能经常会进入不合适的模式。在这项工作中,我们观察到一个有趣的现象,即相当多的环境能量波形表现出规律性,即一个能量周期内停电的持续时间与相邻的能量周期相当。为了解决电源故障时的模式决策问题并利用电源规律性属性,我们构建了一种快速历史自适应机制,可以在电源下降到阈值时准确确定NVP系统的备份或保留模式。定义了能量循环长度,历史模式比率和恢复时间的指标,以指导提出的两阶段模式决策过程。实验评估表明,与传统方案相比,所提出的预测机制可实现高达1.38倍的执行进度,并在能源利用率方面提高了41.9%。

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