基于神经网络的非易失性处理器室内多源能量收集系统预测算法

Ning Liu, Caiwen Ding, Yanzhi Wang, J. Hu
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引用次数: 6

摘要

由于尺寸、寿命、安全性和充电方面的考虑,能量收集正在成为许多可穿戴嵌入式系统比电池更好的选择。然而,收获的能量本质上是不稳定的。为了克服这个缺点,人们提出了非易失性处理器(NVPs)来桥接间歇性的程序执行。然而,即使使用NVPs,频繁的电源中断也会严重降低系统性能。因此,本文采用多源室内能量收集架构来弥补单源室内能量收集的不足。我们进一步研究了能量收集预测技术,因为它可以与NVP系统中的任务调度程序协调以补偿间歇性的环境能量收集,因此对NVP系统至关重要。我们研究了单能量收集源和多能量收集源的预测方法,它们的总输出功率比单能量收集源更稳定。在提出的基于神经网络的功率收集预测方法上,利用实际测量的收集轨迹开发了一个综合评估框架。结果表明,对于多源功率收集预测,最有利的预测方法是直接预测DC-DC变换器的总输出功率(能量源与NVP之间的连接),或者先预测DC-DC变换器的总输入功率,然后使用学习映射函数推断总输出功率。
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Neural network-based prediction algorithms for in-door multi-source energy harvesting system for non-volatile processors
Due to size, longevity, safety, and recharging concerns, energy harvesting is becoming a better choice for many wearable embedded systems than batteries. However, harvested energy is intrinsically unstable. In order to overcome this drawback, non-volatile processors (NVPs) have been proposed to bridge intermittent program execution. However, even with NVPs, frequent power interruptions will severely degrade system performance. Hence, in this paper we adopt a multi-source in-door energy harvesting architecture to compensate the shortcoming of single energy source. We further investigate power harvesting prediction techniques, which are critical for NVP systems since they can coordinate with task scheduler in the NVP system to compensate the intermittent ambient energy harvesting. We investigate prediction methods both for single energy harvesting source and for multiple energy harvesting sources, the total output power of which is more stable compared with the single source case. A comprehensive evaluation framework has been developed using actually measured harvesting traces on the proposed neural network-based power harvesting prediction methods. It turns out that the most favorable prediction methods are directly predicting the total output power of DC-DC converters (connecting between energy sources and NVP), or predicting the total input power of DC-DC converters first and then inferring the total output power using a learned mapping function, for multi-source power harvesting predictions.
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