PEAR: Power efficiency through activity recognition (for ECG-based sensing)

Feng-Tso Sun, Cynthia Kuo, M. Griss
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引用次数: 35

Abstract

The PEAR (Power Efficiency though Activity Recognition) framework is presented using an ECG-based body sensor network as a case study. PEAR addresses real-world challenges in continuously monitoring physiological signals. PEAR leverages a wearable sensor's embedded processing power to conserve energy resources. This is accomplished by performing some data processing on the sensor and reducing the overhead of wireless data transmission. A coarse-grained decision tree-based activity classifier was implemented on a sensor node to recognize the sensor wearer's activity level. Using the wearer's activity level, the sensor dynamically manages its activities-sampling of the ECG sensor, processing of the data, and wireless transmission — to minimize overall power consumption. This paper describes the design and implementation of RR interval extraction and activity recognition modules on a SHIMMER sensor node. An activity-aware energy model is presented along with energy profiling results. The level of energy conservation varies with a wearer's level of activity, and a sensitivity analysis shows that PEAR's advantage over standard body sensor network architectures increases with more activity. In a user study, our participants were active 18%–28% of the time. Based on this level of activity, our implementation of PEAR increases battery life up to 2.5 times when compared to conventional ECG sensing approaches. This approach is applicable to a broad range of pervasive health applications that incorporate continuous monitoring of physiological signals.
PEAR:通过活动识别实现的能效(用于基于脑电图的传感)
PEAR(通过活动识别的功率效率)框架使用基于脑电图的身体传感器网络作为案例研究。PEAR解决了持续监测生理信号的现实挑战。PEAR利用可穿戴传感器的嵌入式处理能力来节约能源。这是通过在传感器上执行一些数据处理和减少无线数据传输的开销来实现的。在传感器节点上实现了基于粗粒度决策树的活动分类器,以识别传感器佩戴者的活动水平。利用佩戴者的活动水平,传感器动态地管理其活动——心电传感器的采样、数据处理和无线传输——以最大限度地减少总功耗。本文描述了在SHIMMER传感器节点上RR间隔提取和活动识别模块的设计与实现。提出了一个活动感知的能量模型,并给出了能量分析结果。节能水平随穿戴者的活动水平而变化,灵敏度分析表明,PEAR优于标准身体传感器网络架构的优势随着活动的增加而增加。在一项用户研究中,我们的参与者有18%-28%的时间是活跃的。基于这种活动水平,与传统的ECG传感方法相比,我们的PEAR实现可将电池寿命延长2.5倍。这种方法适用于广泛的普遍健康应用,包括对生理信号的连续监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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