Energy-Efficient Spectral Analysis of ECGs on Resource Constrained IoT Devices.

Charalampos Eleftheriadis, Georgios Karakonstantis
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Abstract

Power spectral analysis (PSA) is one of the most popular and insightful methods, currently employed in several biomedical applications, aiming to identify and monitor various health related conditions. Among the most common applications of PSA is heart rate variability (HRV) analysis, which allows the extraction of further insights compared with conventional time-domain methods. Unfortunately, existing PSA approaches exhibit high computational complexity, hindering their execution on power-constrained embedded internet of things (IoT) devices. Such IoT devices are increasingly used for monitoring various conditions mainly by processing the input signals in the less complex time-domain. In this paper, a new low-complexity PSA system based on fast Gaussian gridding (FGG) is proposed, which can be used to calculate the Lomb-Scargle periodogram (LSP) of a non-uniformly spaced RR tachogram. The proposed approach is implemented on a popular ARM Cortex-M4 based embedded system, which is widely used in common wearables, and compared with conventional LSP-based approaches. Utilizing this experimental setup, a meticulous analysis is performed in terms of power, performance and quality under different operational settings, such as the total input/output samples, precision of computations, computer arithmetic (floating/fixed-point), and clock frequency. The experimental results show that the proposed FGG-based LSP approach, when specifically optimized for the targeted embedded device, outperforms existing approaches by up-to 92.99% and 91.70% in terms of energy consumption and total execution time respectively, with minimal accuracy loss.

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在资源受限的物联网设备上对心电图进行高能效频谱分析
功率谱分析(PSA)是最流行、最具洞察力的方法之一,目前已应用于多个生物医学领域,旨在识别和监测各种健康相关状况。心率变异性(HRV)分析是功率谱分析最常见的应用之一,与传统的时域方法相比,该方法可以提取更多的信息。遗憾的是,现有的 PSA 方法显示出较高的计算复杂性,阻碍了它们在功耗受限的嵌入式物联网(IoT)设备上的执行。此类物联网设备主要通过处理复杂度较低的时域输入信号,越来越多地用于监测各种情况。本文提出了一种基于快速高斯网格划分(FGG)的新型低复杂度 PSA 系统,可用于计算非均匀间隔 RR 流速图的 Lomb-Scargle 周期图(LSP)。建议的方法在基于 ARM Cortex-M4 的嵌入式系统上实现,该系统广泛应用于常见的可穿戴设备,并与传统的基于 LSP 的方法进行了比较。利用该实验装置,对不同操作设置下的功耗、性能和质量进行了细致分析,如总输入/输出采样、计算精度、计算机算术(浮点/定点)和时钟频率。实验结果表明,当针对目标嵌入式设备进行专门优化时,所提出的基于 FGG 的 LSP 方法在能耗和总执行时间方面分别优于现有方法高达 92.99% 和 91.70%,且精度损失极小。
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