Litcius/Paper detail

Low Power Optimisations for IoT Wearable Sensors Based on Evaluation of Nine QRS Detection Algorithms

Jiamin Li, Adnan Ashraf, Barry Cardiff, Rajesh C. Panicker, Yong Lian, Deepu John

2020IEEE Open Journal of Circuits and Systems33 citationsDOIOpen Access PDF

Abstract

This paper aims to reduce the power consumption of electrocardiography based wearable healthcare devices, by introducing power reduction approaches and considerations at system level design, where we have the highest potential to influence power. It focuses, in particular, on algorithm design and implementation, data acquisition, and transmission under constrained resources. A thorough investigation of the suitability of nine existing algorithms for on-sensor QRS feature detection is conducted, with respect to metrics such as sensitivity, positive predictivity, power consumption, parameter choice and time delay. Optimisation of data acquisition on CPU-based IoT systems is performed, and the current consumption is reduced by a factor of 3 using a combination of direct memory access (DMA) list approach and low-level register manipulations for task delegation. The acquisition data rate, sampling rate, buffer and batch size are also optimised. To reduce the power consumption by data transmission, the effect of on-sensor versus off-sensor processing is investigated. While focusing on CPU-based systems with experiments performed on a generic low-power wearable platform, the design optimisation and considerations proposed in this work could be extended to custom designs and allow further investigation into QRS detection algorithm optimisation for wearable devices.

Topics & Concepts

Computer scienceWearable computerReal-time computingWearable technologyWireless sensor networkFeature (linguistics)Embedded systemAlgorithmComputer networkPhilosophyLinguisticsECG Monitoring and AnalysisNon-Invasive Vital Sign MonitoringWireless Body Area Networks