Increasing the Energy-Efficiency of Wearables Using Low-Precision Posit Arithmetic with PHEE
David Mallas\'en, Pasquale Davide Schiavone, Alberto A. Del Barrio, Manuel Prieto-Matias, David Atienza

TL;DR
This paper demonstrates that low-precision posit arithmetic can significantly reduce energy consumption and hardware size in wearable edge AI biomedical devices without sacrificing accuracy.
Contribution
It introduces PHEE, a modular architecture with a posit coprocessor, validating energy savings through hardware synthesis for biomedical applications.
Findings
16-bit posits match 32-bit float accuracy in cough detection.
8-10 bit posits are sufficient for ECG R peak detection.
Hardware implementation reduces size by 38% and power by 42.3%.
Abstract
Wearable edge AI biomedical devices are increasingly being used for continuous patient health monitoring, enabling real-time insights and extended data collection without the need for prolonged hospital stays. These devices must be energy efficient to minimize battery size, improve comfort, and reduce recharging intervals. This paper investigates the use of specialized low-precision arithmetic formats to enhance the energy efficiency of edge AI biomedical wearables. Specifically, we explore posit arithmetic, a floating-point-like representation, in two biomedical applications that leverage supervised and unsupervised learning algorithms: cough detection for chronic cough monitoring and R peak detection in ECG analysis. Our results reveal that 16-bit posits can replace 32-bit IEEE 754 floating point numbers with minimal accuracy loss in cough detection. For R peak detection, posit…
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