Exploration of Low-Power Flexible Stress Monitoring Classifiers for Conformal Wearables

Afentaki, Florentia, Nakkilla, Sri Sai Rakesh, Balaskas, Konstantinos, Duarte, Paula Carolina Lozano, Jiang, Shiyi, Zervakis, Georgios, Firouzi, Farshad, Chakrabarty, Krishnendu, Tahoori, Mehdi B.

arXiv.org Artificial Intelligence 

--Conventional stress monitoring relies on episodic, symptom-focused interventions, missing the need for continuous, accessible, and cost-efficient solutions. State-of-the-art approaches use rigid, silicon-based wearables, which, though capable of multitasking, are not optimized for lightweight, flexible wear, limiting their practicality for continuous monitoring. However, implementing complex circuits like machine learning (ML) classifiers in FE is challenging due to integration and power constraints. Previous research has explored flexible biosensors and ADCs, but classifier design for stress detection remains underexplored. This work presents the first comprehensive design space exploration of low-power, flexible stress classifiers. We cover various ML classifiers, feature selection, and neural simplification algorithms, with over 1200 flexible classifiers. T o optimize hardware efficiency, fully customized circuits with low-precision arithmetic are designed in each case. Our exploration provides insights into designing real-time stress classifiers that offer higher accuracy than current methods, while being low-cost, conformable, and ensuring low power and compact size. Stress is a critical health concern, linked to conditions such as depression, heart disease, digestive issues, and sleep disturbances [1].