Battery-Free, Wireless Graphene Pressure Sensor for Machine Learning-assisted Posture Classification and VR/AR Visualization in Smart Healthcare Environments

Abstract

Continuous monitoring of pressure and temperature at skin interfaces is essential for preventing tissue damage and circulation-related complications in immobile patients. However, most existing healthcare pressure sensors remain bulky, wired, and battery-powered, which limit their suitability for long term use. Here, we report a battery-free, wireless multimodal sensing platform in which single-layer graphene functions as a high-performance pressure-sensing active layer, achieving high sensitivity (1.75 × 10⁻³ kPa⁻¹, gauge factor = 8.6) and excellent stability (over 1,000 operational cycles). The platform enables real-time, reversible detection of pressure and temperature at the skin-device interfaces without external power source. By leveraging deep-learning algorithms, particularly deep neural networks (DNN), the acquired signals are classified into distinct sitting postures, thereby enabling intelligent and continuous monitoring of patient status. Furthermore, integrated augmented- and virtual-reality (AR/VR) interfaces visualize pressure distributions in real time, enabling immersive and remote healthcare oversight. Collectively, this work introduces a graphene-based smart sensing platform that seamlessly integrates wireless operation, AI-driven analytics, and AR/VR visualization for advanced patient monitoring as a sort of personalized and interactive smart healthcare.

Supplementary files

Article information

Article type
Communication
Submitted
29 Nov 2025
Accepted
23 Feb 2026
First published
24 Feb 2026

Mater. Horiz., 2026, Accepted Manuscript

Battery-Free, Wireless Graphene Pressure Sensor for Machine Learning-assisted Posture Classification and VR/AR Visualization in Smart Healthcare Environments

M. Choi, Y. Kim, H. Han, G. Byeon, Y. Lee, J. A. Han, N. H. Lee, S. W. Kim, H. Lee, Y. Loh, S. Lee, D. K. Hong, S. Lee, S. Cho, J. Kim, J. Lee, J. Kim, S. Y. Jeong, J. C. Yang, S. Yu, S. Jeon, D. Cho, I. Park and Y. S. Oh, Mater. Horiz., 2026, Accepted Manuscript , DOI: 10.1039/D5MH02270C

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