Ultrasensitive Wearable Pressure Sensors with Stress‐Concentrated Tip‐Array Design for Long‐Term Bimodal Identification

Author:

Xie Lingjie123,Lei Hao134,Liu Yina2,Lu Bohan2,Qin Xuan1,Zhu Chengyi1,Ji Haifeng1,Gao Zhenqiu1,Wang Yifan2,Lv Yangyang1,Zhao Chun4,Mitrovic Ivona Z.3,Sun Xuhui1,Wen Zhen1ORCID

Affiliation:

1. Institute of Functional Nano and Soft Materials (FUNSOM) Joint International Research Laboratory of Carbon‐Based Functional Materials and Devices Soochow University Suzhou 215123 P. R. China

2. Department of Applied Mathematics School of Mathematics and Physics Xi'an Jiaotong‐Liverpool University Suzhou 215123 P. R. China

3. Department of Electrical Engineering and Electronics University of Liverpool Liverpool L69 3GJ UK

4. Department of Electrical and Electronic Engineering School of Advanced Technology Xi'an Jiaotong‐Liverpool University Suzhou 215123 P. R. China

Abstract

AbstractThe great challenges for existing wearable pressure sensors are the degradation of sensing performance and weak interfacial adhesion owing to the low mechanical transfer efficiency and interfacial differences at the skin–sensor interface. Here, an ultrasensitive wearable pressure sensor is reported by introducing a stress‐concentrated tip‐array design and self‐adhesive interface for improving the detection limit. A bipyramidal microstructure with various Young's moduli is designed to improve mechanical transfer efficiency from 72.6% to 98.4%. By increasing the difference in modulus, it also mechanically amplifies the sensitivity to 8.5 V kPa−1 with a detection limit of 0.14 Pa. The self‐adhesive hydrogel is developed to strengthen the sensor–skin interface, which allows stable signals for long‐term and real‐time monitoring. It enables generating high signal‐to‐noise ratios and multifeatures when wirelessly monitoring weak pulse signals and eye muscle movements. Finally, combined with a deep learning bimodal fused network, the accuracy of fatigued driving identification is significantly increased to 95.6%.

Funder

National Basic Research Program of China

National Natural Science Foundation of China

Higher Education Discipline Innovation Project

Publisher

Wiley

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