| Literature DB >> 34882950 |
Yancong Qiao1,2, Xiaoshi Li1, Jiabin Wang3, Shourui Ji1, Thomas Hirtz1, He Tian1, Jinming Jian1, Tianrui Cui1, Ying Dong1, Xinwei Xu4, Fei Wang5, Hong Wang4, Jianhua Zhou2, Yi Yang1, Takao Someya3, Tian-Ling Ren1.
Abstract
As the aging population increases in many countries, electronic skin (e-skin) for health monitoring has been attracting much attention. However, to realize the industrialization of e-skin, two factors must be optimized. The first is to achieve high comfort, which can significantly improve the user experience. The second is to make the e-skin intelligent, so it can detect and analyze physiological signals at the same time. In this article, intelligent and multifunctional e-skin consisting of laser-scribed graphene and polyurethane (PU) nanomesh is realized with high comfort. The e-skin can be used as a strain sensor with large measurement range (>60%), good sensitivity (GF≈40), high linearity range (60%), and excellent stability (>1000 cycles). By analyzing the morphology of e-skin, a parallel networks model is proposed to express the mechanism of the strain sensor. In addition, laser scribing is also applied to etch the insulating PU, which greatly decreases the impedance in detecting electrophysiology signals. Finally, the e-skin is applied to monitor the electrocardiogram, electroencephalogram (EEG), and electrooculogram signals. A time- and frequency-domain concatenated convolution neural network is built to analyze the EEG signal detected using the e-skin on the forehead and classify the attention level of testers.Entities:
Keywords: crack models; laser scribing graphene; nanomeshes; neural networks; physilogical signal monitoring
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Year: 2021 PMID: 34882950 DOI: 10.1002/smll.202104810
Source DB: PubMed Journal: Small ISSN: 1613-6810 Impact factor: 13.281