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Recovered graphene-hydrogel nanocomposites for multi-modal human motion recognition via optimized triboelectrification and machine learning

Authors
 Thien Trung Luu  ;  Hai Anh Thi Le  ;  Yoonsang Ra  ;  Teklebrahan Gebrekrstos Weldemhret  ;  Hwiyoung Kim  ;  Kyungwho Choi  ;  Dongwhi Choi  ;  Dukhyun Choi  ;  Yong Tae Park 
Citation
 Composites Part B: Engineering, Vol.291 : 111997, 2025-02 
Journal Title
 Composites Part B: Engineering 
Issue Date
2025-02
Keywords
Triboelectrification ; Graphene ; Hydrogel ; Recovery ; Machine learning
Abstract
Hydrogels have extensive applications in portable, flexible, wearable, and self-powered electronic devices based on triboelectric nanogenerators (TENGs). An important issue with hydrogels is their tendency to dehydrate over time, which leads to a decline in both ionic conductivity and mechanical flexibility. Furthermore, the current techniques used to produce these hydrogels mostly rely on the freeze–thaw process, which has limited ability to modify the polymer conformation. Herein, a novel water-assisted recovered hydrogel is proposed using a simple strategy to prepare high-performance hydrogel-based TENGs by optimizing the cross-linking and crystalline domains. Synthesis of the electrostatic electrode in the TENG involved the incorporation of polyethylene oxide (PEO) into a polyvinyl alcohol (PVA) hydrogel network via cross-linking. Graphene nanoplatelets (GNP) were added to precisely tune the electrical conductivity. GNP constructs the backbone structures in the hydrogel and enhances the charge transport capacity. Electrical conductivity is changed by the GNP concentration and thus, electrical output of the hydrogel can be facilely controlled. The water reabsorption increased density and crystallinity of the cross-linking and allowed the hydrogel to show superior performance compared to the original one. The 7th recovery hydrogel produced around 594 V, 40 μA, and 32 nC. The 7th recovery hydrogel had exceptional endurance, with the capacity to withstand over 16,000 cycles of contact separation. Moreover, it could be stretched up to 541 % of its original length and improved by almost twice as much as that without the recovery process. By combining multi-modal graphene-based TENG sensors with machine learning, a state-of-the-art behavioral monitoring system was created that could reliably detect tapping fingers with an average accuracy rate of 95 %. The findings of this research will pave the way for new approaches to the development of autonomous motion sensors and flexible renewable energy sources.
Full Text
https://www.sciencedirect.com/science/article/pii/S1359836824008102
DOI
10.1016/j.compositesb.2024.111997
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Neurosurgery (신경외과학교실) > 1. Journal Papers
Yonsei Authors
Kim, Hwiyoung(김휘영)
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/202434
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