TY - JOUR
T1 - Deep-Learning Enabled Active Biomimetic Multifunctional Hydrogel Electronic Skin
AU - Tao, Kai
AU - Yu, Jiahao
AU - Zhang, Jiyuan
AU - Bao, Aocheng
AU - Hu, Haowen
AU - Ye, Tao
AU - Ding, Qiongling
AU - Wang, Yaozheng
AU - Lin, Haobin
AU - Wu, Jin
AU - Chang, Honglong
AU - Zhang, Haixia
AU - Yuan, Weizheng
N1 - Publisher Copyright:
© 2023 American Chemical Society
PY - 2023/8/22
Y1 - 2023/8/22
N2 - There is huge demand for recreating human skin with the functions of epidermis and dermis for interactions with the physical world. Herein, a biomimetic, ultrasensitive, and multifunctional hydrogel-based electronic skin (BHES) was proposed. Its epidermis function was mimicked using poly(ethylene terephthalate) with nanoscale wrinkles, enabling accurate identification of materials through the capabilities to gain/lose electrons during contact electrification. Internal mechanoreceptor was mimicked by interdigital silver electrodes with stick-slip sensing capabilities to identify textures/roughness. The dermis function was mimicked by patterned microcone hydrogel, achieving pressure sensors with high sensitivity (17.32 mV/Pa), large pressure range (20-5000 Pa), low detection limit, and fast response (10 ms)/recovery time (17 ms). Assisted by deep learning, this BHES achieved high accuracy and minimized interference in identifying materials (95.00% for 10 materials) and textures (97.20% for four roughness cases). By integrating signal acquisition/processing circuits, a wearable drone control system was demonstrated with three-degree-of-freedom movement and enormous potentials for soft robots, self-powered human-machine interaction interfaces of digital twins.
AB - There is huge demand for recreating human skin with the functions of epidermis and dermis for interactions with the physical world. Herein, a biomimetic, ultrasensitive, and multifunctional hydrogel-based electronic skin (BHES) was proposed. Its epidermis function was mimicked using poly(ethylene terephthalate) with nanoscale wrinkles, enabling accurate identification of materials through the capabilities to gain/lose electrons during contact electrification. Internal mechanoreceptor was mimicked by interdigital silver electrodes with stick-slip sensing capabilities to identify textures/roughness. The dermis function was mimicked by patterned microcone hydrogel, achieving pressure sensors with high sensitivity (17.32 mV/Pa), large pressure range (20-5000 Pa), low detection limit, and fast response (10 ms)/recovery time (17 ms). Assisted by deep learning, this BHES achieved high accuracy and minimized interference in identifying materials (95.00% for 10 materials) and textures (97.20% for four roughness cases). By integrating signal acquisition/processing circuits, a wearable drone control system was demonstrated with three-degree-of-freedom movement and enormous potentials for soft robots, self-powered human-machine interaction interfaces of digital twins.
KW - Deep learning
KW - E-Skin
KW - Human machine interface
KW - Hydrogel
KW - Triboelectric nanogenerator
UR - http://www.scopus.com/inward/record.url?scp=85167826810&partnerID=8YFLogxK
U2 - 10.1021/acsnano.3c05253
DO - 10.1021/acsnano.3c05253
M3 - 文章
C2 - 37523784
AN - SCOPUS:85167826810
SN - 1936-0851
VL - 17
SP - 16160
EP - 16173
JO - ACS Nano
JF - ACS Nano
IS - 16
ER -