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  5. Bionic Ultra‐Sensitive Self‐Powered Electromechanical Sensor for Muscle‐Triggered Communication Application

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Article
en
2021

Bionic Ultra‐Sensitive Self‐Powered Electromechanical Sensor for Muscle‐Triggered Communication Application

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0 Files

en
2021
Vol 8 (15)
Vol. 8
DOI: 10.1002/advs.202101020

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Zhong Lin Wang
Zhong Lin Wang

Beijing Institute of Technology

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Hong Zhou
Dongxiao Li
Xianming He
+5 more

Abstract

Abstract The past few decades have witnessed the tremendous progress of human–machine interface (HMI) in communication, education, and manufacturing fields. However, due to signal acquisition devices’ limitations, the research on HMI related to communication aid applications for the disabled is progressing slowly. Here, inspired by frogs’ croaking behavior, a bionic triboelectric nanogenerator (TENG)‐based ultra‐sensitive self‐powered electromechanical sensor for muscle‐triggered communication HMI application is developed. The sensor possesses a high sensitivity (54.6 mV mm −1 ), a high‐intensity signal (± 700 mV), and a wide sensing range (0–5 mm). The signal intensity is 206 times higher than that of traditional biopotential electromyography methods. By leveraging machine learning algorithms and Morse code, the safe, accurate (96.3%), and stable communication aid HMI applications are achieved. The authors' bionic TENG‐based electromechanical sensor provides a valuable toolkit for HMI applications of the disabled, and it brings new insights into the interdisciplinary cross‐integration between TENG technology and bionics.

How to cite this publication

Hong Zhou, Dongxiao Li, Xianming He, Xindan Hui, Hengyu Guo, Chenguo Hu, Xiaojing Mu, Zhong Lin Wang (2021). Bionic Ultra‐Sensitive Self‐Powered Electromechanical Sensor for Muscle‐Triggered Communication Application. , 8(15), DOI: https://doi.org/10.1002/advs.202101020.

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Publication Details

Type

Article

Year

2021

Authors

8

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1002/advs.202101020

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