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Get Free AccessWe present triboelectrification based, flexible, reusable, and skin-friendly dry biopotential electrode arrays as motion sensors for tracking muscle motion and human–machine interfacing (HMI). The independently addressable, self-powered sensor arrays have been utilized to record the electric output signals as a mapping figure to accurately identify the degrees of freedom as well as directions and magnitude of muscle motions. A fast Fourier transform (FFT) technique was employed to analyse the frequency spectra of the obtained electric signals and thus to determine the motion angular velocities. Moreover, the motion sensor arrays produced a short-circuit current density up to 10.71 mA/m2, and an open-circuit voltage as high as 42.6 V with a remarkable signal-to-noise ratio up to 1000, which enables the devices as sensors to accurately record and transform the motions of the human joints, such as elbow, knee, heel, and even fingers, and thus renders it a superior and unique invention in the field of HMI.
Weiqing Yang, Jun Chen, Xiaonan Wen, Qingshen Jing, Jin Yang, Yuanjie Su, Guang Zhu, Wenzhuo Wu, Zhong Lin Wang (2014). Triboelectrification Based Motion Sensor for Human-Machine Interfacing. , 6(10), DOI: https://doi.org/10.1021/am500864t.
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Type
Article
Year
2014
Authors
9
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1021/am500864t
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