4.6 Article

Large-area flexible MWCNT/PDMS pressure sensor for ergonomic design with aid of deep learning learning

Journal

NANOTECHNOLOGY
Volume 33, Issue 34, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1361-6528/ac66ec

Keywords

carbon nanotubes; polymer matrix composite; resistive pressure sensors; signal processing

Funding

  1. Study on One-Step Construction of Capacitive Ionic Skins via 3D Printing and Its Key Technology [52103025]

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A new flexible sensor preparation strategy was proposed in this study, based on MWCNT/PDMS composite materials, with advantages of low resistance, high sensitivity, and fast response. Combining the sensor array with deep learning, the technology can be used for accurately recognizing human sitting inclination.
The achievement of well-performing pressure sensors with low pressure detection, high sensitivity, large-scale integration, and effective analysis of the subsequent data remains a major challenge in the development of flexible piezoresistive sensors. In this study, a simple and extendable sensor preparation strategy was proposed to fabricate flexible sensors on the basis of multiwalled carbon nanotube/polydimethylsiloxane (MWCNT/PDMS) composites. A dispersant of tetrahydrofuran (THF) was added to solve the agglomeration of MWCNTs in PDMS, and the resistance of the obtained MWCNT/PDMS conductive unit with 7.5 wt.% MWCNTs were as low as 180 omega/hemisphere. Sensitivity (0.004 kPa(-1)), excellent response stability, fast response time (36 ms), and excellent electromechanical properties were demonstrated within the pressure range from 0 to 100 kPa. A large-area flexible sensor with 8 x 10 pixels was successfully adopted to detect the pressure distribution on the human back and to verify its applicability. Combining the sensor array with deep learning, inclination of human sitting was easily recognized with high accuracy, indicating that the combined technology can be used to guide ergonomic design.

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