npj Flexible Electronics (Jul 2022)

Deep learning-enabled real-time personal handwriting electronic skin with dynamic thermoregulating ability

  • Shengxin Xiang,
  • Jiafeng Tang,
  • Lei Yang,
  • Yanjie Guo,
  • Zhibin Zhao,
  • Weiqiang Zhang

DOI
https://doi.org/10.1038/s41528-022-00195-3
Journal volume & issue
Vol. 6, no. 1
pp. 1 – 11

Abstract

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Abstract The rapid rise of the Internet of things (IoT) have brought the progress of electronic skin (e-skin). E-skin is used to imitate or even surpass the functions of human skin. Thermoregulating is one of the crucial functions of human skin, it is significant to develop a universal way to realize e-skin thermoregulating. Here, inspired by the sweat gland structure in human skin, we report a simple method for achieving dynamic thermoregulating, attributing to the temperature of microencapsulated paraffin remains unchanged when phase change occurs. Combining with the principle of triboelectric nanogenerator, a deep learning model is employed to recognize the output signals of handwriting different letters on ME-skin, and the recognition accuracy reaches 98.13%. Finally, real-time recognition and display of handwritings are successfully implemented by the ME-skin, which provides a general solution for thermoregulating e-skin and application direction for e-skin in the field of IoT.