3D printed triboelectric nanogenerator as self-powered human-machine interactive sensor for breathing-based language expression

被引:0
作者
Pengcheng Zhu
Baosen Zhang
Hongyi Wang
Yiheng Wu
Hengjun Cao
Liubing He
Chaoyue Li
Xuepeng Luo
Xing Li
Yanchao Mao
机构
[1] Zhengzhou University,Key Laboratory of Materials Physics, Ministry of Education, School of Physics and Microelectronics
关键词
self-powered sensor; triboelectric nanogenerator; human-machine interface; breathing-based; language expression;
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学科分类号
摘要
Human-machine interfaces (HMIs) are important windows for a human to communicate with the outside world. The current HMI devices such as cellphones, tablets, and computers can be used to help people with aphasia for language expression. However, these conventional HMI devices are not friendly to some particular groups who also lose their abilities of physical movements like in the intensive care unit (ICU) or vegetative patients to realize language expression. Herein, we report a breath-driven triboelectric nanogenerator (TENG) acting as a HMI sensor for language expression through human breathing without voice controls or manual operations. The TENG is integrated within a mask and fabricated via a three-dimensional (3D) printing method. When wearing the mask, the TENG can produce responsive electric signals corresponding to the airflow from breathing, which is capable of recognizing human breathing types with different intensities, lengths, and frequencies. On the basis of the breathing recognition ability, a breathing-based language expressing system is further developed through introducing the Morse code as a communication protocol. Compared with conventional language expressing devices, this system can extract subjective information of a person from breathing behaviors and output corresponding language text, which is not relying on voices or physical movements. This research for the first time introduces the self-powered breathing-based language expressing method to the field of HMI technology by using a 3D printed TENG, and could make HMI interactions become more friendly and fascinating.
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页码:7460 / 7467
页数:7
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