4.8 Article

Artificial Intelligence of Things (AIoT) Enabled Floor Monitoring System for Smart Home Applications

期刊

ACS NANO
卷 15, 期 11, 页码 18312-18326

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acsnano.1c07579

关键词

floor monitoring; artificial intelligence; deep learning; triboelectric nanogenerator; smart home; coding

资金

  1. Collaborative Research Project under the SIMTech-NUS Joint Laboratory
  2. SIMTech-NUS Joint Lab on Large-area Flexible Hybrid Electronics
  3. National Key Research and Development Program o f China [2019YFB2004800, R-2020-S-002]

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This study develops a smart floor monitoring system through the synergistic integration of highly reliable triboelectric coding mats and deep-learning-assisted data analytics, which demonstrates highly stable detection unaffected by ambient parameters and operational methods. By incorporating deep-learning-assisted data analytics, the system enables various smart home monitoring and interactions, showing a promising advancement in floor sensing technology for smart home applications.
To enable smart homes and relative applications, the floor monitoring system with embedded triboelectric sensors has been proven as an effective paradigm to capture the ample sensory information from our daily activities, without the camera-associated privacy concerns. Yet the inherent limitations of triboelectric sensors such as high susceptibility to humidity and long-term stability remain a great challenge to develop a reliable floor monitoring system. Here we develop a robust and smart floor monitoring system through the synergistic integration of highly reliable triboelectric coding mats and deep-learning-assisted data analytics. Two quaternary coding electrodes are configured, and their outputs are normalized with respect to a reference electrode, leading to highly stable detection that is not affected by the ambient parameters and operation manners. Besides, due to the universal electrode pattern design, all the floor mats can be screen-printed with only one mask, rendering higher facileness and cost-effectiveness. Then a distinctive coding can be implemented to each floor mat through external wiring, which permits the parallel-array connection to minimize the output terminals and system complexity. Further integrating with deep-learning-assisted data analytics, a smart floor monitoring system is realized for various smart home monitoring and interactions, including position/trajectory tracking, identity recognition, and automatic controls. Hence, the developed low-cost, large-area, reliable, and smart floor monitoring system shows a promising advancement of floor sensing technology in smart home applications.

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