Deep Learning‐Assisted Sensitive 3C‐SiC Sensor for Long‐Term Monitoring of Physical Respiration

Author:

Tran Thi Lap1ORCID,Van Nguyen Duy1,Nguyen Hung1,Van Nguyen Thi Phuoc2,Song Pingan1,Deo Ravinesh C3,Moloney Clint4,Dao Viet Dung5,Nguyen Nam‐Trung5,Dinh Toan1

Affiliation:

1. Centre for Future Materials University of Southern Queensland 37 Sinnathamby Blvd Springfield QLD 4300 Australia

2. Thanh Do University QL32, Kim Chung, Hoai Duc Ha Noi Vietnam

3. School of Mathematics Physics and Computing University of Southern Queensland Springfield Campus QLD 4300 Australia

4. School of Nursing and Midwifery University of Southern Queensland Toowoomba Campus QLD 4350 Australia

5. Griffith University Gold Coast, Gold Coast Campus, 1 Parklands Dr Southport QLD 4215 Australia

Abstract

AbstractIn human life, respiration serves as a crucial physiological signal. Continuous real‐time respiration monitoring can provide valuable insights for the early detection and management of several respiratory diseases. High‐sensitivity, noninvasive, comfortable, and long‐term stable respiration devices are highly desirable. In spite of this, existing respiration sensors cannot provide continuous long‐term monitoring due to the erosion from moisture, fluctuations in body temperature, and many other environmental factors. This research developed a wearable thermal‐based respiration sensor made of cubic silicon carbide (3C‐SiC) using a microfabrication process. The results showed that as a result of the Joule heating effect in the robustness 3C‐SiC material, the sensor offered high sensitivity with the negative temperature coefficient of resistance of approximately 5,200ppmK‐1, an excellent response to respiration and long‐term stability monitoring. Furthermore, by incorporating a deep learning model, this fabricated sensor can develop advanced capabilities to distinguish between the four distinct breath patterns: slow, normal, fast, and deep breathing, and provide an impressive classification accuracy rate of ≈ 99.7%. The results of this research represent a significant step in developing wearable respiration sensors for personal healthcare systems.

Funder

Australian Research Council

Publisher

Wiley

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