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Novel Smart N95 Filtering Facepiece Respirator with Real-time Adaptive Fit Functionality and Wireless Humidity Monitoring for Enhanced Wearable Comfort

Authors :
Kwon, Kangkyu
Lee, Yoon Jae
Jung, Yeongju
Soltis, Ira
Choi, Chanyeong
Na, Yewon
Romero, Lissette
Kim, Myung Chul
Rodeheaver, Nathan
Kim, Hodam
Lloyd, Michael S.
Zhuang, Ziqing
King, William
Xu, Susan
Ko, Seung-Hwan
Lee, Jinwoo
Yeo, Woon-Hong
Publication Year :
2023

Abstract

The widespread emergence of the COVID-19 pandemic has transformed our lifestyle, and facial respirators have become an essential part of daily life. Nevertheless, the current respirators possess several limitations such as poor respirator fit because they are incapable of covering diverse human facial sizes and shapes, potentially diminishing the effect of wearing respirators. In addition, the current facial respirators do not inform the user of the air quality within the smart facepiece respirator in case of continuous long-term use. Here, we demonstrate the novel smart N-95 filtering facepiece respirator that incorporates the humidity sensor and pressure sensory feedback-enabled self-fit adjusting functionality for the effective performance of the facial respirator to prevent the transmission of airborne pathogens. The laser-induced graphene (LIG) constitutes the humidity sensor, and the pressure sensor array based on the dielectric elastomeric sponge monitors the respirator contact on the face of the user, providing the sensory information for a closed-loop feedback mechanism. As a result of the self-fit adjusting mode along with elastomeric lining, the fit factor is increased by 3.20 and 5 times at average and maximum respectively. We expect that the experimental proof-of-concept of this work will offer viable solutions to the current commercial respirators to address the limitations.<br />Comment: 20 pages, 5 figures, 1 table, submitted for possible publication

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.07152
Document Type :
Working Paper