GEP-based predictive modeling of breathing resistances of wearing respirators on human body via sEMG and RSP sensors

Author:

Chen Yumiao,Yang Zhongliang

Abstract

PurposeBreathing resistance is the main factor that influences the wearing comfort of respirators. This paper aims to demonstrate the feasibility of using the gene expression programming (GEP) for the purpose of predicting subjective perceptions of breathing resistances of wearing respirators via surface electromyography (sEMG) and respiratory signals (RSP) sensors.Design/methodology/approachThe authors developed a physiological signal monitoring system with a specific garment. The inputs included seven physical measures extracted from (RSP) and (sEMG) signals. The output was the subjective index of breathing resistances of wearing respirators derived from the category partitioning-100 scale with proven levels of reliability and validity. The prediction model was developed and validated using data collected from 30 subjects and 24 test combinations (12 respirator conditions × 2 motion conditions). The subjects evaluated 24 conditions of breathing resistances in repeated measures fashion.FindingsThe results show that the GEP model can provide good prediction performance (R2= 0.71, RMSE = 0.11). This study demonstrates that subjective perceptions of breathing resistance of wearing respirators on the human body can be predicted using the GEP via sEMG and RSP in real-time, at little cost, non-invasively and automatically.Originality/valueThis is the first paper suggesting that subjective perceptions of subjective breathing resistances can be predicted from sEMG and RSP sensors using a GEP model, which will remain helpful to the scientific community to start further human-centered research work and product development using wearable biosensors and evolutionary algorithms.

Publisher

Emerald

Subject

Electrical and Electronic Engineering,Industrial and Manufacturing Engineering

Reference40 articles.

1. Performance comparison of artificial neural network and Gaussian mixture model in classifying hand motions by using sEMG signals;Biocybernetics and Biomedical Engineering,2013

2. Comfortable and maximum walking speed of adults aged 20-79 years: reference values and determinants;Age and Ageing,1997

3. The human factors/ergonomics studies for respirators: a review and future work;International Journal of Clothing Science and Technology,2015

4. A novel hybrid model for drawing trace reconstruction from multichannel surface electromyographic activity;Frontiers in Neuroscience,2017

5. Physiological and subjective responses to breathing resistance of N95 filtering facepiece respirators in still-sitting and walking;International Journal of Industrial Ergonomics,2016

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