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http://dx.doi.org/10.11627/jkise.2018.41.4.001

Modeling the Multi-Dimensional Phenomenon of Fatiguing by Assessing the Perceived Whole Body Fatigue and Local Muscle Fatigue During Squat Lifting  

Ahmad, Imran (Department of Industrial Management Engineering, Hanyang University ERICA Campus)
Kim, Jung-Yong (Department of Industrial Management Engineering, Hanyang University ERICA Campus)
Publication Information
Journal of Korean Society of Industrial and Systems Engineering / v.41, no.4, 2018 , pp. 1-8 More about this Journal
Abstract
Whole body fatigue detection is an important phenomenon and the factors contributing to whole body fatigue can be controlled if a mathematical model is available for its assessment. This research study aims at developing a model that categorizes whole body exertion into fatigued and non-fatigued states based on physiological and perceived variables. For this purpose, logistic regression was used to categorize the fatigued and non-fatigued subject as dichotomous variable. Normalized mean power frequency of eight muscles from 25 subjects was taken as physiological variable along with the heart rate while Borg scale ratings were taken as perceived variables. The logit function was used to develop the logistic regression model. The coefficients of all the variables were found and significance level was checked. The detection accuracy of the model for fatigued and non-fatigues subjects was 83% and 95% respectively. It was observed that the mean power frequency of anterior deltoid and the Borg scale ratings of upper and lower extremities were significant in predicting the whole body fatigued when evaluated dichotomously (p < 0.05). The findings can help in better understanding of the importance of combined physiological and perceived exertion in designing the rest breaks for workers involved in squat lifting tasks in industrial as well as health sectors.
Keywords
Electromyography; Logistic Regression; Whole Body Fatigue; Fatigue Modeling; Musculoskeletal Disorders;
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Times Cited By KSCI : 2  (Citation Analysis)
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