Abstract
Background: This study deals with some factors that influence the exposure of whole-body vibration (WBV) of dumper operators in surface mines. The study also highlights the approach to improve the multivariate linear analysis outcomes when collinearity exists between certain factor pairs. Material and Methods: A total number of 130 vibration readings was taken from two adjacent surface iron ore mines. The frequency-weighted RMS acceleration was used for the WBV exposure assessment of the dumper operators. The factors considered in this study are age, weight, seat backrest height, awkward posture, the machine age, load tonnage, dumper speed and haul road condition. Four machine learning models were explored through the empirical training-testing approach. Results: The bootstrap linear regression model was found to be the best model based on performance and predictability when compared to multiple linear regression, LASSO regression, and decision tree. Results revealed that multiple factors influence WBV exposure. The significant factors are: weight of operators (regression coefficient β=-0.005, p<0.001), awkward posture (β=0.033, p<0.001), load tonnage (β=-0.026, p<0.05), dumper speed (β=0.008, p<0.001) and poor haul road condition (β=0.015, p<0.001). Conclusion: The bootstrap linear regression model produced efficient results for the dataset which was characterized by collinearity. WBV exposure is multifactorial. Regular monitoring of WBV exposure and corrective actions through appropriate prevention programs including the ergonomic design of the seat would increase the health and safety of operators.
Highlights
IntroductionGrowing demand for minerals resulted in tremendous pressure on the workforce due to an intensive and rigorous production schedule
Mining has been the backbone of industrial and economic growth in all countries
The results revealed that the dumper operators in two study mines were highly exposed to whole-body vibration (WBV)
Summary
Growing demand for minerals resulted in tremendous pressure on the workforce due to an intensive and rigorous production schedule. This has affected the machine operators who are fatigued and discomforted by physical work and suffer from occupational health hazards. Exposure to whole-body vibration (WBV) is one of the significant health hazards for the operators [1], which can increase musculoskeletal disorder (MSD) risk, such as low back pain (LBP), shoulder pain, and neck pain [2,3,4,5,6,7,8]. This study deals with some factors that influence the exposure of whole-body vibration (WBV) of dumper operators in surface mines. The study highlights the approach to improve the multivariate linear analysis outcomes when collinearity exists between certain factor pairs
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