A Comparison of Multiple Machine Learning Algorithms to Predict Whole-Body Vibration Exposure of Dumper Operators in Iron Ore Mines in India

Rahul Upadhyay, Amrites Senapati, A. Bhattacherjee, A. Patra, S. Chatterjee
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引用次数: 1

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.
预测印度铁矿自卸车操作员全身振动暴露的多种机器学习算法的比较
背景:本研究探讨了影响露天矿翻车机操作员全身振动暴露的一些因素。该研究还强调了当某些因素对之间存在共线性时,改善多元线性分析结果的方法。材料和方法:从两个相邻的地表铁矿中总共采集了130个振动读数。频率加权均方根加速度用于自卸车操作员的WBV暴露评估。本研究考虑的因素包括年龄、重量、座椅靠背高度、尴尬姿势、机器年龄、装载吨位、自卸车速度和运输道路状况。通过实证训练测试方法探索了四种机器学习模型。结果:与多元线性回归、LASSO回归和决策树相比,bootstrap线性回归模型是基于性能和可预测性的最佳模型。结果显示,多种因素影响WBV暴露。显著因素是:操作员的体重(回归系数β=0.005,p<0.001)、笨拙的姿势(β=0.033,p<001)、装载吨位(β=0.026,p<0.05)、翻斗车速度(β=0.008,p<0.01)和较差的运输道路状况(β=0.015,p<.001)。结论:bootstrap线性回归模型对具有共线特征的数据集产生了有效的结果。WBV暴露是多因素的。通过适当的预防计划,包括座椅的人体工程学设计,定期监测WBV暴露情况并采取纠正措施,将提高操作员的健康和安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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