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首页> 外文期刊>Journal of Construction Engineering and Management >Construction Activity Recognition and Ergonomic Risk Assessment Using a Wearable Insole Pressure System
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Construction Activity Recognition and Ergonomic Risk Assessment Using a Wearable Insole Pressure System

机译:施工活动识别和符合人体工程学风险评估,使用可穿戴鞋垫压力系统

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Overexertion-related construction activities are identified as a leading cause of work-related musculoskeletal disorders (WMSDs) among construction workers. However, few studies have focused on the automated recognition of overexertion-related construction workers' activities as well as assessing ergonomic risk levels, which may help to minimize WMSDs. Therefore, this study examined the feasibility of using acceleration and foot plantar pressure distribution data captured by a wearable insole pressure system for automated recognition of overexertion-related construction workers' activities and for assessing ergonomic risk levels. The proposed approach was tested by simulating overexertion-related construction activities in a laboratory setting. The classification accuracy of five types of supervised machine learning classifiers was evaluated with different window sizes to investigate classification performance and further estimate physical intensity, activity duration, and frequency information. Cross-validation results showed that the Random Forest classifier with a 2.56-s window size achieved the best classification accuracy of 98.3% and a sensitivity of more than 95.8% for each category of activities using the best features of combined data set. Furthermore, the estimation of corresponding ergonomic risk levels was within the same level of risk. The findings may help to develop a noninvasive wearable insole pressure system for the continuous monitoring and automated activity recognition, which could assist researchers and safety managers in identifying and assessing overexertion-related construction activities for minimizing the development of WMSDs' risks among construction workers.
机译:与过度相关的施工活动被确定为建筑工人与工作相关的肌肉骨骼障碍(WMSDS)的主要原因。然而,很少有研究专注于过度相关的建设工人活动的自动识别,以及评估人体工程学风险水平,这可能有助于最小化WMSD。因此,本研究检测了使用可佩戴鞋垫压力系统捕获的加速度和脚跖式压力分布数据的可行性,以自动识别过度关注的相关建筑工作者的活动,并用于评估符合人体工程学风险水平。通过模拟实验室环境中的过度相关的施工活动来测试所提出的方法。用不同的窗口尺寸评估五种类型的监督机器学习分类器的分类准确性,以调查分类性能以及进一步估计物理强度,活动持续时间和频率信息。交叉验证结果表明,随机林分类器,具有2.56窗尺寸的大小,最佳分类精度为98.3%,每个类别的活动都有95.8%的灵敏度,每个类别使用组合数据集的最佳功能。此外,对应的符合人体工程学风险水平的估计在相同的风险程度范围内。这些调查结果可能有助于开发非耐磨鞋垫压力系统,用于持续监测和自动化活动识别,这可以帮助研究人员和安全管理人员识别和评估过度相关的建筑活动,以尽量减少建筑工人之间的WMSDS风险的发展。

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