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基于体传感器网络与录像相结合的身体物理风险因素识别。

Physical risk factors identification based on body sensor network combined to videotaping.

机构信息

ERCOS Research Unit, Systems & Transport Laboratory, University of Technology of Belfort-Montbéliard, 91010 Belfort, France; CIAMS, Univ. Paris-Sud, Université Paris-Saclay, 91405 Orsay Cedex, France; CIAMS, Université d'Orléans, 45067 Orléans, France.

ERCOS Research Unit, Systems & Transport Laboratory, University of Technology of Belfort-Montbéliard, 91010 Belfort, France.

出版信息

Appl Ergon. 2017 Nov;65:410-417. doi: 10.1016/j.apergo.2017.05.003. Epub 2017 May 18.

Abstract

The aim of this study was to perform an ergonomic analysis of a material handling task by combining a subtask video analysis and a RULA computation, implemented continuously through a motion capture system combining inertial sensors and electrogoniometers. Five workers participated to the experiment. Seven inertial measurement units, placed on the worker's upper body (pelvis, thorax, head, arms, forearms), were implemented through a biomechanical model of the upper body to continuously provide trunk, neck, shoulder and elbow joint angles. Wrist joint angles were derived from electrogoniometers synchronized with the inertial measurement system. Worker's activity was simultaneously recorded using video. During post-processing, joint angles were used as inputs to a computationally implemented ergonomic evaluation based on the RULA method. Consequently a RULA score was calculated at each time step to characterize the risk of exposure of the upper body (right and left sides). Local risk scores were also computed to identify the anatomical origin of the exposure. Moreover, the video-recorded work activity was time-studied in order to classify and quantify all subtasks involved into the task. Results showed that mean RULA scores were at high risk for all participants (6 and 6.2 for right and left sides respectively). A temporal analysis demonstrated that workers spent most part of the work time at a RULA score of 7 (right: 49.19 ± 35.27%; left: 55.5 ± 29.69%). Mean local scores revealed that most exposed joints during the task were elbows, lower arms, wrists and hands. Elbows and lower arms were indeed at a high level of risk during the total time of a work cycle (100% for right and left sides). Wrist and hands were also exposed to a risky level for much of the period of work (right: 82.13 ± 7.46%; left: 77.85 ± 12.46%). Concerning the subtask analysis, subtasks called 'snow thrower', 'opening the vacuum sealer', 'cleaning' and 'storing' have been identified as the most awkward for right and left sides given mean RULA scores and percentages of time spent at risky levels. Results analysis permitted to suggest ergonomic recommendations for the redesign of the workstation. Contributions of the proposed innovative system dedicated to physical ergonomic assessment are further discussed.

摘要

本研究旨在通过结合子任务视频分析和 RULA 计算,使用结合惯性传感器和电子量角器的运动捕捉系统连续执行材料处理任务的人体工程学分析。五名工人参加了实验。七个惯性测量单元(放置在工人的上半身(骨盆、胸部、头部、手臂、前臂))通过上半身的生物力学模型实现,以连续提供躯干、颈部、肩部和肘部关节角度。腕关节角度源自与惯性测量系统同步的电子量角器。工人的活动同时使用视频记录。在后期处理中,关节角度被用作基于 RULA 方法的计算实施的人体工程学评估的输入。因此,在每个时间步计算 RULA 分数以表征上半身(右侧和左侧)的暴露风险。还计算了局部风险分数,以确定暴露的解剖学起源。此外,记录的工作活动进行了时间研究,以便将涉及任务的所有子任务分类并量化。结果表明,所有参与者的平均 RULA 分数都处于高风险(右侧为 6,左侧为 6.2)。时间分析表明,工人在工作时间的大部分时间里 RULA 得分为 7(右侧:49.19 ± 35.27%;左侧:55.5 ± 29.69%)。平均局部分数显示,任务中最暴露的关节是肘部、前臂、手腕和手。在整个工作周期(右侧和左侧均为 100%)中,肘部和前臂的风险水平确实很高。手腕和手在工作期间的大部分时间也处于危险水平(右侧:82.13 ± 7.46%;左侧:77.85 ± 12.46%)。关于子任务分析,根据平均 RULA 分数和处于风险水平的时间百分比,确定称为“抛雪机”、“打开真空封口机”、“清洁”和“储存”的子任务对右侧和左侧最不舒适。结果分析提出了工作站重新设计的人体工程学建议。进一步讨论了用于物理人体工程学评估的创新系统的贡献。

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