Wagner David W, Kirschweng Rebecca L, Reed Matthew P
Industrial and Operations Engineering Department, University of Michigan, Ann Arbor, MI 48109-2117, USA.
Ergonomics. 2009 Mar;52(3):362-83. doi: 10.1080/00140130802376034.
Ergonomic job analysis commonly applies static postural and biomechanical analysis tools to particular postures observed during manual material handling (MMH) tasks, usually focusing on the most extreme postures or those involving the highest loads. When these analyses are conducted prospectively using digital human models, accurate prediction of the foot placements is critical to realistic postural analyses. In automotive assembly jobs, workers frequently take several steps between task elements, for example, picking up a part at one location and moving to another location to place it on the vehicle. A detailed understanding of the influence of task type and task sequence on the stepping pattern is necessary to accurately predict the foot placements associated with MMH tasks. The current study examined the patterns of foot motions observed during automotive assembly tasks. Video data for 529 pickup and delivery tasks from 32 automotive assembly jobs were analysed. A minimum of five cycles was analysed for each task. The approach angle, departure angle, hand(s) used, manipulation height and patterns of footsteps were coded from the video. Object mass was identified from the job information sheet provided by the assembly plant. Three independent raters coded each video and demonstrated an intraclass correlation coefficient of 0.54 for identification of the configuration of the lower extremities during terminal stance. Based on an analysis of the distribution of stepping behaviours during object transitions (pickups or deliveries), a transition classification system (TRACS) was developed. TRACS uses a compact notation to quantify the sequence of steps associated with a MMH transition. Five TRACS behaviour groups accounted for over 90% of the transition stepping behaviours observed in the assembly plant. Approximately two-thirds (68.4%) of the object transfers observed were performed with only one foot in contact with the ground during the terminal posture. The results from this paper suggest that a predictive model for choosing a transition stepping behaviour, coupled with a model to scale the selected foot behaviours, is needed to facilitate accurate prospective ergonomic analyses. This study proposes a method for categorising the stepping patterns associated with MMH tasks. The influence of task type and task sequence on the stepping patterns observed during several automotive assembly tasks is discussed. For prospective postural analyses conducted using digital human models, accurate prediction of the foot placements is critical to realistic postural analyses.
人体工程学工作分析通常将静态姿势和生物力学分析工具应用于手工物料搬运(MMH)任务中观察到的特定姿势,通常关注最极端的姿势或那些涉及最大负荷的姿势。当使用数字人体模型前瞻性地进行这些分析时,准确预测脚部位置对于现实的姿势分析至关重要。在汽车装配工作中,工人在任务环节之间经常要走几步,例如,在一个位置拿起一个零件,然后移动到另一个位置将其放置在车辆上。要准确预测与MMH任务相关的脚部位置,就必须详细了解任务类型和任务顺序对步行动作模式的影响。当前的研究考察了汽车装配任务中观察到的脚部运动模式。分析了来自32个汽车装配工作的529次取件和送件任务的视频数据。每个任务至少分析了五个周期。从视频中对接近角度、离开角度、使用的手、操作高度和脚步模式进行了编码。物体质量从装配厂提供的工作信息表中确定。三名独立的评分者对每个视频进行编码,在确定终末站立时下肢的配置方面,组内相关系数为0.54。基于对物体转移(取件或送件)过程中步行动作分布的分析,开发了一种转移分类系统(TRACS)。TRACS使用一种简洁的符号来量化与MMH转移相关的步骤顺序。五个TRACS行为组占装配厂观察到的转移步行动作的90%以上。在终末姿势期间,观察到的物体转移中约三分之二(68.4%)是在只有一只脚接触地面的情况下进行的。本文的结果表明,需要一个用于选择转移步行动作的预测模型,以及一个用于缩放所选脚部动作的模型,以促进准确的前瞻性人体工程学分析。本研究提出了一种对与MMH任务相关的步行动作模式进行分类的方法。讨论了任务类型和任务顺序对在几个汽车装配任务中观察到的步行动作模式的影响。对于使用数字人体模型进行的前瞻性姿势分析,准确预测脚部位置对于现实的姿势分析至关重要。