针对工业人机协作的人体工程学优化路径规划

Atieh Merikh Nejadasl, Jihad Achaoui, Ilias El Makrini, Greet Van De Perre, Tom Verstraten, Bram Vanderborght
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摘要

本文重点探讨如何改善产业工人的工效学。它探讨了不良工效学的重要影响,这种影响可导致肌肉骨骼疾病。为应对这一挑战,本文介绍了一种专为人机协作设计的路径规划算法的新方法。该算法的主要贡献在于确定最符合人体工程学的路径,以便机器人在执行任务时引导人类的手,促进向优化的身体配置过渡。该算法通过采用笛卡尔路径规划方法和单元分解方法,有效地绘制出符合人体工程学的路径图。该方法在一个由十个人组成的数据集上实施,这些人代表了年龄在 20 至 35 岁之间的不同男女受试者群体,其中一名受试者是左撇子。该算法适用于三种不同的活动:"堆叠物品"、"从架子上取物品 "和 "坐在桌子上组装物品"。结果表明,在应用该算法后,个人的 REBA 分数(作为衡量人体工程学状况的指标)有了明显改善。这一结果加强了该方法在提高产业工人工效学方面的功效。此外,研究还比较了带有三种启发式函数的 A* 算法与 Dijkstra 算法的性能,旨在找出在人机协作中实现最佳人体工学路径的最有效方法。研究结果表明,带有特定启发式函数的 A* 算法超过了 Dijkstra 算法,凸显了其在这方面的优势。研究结果凸显了优化人机协作的潜力,并为设计更高效的工业工作环境提供了实际意义。
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Ergonomically optimized path-planning for industrial human–robot collaboration
This paper focuses on improving the ergonomics of industrial workers. It addresses the critical implications of poor ergonomics, which can lead to musculoskeletal disorders over time. A novel methodology for a path-planning algorithm designed for human–robot collaboration was introduced to tackle this challenge. The algorithm’s essential contribution lies in determining the most ergonomic path for a robot to guide a human’s hand during task execution, facilitating a transition toward an optimized body configuration. The algorithm effectively charts the ergonomic path by adopting a Cartesian path-planning approach and employing the cell decomposition method. The methodology was implemented on a dataset of ten individuals, representing a diverse group of male and female subjects aged between 20 and 35, with one participant being left-handed. The algorithm was applied to three different activities: “stacking an item,” “taking an object from a shelf,” and “assembling an object by sitting over a table.” The results demonstrated a significant improvement in the REBA score (as a measure of ergonomics condition) of the individuals after applying the algorithm. This outcome reinforces the efficacy of the methodology in enhancing the ergonomics of industrial workers. Furthermore, the study compared the performance of A* with three heuristic functions against Dijkstra’s algorithm, aiming to identify the most effective approach for achieving optimal ergonomic paths in human–robot collaboration. The findings revealed that A* with a specific heuristic function surpassed Dijkstra’s algorithm, underscoring its superiority in this context. The findings highlight the potential for optimizing human–robot collaboration and offer practical implications for designing more efficient industrial work environments.
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