Yan Yuchen, Su Haotian, Jia Yunyi
Department of Automotive Engineering, International Center for Automotive Research, Clemson University, Greenville, SC 29607, USA.
Biomimetics (Basel). 2023 Oct 1;8(6):464. doi: 10.3390/biomimetics8060464.
The emergence and recent development of collaborative robots have introduced a safer and more efficient human-robot collaboration (HRC) manufacturing environment. Since the release of COBOTs, a great amount of research efforts have been focused on improving robot working efficiency, user safety, human intention detection, etc., while one significant factor-human comfort-has been frequently ignored. The comfort factor is critical to COBOT users due to its great impact on user acceptance. In previous studies, there is a lack of a mathematical-model-based approach to quantitatively describe and predict human comfort in HRC scenarios. Also, few studies have discussed the cases when multiple comfort factors take effect simultaneously. In this study, a multi-linear-regression-based general human comfort prediction model is proposed under human-robot collaboration scenarios, which is able to accurately predict the comfort levels of humans in multi-factor situations. The proposed method in this paper tackled these two gaps at the same time and also demonstrated the effectiveness of the approach with its high prediction accuracy. The overall average accuracy among all participants is 81.33%, while the overall maximum value is 88.94%, and the overall minimum value is 72.53%. The model uses subjective comfort rating feedback from human subjects as training and testing data. Experiments have been implemented, and the final results proved the effectiveness of the proposed approach in identifying human comfort levels in HRC.
协作机器人的出现及其近期的发展引入了一个更安全、更高效的人机协作(HRC)制造环境。自协作机器人发布以来,大量研究工作集中在提高机器人工作效率、用户安全性、人类意图检测等方面,而一个重要因素——人类舒适度——却经常被忽视。舒适度因素对协作机器人用户至关重要,因为它对用户接受度有很大影响。在以往的研究中,缺乏基于数学模型的方法来定量描述和预测人机协作场景中的人类舒适度。此外,很少有研究讨论多个舒适度因素同时起作用的情况。在本研究中,提出了一种基于多元线性回归的通用人类舒适度预测模型,用于人机协作场景,该模型能够准确预测多因素情况下人类的舒适度水平。本文提出的方法同时解决了这两个问题,并以其高预测精度证明了该方法的有效性。所有参与者的总体平均准确率为81.33%,总体最大值为88.94%,总体最小值为72.53%。该模型使用人类受试者的主观舒适度评分反馈作为训练和测试数据。已开展实验,最终结果证明了所提方法在识别人机协作中的人类舒适度水平方面的有效性。