Detection and Estimation of Cognitive Conflict During Physical Human–Robot Collaboration
Stefano Aldini, Avinash Kumar Singh, Daniel J. Leong, Yu–Kai Wang, Marc G. Carmichael, Dikai Liu, Chin‐Teng Lin
- 发表年份
- 2022
- 引用次数
- 10
摘要
Robots for physical human–robot collaboration (pHRC) often need to adapt their admittance and how they operate due to several factors. As the admittance of the system becomes variable throughout the workspace, it is not always straightforward for the operator to predict the robot’s behavior. Previous work demonstrated that cognitive conflicts can be detected during one-dimensional tasks. This work assesses whether cognitive conflicts can also be detected during two-dimensional tasks in pHRC and a classification problem is formulated. Different robot admittance profiles anticipating the stimulus translated into different levels of cognitive conflict. Several commonly used classification algorithms for EEG signals were evaluated to classify different levels of cognitive conflict. Results demonstrate that cognitive conflict level is lower when the admittance smoothly decreases before unexpected events when compared to conditions in which the admittance abruptly decreases before the stimulus. Among the classification algorithms, the convolutional neural network has shown the best results to classify different levels of cognitive conflict. Results suggest the feasibility of adaptive approaches for future pHRC control systems that close the loop on users through EEG signals. The detected human cognitive state can also be used to assess and improve the predictability of human–robot teams in various pHRC applications.
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