NEWS der A & O
Metaanalyse zu erfolgreicher Mensch-Roboter-Interaktion am Arbeitsplatz erschienen
Objective: This meta-analysis reviews robot design features of interface, controller, and appearance and statistically summarizes their effect on successful human-robot interaction at work (HRI; i.e., task performance, cooperation, satisfaction, acceptance, trust, mental workload, and situation awareness). Background: Robots are becoming an integral part of many workplaces. As interactions with employees increase, ensuring success becomes ever more vital. Even though many studies investigated robot design features, an overview on general and specific effects is missing. Method: Systematic selection of literature and structured coding led to 81 included experimental studies containing 380 effect sizes. Mean effects were calculated using three-level meta-analysis to handle dependencies of multiple effect sizes in one study. Results: Sufficient feedback through the interface, clear visibility of affordances, and adaptability and autonomy of the controller significantly affect successful HRI, whereas appearance does not. The features of interface and controller affect performance and satisfaction, but do not affect situation awareness and trust. Specific effects of adaptability on cooperation and acceptance, as well as autonomy on workload, could be shown. Conclusion: Robot design at work needs to cover multiple features of interface and controller to achieve successful HRI that covers not only performance and satisfaction, but also cooperation acceptance and mental workload. More empirical research is needed to investigate mediating mechanisms and underrepresented design features' effects. Application: Robot designers should carefully choose design features to balance specific effects and implementation costs with regard to tasks, work design aims, and employee needs in the specific work context.
Ötting, S. K., Masjutin, L., Steil, J. J., & Maier, G. W. (2020). Let's work together: A meta-analysis on robot design features that enable successful human-robot interaction at work. Human Factors. Advance online publication. https://doi.org/10.1177/0018720820966433