TL;DR
This paper presents a real-world evaluation of a flexible human-robot collaboration model using AND/OR graphs, demonstrating improved naturalness and efficiency in manufacturing tasks.
Contribution
It introduces an online reasoning architecture for human-robot collaboration based on AND/OR graphs, validated through industrial experiments and user studies.
Findings
Enhanced naturalness in human-robot collaboration
Improved efficiency in manufacturing tasks
Positive user feedback on collaboration model
Abstract
The Industry 4.0 paradigm promises shorter development times, increased ergonomy, higher flexibility, and resource efficiency in manufacturing environments. Collaborative robots are an important tangible technology for implementing such a paradigm. A major bottleneck to effectively deploy collaborative robots to manufacturing industries is developing task planning algorithms that enable them to recognize and naturally adapt to varying and even unpredictable human actions while simultaneously ensuring an overall efficiency in terms of production cycle time. In this context, an architecture encompassing task representation, task planning, sensing, and robot control has been designed, developed and evaluated in a real industrial environment. A pick-and-place palletization task, which requires the collaboration between humans and robots, is investigated. The architecture uses AND/OR graphs…
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