Human-Robot-Collaboration in the Final Aircraft Assembly

Ein intelligentes Assistenzsystem für das mechanische Fügen in der manuellen Montage

JournalIndustrie 4.0 Management
Issue Volume 35, 2019, Edition 1, Pages 19-22
Open Accesshttps://doi.org/10.30844/I40M_19-1_S19-22
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Abstract

A newly developed hand guided collaborative robot system will be used for manual mechanical joining process in the final assembly of aircrafts. The tool can be moved quickly and precisely to reach all joining positions avoiding physical effort for the operator. Special focus was given on the integrated handling of the entire system. The interlinked sensory of all subsystems ensures a smart control of the system. A mobile device was implemented to increase the usability and to foster the employees’ acceptance of the solution. It enables significantly improved process documentation, reproducibility and transparency.

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Bibliography

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