@inproceedings{BrennerEstlerHummel2021, author = {Brenner, Beate and Estler, Daniel and Hummel, Vera}, title = {Motion capturing in connection with human model simulation and artificial intelligence AI for employee training in the area of joint-gentle assembly workflows in production environment}, booktitle = {Proceedings of the Conference on Learning Factories (CLF) 2021, 1-2 July 2021, online}, doi = {10.2139/ssrn.3869762}, institution = {ESB Business School}, pages = {1 -- 6}, year = {2021}, abstract = {Teaching at assembly workstations in production in SMEs (small and medium sized companies) often does not take place at all or only insufficiently. In addition to the lack of technical content, there are also aggravatingly incorrect movement sequences from an ergonomic point of view, which "untrained" people usually automatically acquire. An AI based approach is used to analyze a definite workflow for a specific assembly scope regarding the behavior of several employees. Based on these different behaviors, the AI gives feedback at which points in time, work steps and movement's particularly dangerous incorrect postures occur. Motion capturing and digital human model simulation in combination with the results of the AI define the optimized workflow. Individual employees can be trained directly due to the fact that AI identifies their most serious incorrect postures and provide them with a direct analogy of their "wrong" posture and "easy on the joints posture". With the assistance of various test persons, the AI can conduct a study in which the most frequently occurring incorrect postures can be identified. This could be realized in general or tailored to specific groups of people (e.g. "People over 1.90m tall must be particularly careful not to make the following mistake...). The approach will be tested and validated at the Werk150, the factory of the ESB Business School, on the campus of the Reutlingen University. The new gained knowledge will be used subsequently for training in SMEs.}, language = {en} }