Setting Up Assembly Assistance Systems

System for the efficient configuration of assembly instructions and assistance functions

JournalIndustry 4.0 Science
Issue Volume 40, 2024, Edition 6, Pages 32-39
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Abstract

Despite increasing efforts towards automation, manual assembly remains a central component of value creation in Germany. During the assembly process, employees are increasingly receiving technological support from informational assistance systems. This support system helps to avoid errors and ensures efficiency, particularly in the case of complex assembly objects. Part of the use of such assistance systems is the setup of new products or product variants. The setup process must be as simple as possible to enable efficient operation. This article proposes a simply structured setup process and demonstrates a possible software implementation.

Keywords

Article

In industrial assembly, humans are working more closely with machines due to assembly assistance. However, despite their great potential, the implementation of digital systems is time-consuming, which entails high training requirements. Small and medium-sized businesses, in particular, are reaching their limits. A newly developed setup system is designed to facilitate the introduction and use of such assembly assistance systems and increase their acceptance.

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Solutions: Assembly Process Management Production Planning Quality Management Safety

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