Assembly in Transition

Empirical results of digitalization

JournalIndustry 4.0 Science
Issue Volume 41, 2025, Edition 1, Pages 42-49
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Abstract

Assembly is an important part of industrial production and is also characterized by a high proportion of manual work. Manufacturing companies have an intrinsic interest in increasing personnel productivity and preventing unit labor costs from rising. Many thus hope to gain economic benefits by implementing digitalization projects. The potential of digitalization in assembly must be exploited to achieve these goals.

Keywords

Article

Assembly is a crucial stage in the value creation process of multi-part products and itself comprises the processes of joining and handling, supplemented by adjustment, testing and special operations such as heating [1]. The task of assembly is to put together products of higher complexity with specified functions from individual parts, partially assembled pieces and/or formless materials within a given time [2]. The decisive initial variable for assembly is the component complexity, which is defined on the basis of the individual parts that make up the assembly object. Complex products consist of between 30 and 500 parts, …

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Potentials: Innovation
Solutions: Assembly

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