Efficient Production Simulation

A method for software-supported collaboration between production and simulation experts

JournalIndustrie 4.0 Management
Issue Volume 39, 2023, Edition 6, Pages 46-50
Open Accesshttps://doi.org/10.30844/IM_23-6_46-50
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Abstract

Production simulations involve considerable effort, among other things, due to the knowledge transfer between the domain expert and the simulation specialist. For small and medium-sized companies, this often represents an economic hurdle in the use of simulation. In this article, a method for a software- supported cooperation between the production expert and the simulation specialist is presented, which leads to a considerable reduction in effort. This means that the advantages of simulation can be used economically even with low optimization potentials.

Keywords


Bibliography

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[8] VDI Richtlinie 3633: Simulation von Logistik-, Materialfluss- und Produktionssystemen, Grundlagen. Blatt 1. Berlin 2014.
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[12] VDI Richtlinie 2870: Ganzheitliche Produktionssysteme, Grundlagen, Einführung und Bewertung. Blatt 1. Berlin 2012.

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