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KI-Anwendungen in Pull-Produktion, JIT und Produktionsnivellierung

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Künstliche Intelligenz und schlanke Produktion

Zusammenfassung

In einem schlanken Produktionssystem, um den Bestand an Fertigprodukten (oder in Bearbeitung, WIP) zu reduzieren, sind Pull-Produktion und Just-in-Time (JIT) zwei wichtige Techniken.

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Correspondence to Tin-Chih Toly Chen .

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Chen, TC.T., Wang, YC. (2023). KI-Anwendungen in Pull-Produktion, JIT und Produktionsnivellierung. In: Künstliche Intelligenz und schlanke Produktion. Springer Vieweg, Cham. https://doi.org/10.1007/978-3-031-44280-3_4

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